1 00:00:00,040 --> 00:00:02,470 The following content is provided under a Creative 2 00:00:02,470 --> 00:00:03,880 Commons license. 3 00:00:03,880 --> 00:00:06,920 Your support will help MIT OpenCourseWare continue to 4 00:00:06,920 --> 00:00:10,570 offer high quality educational resources for free. 5 00:00:10,570 --> 00:00:13,470 To make a donation or view additional materials from 6 00:00:13,470 --> 00:00:19,290 hundreds of MIT courses, visit MIT OpenCourseWare at 7 00:00:19,290 --> 00:00:20,540 ocw.mit.edu. 8 00:00:54,685 --> 00:00:57,730 PROFESSOR: Over the last several lectures, we've dealt 9 00:00:57,730 --> 00:01:01,370 with the representation of linear time-invariant systems 10 00:01:01,370 --> 00:01:03,080 through convolution. 11 00:01:03,080 --> 00:01:07,850 And just to remind you of our basic strategy, essentially, 12 00:01:07,850 --> 00:01:13,230 the idea was to exploit the notion of linearity by 13 00:01:13,230 --> 00:01:17,250 decomposing the input into a sum of basic inputs and then 14 00:01:17,250 --> 00:01:20,580 using linearity to tell us that the output can be 15 00:01:20,580 --> 00:01:23,200 represented as the corresponding linear 16 00:01:23,200 --> 00:01:25,880 combination of the associated outputs. 17 00:01:25,880 --> 00:01:30,420 So, if we have a linear system, either continuous-time 18 00:01:30,420 --> 00:01:34,570 or discrete-time, for example, with continuous time, if the 19 00:01:34,570 --> 00:01:38,690 input is decomposed as a linear combination of basic 20 00:01:38,690 --> 00:01:42,250 inputs, with each of these basic inputs generating an 21 00:01:42,250 --> 00:01:46,900 associated output, and if the system is linear, then the 22 00:01:46,900 --> 00:01:51,850 output of the system is the same linear combination of the 23 00:01:51,850 --> 00:01:53,530 associated outputs. 24 00:01:53,530 --> 00:01:57,450 And the same statement is identical both for continuous 25 00:01:57,450 --> 00:02:01,170 time and discrete time. 26 00:02:01,170 --> 00:02:06,600 So the strategy is to decompose the input into these 27 00:02:06,600 --> 00:02:08,440 basic inputs. 28 00:02:08,440 --> 00:02:14,120 And the inputs were chosen also with some particular 29 00:02:14,120 --> 00:02:15,960 strategy in mind. 30 00:02:15,960 --> 00:02:19,390 In particular, for both continuous time or discrete 31 00:02:19,390 --> 00:02:25,120 time, in this representation, the basic inputs used in the 32 00:02:25,120 --> 00:02:30,890 decomposition are chosen, first of all, so that a broad 33 00:02:30,890 --> 00:02:34,440 class of signals could be represented in terms of these 34 00:02:34,440 --> 00:02:39,840 basic inputs, and second of all, so that the response to 35 00:02:39,840 --> 00:02:45,660 these basic inputs is, in some sense, easy to compute. 36 00:02:45,660 --> 00:02:52,420 Now, in the representation which led us to convolution, 37 00:02:52,420 --> 00:02:56,930 the particular choice that we made in the discrete-time case 38 00:02:56,930 --> 00:03:02,630 for our basic inputs was a decomposition of the input in 39 00:03:02,630 --> 00:03:06,960 terms of delayed impulses. 40 00:03:06,960 --> 00:03:11,780 And the associated outputs that that generated were 41 00:03:11,780 --> 00:03:15,580 delayed versions of the impulse response. 42 00:03:15,580 --> 00:03:19,100 Decomposing the input into a linear combination of these, 43 00:03:19,100 --> 00:03:21,510 the output into the corresponding linear 44 00:03:21,510 --> 00:03:26,190 combination of these, then led to the convolution sum in the 45 00:03:26,190 --> 00:03:28,430 discrete time case. 46 00:03:28,430 --> 00:03:33,080 And in the continuous-time case, a similar kind of 47 00:03:33,080 --> 00:03:36,330 decomposition, in terms of impulses, and associated 48 00:03:36,330 --> 00:03:39,740 representation of the output, in terms of the impulse 49 00:03:39,740 --> 00:03:44,220 response, led to the convolution integral. 50 00:03:44,220 --> 00:03:48,380 Now, in this lecture, and for a number of the succeeding 51 00:03:48,380 --> 00:03:52,450 lectures, we'll want to turn our attention to a very 52 00:03:52,450 --> 00:03:56,120 different set of basic building blocks. 53 00:03:56,120 --> 00:04:01,150 And in particular, the signals that we'll be using as the 54 00:04:01,150 --> 00:04:04,740 building blocks for our more general signals, rather than 55 00:04:04,740 --> 00:04:09,870 impulses, as we've dealt with before, will be, in general, 56 00:04:09,870 --> 00:04:12,230 complex exponentials. 57 00:04:12,230 --> 00:04:17,810 So, in a general sense, in the continuous-time case, we'll be 58 00:04:17,810 --> 00:04:21,339 thinking in terms of a decomposition of our signals 59 00:04:21,339 --> 00:04:26,160 as a linear combination of complex exponentials, 60 00:04:26,160 --> 00:04:31,740 continuous-time, or, in the discrete-time case, complex 61 00:04:31,740 --> 00:04:37,020 exponentials, where z_k is complex here in discrete time 62 00:04:37,020 --> 00:04:42,500 and s sub k is complex here in continuous time. 63 00:04:42,500 --> 00:04:47,860 Now, the basic strategy, of course, requires that we 64 00:04:47,860 --> 00:04:52,220 choose a set of inputs, basic building blocks, which have 65 00:04:52,220 --> 00:04:53,580 two properties. 66 00:04:53,580 --> 00:04:57,320 One is that the system response be straightforward to 67 00:04:57,320 --> 00:05:00,150 compute, or in some sense, easy to compute. 68 00:05:00,150 --> 00:05:03,280 And second is that it be a fairly general set of building 69 00:05:03,280 --> 00:05:09,290 blocks so that we can build lots of signals out of them. 70 00:05:09,290 --> 00:05:12,690 What we'll find with complex exponentials, either 71 00:05:12,690 --> 00:05:14,740 continuous-time or discrete-time, is that they 72 00:05:14,740 --> 00:05:17,870 very nicely have those two properties. 73 00:05:17,870 --> 00:05:23,280 In particular, the notion that the output of a linear 74 00:05:23,280 --> 00:05:27,320 time-invariant system is easy to compute is tied to what's 75 00:05:27,320 --> 00:05:29,250 referred to as the Eigenfunction function 76 00:05:29,250 --> 00:05:32,280 property of complex exponentials, which we'll 77 00:05:32,280 --> 00:05:36,780 focus on shortly in a little more detail. 78 00:05:36,780 --> 00:05:41,600 And second of all, the fact that we can, in fact, 79 00:05:41,600 --> 00:05:44,880 represent very broad classes of signals as linear 80 00:05:44,880 --> 00:05:50,010 combinations of these will be a topic and an issue that 81 00:05:50,010 --> 00:05:53,780 we'll develop in detail over, in fact, the next set of 82 00:05:53,780 --> 00:05:57,860 lectures, this lecture, and the next set of lectures. 83 00:05:57,860 --> 00:06:03,960 Now, in doing this, although we could, in fact, begin with 84 00:06:03,960 --> 00:06:10,040 our attention focused on, in general, complex exponentials, 85 00:06:10,040 --> 00:06:14,330 what we'll choose to do is first focus on the case in 86 00:06:14,330 --> 00:06:19,150 which the exponent in the continuous-time case is purely 87 00:06:19,150 --> 00:06:25,420 imaginary, as I indicate here, and in the discrete-time case, 88 00:06:25,420 --> 00:06:27,990 where the magnitude of the complex number 89 00:06:27,990 --> 00:06:30,590 z_k is equal to 1. 90 00:06:30,590 --> 00:06:35,320 So what that corresponds to in the continuous-time case is a 91 00:06:35,320 --> 00:06:41,280 set of building blocks of the form e^(j omega_k t), and in 92 00:06:41,280 --> 00:06:44,800 the discrete-time case, a set of building blocks of the form 93 00:06:44,800 --> 00:06:46,050 e^(j Omega_k n). 94 00:06:47,930 --> 00:06:52,730 What we'll see is a representation in these terms 95 00:06:52,730 --> 00:06:57,570 leads to what's referred to as Fourier analysis. 96 00:06:57,570 --> 00:07:00,150 And that's what will be dealing with over the next set 97 00:07:00,150 --> 00:07:02,870 of lectures. 98 00:07:02,870 --> 00:07:06,290 We'll then be exploiting this representation actually 99 00:07:06,290 --> 00:07:07,710 through most of the course. 100 00:07:07,710 --> 00:07:11,700 And then toward the end of the course, we'll return to 101 00:07:11,700 --> 00:07:16,110 generalizing the Fourier representation to a discussion 102 00:07:16,110 --> 00:07:19,210 Laplace transforms and Z-transforms. 103 00:07:19,210 --> 00:07:22,900 So for now, we want to restrict ourselves to complex 104 00:07:22,900 --> 00:07:27,100 exponentials of a particular form, and in fact, also 105 00:07:27,100 --> 00:07:30,980 initially to continuous-time signals and systems. 106 00:07:30,980 --> 00:07:34,410 So let's begin with the continuous-time case and the 107 00:07:34,410 --> 00:07:39,020 complex exponentials that we want to deal with and focus, 108 00:07:39,020 --> 00:07:43,050 first of all, on what I refer to as the Eigenfunction 109 00:07:43,050 --> 00:07:48,000 property of this particular set of building blocks. 110 00:07:48,000 --> 00:07:51,313 We're talking about basic signals of the form e^(j 111 00:07:51,313 --> 00:07:52,563 omega_k t). 112 00:07:54,020 --> 00:07:58,370 And the statement is that for a linear time-invariant 113 00:07:58,370 --> 00:08:03,770 system, the response to one of these is of exactly the same 114 00:08:03,770 --> 00:08:09,340 form, just simply multiplied by a complex factor, that 115 00:08:09,340 --> 00:08:12,680 complex factor depending on what the 116 00:08:12,680 --> 00:08:16,020 frequency, omega_k, is. 117 00:08:16,020 --> 00:08:18,820 Now more or less, the justification for this, or the 118 00:08:18,820 --> 00:08:24,170 proof, follows by simply looking at the response to a 119 00:08:24,170 --> 00:08:28,140 complex exponential, using the convolution integral. 120 00:08:28,140 --> 00:08:33,750 So if we put a complex exponentials into a linear 121 00:08:33,750 --> 00:08:39,409 time-invariant system with impulse response h(t), then we 122 00:08:39,409 --> 00:08:42,780 can express the response as I've indicated here. 123 00:08:42,780 --> 00:08:46,320 We can then recognize that this complex exponentials can 124 00:08:46,320 --> 00:08:48,680 be factored into two terms. 125 00:08:48,680 --> 00:08:53,180 And so we can rewrite this complex 126 00:08:53,180 --> 00:08:56,080 exponential as this product. 127 00:08:56,080 --> 00:09:02,280 Second, recognize that this term can be taken outside the 128 00:09:02,280 --> 00:09:07,120 integral, over here, because of the fact that it depends 129 00:09:07,120 --> 00:09:10,360 only on t and not on Tau. 130 00:09:10,360 --> 00:09:14,640 And so what we're left with, when we track this through, is 131 00:09:14,640 --> 00:09:19,070 that, with a complex exponential input, we get an 132 00:09:19,070 --> 00:09:23,120 output which is the same complex exponential, namely 133 00:09:23,120 --> 00:09:26,950 this factor, times this integral. 134 00:09:26,950 --> 00:09:33,620 And this integral is what I refer to above as H(omega_k). 135 00:09:37,040 --> 00:09:42,200 And so, in fact, we put in a complex exponential, we get 136 00:09:42,200 --> 00:09:46,680 out a complex exponentials of the same frequency, multiplied 137 00:09:46,680 --> 00:09:48,650 by a complex constant. 138 00:09:48,650 --> 00:09:54,030 And that is what's referred to as the Eigenfunction property, 139 00:09:54,030 --> 00:09:57,840 Eigenfunction meaning that an Eigenfunction of a system, or 140 00:09:57,840 --> 00:10:01,370 mathematical expression, is a function which, when you put 141 00:10:01,370 --> 00:10:04,980 it through the system, comes out looking exactly the same 142 00:10:04,980 --> 00:10:07,950 except for a change in amplitude, the change in 143 00:10:07,950 --> 00:10:11,040 amplitude being the Eigenvalue. 144 00:10:11,040 --> 00:10:15,440 So in fact, this function is the Eigenfunction. 145 00:10:17,980 --> 00:10:23,800 And this value is the Eigenvalue. 146 00:10:27,540 --> 00:10:31,920 OK, now it's because of the Eigenfunction property that 147 00:10:31,920 --> 00:10:34,800 complex exponentials are particularly convenient as 148 00:10:34,800 --> 00:10:35,950 building blocks. 149 00:10:35,950 --> 00:10:38,900 Namely you put it through the system, they come out with the 150 00:10:38,900 --> 00:10:42,980 same form and simply scale. 151 00:10:42,980 --> 00:10:45,780 The other part to the question, related to the 152 00:10:45,780 --> 00:10:51,480 strategy that we've been pursuing, is to hope that 153 00:10:51,480 --> 00:10:57,370 these signals can be used as building blocks to represent a 154 00:10:57,370 --> 00:11:01,030 very broad class of signals through a linear combination. 155 00:11:01,030 --> 00:11:04,230 And in fact, that turns out to be the case with complex 156 00:11:04,230 --> 00:11:06,820 exponentials. 157 00:11:06,820 --> 00:11:10,420 As we work our way through that, we'll first consider the 158 00:11:10,420 --> 00:11:13,950 case of periodic signals. 159 00:11:13,950 --> 00:11:17,710 And what that leads to is a representation of periodic 160 00:11:17,710 --> 00:11:22,360 signals through what's called the Fourier series. 161 00:11:22,360 --> 00:11:26,690 Following that, we'll turn our attention to non-periodic, or 162 00:11:26,690 --> 00:11:29,770 as I refer to it, aperiodic signals. 163 00:11:29,770 --> 00:11:34,830 And the representation that's developed in terms of linear 164 00:11:34,830 --> 00:11:38,270 combinations of complex exponentials is what's 165 00:11:38,270 --> 00:11:41,240 referred to as the Fourier transform. 166 00:11:41,240 --> 00:11:45,550 So the first thing we want to deal with are periodic signals 167 00:11:45,550 --> 00:11:47,090 and the Fourier series. 168 00:11:49,690 --> 00:11:54,190 So what we're talking about then is the continuous-time 169 00:11:54,190 --> 00:11:57,110 Fourier series. 170 00:11:57,110 --> 00:12:02,180 And the Fourier series is a representation for periodic 171 00:12:02,180 --> 00:12:05,090 continuous-time signals. 172 00:12:05,090 --> 00:12:08,730 We have a signal, then, which is periodic. 173 00:12:08,730 --> 00:12:13,310 And we're choosing T_0 to denote the period. 174 00:12:13,310 --> 00:12:19,380 So it's T_0 that corresponds to the period of 175 00:12:19,380 --> 00:12:21,660 our periodic signal. 176 00:12:21,660 --> 00:12:29,550 omega_0 is 2 pi / T_0, as you recall from our discussion pf 177 00:12:29,550 --> 00:12:32,410 periodic signals and sinusoids before. 178 00:12:32,410 --> 00:12:34,500 And that's 2 pi f_0. 179 00:12:34,500 --> 00:12:36,930 So this is the fundamental frequency. 180 00:12:39,640 --> 00:12:45,240 Now let's examine, first of all, complex exponentials, and 181 00:12:45,240 --> 00:12:49,860 recognize, first of all, that there is a complex exponential 182 00:12:49,860 --> 00:12:54,060 that has exactly the same period and fundamental 183 00:12:54,060 --> 00:12:58,680 frequency as our more general periodic signal, namely the 184 00:12:58,680 --> 00:13:05,550 complex exponential e^(j omega_0 t), where omega_0 is 2 185 00:13:05,550 --> 00:13:12,640 pi / T_0, or equivalently, T_0 is 2 pi / omega_0. 186 00:13:12,640 --> 00:13:17,820 Now that's the complex exponential which has T_0 as 187 00:13:17,820 --> 00:13:19,760 the fundamental period. 188 00:13:19,760 --> 00:13:24,950 But there are harmonically related complex exponentials 189 00:13:24,950 --> 00:13:30,130 that also have T_0 as a period, although in fact, 190 00:13:30,130 --> 00:13:32,520 their fundamental period is shorter. 191 00:13:32,520 --> 00:13:37,017 So we can also look at complex exponentials of the form e^(j 192 00:13:37,017 --> 00:13:38,267 k omega_0 t). 193 00:13:39,710 --> 00:13:46,590 These likewise are periodic with a period of T_0. 194 00:13:46,590 --> 00:13:52,060 Although, in fact, their fundamental period is T_0 / k, 195 00:13:52,060 --> 00:13:55,480 or equivalently, 2 pi divided by their fundamental 196 00:13:55,480 --> 00:13:58,520 frequency, k omega_0. 197 00:13:58,520 --> 00:14:04,070 So as k, an integer, varies, these correspond to 198 00:14:04,070 --> 00:14:09,140 harmonically related complex exponentials. 199 00:14:09,140 --> 00:14:14,060 Now what the Fourier series says, and we'll justify this 200 00:14:14,060 --> 00:14:18,170 bit by bit as the discussion goes on, what the Fourier 201 00:14:18,170 --> 00:14:23,030 series says, and in fact, what Fourier said, which was 202 00:14:23,030 --> 00:14:27,150 essentially his brilliant insight, is that, if I have a 203 00:14:27,150 --> 00:14:31,670 very general periodic signal, I can represent it as a linear 204 00:14:31,670 --> 00:14:34,940 combination of these harmonically-related complex 205 00:14:34,940 --> 00:14:36,900 exponentials. 206 00:14:36,900 --> 00:14:41,950 So that representation is what I've indicated here. 207 00:14:41,950 --> 00:14:49,580 And this summation is what will be referred to as the 208 00:14:49,580 --> 00:14:52,890 Fourier series. 209 00:14:55,990 --> 00:14:59,320 And as we proceed with the discussion, there are two 210 00:14:59,320 --> 00:15:02,010 issues that will develop. 211 00:15:02,010 --> 00:15:06,670 One is, assuming that our periodic signal can be 212 00:15:06,670 --> 00:15:11,040 represented this way, how do we determine the Fourier 213 00:15:11,040 --> 00:15:14,820 series coefficients, as they're referred to, a_k. 214 00:15:14,820 --> 00:15:16,720 That's one question. 215 00:15:16,720 --> 00:15:20,580 And the second question will be how broad a class of 216 00:15:20,580 --> 00:15:24,070 signals, in fact, can be represented this way. 217 00:15:24,070 --> 00:15:27,340 And that's another question that we'll deal with 218 00:15:27,340 --> 00:15:28,590 separately. 219 00:15:30,120 --> 00:15:35,430 Now just focusing on this representation for a minute, 220 00:15:35,430 --> 00:15:43,230 this representation of the Fourier series, which I've 221 00:15:43,230 --> 00:15:52,000 repeated again here, is what's referred to as the complex 222 00:15:52,000 --> 00:15:55,910 exponential form of the Fourier series. 223 00:15:55,910 --> 00:15:59,740 And it's important to note, incidentally, that the 224 00:15:59,740 --> 00:16:05,740 summation involves frequencies, k omega_0, that 225 00:16:05,740 --> 00:16:07,800 are both positive and negative. 226 00:16:07,800 --> 00:16:12,420 In other words, this index k runs over limits that include 227 00:16:12,420 --> 00:16:16,700 both negative values and positive values. 228 00:16:16,700 --> 00:16:21,710 Now that complex exponential form is one representation for 229 00:16:21,710 --> 00:16:23,190 the Fourier series. 230 00:16:23,190 --> 00:16:27,080 And in fact, it's the one that we will be principally relying 231 00:16:27,080 --> 00:16:29,300 on in this course. 232 00:16:29,300 --> 00:16:32,090 There is another representation that perhaps 233 00:16:32,090 --> 00:16:37,030 you've come across previously and that in a variety of other 234 00:16:37,030 --> 00:16:40,520 contexts is typically used, which is called the 235 00:16:40,520 --> 00:16:44,010 trigonometric form for the Fourier series. 236 00:16:44,010 --> 00:16:47,240 Without really tracking through the algebra, 237 00:16:47,240 --> 00:16:50,770 essentially we can get to the trigonometric form from the 238 00:16:50,770 --> 00:16:56,890 complex exponential form by recognizing that if we express 239 00:16:56,890 --> 00:17:02,290 the complex coefficient in polar form or in rectangular 240 00:17:02,290 --> 00:17:09,150 form and expand the complex exponential term out in terms 241 00:17:09,150 --> 00:17:14,099 of cosine plus j sine, using just simply Euler's relation, 242 00:17:14,099 --> 00:17:21,220 then we will end up with a representation for the 243 00:17:21,220 --> 00:17:26,230 periodic signal, or a re-expression of the Fourier 244 00:17:26,230 --> 00:17:31,140 series expression that we had previously, either in the form 245 00:17:31,140 --> 00:17:35,660 that I indicate here, where now the periodic signal is 246 00:17:35,660 --> 00:17:41,090 expressed in terms of a summation of cosines with 247 00:17:41,090 --> 00:17:45,100 appropriate amplitude and phase. 248 00:17:45,100 --> 00:17:50,020 Or another equivalent trigonometric form involves 249 00:17:50,020 --> 00:17:54,450 rearranging this in terms of a combination 250 00:17:54,450 --> 00:17:57,910 of cosines and sines. 251 00:17:57,910 --> 00:18:02,160 Now in this representation, the frequencies of the 252 00:18:02,160 --> 00:18:08,790 sinusoids vary only over positive frequencies. 253 00:18:08,790 --> 00:18:12,860 And typically one thinks of periodic signals as having 254 00:18:12,860 --> 00:18:16,590 positive frequencies associated with them. 255 00:18:16,590 --> 00:18:23,910 However, let's look back and the complex exponential form 256 00:18:23,910 --> 00:18:26,600 for the Fourier series at the top of the board. 257 00:18:26,600 --> 00:18:30,110 And in that representation, when we use this 258 00:18:30,110 --> 00:18:35,180 representation, we'll find it convenient to refer to both 259 00:18:35,180 --> 00:18:38,700 positive frequencies and negative frequencies. 260 00:18:38,700 --> 00:18:42,800 So the representation that we will most typically be using 261 00:18:42,800 --> 00:18:45,310 is the complex exponential form. 262 00:18:45,310 --> 00:18:49,480 And in that form, what we'll find as we think of 263 00:18:49,480 --> 00:18:55,160 decomposing a periodic signal into its components at 264 00:18:55,160 --> 00:18:57,880 different frequencies, it will involve both positive 265 00:18:57,880 --> 00:18:59,610 frequencies and negative frequencies. 266 00:19:03,710 --> 00:19:09,850 Okay, now we have the Fourier series representation, as I've 267 00:19:09,850 --> 00:19:11,320 indicated here. 268 00:19:11,320 --> 00:19:16,050 Again, so far I've sidestepped the issue as to whether this 269 00:19:16,050 --> 00:19:18,040 in fact represents all the signals that 270 00:19:18,040 --> 00:19:20,340 we'd like to represent. 271 00:19:20,340 --> 00:19:24,730 Let's first address the issue of how we determine these 272 00:19:24,730 --> 00:19:28,350 coefficients a_k, assuming that, in fact, this 273 00:19:28,350 --> 00:19:30,450 representation is valid. 274 00:19:30,450 --> 00:19:32,930 And again, I'll kind of move through the 275 00:19:32,930 --> 00:19:36,490 algebra fairly quickly. 276 00:19:36,490 --> 00:19:40,460 The algebraic steps are ones that you can pursue more 277 00:19:40,460 --> 00:19:42,940 leisurely just to kind of verify them and 278 00:19:42,940 --> 00:19:44,660 step through them. 279 00:19:44,660 --> 00:19:48,460 But essentially, the algebra develops out of the 280 00:19:48,460 --> 00:19:53,580 recognition that if we integrate a complex 281 00:19:53,580 --> 00:19:58,140 exponential over one period, T_0-- 282 00:19:58,140 --> 00:20:02,610 and I mean by this notation that this is an integral over 283 00:20:02,610 --> 00:20:05,550 a period, where I don't particularly care where the 284 00:20:05,550 --> 00:20:09,340 period starts and where the period stops, in other words, 285 00:20:09,340 --> 00:20:12,040 exactly what period I picked-- 286 00:20:12,040 --> 00:20:17,140 that this integral is equal to T_0 when m is equal to 0. 287 00:20:17,140 --> 00:20:21,490 And it's equal to 0 if m is not equal to 0. 288 00:20:21,490 --> 00:20:26,250 That follows simply from the fact that if we substitute in 289 00:20:26,250 --> 00:20:29,640 for using or Euler's relation, so that we have the integral 290 00:20:29,640 --> 00:20:36,540 of a cosine plus j times the sine, if m is not equal to 0, 291 00:20:36,540 --> 00:20:41,470 then both of these integrals over a period are 0. 292 00:20:41,470 --> 00:20:45,320 The integral of a of a periodic of a sinusoid, cosine 293 00:20:45,320 --> 00:20:49,440 or sine, over an integral number of periods is 0. 294 00:20:49,440 --> 00:20:55,660 Whereas, if m is equal to 0, this integral will be equal to 295 00:20:55,660 --> 00:20:58,350 T_0, the integral of the cosine. 296 00:20:58,350 --> 00:21:01,840 And the integral of the sine is equal to 0. 297 00:21:04,400 --> 00:21:07,480 Okay, well, the next step in developing the expression for 298 00:21:07,480 --> 00:21:13,180 the coefficient a_k is to refer back to the Fourier 299 00:21:13,180 --> 00:21:18,170 series expression, which was that x(t) is equal to the sum 300 00:21:18,170 --> 00:21:19,420 of a_k e^(j k omega_0 t). 301 00:21:22,310 --> 00:21:28,370 If we multiply both sides of that by e^(-j n omega_0 t), 302 00:21:28,370 --> 00:21:34,135 and integrate that over a period-- 303 00:21:36,810 --> 00:21:41,340 both sides of the equation integrated over a period, so 304 00:21:41,340 --> 00:21:44,160 these two equations are equal-- 305 00:21:44,160 --> 00:21:47,680 and then in essence, interchange the summation and 306 00:21:47,680 --> 00:21:52,390 the integration so that this part of the expression comes 307 00:21:52,390 --> 00:21:57,030 outside the sum, and then we combine these two complex 308 00:21:57,030 --> 00:22:02,540 exponentials together, where we come out is the expression 309 00:22:02,540 --> 00:22:04,840 that I've indicated here. 310 00:22:04,840 --> 00:22:07,930 And then essentially what happens at this point, 311 00:22:07,930 --> 00:22:12,060 algebraically, is that we use the result that we just 312 00:22:12,060 --> 00:22:16,140 developed to evaluate this integral. 313 00:22:16,140 --> 00:22:19,800 So multiplying both sides of the Fourier series and then 314 00:22:19,800 --> 00:22:23,850 doing the integration leads us, after the appropriate 315 00:22:23,850 --> 00:22:27,670 manipulation, to the expression 316 00:22:27,670 --> 00:22:31,140 that I have up here. 317 00:22:31,140 --> 00:22:42,550 And this integral is equal to T_0 if k is equal to n, 318 00:22:42,550 --> 00:22:44,920 corresponding to 0 up here. 319 00:22:44,920 --> 00:22:49,020 And it's 0 otherwise, which is what we had demonstrated or 320 00:22:49,020 --> 00:22:50,840 argued previously. 321 00:22:50,840 --> 00:22:53,970 And the upshot of all that, then, is that the right hand 322 00:22:53,970 --> 00:22:58,620 side of this expression disappears except for the term 323 00:22:58,620 --> 00:23:01,020 when k is equal to n. 324 00:23:01,020 --> 00:23:07,400 And so finally, we have what I indicate here, taking T_0 and 325 00:23:07,400 --> 00:23:12,050 moving it over to the other side of the equation, that 326 00:23:12,050 --> 00:23:16,580 then tells us how we determine the Fourier series 327 00:23:16,580 --> 00:23:20,540 coefficients a_n, or a_k. 328 00:23:20,540 --> 00:23:25,810 So that, in effect, then is what we refer to as the 329 00:23:25,810 --> 00:23:30,040 analysis equation, the equation that begins with x(t) 330 00:23:30,040 --> 00:23:34,260 and tells us how to get the Fourier series coefficients. 331 00:23:34,260 --> 00:23:38,620 What I'll refer to as the Fourier series synthesis 332 00:23:38,620 --> 00:23:45,330 equation is the equation that tells us how to build x(t) out 333 00:23:45,330 --> 00:23:48,340 of these complex exponentials. 334 00:23:48,340 --> 00:23:51,680 So we have the synthesis equation, which is the one we 335 00:23:51,680 --> 00:23:53,070 started from. 336 00:23:53,070 --> 00:23:58,250 We have the analysis equation, which is the equation that we 337 00:23:58,250 --> 00:23:59,500 just developed. 338 00:24:02,210 --> 00:24:07,950 So we in effect have gone through the issue of, assuming 339 00:24:07,950 --> 00:24:10,580 that a Fourier series representation is in fact 340 00:24:10,580 --> 00:24:14,980 valid, how we get the coefficients. 341 00:24:14,980 --> 00:24:18,440 We'll want to address somewhat the question of how broad a 342 00:24:18,440 --> 00:24:21,680 class of signals are we talking about. 343 00:24:21,680 --> 00:24:26,090 And what's in fact amazing, and was Fourier's amazing 344 00:24:26,090 --> 00:24:29,250 insight, was that it's a very broad class of signals. 345 00:24:29,250 --> 00:24:34,690 But let's first look at just some examples in which we take 346 00:24:34,690 --> 00:24:38,170 a signal, assume that it has the Fourier series 347 00:24:38,170 --> 00:24:41,750 representation, and see what the Fourier series 348 00:24:41,750 --> 00:24:44,080 coefficients look like. 349 00:24:44,080 --> 00:24:50,710 So we'll begin with what I refer to as an antisymmetric 350 00:24:50,710 --> 00:24:53,110 periodic square wave-- 351 00:24:53,110 --> 00:24:56,010 periodic of course, because we're talking about periodic 352 00:24:56,010 --> 00:24:59,950 signals; square wave referring to its shape; and 353 00:24:59,950 --> 00:25:03,660 antisymmetric referring to the fact that it 354 00:25:03,660 --> 00:25:05,740 is an odd time function. 355 00:25:05,740 --> 00:25:07,440 In other words, it is 356 00:25:07,440 --> 00:25:12,030 antisymmetric about the origin. 357 00:25:12,030 --> 00:25:16,650 Now the expression for the Fourier series coefficients 358 00:25:16,650 --> 00:25:23,450 tells us that we determine a_k by taking 1 / T0 times the 359 00:25:23,450 --> 00:25:26,140 integral over a period of x(t), e^(-j k omega_0 t) dt. 360 00:25:30,490 --> 00:25:35,560 The most convenient thing in this case is to choose a 361 00:25:35,560 --> 00:25:41,550 period, which let's say goes from -T_0 / 2 to +T_0 / 2. 362 00:25:41,550 --> 00:25:44,370 So here x(t) is -1. 363 00:25:44,370 --> 00:25:47,110 Here x(t) is +1. 364 00:25:47,110 --> 00:25:52,060 And so I've expressed the Fourier series coefficients as 365 00:25:52,060 --> 00:25:55,950 this integral, that's from -T_0 / 2 to 0. 366 00:25:55,950 --> 00:26:02,010 And then added to that is the positive part of the cycle. 367 00:26:02,010 --> 00:26:05,550 And so we have these two integrals. 368 00:26:05,550 --> 00:26:10,150 Now, I don't want to track through the details of the 369 00:26:10,150 --> 00:26:11,490 algebra again. 370 00:26:11,490 --> 00:26:13,980 I guess I've decided that that's much more fun for you 371 00:26:13,980 --> 00:26:15,620 to do on your own. 372 00:26:15,620 --> 00:26:19,270 But the way it comes out when you go through it is the 373 00:26:19,270 --> 00:26:24,100 expression that I finally indicate after suggesting that 374 00:26:24,100 --> 00:26:26,860 there are few more steps to follow. 375 00:26:26,860 --> 00:26:31,970 And what develops is that those two integrals together, 376 00:26:31,970 --> 00:26:38,040 for k not equal to 0, come out to this expression. 377 00:26:38,040 --> 00:26:42,830 And that expression is not valid for k = 0. 378 00:26:42,830 --> 00:26:48,160 For k equal to 0, we can go back to the basic expression 379 00:26:48,160 --> 00:26:53,340 for the Fourier series, which is 1 / T_0, the integral over 380 00:26:53,340 --> 00:26:58,770 a period, x(t) e^(-j k omega_0 t) dt. 381 00:26:58,770 --> 00:27:04,170 For k = 0, of course this term just simply becomes 1. 382 00:27:04,170 --> 00:27:10,520 And so the zeroth coefficient is 1 / T_0 times the integral 383 00:27:10,520 --> 00:27:13,730 of x(t) over a period. 384 00:27:13,730 --> 00:27:18,460 Now, going back to the original function that we 385 00:27:18,460 --> 00:27:23,460 have, what we're saying then is that the zeroth coefficient 386 00:27:23,460 --> 00:27:29,780 is 1 / T_0 times the integral over one period, which is, in 387 00:27:29,780 --> 00:27:31,950 effect, the average value. 388 00:27:31,950 --> 00:27:35,060 And it's straightforward to verify for this case that 389 00:27:35,060 --> 00:27:37,210 average value is equal to 0. 390 00:27:40,050 --> 00:27:45,540 Now let's look at these Fourier series coefficients on 391 00:27:45,540 --> 00:27:47,840 a bar graph. 392 00:27:47,840 --> 00:27:50,610 And I've indicated that here. 393 00:27:50,610 --> 00:27:53,090 The expression for the Fourier series 394 00:27:53,090 --> 00:27:54,980 coefficients we just developed. 395 00:27:54,980 --> 00:27:58,110 And it involves-- 396 00:27:58,110 --> 00:28:02,270 it's 0 for k = 0, it's a factor of this 397 00:28:02,270 --> 00:28:04,990 form for k =/= 0. 398 00:28:04,990 --> 00:28:10,330 Plotted on a bar graph, then we see values like this, 0 at 399 00:28:10,330 --> 00:28:13,920 k = 0 and then associated values. 400 00:28:13,920 --> 00:28:16,820 And there are a number of things to focus on when you 401 00:28:16,820 --> 00:28:19,890 look at this. 402 00:28:19,890 --> 00:28:24,210 One is the fact that the Fourier series coefficients 403 00:28:24,210 --> 00:28:29,870 for this example are purely imaginary. 404 00:28:29,870 --> 00:28:33,160 A second is that the Fourier series coefficients for this 405 00:28:33,160 --> 00:28:36,200 example are an odd sequence. 406 00:28:36,200 --> 00:28:39,160 In other words, if you look at this sequence, what you see 407 00:28:39,160 --> 00:28:44,460 are these values for -k flipped over. 408 00:28:44,460 --> 00:28:48,660 So they're imaginary and odd. 409 00:28:48,660 --> 00:28:57,430 And what that results in, when you look at the trigonometric 410 00:28:57,430 --> 00:29:02,300 form of the Fourier series, is that in fact, those 411 00:29:02,300 --> 00:29:06,060 conditions, if you put the terms all together, lead you 412 00:29:06,060 --> 00:29:10,590 to a trigonometric representation, which involves 413 00:29:10,590 --> 00:29:13,020 only sine terms-- 414 00:29:13,020 --> 00:29:15,280 in other words, no cosine terms. 415 00:29:15,280 --> 00:29:18,470 Let me just draw your attention to the fact that, 416 00:29:18,470 --> 00:29:23,760 since a_k's are imaginary, this j takes care of that fact 417 00:29:23,760 --> 00:29:27,530 so that these coefficients are in fact real. 418 00:29:27,530 --> 00:29:33,350 So what this says is that for the antisymmetric square wave, 419 00:29:33,350 --> 00:29:36,845 in effect, the Fourier series is a sine series. 420 00:29:36,845 --> 00:29:40,910 The antisymmetric square wave is an odd function. 421 00:29:40,910 --> 00:29:43,450 Sinusoids are odd functions. 422 00:29:43,450 --> 00:29:45,590 And so this is all kind of reasonable, that we're 423 00:29:45,590 --> 00:29:50,760 building an odd function out of odd functions. 424 00:29:50,760 --> 00:29:56,320 As an additional aside, which I won't exploit or refer to 425 00:29:56,320 --> 00:29:59,740 any further here, but just draw your attention to, is 426 00:29:59,740 --> 00:30:04,530 that another aspect of this periodic square wave, the 427 00:30:04,530 --> 00:30:08,890 particular one that we chose, is that it is what's referred 428 00:30:08,890 --> 00:30:11,720 to as an odd harmonic function. 429 00:30:11,720 --> 00:30:17,480 In other words, for even values of k, the Fourier 430 00:30:17,480 --> 00:30:19,660 series coefficients are 0. 431 00:30:19,660 --> 00:30:22,734 They're are only non-zero for odd values of k. 432 00:30:25,340 --> 00:30:27,970 Now let's look at another example. 433 00:30:27,970 --> 00:30:31,430 Another example is the symmetric 434 00:30:31,430 --> 00:30:33,830 periodic square wave. 435 00:30:33,830 --> 00:30:40,240 And this is in fact example 4.5, worked out in more detail 436 00:30:40,240 --> 00:30:40,910 in the text. 437 00:30:40,910 --> 00:30:46,150 Then I won't bother to work this out in detail here, 438 00:30:46,150 --> 00:30:50,630 except to draw your attention to several points. 439 00:30:50,630 --> 00:30:54,330 Here is the symmetric periodic square wave. 440 00:30:54,330 --> 00:30:58,470 And what I mean by symmetric is that it's 441 00:30:58,470 --> 00:31:00,750 an even time function. 442 00:31:00,750 --> 00:31:06,430 Now just kind of extrapolating your intuition, what you 443 00:31:06,430 --> 00:31:10,120 should expect is that if it's only an even time function, it 444 00:31:10,120 --> 00:31:13,820 should be built up or buildable, if it's buildable 445 00:31:13,820 --> 00:31:18,110 at all, out of only even sinusoids. 446 00:31:18,110 --> 00:31:20,630 And in fact, that's the case. 447 00:31:20,630 --> 00:31:25,720 So if we look at the Fourier series coefficients for this, 448 00:31:25,720 --> 00:31:29,700 is zeroth coefficient, again, is the average value, which in 449 00:31:29,700 --> 00:31:31,350 this case, is 1/2. 450 00:31:31,350 --> 00:31:35,550 Here I've plotted pi times the Fourier series coefficients. 451 00:31:35,550 --> 00:31:39,590 So the zeroth value is pi / 2. 452 00:31:39,590 --> 00:31:45,280 The coefficients are now an even sequence, in other words, 453 00:31:45,280 --> 00:31:48,000 symmetric about k = 0. 454 00:31:48,000 --> 00:31:51,760 And the consequence of that is that when you take these 455 00:31:51,760 --> 00:31:57,080 coefficients and put together the equivalent trigonometric 456 00:31:57,080 --> 00:32:05,290 form, the trigonometric form involves only cosines and no 457 00:32:05,290 --> 00:32:08,040 sine terms. 458 00:32:08,040 --> 00:32:12,530 Now you'll see this in other examples, not that we'll do in 459 00:32:12,530 --> 00:32:15,090 the lecture, but examples in the text and in the video 460 00:32:15,090 --> 00:32:19,150 manual, if in fact the square wave was neither symmetric or 461 00:32:19,150 --> 00:32:22,590 antisymmetric, then the trigonometric form would 462 00:32:22,590 --> 00:32:25,480 involve both sines and cosines. 463 00:32:25,480 --> 00:32:30,660 And that is, of course, the more general case. 464 00:32:30,660 --> 00:32:35,250 Furthermore, in the two examples I've shown here, in 465 00:32:35,250 --> 00:32:40,310 both cases, the signal is odd harmonic. 466 00:32:40,310 --> 00:32:44,720 In other words, for even values of k, the coefficients 467 00:32:44,720 --> 00:32:46,710 are equal to 0. 468 00:32:46,710 --> 00:32:49,260 Although I won't justify that here, that's a consequence of 469 00:32:49,260 --> 00:32:54,570 the fact that this symmetry is exactly about half a period. 470 00:32:54,570 --> 00:32:58,570 And if you made the on time of the square wave different in 471 00:32:58,570 --> 00:33:00,980 relation to the off time, then that 472 00:33:00,980 --> 00:33:02,575 property would also disappear. 473 00:33:06,400 --> 00:33:13,240 Now what's kind of amazing, actually, is that if we take a 474 00:33:13,240 --> 00:33:17,500 square wave, like I have here or as I had in the 475 00:33:17,500 --> 00:33:21,940 antisymmetric case, the implication is that I can 476 00:33:21,940 --> 00:33:26,000 build that square wave by adding up 477 00:33:26,000 --> 00:33:30,110 enough sines or cosines. 478 00:33:30,110 --> 00:33:33,690 And it really seems kind of amazing because the square 479 00:33:33,690 --> 00:33:37,700 wave, after all, is a very discontinuous function. 480 00:33:37,700 --> 00:33:40,080 Sinusoids are very continuous. 481 00:33:40,080 --> 00:33:43,760 And it seems puzzling that in fact you can do that. 482 00:33:43,760 --> 00:33:48,690 Well let's look in a little bit of detail how the 483 00:33:48,690 --> 00:33:55,280 sinusoidal terms add up to build a square wave. 484 00:33:55,280 --> 00:34:01,750 And to do that, let's first define what I refer to as a 485 00:34:01,750 --> 00:34:03,480 partial sum. 486 00:34:03,480 --> 00:34:10,670 So here we have the expression which is the synthesis 487 00:34:10,670 --> 00:34:15,510 equation, telling us how x(t) could be represented as 488 00:34:15,510 --> 00:34:18,179 complex exponentials if it can be. 489 00:34:18,179 --> 00:34:21,280 And let's consider just a finite number of 490 00:34:21,280 --> 00:34:22,770 terms in this sum. 491 00:34:22,770 --> 00:34:27,630 And so x_n(t), of course, as n goes to infinity, approaches 492 00:34:27,630 --> 00:34:30,469 the infinite sum that we're talking about. 493 00:34:30,469 --> 00:34:32,889 And although we could do this more generally, let's not. 494 00:34:32,889 --> 00:34:36,760 Let's focus on the symmetric square wave case, where 495 00:34:36,760 --> 00:34:39,880 because of the symmetry of these coefficients, namely 496 00:34:39,880 --> 00:34:46,810 that a_k is equal to a_(-k), we can rewrite these terms as 497 00:34:46,810 --> 00:34:48,389 cosine terms. 498 00:34:48,389 --> 00:34:52,880 And so this partial sum can be expressed the way I'm 499 00:34:52,880 --> 00:34:55,900 expressing it here. 500 00:34:55,900 --> 00:34:58,990 Well let's look at a few of these terms. 501 00:34:58,990 --> 00:35:05,930 On the graph, I have, first of all, x(t), which is our 502 00:35:05,930 --> 00:35:09,330 original square wave. 503 00:35:09,330 --> 00:35:14,400 The term that I indicate here is the factor of 1/2, 504 00:35:14,400 --> 00:35:19,530 which is this term. 505 00:35:19,530 --> 00:35:22,080 With n = 1, that would correspond to adding one 506 00:35:22,080 --> 00:35:23,940 cosine term to that. 507 00:35:23,940 --> 00:35:28,420 And so the sum of those two would be this, which looks a 508 00:35:28,420 --> 00:35:32,680 little closer to the square wave, but certainly not very 509 00:35:32,680 --> 00:35:35,050 close to it at all. 510 00:35:35,050 --> 00:35:39,570 And in fact, it's somewhat hard to imagine without seeing 511 00:35:39,570 --> 00:35:43,380 the terms build up how in fact, by adding more and more 512 00:35:43,380 --> 00:35:47,470 terms, we can generate something that is essentially 513 00:35:47,470 --> 00:35:50,230 flat, except at the discontinuities. 514 00:35:50,230 --> 00:35:52,340 So let's look at this example. 515 00:35:52,340 --> 00:35:57,420 And what I'd like to show is this example, but now as we 516 00:35:57,420 --> 00:35:59,580 add many more terms to it. 517 00:35:59,580 --> 00:36:04,640 And let's see in fact how these individual terms add up 518 00:36:04,640 --> 00:36:07,150 to build up the square wave. 519 00:36:07,150 --> 00:36:11,190 So this is the square wave that we want to build up 520 00:36:11,190 --> 00:36:15,280 through the Fourier series as a sum of sinusoids. 521 00:36:15,280 --> 00:36:19,590 And the term for k = 0 will be a constant which represents 522 00:36:19,590 --> 00:36:21,550 the DC value of this. 523 00:36:21,550 --> 00:36:27,380 And so in the partial sum, as we develop it, the first thing 524 00:36:27,380 --> 00:36:31,450 that we'll show is just the term for k = 0. 525 00:36:31,450 --> 00:36:38,020 Now for k = 1, we would add to that one sinusoidal term. 526 00:36:38,020 --> 00:36:43,410 And so the sum of the term for k = 1 and k = 0 527 00:36:43,410 --> 00:36:44,800 is represented here. 528 00:36:48,350 --> 00:36:52,250 Now when we go to k = 2, because of the fact that this 529 00:36:52,250 --> 00:36:58,450 is an odd harmonic function, in fact, the term for k = 2 530 00:36:58,450 --> 00:37:03,230 will have zero amplitude and so this won't change. 531 00:37:03,230 --> 00:37:08,480 Here we show the Fourier series with k = 2 532 00:37:08,480 --> 00:37:10,390 and there's no change. 533 00:37:10,390 --> 00:37:14,110 And then we will go to k = 3. 534 00:37:14,110 --> 00:37:16,650 And we will be adding, then, one 535 00:37:16,650 --> 00:37:18,570 additional sinusoidal term. 536 00:37:18,570 --> 00:37:20,620 Here is k = 3. 537 00:37:20,620 --> 00:37:25,120 When we go to k = 4, again, there won't be any change. 538 00:37:25,120 --> 00:37:31,420 But there will be another term that's added at k = 5 here. 539 00:37:31,420 --> 00:37:35,560 Then k = 6, again, because it's odd harmonic, no change. 540 00:37:35,560 --> 00:37:41,350 And finally k = 7 is shown here. 541 00:37:41,350 --> 00:37:45,040 And we can begin to see that this starts to look somewhat 542 00:37:45,040 --> 00:37:47,160 like the square wave. 543 00:37:47,160 --> 00:37:52,500 But now to really emphasize how this builds up, let's more 544 00:37:52,500 --> 00:37:56,680 rapidly add many more terms, and in fact increase the 545 00:37:56,680 --> 00:38:00,790 number of terms up to about 100, recognizing that the 546 00:38:00,790 --> 00:38:05,560 shape will only change on the inclusion of the odd-numbered 547 00:38:05,560 --> 00:38:08,370 terms, not the even-numbered terms, because it's an odd 548 00:38:08,370 --> 00:38:10,970 harmonic function. 549 00:38:10,970 --> 00:38:16,620 So now we're increasing and we're building up toward k = 550 00:38:16,620 --> 00:38:18,530 100, 100 terms. 551 00:38:18,530 --> 00:38:24,970 And notice that it is the higher-order terms that tend 552 00:38:24,970 --> 00:38:30,340 to build up the discontinuity corresponding to the notion 553 00:38:30,340 --> 00:38:34,940 that the discontinuity, or sharp edges in a signal, in 554 00:38:34,940 --> 00:38:39,340 fact, are represented through the higher frequencies in the 555 00:38:39,340 --> 00:38:41,550 Fourier series. 556 00:38:41,550 --> 00:38:44,900 And here we have a not-too-unreasonable 557 00:38:44,900 --> 00:38:48,150 approximation to the original square wave. 558 00:38:48,150 --> 00:38:51,890 There is the artifact of the ripples at the discontinuity. 559 00:38:51,890 --> 00:38:56,710 And in fact, that rippling behavior at the discontinuity 560 00:38:56,710 --> 00:39:00,180 is referred to the Gibbs phenomenon. 561 00:39:00,180 --> 00:39:03,650 And it's an inherent part of the Fourier series 562 00:39:03,650 --> 00:39:06,380 representation at discontinuities. 563 00:39:06,380 --> 00:39:10,700 Now to emphasize this, let's decrease the number 564 00:39:10,700 --> 00:39:13,450 of terms back down. 565 00:39:13,450 --> 00:39:21,600 And we will carry this down to k = 1, again to emphasize how 566 00:39:21,600 --> 00:39:26,370 the sinusoids are building up the square wave. 567 00:39:26,370 --> 00:39:29,100 Here we are back at k = 1. 568 00:39:29,100 --> 00:39:33,490 And then finally, we will add back in the sinusoids 569 00:39:33,490 --> 00:39:34,640 that we took out. 570 00:39:34,640 --> 00:39:39,550 And let's build this back up to 100 terms, showing the 571 00:39:39,550 --> 00:39:43,380 approximation that we generated with 100 terms to 572 00:39:43,380 --> 00:39:44,630 the square wave. 573 00:40:00,900 --> 00:40:05,650 Okay, so what you saw is that, in fact, we got awfully close 574 00:40:05,650 --> 00:40:06,990 to a square wave. 575 00:40:06,990 --> 00:40:09,810 And the other thing that was kind of interesting about it 576 00:40:09,810 --> 00:40:14,610 as it went along was the fact that, with the low 577 00:40:14,610 --> 00:40:17,650 frequencies, what we were tending to build was the 578 00:40:17,650 --> 00:40:19,460 general behavior. 579 00:40:19,460 --> 00:40:26,490 And as the higher frequencies came in, that tended 580 00:40:26,490 --> 00:40:28,590 contribute to the discontinuity. 581 00:40:28,590 --> 00:40:34,030 And in fact, something that will stand out more and more 582 00:40:34,030 --> 00:40:37,150 as we go through our discussion of Fourier series 583 00:40:37,150 --> 00:40:41,430 and Fourier transforms, is that general statement, that 584 00:40:41,430 --> 00:40:48,750 it's the low-frequency terms that represent the broad time 585 00:40:48,750 --> 00:40:52,860 behavior, and it's the high-frequency terms that are 586 00:40:52,860 --> 00:40:54,940 used to build up the sharp 587 00:40:54,940 --> 00:40:56,660 transitions in the time domain. 588 00:41:00,060 --> 00:41:03,670 Now we need to get a little more precise about the 589 00:41:03,670 --> 00:41:10,210 question of how, in fact, the Fourier series, or when the 590 00:41:10,210 --> 00:41:13,730 Fourier series represents the functions that we're talking 591 00:41:13,730 --> 00:41:17,140 about and in what sense they represent them. 592 00:41:17,140 --> 00:41:26,840 And so if we look again at the synthesis equation, what we 593 00:41:26,840 --> 00:41:31,750 really want to ask is, if we add up enough of these terms, 594 00:41:31,750 --> 00:41:37,700 in what sense does this sum represent this time function? 595 00:41:37,700 --> 00:41:42,660 Well, let's again use the notion of our partial sum. 596 00:41:42,660 --> 00:41:47,000 So we have the partial sum down here. 597 00:41:47,000 --> 00:41:51,120 And we can think of the difference between this 598 00:41:51,120 --> 00:41:59,300 partial sum and the original time function as the error. 599 00:41:59,300 --> 00:42:02,210 And I've defined the error here. 600 00:42:02,210 --> 00:42:07,540 And what we would like to know is does this error decrease as 601 00:42:07,540 --> 00:42:10,150 we add more and more terms? 602 00:42:10,150 --> 00:42:13,660 And in fact, in what sense, if the error does decrease, in 603 00:42:13,660 --> 00:42:16,640 what sense does it decrease? 604 00:42:16,640 --> 00:42:20,420 Now in detail this is a fairly complicated 605 00:42:20,420 --> 00:42:21,810 and elaborate topic. 606 00:42:21,810 --> 00:42:23,930 I don't mean to make that sound frightening. 607 00:42:23,930 --> 00:42:27,130 It's mainly a statement that I don't want to 608 00:42:27,130 --> 00:42:29,770 explore in a lot of detail. 609 00:42:29,770 --> 00:42:34,030 But it relates to what it's referred to as the issue of 610 00:42:34,030 --> 00:42:37,010 convergence of the Fourier series. 611 00:42:37,010 --> 00:42:41,310 And the convergence of the Fourier series, the bottom 612 00:42:41,310 --> 00:42:45,220 line on it, the kind of end statement, can be made in 613 00:42:45,220 --> 00:42:47,710 several ways. 614 00:42:47,710 --> 00:42:50,090 One statement related to the convergence of the Fourier 615 00:42:50,090 --> 00:42:52,590 series is the following. 616 00:42:52,590 --> 00:42:58,590 If I have a time function, which is what is referred to 617 00:42:58,590 --> 00:43:01,400 as square integrable, namely its integral, over 618 00:43:01,400 --> 00:43:04,350 a period, is finite. 619 00:43:04,350 --> 00:43:10,060 Then what you can show, kind of amazingly, is that the 620 00:43:10,060 --> 00:43:14,440 energy in that error, in other words, the energy and the 621 00:43:14,440 --> 00:43:17,160 difference between the original function and the 622 00:43:17,160 --> 00:43:21,370 partial sum, the energy in that, goes to 0 623 00:43:21,370 --> 00:43:22,770 as n goes to infinity. 624 00:43:25,430 --> 00:43:30,120 A somewhat tighter condition is a condition referred to as 625 00:43:30,120 --> 00:43:37,590 it Dirichlet conditions, which says that if the time function 626 00:43:37,590 --> 00:43:42,170 is absolutely integrable, not square integrable, but 627 00:43:42,170 --> 00:43:44,170 absolutely integrable-- 628 00:43:44,170 --> 00:43:47,510 and I've kind of hedged the issue by just simply referring 629 00:43:47,510 --> 00:43:50,800 to x(t) as being well behaved-- 630 00:43:50,800 --> 00:43:56,170 then the statement is that the error in fact goes to 0 as n 631 00:43:56,170 --> 00:44:00,090 increases, except at the discontinuities. 632 00:44:00,090 --> 00:44:04,690 And what well behaved means in that statement is that, as 633 00:44:04,690 --> 00:44:07,580 discussed in the book, there are a finite number of maxima 634 00:44:07,580 --> 00:44:11,310 and minima in any period and a finite number of finite 635 00:44:11,310 --> 00:44:15,500 discontinuities, which is, essentially, always the case. 636 00:44:15,500 --> 00:44:19,890 So under square integrability what we have is the statement 637 00:44:19,890 --> 00:44:23,240 not that the partial sum goes to the right value at every 638 00:44:23,240 --> 00:44:28,250 point, but that the energy in the error goes to 0. 639 00:44:28,250 --> 00:44:30,790 Under the Dirichlet conditions, it says that, in 640 00:44:30,790 --> 00:44:35,800 fact, the signal goes to the right value at every time 641 00:44:35,800 --> 00:44:40,560 instant except at the discontinuities. 642 00:44:40,560 --> 00:44:47,770 So going back to the square wave, the square wave 643 00:44:47,770 --> 00:44:49,880 satisfies either one of those conditions. 644 00:44:49,880 --> 00:44:55,180 And so what the consequence is is that, with the square wave, 645 00:44:55,180 --> 00:44:59,680 if we looked at the error, then in fact what we would 646 00:44:59,680 --> 00:45:04,690 find is that the energy in the error would go to zero as we 647 00:45:04,690 --> 00:45:07,810 add more and more terms in the partial sum. 648 00:45:07,810 --> 00:45:11,890 And in fact, since the square wave also satisfies the 649 00:45:11,890 --> 00:45:16,770 Dirichlet conditions, the actual value of the error, the 650 00:45:16,770 --> 00:45:22,180 difference between the partial sum and the true value, will 651 00:45:22,180 --> 00:45:23,610 actually go to 0. 652 00:45:23,610 --> 00:45:28,330 That difference will go to 0 except at the discontinuities. 653 00:45:28,330 --> 00:45:34,860 And that, in fact, is kind of evident as we watch the 654 00:45:34,860 --> 00:45:38,170 function build up by adding up these terms. 655 00:45:38,170 --> 00:45:44,880 And so in fact, let's go back and see again the development 656 00:45:44,880 --> 00:45:47,690 of the partial sums in relation to the 657 00:45:47,690 --> 00:45:49,700 original time function. 658 00:45:49,700 --> 00:45:53,000 Let's observe, this time again, basically what we saw 659 00:45:53,000 --> 00:45:56,710 before, which is that it builds up to the right answer. 660 00:45:56,710 --> 00:46:00,200 And furthermore what we'll plot this time, also as a 661 00:46:00,200 --> 00:46:03,540 function of time, is the energy in the error. 662 00:46:03,540 --> 00:46:07,300 And what we'll see is that the energy in the error will be 663 00:46:07,300 --> 00:46:12,270 tending towards 0 as the number of terms increases. 664 00:46:12,270 --> 00:46:15,310 So once again, we have the square wave. 665 00:46:15,310 --> 00:46:21,010 And we want to again show the buildup of the Fourier series, 666 00:46:21,010 --> 00:46:25,510 this time showing also how the energy in the error decreases 667 00:46:25,510 --> 00:46:28,120 as we add more and more terms. 668 00:46:28,120 --> 00:46:32,930 Well, once again, we'll begin with k = 0, corresponding to 669 00:46:32,930 --> 00:46:34,510 the constant term. 670 00:46:34,510 --> 00:46:38,060 And what's shown on the bottom trace is the energy in the 671 00:46:38,060 --> 00:46:40,120 error between those two. 672 00:46:40,120 --> 00:46:46,870 And we'll then add the term k = 1 to the DC term and we'll 673 00:46:46,870 --> 00:46:52,150 see that the energy will decrease when we do that. 674 00:46:52,150 --> 00:46:56,160 Here we have then the sum of k = 0 and k = 1. 675 00:46:56,160 --> 00:47:01,470 Now with k = 2, the energy won't decrease any further 676 00:47:01,470 --> 00:47:03,685 because it's an odd harmonic function. 677 00:47:07,310 --> 00:47:10,210 That's what we've just added in. 678 00:47:10,210 --> 00:47:13,710 When we add in the term for k = 3, again, we'll see the 679 00:47:13,710 --> 00:47:16,430 energy in the error decrease as reflected 680 00:47:16,430 --> 00:47:17,680 in the bottom curve. 681 00:47:22,440 --> 00:47:25,620 So there we are at k = 3. 682 00:47:25,620 --> 00:47:30,100 When we go to k = 4, there again is no 683 00:47:30,100 --> 00:47:32,850 change in the error. 684 00:47:32,850 --> 00:47:35,203 At k = 5, again the error decreases. 685 00:47:39,890 --> 00:47:43,940 k = 6, there will be no change again. 686 00:47:43,940 --> 00:47:47,500 And at k = 7, the energy decreases. 687 00:47:47,500 --> 00:47:51,020 And now let's show how the error decreases by building up 688 00:47:51,020 --> 00:47:53,830 the number of terms much more rapidly. 689 00:47:53,830 --> 00:47:56,610 Already the error has gotten somewhat small on the scale in 690 00:47:56,610 --> 00:48:00,380 which we're showing it, so let's expand out the error 691 00:48:00,380 --> 00:48:04,090 scale, the vertical axis displaying the energy in the 692 00:48:04,090 --> 00:48:09,220 error, so that we could watch how the energy decreases as we 693 00:48:09,220 --> 00:48:11,090 add more and more terms. 694 00:48:11,090 --> 00:48:15,070 So here we have the vertical scale expanded. 695 00:48:15,070 --> 00:48:20,030 And now what we'll do is increase the number of terms 696 00:48:20,030 --> 00:48:23,490 in the Fourier series and watch the energy in the error 697 00:48:23,490 --> 00:48:28,750 decreasing, always decreasing, of course, on the inclusion of 698 00:48:28,750 --> 00:48:33,380 the odd-numbered terms and not on the inclusion of the 699 00:48:33,380 --> 00:48:36,380 even-numbered terms because of the fact that it's an odd 700 00:48:36,380 --> 00:48:38,030 harmonic function. 701 00:48:38,030 --> 00:48:41,230 Now the energy in the error asymptotically will approach 702 00:48:41,230 --> 00:48:46,580 0, although point by point, the Fourier series will never 703 00:48:46,580 --> 00:48:48,820 be equal to the square wave. 704 00:48:48,820 --> 00:48:53,370 It will, at every instant of time, except at the 705 00:48:53,370 --> 00:48:58,640 discontinuities, where there will always be some ripple 706 00:48:58,640 --> 00:49:01,370 corresponding to what's referred to as the Gibbs 707 00:49:01,370 --> 00:49:02,620 phenomenon. 708 00:49:06,190 --> 00:49:11,870 So what we've seen, then, is a quick look at the Fourier 709 00:49:11,870 --> 00:49:17,560 series representation of periodic signals. 710 00:49:17,560 --> 00:49:25,370 We more broadly want to have a more general representation of 711 00:49:25,370 --> 00:49:28,080 signals in terms of complex exponentials. 712 00:49:28,080 --> 00:49:32,250 And so our next step will be to move toward a 713 00:49:32,250 --> 00:49:37,440 representation of nonperiodic or aperiodic signals. 714 00:49:37,440 --> 00:49:40,950 Now the details of this, I leave for the next lecture. 715 00:49:40,950 --> 00:49:44,760 The only thought that I want to introduce at this point is 716 00:49:44,760 --> 00:49:49,420 the basic strategy which is somewhat amazing and kind of 717 00:49:49,420 --> 00:49:52,810 interesting to reflect on in the interim. 718 00:49:52,810 --> 00:50:00,060 The basic strategy with an aperiodic signal is to think 719 00:50:00,060 --> 00:50:05,410 of representing this aperiodic signal as a linear combination 720 00:50:05,410 --> 00:50:12,590 of complex exponentials by the simple trick of periodically 721 00:50:12,590 --> 00:50:18,540 replicating this signal, generating a periodic signal 722 00:50:18,540 --> 00:50:21,590 using a Fourier series representation for that 723 00:50:21,590 --> 00:50:27,100 periodic signal, and then simply letting the period go 724 00:50:27,100 --> 00:50:28,650 to infinity. 725 00:50:28,650 --> 00:50:31,620 As the period goes to infinity, that periodic signal 726 00:50:31,620 --> 00:50:35,520 becomes the original aperiodic one that we had before. 727 00:50:35,520 --> 00:50:39,470 And the Fourier series representation then becomes 728 00:50:39,470 --> 00:50:43,340 what we'll refer to the Fourier transform. 729 00:50:43,340 --> 00:50:49,060 So that's just a quick look at the basic idea and approach 730 00:50:49,060 --> 00:50:50,140 that we'll take. 731 00:50:50,140 --> 00:50:52,620 In the next lecture, we'll develop this a little more 732 00:50:52,620 --> 00:50:55,500 carefully and more fully, moving from the Fourier 733 00:50:55,500 --> 00:50:59,670 series, which we've used for periodic signals, to develop 734 00:50:59,670 --> 00:51:03,740 the Fourier transform, which will then be representation 735 00:51:03,740 --> 00:51:05,310 for aperiodic signals. 736 00:51:05,310 --> 00:51:06,560 Thank you.