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Signals and Systems Lecture 3
DR TANIA STATHAKI READER (ASSOCIATE PROFFESOR) IN SIGNAL PROCESSING IMPERIAL COLLEGE LONDON
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Zero-input response basics
Remember that for a linear system: Total response = zero-input response + zero-state response In this lecture, we will focus on a linear systemโs zero-input response, ๐ฆ 0 (๐ก), which is the solution of the systemโs equation when input ๐ฅ ๐ก =0. We will focus on systems which are described by: ( ๐ท ๐ + ๐ 1 ๐ท ๐โ1 +โฆ+ ๐ ๐โ1 ๐ท+ ๐ ๐ )๐ฆ ๐ก = (๐ ๐โ๐ ๐ท ๐ + ๐ ๐โ๐+1 ๐ท ๐โ1 +โฆ+ ๐ ๐โ1 ๐ท+ ๐ ๐ )๐ฅ ๐ก Alternatively ๐ ๐ท ๐ฆ ๐ก =๐ ๐ท ๐ฅ(๐ก) Therefore if ๐ฅ ๐ก =0 we obtain: ๐ ๐ท ๐ฆ 0 (๐ก)=0โ ( ๐ท ๐ + ๐ 1 ๐ท ๐โ1 +โฆ+ ๐ ๐โ1 ๐ท+ ๐ ๐ ) ๐ฆ 0 (๐ก)=0
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General solution to the zero-input response equation
From Differential Equations Theory, it is known that we may solve the equation ( ๐ท ๐ + ๐ 1 ๐ท ๐โ1 +โฆ+ ๐ ๐โ1 ๐ท+ ๐ ๐ ) ๐ฆ 0 (๐ก)=0 (3.1) by letting ๐ฆ 0 ๐ก =๐ ๐ ๐๐ก , where ๐ and ๐ are constant parameters. In that case we have: ๐ท ๐ฆ 0 ๐ก = ๐ ๐ฆ 0 (๐ก) ๐๐ก =๐๐ ๐ ๐๐ก ๐ท 2 ๐ฆ 0 ๐ก = ๐ 2 ๐ฆ 0 (๐ก) ๐ ๐ก 2 =๐ ๐ 2 ๐ ๐๐ก โฎ ๐ท ๐ ๐ฆ 0 ๐ก = ๐ ๐ ๐ฆ 0 (๐ก) ๐ ๐ก ๐ =๐ ๐ ๐ ๐ ๐๐ก Substitute into (3.1)
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General solution to the zero-input response equation cont.
We get: ( ๐ ๐ + ๐ 1 ๐ ๐โ1 +โฆ+ ๐ ๐โ1 ๐+ ๐ ๐ ) ๐ ๐๐ก =0โ ( ๐ ๐ + ๐ 1 ๐ ๐โ1 +โฆ+ ๐ ๐โ1 ๐+ ๐ ๐ )=0 This is identical to the polynomial ๐(๐ท) with ๐ replacing ๐ท, i.e., ๐ ๐ =0 We can now express ๐ ๐ =0 in factorized form: ๐ ๐ = ๐โ ๐ 1 ๐โ ๐ 2 โฆ ๐โ ๐ ๐ =0 (3.2) Therefore, there are ๐ solutions for ๐, which we can denote with ๐ 1 , ๐ 2 , โฆ, ๐ ๐ . At first we assume that all ๐ ๐ are distinct.
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General solution to the zero-input response equation cont.
Therefore, the equation ( ๐ท ๐ + ๐ 1 ๐ท ๐โ1 +โฆ+ ๐ ๐โ1 ๐ท+ ๐ ๐ ) ๐ฆ 0 (๐ก)=0 has ๐ possible solutions ๐ 1 ๐ ๐ 1 ๐ก , ๐ 2 ๐ ๐ 2 ๐ก , โฆ, , ๐ ๐ ๐ ๐ ๐ ๐ก where ๐ 1 , ๐ 2 , โฆ, , ๐ ๐ are arbitrary constants. It can be shown that the general solution is the sum of all these terms: ๐ฆ 0 ๐ก = ๐ 1 ๐ ๐ 1 ๐ก + ๐ 2 ๐ ๐ 2 ๐ก +โฆ+ ๐ ๐ ๐ ๐ ๐ ๐ก In order to determine the ๐ arbitrary constants, we need to have ๐ constraints. These are called initial or boundary or auxiliary conditions.
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Characteristic polynomial
The polynomial ๐ ๐ is called the characteristic polynomial of the system. ๐ ๐ =0 is the characteristic equation of the system. The roots of the characteristic equation ๐ ๐ =0 , i.e., ๐ 1 , ๐ 2 , โฆ, ๐ ๐ , are extremely important. They are called by different names: Characteristic values Eigenvalues Natural frequencies The exponentials ๐ ๐ ๐ ๐ก , ๐=1,2,โฆ,๐ are the characteristic modes (also known as natural modes) of the system. Characteristic modes determine the systemโs behaviour.
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Example 1 For zero-input response, we want to find the solution to:
Find ๐ฆ 0 (๐ก), the zero-input component of the response, for a LTI system described by the following differential equation: ๐ท 2 +3๐ท+2 ๐ฆ ๐ก =๐ท๐ฅ(๐ก) when the initial conditions are: ๐ฆ 0 0 =0, ๐ฆ =โ5 For zero-input response, we want to find the solution to: ๐ท 2 +3๐ท+2 ๐ฆ 0 (๐ก)=0 The characteristic equation for this system is: ๐ 2 +3๐+2 = ๐+1 ๐+2 =0 Therefore, the characteristic roots are ๐ 1 =โ1 and ๐ 2 =โ2. The zero-input response is ๐ฆ 0 ๐ก = ๐ 1 ๐ โ๐ก + ๐ 2 ๐ โ2๐ก
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Example 1 To find the two unknowns ๐ 1 and ๐ 2 , we use the initial conditions: ๐ฆ 0 0 =0, ๐ฆ =โ5 This yields two simultaneous equations: 0= ๐ 1 + ๐ 2 โ5= โ๐ 1 โ2 ๐ 2 Solving the system gives: ๐ 1 =โ5 ๐ 2 =5 Therefore, the zero-input response of ๐ฆ(๐ก) is given by: ๐ฆ 0 ๐ก =โ5 ๐ โ๐ก +5 ๐ โ2๐ก
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Repeated characteristic roots
The discussion so far assumes that all characteristic roots are distinct. If there are repeated roots, the form of the solution is modified. For the case of a second order polynomial with two equal roots, the possible form of the differential equation could be ๐ทโ๐ 2 ๐ฆ 0 ๐ก =0. In that case its solution is given by: ๐ฆ 0 ๐ก =( ๐ 1 + ๐ 2 ๐ก) ๐ ๐๐ก In general, the characteristic modes for the differential equation ๐ทโ๐ ๐ ๐ฆ 0 ๐ก =0 (a form which reflects the scenario for ๐ repeated roots) are ๐ ๐๐ก , ๐ก๐ ๐๐ก , ๐ก 2 ๐ ๐๐ก ,โฆ, ๐ก ๐โ1 ๐ ๐๐ก The solution for ๐ฆ 0 ๐ก is ๐ฆ 0 ๐ก =( ๐ 1 + ๐ 2 ๐ก+โฆ+ ๐ ๐ ๐ก ๐โ1 )๐ ๐๐ก
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Example 2 Find ๐ฆ 0 (๐ก), the zero-input component of the response, for a LTI system described by the following differential equation: ๐ท 2 +6๐ท+9 ๐ฆ ๐ก =(3๐ท+5)๐ฅ(๐ก) when the initial conditions are ๐ฆ 0 0 =3, ๐ฆ =โ7. The characteristic polynomial for this system is: ๐ 2 +6๐+9 = ๐+3 2 The repeated roots are therefore ๐ 1,2 =โ3. The zero-input response is ๐ฆ 0 ๐ก =( ๐ 1 + ๐ 2 ๐ก) ๐ โ3๐ก . Now, the constants ๐ 1 and ๐ 2 are determined using the initial conditions and this gives ๐ 1 =3 and ๐ 2 =2. Therefore, ๐ฆ 0 ๐ก =(3+2๐ก )๐ โ3๐ก , ๐กโฅ0
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Complex characteristic roots
Solutions of the characteristic equation may result in complex roots. For real (i.e. physically realizable) systems - in other words, for systems where the coefficients of the characteristic polynomial ๐ ๐ are real - all complex roots must occur in conjugate pairs. In other words, if ๐ผ+๐๐ฝ is a root, then there must exist the root ๐ผโ๐๐ฝ. The zero-input response corresponding to this pair of conjugate roots is: ๐ฆ 0 ๐ก = ๐ 1 ๐ (๐ผ+๐๐ฝ)๐ก + ๐ 2 ๐ (๐ผโ๐๐ฝ)๐ก For a real system, the response ๐ฆ 0 (๐ก) must also be real. This is possible only if ๐ 1 and ๐ 2 are conjugates too. Let ๐ 1 = ๐ 2 ๐ ๐๐ and ๐ 2 = ๐ 2 ๐ โ๐๐ . This gives ๐ฆ 0 ๐ก = ๐ 2 ๐ ๐๐ ๐ (๐ผ+๐๐ฝ)๐ก + ๐ 2 ๐ โ๐๐ ๐ (๐ผโ๐๐ฝ)๐ก = ๐ 2 ๐ ๐ผ๐ก [๐ ๐(๐ฝ๐ก+๐) + ๐ โ๐(๐ฝ๐ก+๐) ]=๐ ๐ ๐ผ๐ก cosโก(๐ฝ๐ก+๐)
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Example 3 Find ๐ฆ 0 (๐ก), the zero-input component of the response, for a LTI system described by the following differential equation: ๐ท 2 +4๐ท+40 ๐ฆ ๐ก =(๐ท+2)๐ฅ(๐ก) when the initial conditions are ๐ฆ 0 0 =2, ๐ฆ =16.78. The characteristic polynomial for this system is: ๐ 2 +4๐+40 = ๐ 2 +4๐+4 +36= ๐ = ๐+2โ๐6 ๐+2+๐6 The complex roots are therefore ๐ 1 =โ2+๐6 and ๐ 2 =โ2โ๐6. The zero-input response in real form is (๐ผ=โ2, ๐ฝ=6) ๐ฆ 0 ๐ก =๐ ๐ โ2๐ก cosโก(6๐ก+๐)
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Example 3 cont. To find the constants ๐ and ๐, we use the initial conditions ๐ฆ 0 0 =2, ๐ฆ =16.78 Differentiating equation ๐ฆ 0 ๐ก =๐ ๐ โ2๐ก cosโก(6๐ก+๐) gives: ๐ฆ 0 ๐ก =โ2๐ ๐ โ2๐ก cos 6๐ก+๐ โ6๐ ๐ โ2๐ก sinโก(6๐ก+๐) Using the initial conditions, we obtain: 2=๐ cos ๐ 16.78=โ2๐ cos ๐ โ6๐ sin ๐ This reduces to: ๐ cos ๐=2 ๐ sin ๐=โ3.463 Hence, ๐ 2 = (โ3.463) 2 =16โ๐=4 ๐= tan โ1 โ =โ ๐ 3 Finally, the solution is ๐ฆ 0 ๐ก =4 ๐ โ2๐ก cosโก(6๐กโ ๐ 3 ).
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Comments on auxiliary conditions
Why do we need auxiliary (or boundary) conditions in order to solve for the zero-input response? Differential operation is not invertible because some information is lost. Therefore, in order to get ๐ฆ(๐ก) from ๐๐ฆ(๐ก)/๐๐ก, one extra piece of information such as ๐ฆ(0) is needed. Similarly, if we need to determine ๐ฆ(๐ก) from ๐ 2 ๐ฆ(๐ก) ๐ ๐ก 2 we need 2 pieces of information. In general, to determine ๐ฆ(๐ก) uniquely from its ๐th derivative, we need ๐ additional constraints. These constraints are called auxiliary conditions. When these conditions are given at ๐ก=0, they are called initial conditions.
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The meaning of ๐ + and ๐ โ In much of our analysis, the input is assumed to start at ๐ก=0. There are subtle differences between time ๐ก=0 exactly, time just before ๐ก=0 denoted by ๐ก=0 โ and time just after ๐ก=0 denoted by ๐ก=0 + . At ๐ก=0 โ the total response ๐ฆ(๐ก) consists solely of the zero-input component ๐ฆ 0 ๐ก because the input has not started yet. Thus, ๐ฆ 0 โ =๐ฆ โ , ๐ฆ 0 โ = ๐ฆ โ and so on. Applying an input ๐ฅ(๐ก) at ๐ก=0, while not affecting ๐ฆ 0 ๐ก , i.e., ๐ฆ โ =y , ๐ฆ โ = ๐ฆ etc., in general WILL affect ๐ฆ ๐ก . ๐ก=0 + ๐ก=0 โ time ๐ก=0
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Insights into zero-input behaviour
Assume (a mechanical) system is initially at rest. If we disturb a system momentarily and then remove the disturbance so that the system goes back to zero-input, the system will not come back to rest instantaneously. In general, it will go back to rest over a period of time, and only through some special type of motion that is characteristic of the system. Such response must be sustained without any external source (because the disturbance has been removed). In fact the system uses a linear combination of the characteristic modes to come back to the rest position while satisfying some boundary (or initial) conditions.
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Example 4 This example demonstrates that any combination of characteristic modes can be sustained by the system with no external input. Consider this RL circuit. The loop equation is ๐ท+2 ๐ฆ ๐ก =๐ฅ ๐ก . It has a single characteristic root ๐=โ2 and the characteristic mode is ๐ โ2๐ก . Therefore, the loop current equation is ๐ฆ ๐ก =๐ ๐ โ2๐ก . Now, let us compute the input ๐ฅ(๐ก) required to sustain this loop current: ๐ฅ ๐ก =๐ฟ ๐๐ฆ(๐ก) ๐๐ก +๐
๐ฆ ๐ก = ๐(๐ ๐ โ2๐ก ) ๐๐ก +2 ๐ ๐ โ2๐ก =โ2 ๐ ๐ โ2๐ก + 2 ๐ ๐ โ2๐ก =0 The loop current is sustained by the RL circuit on its own without any external input voltage.
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Example 5 Consider now an ๐ฟ๐ถ circuit with ๐ฟ=1๐ป, ๐ถ=1๐น.
The current across the loop is ๐ฆ ๐ก . Therefore, ๐ฃ ๐ฟ ๐ก + ๐ฃ ๐ถ ๐ก =๐ฟ ๐๐ฆ(๐ก) ๐๐ก + 1 ๐ถ 0 ๐ก ๐ฆ ๐ ๐๐ =๐ฅ(๐ก)โ ๐ฟ ๐ 2 ๐ฆ(๐ก) ๐ ๐ก ๐ถ ๐ฆ ๐ก = ๐๐ฅ(๐ก) ๐๐ก The loop equation is ๐ท 2 +1 ๐ฆ ๐ก =๐ท๐ฅ(๐ก). It has two complex conjugate characteristic roots ๐=ยฑ๐, and the characteristic modes are ๐ ๐๐ก , ๐ โ๐๐ก . Therefore, the loop current equation is ๐ฆ ๐ก =๐cos(๐ก+๐). Now, let us compute the input ๐ฅ(๐ก) required to sustain this loop current: ๐๐ฅ(๐ก) ๐๐ก =๐ฟ ๐ 2 ๐ฆ(๐ก) ๐ ๐ก ๐ถ ๐ฆ ๐ก = ๐ 2 (๐cos(๐ก+๐)) ๐ ๐ก 2 +๐cos ๐ก+๐ =0 As previously, the loop current is indefinitely sustained by the LC circuit on its own without any external input voltage.
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The resonance behaviour
Any signal consisting of a systemโs characteristic mode is sustained by the system on its own. In other words, the system offers NO obstacle to such signals. It is like asking an alcoholic to be a whisky taster. Driving a system with an input of the form of the characteristic mode will cause resonance behaviour.
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Relating to other courses
Zero-input response is very important to understanding control systems. However, the 2nd year Control course will approach the subject from a different point of view. You should also have come across some of these concepts last year in Circuit Analysis course, but not from a โblack boxโ system point of view. Ideas in this lecture is essential for deep understanding of the next two lectures on impulse response and on convolution, both you have touched on in your first year course on Signals and Communications.
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