Survey
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
Linear System Response to Random Inputs M. Sami Fadali Professor of Electrical Engineering University of Nevada Outline Linear System Characterize the stochastic output using: mean, mean square, autocorrelation, spectral density. Continuous-time systems: stationary, nonstationary. Discrete-time systems. • Response to deterministic input. • Response to stochastic input. 1 2 Response to Random Input Response to Deterministic Input Analysis: Given the initial conditions, input, and system dynamics, characterize the system response. Use time domain or s-domain methods to solve for the system response. Can completely determine the output. 3 Response to a given realization is useless. Characterize statistical properties of the response in terms of: • Moments. • Autocorrelation. • Power spectral density. 4 Analysis of Random Response 1. 2. Calculus for Random Signals Stationary steady-state analysis: Stationary input, stable LTI system After a “sufficiently long period” Stationary response, can solve in s-domain. Time domain analysis. Can consider unstable or time-varying systems. Nonstationary transient analysis: Dynamic systems: integration, differentiation. Integral and derivative are defined as limits. Random Signal: Limit may not exist for all realizations. Convergence to a limit for random signals (law, probability, qth mean, almost sure). Mean-square Calculus: using mean-square convergence. 5 6 Continuity Theorem (Shanmugan & Breipohl, Stark & Woods) Continuity Deterministic continuous function WSS is mean-square continuous if its is continuous at autocorrelation function . at Lim → Mean-square continuous random function Lim Lim → → Proof: at Can exchange limit and expectation for finite variance. 7 2 if 0 is continuous at Lim → 0 . 8 Interchange Limit & E{.} (Shanmugan & Breipohl, p. 162) Mean-square Derivative For a mean square continuous process with finite variance and any continuous function • Ordinary Derivative • For a finite variance stationary process. • M.S. Derivative: Limit exists in a meansquare sense. Lim Lim → → Lim → 9 10 Stationary Steady-state Analysis Expectation of Output Expectation of Output Assume Stable LTI system in steady-state. Stationary random input process. 0 → The integral is bounded if the linear system is BIBO stable. → General result for MIMO time-varying case. 11 Mean is scaled by the DC gain 12 Autocorrelation & Power Spectral Density of Output Stationary Steady-state Analysis Autocorrelation of Output ∗ Change of variable Change order of integration. Laplace transform: 13 14 Stationary Steady-state Analysis Stable LTI system with transfer function Example: Gauss-Markov Process Used frequently to model random signals For SISO case: X(s) F(s) X(s) F(s) 15 16 Example: SDF of Output Mean-square Value of Output Spectral factorization 17 System with White Noise Input Use integration table for 2-sided LT 18 Bandlimited White Noise Input Approximately the same as white noise. 19 20 Example Noise Equivalent BW Find the noise equivalent bandwidth for the filter Approximate physical filter with ideal filter BW of ideal filter =noise equivalent BW Gain 1 2 Ideal filter: BW . 21 Shaping Filter 22 Example: Gauss-Markov Use spectral factorization to obtain filter TF F(s) Unity White Noise G(s) X(s) Colored Noise Spectral Factorization gives the shaping filter Shaping Filter 23 24 Nonstationary Analysis Natural (Zero-input) Response Linear system: superposition. Total response = zero-input response + zerostate response Assume zero cross-correlation to add autocorrelations. Random initial conditions & random input. Zero-input response: response due to initial conditions. Response for state-space model L 25 26 Example: RC Circuit Steady-state Response RC circuit in the steady state. Capacitor charged by unity Gaussian white noise input voltage source. Close switch and discharge capacitor. Random initial condition but deterministic discharge. Unity Gaussian R R white noise voltage source Use Table 3.1 (Brown & Hwang, pp. 109) with C 1 2 27 4 28 Plot of Natural Response Close switch at t = 0 Unity Gaussian white noise voltage source R R C / / / 29 30 Forced (Zero-state) Response Forced (Zero-state) Response MIMO Time-Varying Case SISO Time-invariant Case Autocorrelation Obtain mean square with t1 = t2 31 32 Mean Square: SISO Time- invariant Case Example: RC Circuit ⁄ R Gaussian white noise voltage source f Mean Square ⁄ ⁄ C ⁄ ⁄ 33 34 Example: Autocorrelation Discrete-Time (DT) Analysis t2 v v=u+t t 2 1 t2t1 u Difference equations. z-transform solution. = time advance operator ( = delay) Similar analysis to continuous time but summations replace integrals. t1 X(s) F(s) 1/s 35 36 Z-Transform (2-sided) Response of DT System Convolution Summation Linear transform Z-transform Convolution Theorem 37 Even Function 38 Expectation of the Output Stationary 1 The mean is scaled by the DC gain 39 40 Discrete-time Processes Properties of R real, even: and real, even, cosine series Power spectrum: Discrete-time Fourier Transform (DTFT) of autocorrelation. 41 42 Autocorrelation of the Output Autocorrelation of the Output Substitute ∗ 43 44 Spectral Density Function Mean Square of Output ⇔ Same result using the convolution theorem. 45 Cross Correlation 46 Cross Correlation (2) 47 48 Cross Spectral Density Cross Spectral Density , 49 Expressions for SISO Case Autocorrelation: use 50 Example For the transfer function Power Spectral Density Identification: Determine the PSD of the output due to a unity white noise sequence. for unity white noise 51 52 X(z) F(z) Shaping Filter Conclusion G(z) Verify that is the transfer function of the shaping filter for colored noise with PSD . 53 References 1. 2. 3. 4. R. G. Brown & P. Y. C. Hwang, Introduction to Random Signals and Applied Kalman Filtering, J. Wiley, NY, 2012. A. Papoulis & S. U. Pillai, Probability, Random Variables and Stochastic Processes, McGraw Hill, NY, 2002. K. S. Shanmugan & A. M. Breipohl, Detection, Estimation & Data Analysis, J. Wiley, NY, 1988. T. Söderström, Discrete-time Stochastic Systems : Estimation and Control, Prentice Hall, NY, 1994. 55 Mean, autocorrelation, spectral density. Using white noise in analysis is acceptable. Model colored noise using white noise. Use to extend KF to cases where the noise is not white. Discrete case. 54