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
1 Homework 2 Fall 2016 AERE432 Due 9/16(F) Name ______________________________ Problem 1. (20pts) Often times, the noise that corrupts a given signal is assumed to be white noise. Consider a bandlimited white noise random process N (t ) that has mean N 0 and standard deviation N 0.1volts . Its bandwidth (BW) extends to 10 MHz. (a)(10pts) Plot its power spectral density (psd), including numbers related to the above given information. Moreover, explain how you arrived at those numbers. [Also, plot the 2-sided psd, and be sure to include units.] Solution: The noise power is N2 0.01volts2 . This must equal the area associated with S N ( f ) . Hence,. Figure 1.1 Plot of the noise psd. (b)(10pts) Recall that R N ( ) S N ( f ) e i 2 f df . Use this formula to compute an explicit expression for RN ( ) . Solution: (c)(5pts) Extra Credit Compute a plot of your expression for RN ( ) . [Include your code in the Appendix.] Then validate your plot by noting the value of RN (0) . Answer: Figure 1.2 Plot of RN ( ) . 2 RY ( ) Problem 2. (15pts) It is suggested that a certain real process, Y (t ) , has the autocorrelation function shown at the right. Is this possible? Justify your answer by calculating and then plotting the psd. Y2 1 1 Figure 2.1 Plot of the process autocorrelation. Solution: Figure 2.1 Plot of the process psd. Problem 3. A wss process, X (t ) , has RX ( ) X2 e | | . For Y (t ) aX (t ) b , obtain the expression for RY ( ) . Solution: 3 Problem 4. (30pts) When using an atomic force microscope, it is essential that the scope base be as stable as possible. This problem addresses two wss discrete-time random process models for the vibration, X (k ) , of the base. (a)(5pts) Assume that X (k ) is zero mean white noise with variance X2 9 . Compute (i) R X (m) , and from your expression compute (ii) S X () . [This is a typical model choice of researchers not familiar with random processes.] Solution: (i) (ii) (b)(10pts) Assume that X (k ) is zero mean non-white noise with variance X2 9 . Specifically, assume that: X (k ) 0.8 X (k 1) W (k ) (1) W2 where W (k ) is a white noise process. Find the numerical value for in the following manner: First, multiply (1) by X (k ) , and then take the expected value of this equation. Second, multiply (1) by X (k m) for m 1 , and then take the expected value of this equation. For m 1 you should end up with two equations in the unknowns RX (1) and W2 , from which you can easily arrive at a numerical value for W2 . Solution: (c)(10pts) Overlay plots a sample realization of {X (k )}100 k 1 for each model. Then comment on how they visually differ. [Note: Include your code in the Appendix. Also, choose the initial condition so that the process is, indeed, wss.] Solution: Figure 4.1 Plots of an n=1000 partial realization for X1 (model 1) and X2 (model 2). COMMENT: 4 Problem 5. (20pts) This problem addresses the data generated in Problem 4 in greater detail. Recall that the autocorrelation function for a wss process is defined as: R X (m) E ( X k X k m ) . The process is said to be ergodic if: 1 n n lim n X k X k m k 1 lim R X (m) n pr (5.1) R X ( m) where the equality in in relation probability. The quantity RX (m) is called the lagged-product estimator of R X (m) . (a)(15pts) Write your own Matlab code for computing R X (m ) . Then use it to obtain plots of RX (m)m20 for each data 20 set in Problem 4. Then overlay plots of R X ( m )20 m 20 . Solution: Figure 5.1 Plots of the lagged-product autocorrelations (solid lines) and true autocorrelations (dashed lines) for the models in Problem 3. (b)(5pts) Discuss how the plots give a more rigorous basis to your comment in Problem 4(c). Discussion: 5 Appendix