Line 7: Line 7:
 
<math>y(t) = \int_{-\infty}^\infty e^{-\tau}u(\tau)u(t - \tau - 1)d(\tau)</math>
 
<math>y(t) = \int_{-\infty}^\infty e^{-\tau}u(\tau)u(t - \tau - 1)d(\tau)</math>
  
<math>= \int_0^\infty e^{-\tau}u(t - \tau - 1)d(\tau)</math>
+
:<math>= \int_0^\infty e^{-\tau}u(t - \tau - 1)d(\tau)</math>
  
<math>= \int_0^{t-1} e^{-\tau}d(\tau)</math>  
+
:<math>= \int_0^{t-1} e^{-\tau}d(\tau)</math>  
  
<math>= 1 - e^{-(t - 1)}\,</math> for t > 1
+
:<math>= 1 - e^{-(t - 1)}\,</math> for t > 1
  
  

Revision as of 12:51, 30 June 2008

We are given the input to an LTI system along with the system's impulse response and told to find the output y(t). Since the input and impulse response are given, we simply use convolution on x(t) and h(t) to find the system's output.

$ y(t) = h(t) * x(t) = \int_{-\infty}^\infty h(\tau)x(t - \tau)d(\tau) $

Plugging in the given x(t) and h(t) values results in:

$ y(t) = \int_{-\infty}^\infty e^{-\tau}u(\tau)u(t - \tau - 1)d(\tau) $

$ = \int_0^\infty e^{-\tau}u(t - \tau - 1)d(\tau) $
$ = \int_0^{t-1} e^{-\tau}d(\tau) $
$ = 1 - e^{-(t - 1)}\, $ for t > 1


Since x(t) = 0 when t < 1:

$ y(t) = 0\, $ for t < 1

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Sees the importance of signal filtering in medical imaging

Dhruv Lamba, BSEE2010