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Energy and functions are key tools in signal analysis. They show how a signal's energy or power is spread across frequencies, helping us understand its composition and behavior.

These concepts are crucial in the Fourier Transform chapter. They link time-domain signals to their frequency-domain representations, allowing us to analyze and process signals more effectively in various applications.

Energy and Power Spectral Density Functions

Definitions and Applications

  • Define the function as the magnitude squared of the Fourier transform of a signal
    • Describes how the energy of a signal is distributed over different frequencies
    • Used for signals with finite energy (transient signals, pulses)
  • Define the power spectral density function as the Fourier transform of the autocorrelation function of a signal
    • Describes how the power of a signal is distributed over different frequencies
    • Used for signals with finite average power but infinite energy (, random processes)
  • Specify the units of energy spectral density as energy per unit frequency (joules/Hz) and power spectral density as power per unit frequency (watts/Hz)

Computation and Properties

  • Express the total energy of a signal as the integral of the energy spectral density function over all frequencies
    • Etotal=E(ω)dωE_{total} = \int_{-\infty}^{\infty} E(\omega) d\omega
  • Express the average power of a signal as the integral of the power spectral density function over all frequencies
    • Pavg=P(ω)dωP_{avg} = \int_{-\infty}^{\infty} P(\omega) d\omega
  • State that energy and power spectral density functions are always non-negative
    • E(ω)0E(\omega) \geq 0 and P(ω)0P(\omega) \geq 0 for all ω\omega
  • Relate the energy and power spectral density functions to the autocorrelation function of a signal via the Fourier transform
    • E(ω)=Rx(τ)ejωτdτE(\omega) = \int_{-\infty}^{\infty} R_x(\tau) e^{-j\omega\tau} d\tau and P(ω)=Rx(τ)ejωτdτP(\omega) = \int_{-\infty}^{\infty} R_x(\tau) e^{-j\omega\tau} d\tau, where Rx(τ)R_x(\tau) is the autocorrelation function of x(t)x(t)

Fourier Transform and Spectral Density

Relationship between Fourier Transform and Spectral Density

  • Express the energy spectral density function E(ω)E(\omega) in terms of the Fourier transform X(ω)X(\omega) of a signal x(t)x(t)
    • E(ω)=X(ω)2E(\omega) = |X(\omega)|^2
  • Express the power spectral density function P(ω)P(\omega) in terms of the Fourier transform X(ω)X(\omega) of a signal x(t)x(t)
    • P(ω)=limT1TXT(ω)2P(\omega) = \lim_{T\to\infty} \frac{1}{T} |X_T(\omega)|^2, where XT(ω)X_T(\omega) is the Fourier transform of the truncated signal x(t)x(t) over the interval [T/2,T/2][-T/2, T/2]
  • State that for a real-valued signal x(t)x(t), the energy and power spectral density functions are even functions
    • E(ω)=E(ω)E(\omega) = E(-\omega) and P(ω)=P(ω)P(\omega) = P(-\omega)

Parseval's Theorem

  • Relate the energy of a signal in the time domain to its energy spectral density in the frequency domain using
    • x(t)2dt=12πE(ω)dω\int_{-\infty}^{\infty} |x(t)|^2 dt = \frac{1}{2\pi} \int_{-\infty}^{\infty} E(\omega) d\omega
  • Explain that Parseval's theorem allows for the computation of signal energy in either the time or frequency domain
    • Useful for analyzing the energy distribution of a signal across different frequencies

Signal Energy and Power Calculation

Continuous-Time Signals

  • Calculate the total energy of a continuous-time signal by integrating the energy spectral density function over all frequencies
    • Etotal=E(ω)dωE_{total} = \int_{-\infty}^{\infty} E(\omega) d\omega
  • Calculate the average power of a continuous-time signal by integrating the power spectral density function over all frequencies
    • Pavg=P(ω)dωP_{avg} = \int_{-\infty}^{\infty} P(\omega) d\omega

Discrete-Time Signals

  • Express the energy spectral density E(ω)E(\omega) for a discrete-time signal x[n]x[n] in terms of its discrete-time Fourier transform X(ejω)X(e^{j\omega})
    • E(ω)=X(ejω)2E(\omega) = |X(e^{j\omega})|^2
  • Calculate the total energy of a discrete-time signal using the energy spectral density function
    • Etotal=12πππE(ω)dωE_{total} = \frac{1}{2\pi} \int_{-\pi}^{\pi} E(\omega) d\omega
  • Express the power spectral density P(ω)P(\omega) for a discrete-time signal x[n]x[n] in terms of its discrete-time Fourier transform XN(ejω)X_N(e^{j\omega}) of the truncated signal over the interval [0,N1][0, N-1]
    • P(ω)=limN1NXN(ejω)2P(\omega) = \lim_{N\to\infty} \frac{1}{N} |X_N(e^{j\omega})|^2
  • Calculate the average power of a discrete-time signal using the power spectral density function
    • Pavg=12πππP(ω)dωP_{avg} = \frac{1}{2\pi} \int_{-\pi}^{\pi} P(\omega) d\omega

Properties of Spectral Density Functions

Non-Negativity and Bandwidth

  • State that energy and power spectral density functions are always non-negative
    • E(ω)0E(\omega) \geq 0 and P(ω)0P(\omega) \geq 0 for all ω\omega
    • Follows from the definition of spectral density functions as the magnitude squared of the Fourier transform or the Fourier transform of the autocorrelation function
  • Determine the bandwidth of a signal from its energy or power spectral density function
    • Bandwidth is the range of frequencies over which the spectral density is significant (above a certain threshold)
    • Signals with wider bandwidth have more significant frequency components and require more resources (sampling rate, storage, transmission) to process

Applications in Signal Analysis and Processing

  • Use the energy and power spectral density functions to analyze the frequency content of a signal
    • Identify dominant frequency components, harmonics, and noise
    • Determine the required sampling rate for discrete-time processing based on the signal bandwidth
  • Apply spectral density functions in signal filtering and compression
    • Design filters (lowpass, highpass, bandpass) based on the desired frequency response
    • Compress signals by discarding or quantizing frequency components with low spectral density
  • Utilize spectral density functions for system identification and characterization
    • Estimate the transfer function of a linear time-invariant system from its input and output spectral densities
    • Analyze the effects of noise and distortion on signal quality using spectral density techniques
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© 2024 Fiveable Inc. All rights reserved.
AP® and SAT® are trademarks registered by the College Board, which is not affiliated with, and does not endorse this website.

© 2024 Fiveable Inc. All rights reserved.
AP® and SAT® are trademarks registered by the College Board, which is not affiliated with, and does not endorse this website.
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