Probability, Random Variables, and Random Signal Principles
The fourth edition of "Probability, Random Variables and Random Signal Principles" continues the success of previous editions with its concise introduction to probability theory for the junior-senior level course in electrical engineering. The book offers a careful, logical organization which stresses fundamentals and includes almost 900 student exercises and abundant practical applications for engineers to understand probability concepts.The most important new material in this edition relates to discrete-time random processes and sequences, and other topics in the general area of digital signal processing, such as the DT linear system.
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Venn Diagram Equality and Difference Union
Joint Probability Conditional Probability Total
Combined Sample Space Events on the Combined Space
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amplitude Appendix applied assume autocorrelation function available power gain average noise average power band-limited bandpass called CHAPTER characteristic function covariance cross-correlation cross-correlation function cross-power defined denoted discrete random variable discrete-time DT system effective noise temperature envelope detector event example expected value Find the probability Fourier transform frequency Fx(x gaussian random variables given H(co impulse response independent random variables integral joint density function jointly wide-sense stationary Linear Systems matched filter mean value mean-squared Multiple Random Variables noise figure noise power noise temperature Peebles power density spectrum power spectrum Problem properties random process X(t Random Signal Principles real constants resistor Rxx(r Rxy(t sample function sample space sequence shown in Figure signal x(t spectral spot noise figure stationary process statistically independent statistically independent random Systems with Random theorem transfer function variance voltage waveform white noise wide-sense stationary zero zero-mean