Stochastic models, estimation, and control - Computer …
Linear estimation is the subject of the remaining chapters. Optimal filtering for cases in which a linear system model adequately describes the problem dynamics is studied in Chapter 5. With this background, Chapter 6 describes the design and performance …
Model, Control, And control, Estimation, Stochastic, Stochastic models
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