The least mean square methods include two typical parameter estimation algorithms, which are the projectionalgorithm and the stochastic gradient algorithm, the former is sensitive to noise and the latter is not capab...
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The least mean square methods include two typical parameter estimation algorithms, which are the projectionalgorithm and the stochastic gradient algorithm, the former is sensitive to noise and the latter is not capable of tracking the time-varying parameters. On the basis of these two typical algorithms, this study presents a generalised projection identification algorithm (or a finite data window stochastic gradient identificationalgorithm) for time-varying systems and studies its convergence by using the stochastic process theory. The analysis indicates that the generalisedprojectionalgorithm can track the time-varying parameters and requires less computational effort compared with the forgetting factor recursive least squares algorithm. The way of choosing the data window length is stated so that the minimum parameter estimation error upper bound can be obtained. The numerical examples are provided.
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