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Adaptive Filtering Using Recurrent Neural NetworksA method for adaptive (or, optionally, nonadaptive) filtering has been developed for estimating the states of complex process systems (e.g., chemical plants, factories, or manufacturing processes at some level of abstraction) from time series of measurements of system inputs and outputs. The method is based partly on the fundamental principles of the Kalman filter and partly on the use of recurrent neural networks. The standard Kalman filter involves an assumption of linearity of the mathematical model used to describe a process system. The extended Kalman filter accommodates a nonlinear process model but still requires linearization about the state estimate. Both the standard and extended Kalman filters involve the often unrealistic assumption that process and measurement noise are zero-mean, Gaussian, and white. In contrast, the present method does not involve any assumptions of linearity of process models or of the nature of process noise; on the contrary, few (if any) assumptions are made about process models, noise models, or the parameters of such models. In this regard, the method can be characterized as one of nonlinear, nonparametric filtering. The method exploits the unique ability of neural networks to approximate nonlinear functions. In a given case, the process model is limited mainly by limitations of the approximation ability of the neural networks chosen for that case. Moreover, despite the lack of assumptions regarding process noise, the method yields minimum- variance filters. In that they do not require statistical models of noise, the neural- network-based state filters of this method are comparable to conventional nonlinear least-squares estimators.
Document ID
20110014902
Acquisition Source
Johnson Space Center
Document Type
Other - NASA Tech Brief
Authors
Parlos, Alexander G.
(Texas A&M Univ. College Station, TX, United States)
Menon, Sunil K.
(Texas A&M Univ. College Station, TX, United States)
Atiya, Amir F.
(California Inst. of Tech. Pasadena, CA, United States)
Date Acquired
August 25, 2013
Publication Date
May 1, 2005
Publication Information
Publication: NASA Tech Briefs, May 2005
Subject Category
Man/System Technology And Life Support
Report/Patent Number
MSC-22895
Distribution Limits
Public
Copyright
Public Use Permitted.
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