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A signal processing framework based on dynamic neural networks with application to problems in adaptation, filtering, and classification
124
Citations
23
References
1998
Year
EngineeringMachine LearningCoherent Neural NetSequential LearningDynamic Neural NetworksEvolving Intelligent SystemRecurrent Neural NetworkFilter (Signal Processing)Signal Processing FrameworkFiltering TechniqueData SciencePattern RecognitionSystems EngineeringTime-lagged Recurrent NetworksNonlinear Time SeriesAdaptive FilterSensor Signal ProcessingTemporal Pattern RecognitionComputer ScienceDeep LearningPredictive LearningSignal ProcessingMultistream Training
We present a coherent neural net based framework for solving various signal processing problems. It relies on the assertion that time-lagged recurrent networks possess the necessary representational capabilities to act as universal approximators of nonlinear dynamical systems. This applies to system identification, time-series prediction, nonlinear filtering, adaptive filtering, and temporal pattern classification. We address the development of models of nonlinear dynamical systems, in the form of time-lagged recurrent neural nets, which can be used without further training. We employ a weight update procedure based on the extended Kalman filter (EKF). Against the tendency for a net to forget earlier learning as it processes new examples, we develop a technique called multistream training. We demonstrate our framework by applying it to 4 problems. First, we show that a single time-lagged recurrent net can be trained to produce excellent one-time-step predictions for two different time series and also to be robust to severe errors in the input sequence. Second, we model stably a complex system containing significant process noise. The remaining two problems are drawn from real-world automotive applications. One involves input-output modeling of the dynamic behavior of a catalyst-sensor system which is exposed to an operating engine's exhaust stream, the other the real-time and continuous detection of engine misfire.
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