Multiplant Nonlinear System Identification by Block-Structured Multikernel Neural Networks in Applications of Interference Cancellation
Svantje Voit, Gerald Enzner

TL;DR
This paper introduces a multikernel neural network approach for nonlinear system identification, effectively handling diverse measurement data by sharing and adapting weights for different plants, improving model accuracy.
Contribution
The paper proposes a novel multikernel neural network model with shared and plant-specific weights for better nonlinear system identification across diverse data sets.
Findings
Effective modeling of diverse nonlinear plant data
Shared weights enable generalization to unseen measurements
Plant-specific weights improve fit to particular data
Abstract
Problems of linear system identification have closed-form solutions, e.g., using least-squares or maximum-likelihood methods on input-output data. However, already the seemingly simplest problems of nonlinear system identification present more difficulties related to the optimisation of the furrowed error surface. Those cases include the Hammerstein plant with typically a bilinear model representation based on polynomial or Fourier expansion of its nonlinear element. Wiener plants induce actual nonlinearity in the parameters, which further complicates the optimisation. Neural network models and related optimisers are, however, well-prepared to represent and solve nonlinear problems. Unfortunately, the available data for nonlinear system identification might be too diverse to support accurate and consistent model representation. This diversity may refer to different impulse responses and…
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Taxonomy
TopicsBlind Source Separation Techniques · Advanced Adaptive Filtering Techniques · Control Systems and Identification
