Publication | Open Access
Nonlinear dynamic system identification using Chebyshev functional link artificial neural networks
338
Citations
33
References
2002
Year
Nonlinear System IdentificationEvolving Neural NetworkEngineeringMachine LearningComputational NeuroscienceAdditive Gaussian NoiseMechanical SystemsComputer EngineeringSystems EngineeringNonlinear DynamicsComputational ComplexityComplex Dynamic SystemComputer ScienceMultilayer PerceptronsNeural Architecture SearchNonlinear ProcessBrain-like ComputingSystem Identification
A computationally efficient artificial neural network (ANN) for the purpose of dynamic nonlinear system identification is proposed. The major drawback of feedforward neural networks, such as multilayer perceptrons (MLPs) trained with the backpropagation (BP) algorithm, is that they require a large amount of computation for learning. We propose a single-layer functional-link ANN (FLANN) in which the need for a hidden layer is eliminated by expanding the input pattern by Chebyshev polynomials. The novelty of this network is that it requires much less computation than that of a MLP. We have shown its effectiveness in the problem of nonlinear dynamic system identification. In the presence of additive Gaussian noise, the performance of the proposed network is found to be similar or superior to that of a MLP. A performance comparison in terms of computational complexity has also been carried out.
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