In this paper the evolutionary design of a neural network model for predicting nonlinear systems behavior is discussed. In particular, the Breeder Genetic Algorithms are considered to provide the optimal set of synaptic weights of the network. The feasibility of the neural model proposed is demonstrated by predicting the Mackey- Glass time series. A comparison with Genetic Algorithms and Back Propagation learning technique is performed.

Evolutionary Neural Networks for Nonlinear Dynamics Modeling

I De Falco;A Iazzetta;E Tarantino
1998

Abstract

In this paper the evolutionary design of a neural network model for predicting nonlinear systems behavior is discussed. In particular, the Breeder Genetic Algorithms are considered to provide the optimal set of synaptic weights of the network. The feasibility of the neural model proposed is demonstrated by predicting the Mackey- Glass time series. A comparison with Genetic Algorithms and Back Propagation learning technique is performed.
1998
3-540-65078-4
Time Series Prediction
Artificial Neural Networks
Genetic Algorithms
Breeder Genetic Algorithms
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/215681
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