Fuzzy Echo State Neural Network with Differential Evolution Framework for Time Series Forecasting

D. Nachimuthu, S. Govindaraj, Anand Tirupur Shanmuganathan
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引用次数: 1

Abstract

In this paper, differential evolution (DE) is used to find optimal weights for echo state neural network model and also to optimize the number of rules of the modeled fuzzy system that presents the input to the echo state neural network (ESNN) model. ESNN designed in this work possess a recurrent neuronal infra-structure called as reservoir. This work aims to develop a good reservoir for the ESNN model employing the coherent features and the ability of the differential evolution algorithm and fuzzy rule base system. DE aims to pre-train the fixed weight values of the network with its effective exploration and exploitation capability and fuzzy rule base system (FRBS) formulates a set of rules, which provides inferences for the inputs presented to the echo state network model. The performance of the developed optimized network is evaluated based on the error metrics and the computational time incurred for the training of the model. The test results of ESNN model using DE and FRBS are compared with that of ESNN without optimization and fuzzy rule to prove its validity and also with the related existing techniques. The perceived DE based fuzzy ESNN model is verified for its effectiveness with a set of time series forecasting benchmark problems. The empirical results prove the superiority and the effectiveness of the DE based fuzzy ESNN learning outcomes.
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基于差分演化框架的模糊回声状态神经网络时间序列预测
本文采用差分进化方法对回声状态神经网络模型求最优权值,并对作为回声状态神经网络(ESNN)模型输入的模糊系统规则数进行优化。在这项工作中设计的ESNN具有称为水库的循环神经元基础结构。本工作旨在利用差分进化算法和模糊规则库系统的相干特征和能力,为ESNN模型开发一个良好的库。模糊规则库系统(FRBS)利用其有效的探索和开发能力对网络的固定权值进行预训练,并制定一套规则,为回波状态网络模型的输入提供推理。基于误差度量和模型训练所需的计算时间,对所开发的优化网络的性能进行了评估。将基于DE和FRBS的ESNN模型的测试结果与未优化和模糊规则的ESNN模型的测试结果进行了比较,以证明其有效性,并与现有相关技术进行了比较。通过一组时间序列预测基准问题验证了基于感知DE的模糊ESNN模型的有效性。实验结果证明了基于DE的模糊ESNN学习结果的优越性和有效性。
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