An improved deep echo state network inspired by tissue-like P system forecasting for non-stationary time series

Author:

Yang Xiaojian,Liu Qian,Liu XiyuORCID,Xue Jie

Abstract

AbstractAs a recurrent neural network, ESN has attracted wide attention because of its simple training process and unique reservoir structure, and has been applied to time series prediction and other fields. However, ESN also has some shortcomings, such as the optimization of reservoir and collinearity. Many researchers try to optimize the structure and performance of deep ESN by constructing deep ESN. However, with the increase of the number of network layers, the problem of low computing efficiency also follows. In this paper, we combined membrane computing and neural network to build an improved deep echo state network inspired by tissue-like P system. Through analysis and comparison with other classical models, we found that the model proposed in this paper has achieved great success both in predicting accuracy and operation efficiency.

Funder

National Natural Science Foundation of China

Natural Science Fund Project of Shandong Province, China

Postdoctoral Project, China

Social Science Fund Project of Shandong Province, China

Humanities and Social Sciences Youth Fund of the Ministry of Education, China

Postdoctoral Special Funding Project, China

Publisher

Springer Science and Business Media LLC

Subject

Applied Mathematics,Computational Theory and Mathematics

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