基于储层状态重构的改进型深度回波态网络的非线性时间序列预测

Qiufeng Yu, Hui Zhao, Li Teng, Li Li, Ansar Yasar, Stéphane Galland
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引用次数: 0

摘要

为了提高非线性时间序列的预测精度,本文提出了一种基于水库状态重构的改进型深度回波状态网络,用自归一化激活(SNA)函数替代传统的双曲正切激活函数,以降低模型对超参数的敏感性。该策略在双态重构过程中实施,首先将时间序列数据分别输入模型。一旦时间数据通过储层并被 SNA 激活函数激活,储层的新状态就会产生。该状态被输入到下一层,并由连接状态模块保存。从激活的多层蓄水池中选取成对的状态,输入状态重建模块。多个输入状态通过状态重构模块进行转换,最后保存到串联状态模块。为了达到更高的预测精度,我们使用了两个评估指标来与其他三个使用 SNA 激活函数的 ESN 进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction for nonlinear time series by improved deep echo state network based on reservoir states reconstruction

With the aim to enhance prediction accuracy for nonlinear time series, this paper put forward an improved deep Echo State Network based on reservoir states reconstruction driven by a Self-Normalizing Activation (SNA) function as the replacement for the traditional Hyperbolic tangent activation function to reduce the model’s sensitivity to hyper-parameters. The Strategy was implemented in a two-state reconstruction process by first inputting the time series data to the model separately. Once, the time data passes through the reservoirs and is activated by the SNA activation function, the new state for the reservoirs is created. The state is input to the next layer, and the concatenate states module saves. Pairs of states are selected from the activated multi-layer reservoirs and input into the state reconstruction module. Multiple input states are transformed through the state reconstruction module and finally saved to the concatenate state module. Two evaluation metrics were used to benchmark against three other ESNs with SNA activation functions to achieve better prediction accuracy.

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