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时间历程项对回声状态网络中油藏动态及预测精度的影响

Impact of time-history terms on reservoir dynamics and prediction accuracy in echo state networks.

作者信息

Ebato Yudai, Nobukawa Sou, Sakemi Yusuke, Nishimura Haruhiko, Kanamaru Takashi, Sviridova Nina, Aihara Kazuyuki

机构信息

Graduate School of Information and Computer Science, Chiba Institute of Technology, 2-17-1 Tsudanuma, Narashino, Chiba, 275-0016, Japan.

Department of Computer Science, Chiba Institute of Technology, 2-17-1 Tsudanuma, Narashino, Chiba, 275-0016, Japan.

出版信息

Sci Rep. 2024 Apr 15;14(1):8631. doi: 10.1038/s41598-024-59143-y.

DOI:10.1038/s41598-024-59143-y
PMID:38622178
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11018609/
Abstract

The echo state network (ESN) is an excellent machine learning model for processing time-series data. This model, utilising the response of a recurrent neural network, called a reservoir, to input signals, achieves high training efficiency. Introducing time-history terms into the neuron model of the reservoir is known to improve the time-series prediction performance of ESN, yet the reasons for this improvement have not been quantitatively explained in terms of reservoir dynamics characteristics. Therefore, we hypothesised that the performance enhancement brought about by time-history terms could be explained by delay capacity, a recently proposed metric for assessing the memory performance of reservoirs. To test this hypothesis, we conducted comparative experiments using ESN models with time-history terms, namely leaky integrator ESNs (LI-ESN) and chaotic echo state networks (ChESN). The results suggest that compared with ESNs without time-history terms, the reservoir dynamics of LI-ESN and ChESN can maintain diversity and stability while possessing higher delay capacity, leading to their superior performance. Explaining ESN performance through dynamical metrics are crucial for evaluating the numerous ESN architectures recently proposed from a general perspective and for the development of more sophisticated architectures, and this study contributes to such efforts.

摘要

回声状态网络(ESN)是一种用于处理时间序列数据的优秀机器学习模型。该模型利用一种称为储备池的递归神经网络对输入信号的响应,实现了较高的训练效率。已知在储备池的神经元模型中引入时程项可提高ESN的时间序列预测性能,但尚未从储备池动力学特性的角度对这种改进的原因进行定量解释。因此,我们假设时程项带来的性能提升可以用延迟容量来解释,延迟容量是最近提出的一种用于评估储备池记忆性能的指标。为了验证这一假设,我们使用带有时间历程项的ESN模型,即泄漏积分器ESN(LI-ESN)和混沌回声状态网络(ChESN)进行了对比实验。结果表明,与没有时间历程项的ESN相比,LI-ESN和ChESN的储备池动力学在具有更高延迟容量的同时,能够保持多样性和稳定性,从而使其性能更优。通过动力学指标解释ESN性能对于从总体角度评估最近提出的众多ESN架构以及开发更复杂的架构至关重要,本研究为此类工作做出了贡献。

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本文引用的文献

1
Optimizing memory in reservoir computers.优化储层计算机中的记忆
Chaos. 2022 Feb;32(2):023123. doi: 10.1063/5.0078151.
2
Echo State Networks for Practical Nonlinear Model Predictive Control of Unknown Dynamic Systems.用于未知动态系统实际非线性模型预测控制的回声状态网络
IEEE Trans Neural Netw Learn Syst. 2022 Jun;33(6):2615-2629. doi: 10.1109/TNNLS.2021.3136357. Epub 2022 Jun 1.
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Consistency Hierarchy of Reservoir Computers.水库计算机的一致性层次结构
IEEE Trans Neural Netw Learn Syst. 2022 Jun;33(6):2586-2595. doi: 10.1109/TNNLS.2021.3119548. Epub 2022 Jun 1.
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Optimizing Reservoir Computers for Signal Classification.优化用于信号分类的储层计算机。
Front Physiol. 2021 Jun 18;12:685121. doi: 10.3389/fphys.2021.685121. eCollection 2021.
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Robust Optimization and Validation of Echo State Networks for learning chaotic dynamics.鲁棒优化和验证用于学习混沌动力学的回声状态网络。
Neural Netw. 2021 Oct;142:252-268. doi: 10.1016/j.neunet.2021.05.004. Epub 2021 May 14.
6
Do reservoir computers work best at the edge of chaos?水库计算机在混沌边缘表现最佳吗?
Chaos. 2020 Dec;30(12):121109. doi: 10.1063/5.0038163.
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Network structure effects in reservoir computers.储层计算机中的网络结构效应
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Convolutional Multitimescale Echo State Network.卷积多时间尺度回声状态网络。
IEEE Trans Cybern. 2021 Mar;51(3):1613-1625. doi: 10.1109/TCYB.2019.2919648. Epub 2021 Feb 17.
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Recent advances in physical reservoir computing: A review.近期物理存储计算的进展:综述。
Neural Netw. 2019 Jul;115:100-123. doi: 10.1016/j.neunet.2019.03.005. Epub 2019 Mar 20.
10
Consistency in echo-state networks.回声状态网络中的一致性。
Chaos. 2019 Feb;29(2):023118. doi: 10.1063/1.5079686.