通过数字双胞胎对水库计算机进行远程训练。

IF 3.2 2区 数学 Q1 MATHEMATICS, APPLIED
Chaos Pub Date : 2025-09-01 DOI:10.1063/5.0273463
Yutaro Sekiguchi, Rie Sai, André Röhm, Takatomo Mihana, Tomoki Yamagami, Kazutaka Kanno, Atsushi Uchida, Ryoichi Horisaki
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引用次数: 0

摘要

信息处理所需的不断增加的能量消耗已经成为一个重大挑战,导致人们对光学和光电子储层计算作为更有效的替代方案的兴趣日益浓厚。经过训练的储层计算机特别适合边缘附近的低能耗应用。然而,训练储层输出权重的计算成本,特别是由于矩阵操作,增加了架构的潜在不必要的复杂性。为了解除这一限制,我们提出了一种远程训练方法,使用数字双胞胎——复制物理油藏行为的虚拟模型。特别是,与传统的训练方法不同,我们不需要为每个新任务记录储层状态。这使得物理储层可以不间断地连续进行推理。我们构建了两种类型的数字双胞胎:基于微分方程的模型和深度神经网络(DNN)模型。通过对圣达菲激光时间序列任务的真实实验数据进行远程训练,证实了两个模型都成功地捕获了光电储层的动力学,从而实现了准确的预测,并将数字孪生体的权重输出到现实世界。基于方程的模型比DNN模型具有更高的预测精度,而DNN模型对超参数的变化具有更强的鲁棒性。这些结果表明,数字双胞胎可以有效地实现水库计算系统的远程训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Remote training of a reservoir computer via digital twins.

The increasing energy consumption required for information processing has become a significant challenge, leading to growing interest in optical and optoelectronic reservoir computing as a more efficient alternative. Trained reservoir computers are especially suited for low-energy applications near the edge. However, the computational cost of training the reservoir output weights, particularly due to matrix operations, adds potentially unwanted complexity to the architecture. To lift this restriction, we propose a remote training approach using digital twins-virtual models that replicate the behavior of a physical reservoir. In particular, unlike traditional training methods, we do not need to record the reservoir states experimentally for every new task. This allows the physical reservoir to be used continuously for inference without interruptions. We constructed two types of digital twins: a differential equation-based model and a deep neural network (DNN) model. Using the proposed remote training on real experimental data for the Santa-Fe laser time-series task confirmed that both models successfully captured the dynamics of the optoelectronic reservoir, allowing accurate predictions and the export of weights from the digital twin to the real world. The equation-based model achieved higher prediction accuracy than the DNN model, while the DNN model demonstrated greater robustness to variations in hyperparameters. These results demonstrate that digital twins can effectively enable the remote training of reservoir computing systems.

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来源期刊
Chaos
Chaos 物理-物理:数学物理
CiteScore
5.20
自引率
13.80%
发文量
448
审稿时长
2.3 months
期刊介绍: Chaos: An Interdisciplinary Journal of Nonlinear Science is a peer-reviewed journal devoted to increasing the understanding of nonlinear phenomena and describing the manifestations in a manner comprehensible to researchers from a broad spectrum of disciplines.
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