Physical reservoir-based structural health monitoring: a preliminary study

A. Masuda, Konosuke Takashima, Ryu Sakai
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Abstract

The purpose of this study is to discuss the possibility of the concept of physical reservoir computing (PRC) in the field of structural health monitoring (SHM). PRC is a physical realization of a class of recurrent neural networks called reservoir computing (RC). This consists of an input layer, mutually connected network of neurons with strong nonlinearity with fixed coupling weights (referred to as reservoir), and an output layer with learnable weights. The key idea of PRC is to replace the reservoir part in RC by a specific physical entity, which has opened new possibilities of smart structures by providing a way to embed some sort of intelligence in structures. In this study, we propose to apply this framework to SHM by regarding the target structure itself as the physical reservoir. Unlike the conventional problem setting in PRC, our purpose is to detect the change occurred in the physical reservoir due to structural failure. In this paper, we propose one possible methodology to achieve this, in which the output layer is trained to learn some nonlinear function so that the increase of the error may indicate the change of the reservoir due to failure. A simple toy problem using a network of interconnected nonlinear oscillators are presented to examine the validity of the proposed method.
基于储层的物理构造健康监测:初步研究
本研究的目的是探讨储层物理计算(PRC)概念在结构健康监测(SHM)领域的可能性。PRC是一种称为储层计算(RC)的递归神经网络的物理实现。它由输入层和输出层组成,输入层是由具有固定耦合权的强非线性神经元相互连接的网络(称为库),输出层具有可学习权。PRC的关键思想是用特定的物理实体取代RC中的水库部分,这为智能结构提供了一种嵌入某种智能的方法,从而开辟了智能结构的新可能性。在这项研究中,我们建议将这一框架应用于SHM,将目标结构本身视为物理储层。与中国传统的问题设置不同,我们的目的是检测由于结构破坏而在物理油藏中发生的变化。在本文中,我们提出了一种可能的方法来实现这一目标,其中输出层被训练来学习一些非线性函数,因此误差的增加可能表明由于失效而导致储层的变化。通过一个简单的玩具问题,用一个相互连接的非线性振荡器网络来检验所提出方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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