Hybrid Methodology for Structural Health Monitoring Based on Immune Algorithms and Symbolic Time Series Analysis

Rongshuai Li, A. Mita, Jin Zhou
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引用次数: 8

Abstract

This hybrid methodology for structural health monitoring (SHM) is based on immune algorithms (IAs) and symbolic time series analysis (STSA). Real-valued negative selection (RNS) is used to detect damage detection and adaptive immune clonal selection algorithm (AICSA) is used to localize and quantify the damage. Data symbolization by using STSA alleviates the effects of harmful noise in raw acceleration data. This paper explains the mathematical basis of STSA and the procedure of the hybrid methodology. It also describes the results of an simulation experiment on a five-story shear frame structure that indicated the hybrid strategy can efficiently and precisely detect, localize and quantify damage to civil engineering structures in the presence of measurement noise.
基于免疫算法和符号时间序列分析的结构健康监测混合方法
这种结构健康监测(SHM)的混合方法基于免疫算法(IAs)和符号时间序列分析(STSA)。采用实值负选择(RNS)进行损伤检测,采用自适应免疫克隆选择算法(AICSA)对损伤进行定位和量化。采用STSA对原始加速度数据进行符号化处理,减轻了有害噪声的影响。本文阐述了STSA的数学基础和混合方法的步骤。在一个五层剪力框架结构上的模拟实验结果表明,混合策略可以有效、精确地检测、定位和量化存在测量噪声的土木工程结构的损伤。
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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