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Automated Selection of Damage Detection Features by Genetic Programming

机译:基因编程自动选择损伤检测特征

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Robust damage detection algorithms are the first requirement for development of practical structural health monitoring systems. Typically, a damage decision is made based on time series measurements of structural responses. Data analysis involves a two-stage process, namely feature extraction and classification. While classification methods are well understood, no general framework exists for extracting optimal, or even good, features from time series measurements. Currently, successful feature design requires application experts and domain-specific knowledge. Genetic programming, a method of evolutionary computing closely related to genetic algorithms, has previously shown promise as an automatic feature selector in speech recognition and image analysis applications. Genetic programming evolves a population of candidate solutions represented as computer programs to perform a well-defined task such as classification of time series measurements. Importantly, genetic programming conducts an efficient search without specification of the size of the desired solution. This preliminary study explores the use of genetic programming as an automated feature extractor for two-class supervised learning problems related to structural health monitoring applications.
机译:强大的损坏检测算法是开发实际结构健康监测系统的第一个要求。通常,基于结构响应的时间序列测量来进行损坏决定。数据分析涉及两阶段过程,即特征提取和分类。虽然分类方法很好地理解,但不存在从时间序列测量中提取最佳或甚至好的功能的一般框架。目前,成功的功能设计需要应用专家和特定于域的知识。遗传编程,一种与遗传算法密切相关的进化计算方法,先前所示的应该是语音识别和图像分析应用中的自动特征选择器。遗传编程发出代表作为计算机程序的候选解决方案的群体,以执行明确定义的任务,例如时间序列测量的分类。重要的是,遗传编程在没有所需解决方案的规格规格的情况下进行有效的搜索。该初步研究探讨了遗传编程作为与结构健康监测应用相关的两类监督学习问题的自动特征提取器的使用。

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