Decision fusion methodologies in Structural Health Monitoring systems

M. Mikhail, S. Zein-Sabatto, M. Bodruzzaman
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引用次数: 5

Abstract

Structural Health Monitoring (SHM) is a process of continuous monitoring of the physical condition of a structure for purpose of ensuring the integrity of the structure. SHM techniques have been employed to reduce maintenance and repair costs while maintaining safety and reliability of aircrafts. In this paper we have investigated the benefits provided by integrating decision fusion algorithms to SHM systems. The decisions made by classifiers acting on sensory data are combined using decision fusion algorithms to arrive at unified final decisions regarding the status of the monitored structure. First, synthetic decisions were generated and used for testing and performance evaluation of the different decision fusion algorithms. Second, several different decision fusion algorithms were developed and tested on the synthetic decisions. The Dempster-Shafer theory of evidence, fuzzy logic type-1, and fuzzy logic-type2 were used for development of the decision-fusion algorithms. Finally, the fusion algorithms were tested on decisions extracted from experimental data to validate their performances. The testing and evaluation results showed significant improvement due to fusion process integrated at the end of the feature classification process. The development of the fusion algorithms, their testing results on the synthetic decisions and decisions extracted from real experiment are reported in this paper. Also, performance analysis of decision fusion algorithms is provided in the paper.
结构健康监测系统中的决策融合方法
结构健康监测(Structural Health Monitoring, SHM)是为了保证结构的完整性而对结构的物理状态进行连续监测的过程。SHM技术已被用于降低维护和修理成本,同时保持飞机的安全性和可靠性。本文研究了将决策融合算法集成到SHM系统中所带来的好处。使用决策融合算法将分类器对感知数据做出的决策组合在一起,就被监测结构的状态得出统一的最终决策。首先,生成综合决策,并对不同决策融合算法进行测试和性能评价。其次,开发了几种不同的决策融合算法,并在综合决策上进行了测试。采用Dempster-Shafer证据理论、模糊逻辑类型1和模糊逻辑类型2进行决策融合算法的开发。最后,对从实验数据中提取的决策进行了测试,验证了融合算法的性能。测试和评估结果显示,由于融合过程集成在特征分类过程的最后,显著改善。本文介绍了融合算法的发展、在综合决策和从实际实验中提取决策上的测试结果。并对决策融合算法的性能进行了分析。
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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