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Data mining methodology employing artificial intelligence and a probabilistic approach for energy-efficient structural health monitoring with noisy and delayed signals

机译:采用人工智能和概率方法的数据挖掘方法,用于对噪声和延迟信号进行节能的结构健康监测

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Numerous methods have been developed in the context of expert and intelligent systems for structural health monitoring (SHM) with wireless sensor networks (WSNs). However, these techniques have been proven to be efficient when dealing with continuous signals, and the applicability of such expert systems with discrete noisy signals has not yet been explored. This study presents an intelligent data mining methodology as part of an expert system developed for SHM with noisy and delayed signals, which are generated by a through-substrate self-powered sensor network. The noted sensor network has been demonstrated as an effective means for minimizing energy consumption in WSNs for SHM. Experimental vibration tests were conducted on a cantilever plate to evaluate the developed expert system for SHM. The proposed data mining method is based on the integration of pattern recognition, an innovative probabilistic approach, and machine learning. The novelty of the proposed system for SHM with data interpretation methodology lies in the integration of the noted intelligent techniques on discrete, binary, noisy, and delayed patterns of signals collected from self-powered sensing technology in the application to a practical engineering problem, i.e., data-driven energy-efficient SHM. Results confirm that the proposed data mining method employing a probabilistic approach can be effectively used to reconstruct delayed and missing signals, thereby addressing the important issue of energy availability for intelligent SHM systems being used for damage identification in civil and aerospace structures. The applicability and effectiveness of the expert system with the data mining approach in detecting damage with noisy signals was demonstrated for plate-like structures with an accuracy of 97%. The present study successfully contributes to advance data mining and signal processing techniques in the SHM domain, indicating a practical application of expert and intelligent systems applied to damage detection in SHM platforms. Findings from this research pave a way for development of the data analysis techniques that can be employed for interpreting noisy and incomplete signals collected from various expert systems such as those being used in intelligent infrastructure monitoring systems and smart cities. (C) 2019 Elsevier Ltd. All rights reserved.
机译:在专家和智能系统的背景下,已经开发出许多方法来通过无线传感器网络(WSN)进行结构健康监测(SHM)。然而,已经证明这些技术在处理连续信号时是有效的,并且尚未探索这种具有离散噪声信号的专家系统的适用性。这项研究提出了一种智能数据挖掘方法,该方法是为SHM开发的专家系统的一部分,该专家系统具有噪声和延迟信号,这些信号由基板自供电传感器网络生成。事实证明,上述传感器网络是将SHM的WSN能耗降至最低的有效手段。在悬臂板上进行了实验振动测试,以评估已开发的SHM专家系统。所提出的数据挖掘方法基于模式识别,创新的概率方法和机器学习的集成。所提出的SHM系统采用数据解释方法的新颖之处在于,将上述智能技术集成到从自供电传感技术中收集的离散,二进制,噪声和延迟模式的信号中,从而适用于实际工程问题,即,数据驱动的节能型SHM。结果证实,所提出的采用概率方法的数据挖掘方法可以有效地用于重建延迟和丢失的信号,从而解决了用于在民用和航空航天结构中进行损伤识别的智能SHM系统的能源可用性这一重要问题。证明了采用数据挖掘方法的专家系统在检测带有噪声信号的损伤时对板状结构的适用性和有效性,其准确性为97%。本研究成功地推动了SHM领域中先进的数据挖掘和信号处理技术的发展,这表明专家和智能系统在SHM平台中的损伤检测中的实际应用。这项研究的发现为开发数据分析技术铺平了道路,该技术可用于解释从各种专家系统(例如智能基础设施监控系统和智能城市中使用的专家系统)收集的嘈杂信号和不完整信号。 (C)2019 Elsevier Ltd.保留所有权利。

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