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Data interpretation framework integrating machine learning and pattern recognition for self-powered data-driven damage identification with harvested energy variations

机译:数据解释框架集成了机器学习和模式识别功能,可通过收集的能量变化自动识别数据驱动的损坏

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Data mining methods have been widely used for structural health monitoring (SHM) and damage identification for analysis of continuous signals. Nonetheless, the applicability and effectiveness of these techniques cannot be guaranteed when dealing with discrete binary and incomplete/missing signals (i.e., not continuous in time). In this paper a novel data interpretation framework for SHM with noisy and incomplete signals, using a through-substrate self-powered sensing technology, is presented within the context of artificial intelligence (AI). AI methods, namely, machine learning and pattern recognition, were integrated within the data interpretation framework developed for use in a practical engineering problem: data-driven SHM of plate-like structures. Finite element simulations on an aircraft stabilizer wing and experimental vibration tests on a dynamically loaded plate were conducted to validate the proposed framework. Machine learning algorithms, including support vector machine, k-nearest neighbor, and artificial neural networks, were integrated within the developed learning framework for performance assessment of the monitored structures. Different levels of harvested energy were considered to evaluate the robustness of the SHM system with respect to such variations. Results demonstrate that the SHM methodology employing the proposed machine learning-based data interpretation framework is efficient and robust for damage detection with incomplete and sparse/missing binary signals, overcoming the notable issue of energy availability for smart damage identification platforms being used in structural/infrastructure and aerospace health monitoring. The present study aims to advance data mining and interpretation techniques in the SHM domain, promoting the practical application of machine learning and pattern recognition with incomplete and missing/sparse signals in smart cities and smart infrastructure monitoring.
机译:数据挖掘方法已广泛用于结构健康监测(SHM)和损伤识别,以分析连续信号。然而,当处理离散的二进制和不完整/丢失的信号(即,时间上不连续)时,不能保证这些技术的适用性和有效性。本文在人工智能(AI)的背景下,提出了一种通过基板自供电的传感技术,针对带有噪声和不完整信号的SHM的新型数据解释框架。 AI方法(即机器学习和模式识别)已集成到为实际工程问题开发的数据解释框架中:数据驱动的板状结构的SHM。在飞机稳定器机翼上进行了有限元模拟,并在动态载荷板上进行了实验振动测试,以验证所提出的框架。机器学习算法(包括支持向量机,k最近邻和人工神经网络)已集成在已开发的学习框架中,用于评估受监视结构的性能。考虑了不同水平的能量采集,以评估SHM系统针对此类变化的稳健性。结果表明,采用提出的基于机器学习的数据解释框架的SHM方法对于不完整和稀疏/缺失的二进制信号的损坏检测是有效且健壮的,从而克服了用于结构/基础设施的智能损坏识别平台的显着能量可用性问题和航空健康监测。本研究旨在推进SHM领域中的数据挖掘和解释技术,促进机器学习和模式识别在智能城市和智能基础设施监控中的不完整和缺失/稀疏信号的实际应用。

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