Interpretable machine learning in damage detection using Shapley Additive Explanations

Artur Movsessian, D. Cava, D. Tcherniak
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引用次数: 12

Abstract

In recent years, Machine Learning (ML) techniques have gained popularity in Structural Health Monitoring (SHM). These have been particularly used for damage detection in a wide range of engineering applications such as wind turbine blades. The outcomes of previous research studies in this area have demonstrated the capabilities of ML for robust damage detection. However, the primary challenge facing ML in SHM is the lack of interpretability of the prediction models hindering the broader implementation of these techniques. For this purpose, this study integrates the novel Shapley Additive exPlanations (SHAP) method into a ML-based damage detection process as a tool for introducing interpretability and, thus, build evidence for reliable decision-making in SHM applications. The SHAP method is based on coalitional game theory and adds global and local interpretability to ML-based models by computing the marginal contribution of each feature. The contribution is used to understand the nature of damage indices (DIs). The applicability of the SHAP method is first demonstrated on a simple lumped mass-spring-damper system with simulated temperature variabilities. Later, the SHAP method has been evaluated on data from an in-operation V27 wind turbine with artificially introduced damage in one of its blades. The results show the relationship between the environmental and operational variabilities (EOVs) and their direct influence on the damage indices. This ultimately helps to understand the difference between false positives caused by EOVs and true positives resulting from damage in the structure.
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使用Shapley加性解释的损伤检测中的可解释机器学习
近年来,机器学习(ML)技术在结构健康监测(SHM)中得到了广泛应用。这些特别用于广泛的工程应用中的损伤检测,例如风力涡轮机叶片。该领域之前的研究结果已经证明了机器学习在鲁棒损伤检测方面的能力。然而,在SHM中ML面临的主要挑战是缺乏预测模型的可解释性,这阻碍了这些技术的广泛实施。为此,本研究将新颖的Shapley加性解释(SHAP)方法集成到基于ml的损伤检测过程中,作为引入可解释性的工具,从而为SHM应用中的可靠决策建立证据。SHAP方法基于联合博弈论,通过计算每个特征的边际贡献,为基于ml的模型增加了全局和局部可解释性。该贡献用于理解损伤指数(DIs)的性质。首先在具有模拟温度变化的简单集总质量-弹簧-阻尼器系统上验证了SHAP方法的适用性。随后,在一台运行中的V27风力涡轮机的数据上对SHAP方法进行了评估,该涡轮机的一个叶片被人为地引入了损伤。研究结果表明,环境变率与作战变率之间存在一定的关系,并直接影响了损伤指标。这最终有助于理解由EOVs引起的假阳性和由结构损伤引起的真阳性之间的区别。
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来源期刊
CiteScore
5.20
自引率
13.60%
发文量
34
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