用于预测性维护和备件优化的可解释人工智能模型

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引用次数: 0

摘要

维护策略对工业和制造系统至关重要。本研究考虑了主动维护策略,并强调使用分析和数据科学。我们提出了一种用于预测性维护的可解释人工智能(XAI)方法。所提出的方法利用机器学习项目周期和 Python 库,使用本地可解释模型-不可知论解释 (LIME) 方法来解释结果。我们还引入了备件管理的早期概念,从预测性维护结果中提出见解,并为决策者提供解释,以加深他们对预测背后影响因素的理解。这项研究表明,在预测性维护中使用机器学习模型非常有益;但是,这些模型的二元结果可能会被决策者误解。向决策者提供详细的解释将直接影响维护决策并改善备件管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An explainable artificial intelligence model for predictive maintenance and spare parts optimization

Maintenance strategies are vital for industrial and manufacturing systems. This study considers a proactive maintenance strategy and emphasizes using analytics and data science. We propose an Explainable Artificial Intelligence (XAI) methodology for predictive maintenance. The proposed method utilizes a machine learning project cycle and Python libraries to interpret the results using the Local Interpretable Model-agnostic Explanations (LIME) method. We also introduce an early concept of spare parts management, presenting insights from predictive maintenance outcomes and providing explanations for decision-makers to enhance their understanding of the influential factors behind predictions. This study demonstrates that utilizing machine learning models in predictive maintenance is highly beneficial; however, the binary outcomes of these models can be misunderstood by decision-makers. Detailed explanations provided to decision-makers will directly impact maintenance decisions and improve spare part management.

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