Key Elements to Contextualize AI-Driven Condition Monitoring Systems towards Their Risk-Based Evaluation

M. Dadfarnia, M. Sharp
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Abstract

Industrial users can be justifiably hesitant in adopting Condition Monitoring Systems (CMSs) unless evidence indicates benefits from their use. Measuring a CMS’s ability to prevent losses is difficult and lacks standard procedures. The increasing availability of closed-box Artificial Intelligence (AI)- driven CMSs exacerbates the hesitancy as predicting their impacts is more challenging. This paper details three key elements critical to evaluating CMS impact:(1) the Application Area, (2) the Risk Management Processes, and (3) the Monitoring Mechanism. This paper discusses these elements in their capacity to contextualize a CMS’s role within an asset’s risk management processes, which can lead to justifying CMS use.
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情境化人工智能驱动状态监测系统的关键要素,以实现基于风险的评估
工业用户在采用状态监测系统(cms)时可能会有合理的犹豫,除非有证据表明使用它们会带来好处。衡量CMS预防损失的能力是困难的,而且缺乏标准的程序。人工智能(AI)驱动的封闭式cms越来越多,这加剧了人们的犹豫,因为预测它们的影响更具挑战性。本文详细介绍了评估CMS影响的三个关键要素:(1)应用领域,(2)风险管理过程,(3)监测机制。本文讨论了这些元素在资产风险管理过程中的作用,这可以证明CMS的使用是合理的。
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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