以案例研究为主导的可解释人工智能(XAI)研究,以支持行业预测的部署

Omnia Amin, Blair Brown, B. Stephen, S. Mcarthur
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引用次数: 0

摘要

民用核电站必须最大限度地延长其正常运行时间,以维持其生存能力。随着工厂老化和严格监管的操作限制,监测是司空见惯的,但由于涉及的数据量很大,确定健康指标以预防破坏性故障是具有挑战性的。机器学习(ML)模型越来越多地部署在各种工业应用的预测和健康管理(PHM)系统中,然而,其中许多是黑匣子模型,它们提供了良好的性能,但很少或根本没有洞察如何实现预测。在核能发电中,有重要的监管监督,因此有必要根据预测模型的输出来解释决策。这些解释可以使利益相关者信任这些产出,满足监管机构,随后做出更有效的运营决策。ML模型输出如何向利益相关者传达解释是很重要的,所以这些解释必须是人类(和技术领域相关的)可理解的术语。因此,利益相关者可以快速解释,然后更好地信任预测,并能够更有效地采取行动。本文的主要贡献有:1。将XAI引入工业资产的PHM,并提供一套新颖的算法,将SHAP产生的解释转换为基于文本的人类可解释的解释;和2。考虑这些解释的背景,以便应用于工业应用中关键资产的预测。使用XAI不仅有助于理解这些ML模型的工作原理,而且还可以描述有助于预测核发电资产退化的最重要特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Case-study Led Investigation of Explainable AI (XAI) to Support Deployment of Prognostics in the industry
Civil nuclear generation plant must maximise it’s operational uptime in order to maintain it’s viability. With aging plant and heavily regulated operating constraints, monitoring is commonplace, but identifying health indicators to pre-empt disruptive faults is challenging owing to the volumes of data involved. Machine learning (ML) models are increasingly deployed in prognostics and health management (PHM) systems in various industrial applications, however, many of these are black box models that provide good performance but little or no insight into how predictions are reached. In nuclear generation, there is significant regulatory oversight and therefore a necessity to explain decisions based on outputs from predictive models. These explanations can then enable stakeholders to trust these outputs, satisfy regulatory bodies and subsequently make more effective operational decisions. How ML model outputs convey explanations to stakeholders is important, so these explanations must be in human (and technical domain related) understandable terms. Consequently, stakeholders can rapidly interpret, then trust predictions better, and will be able to act on them more effectively. The main contributions of this paper are: 1. introduce XAI into the PHM of industrial assets and provide a novel set of algorithms that translate the explanations produced by SHAP to text-based human-interpretable explanations; and 2. consider the context of these explanations as intended for application to prognostics of critical assets in industrial applications. The use of XAI will not only help in understanding how these ML models work, but also describe the most important features contributing to predicted degradation of the nuclear generation asset.
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