工业设备人工智能增强工程智能

P. Santos, L. Aldren, E. Melvin, J. Lim, G. McMillan, J. Yang, C. Fraser, J. ODonnell
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引用次数: 0

摘要

本文介绍了一种基于人工智能(AI)的实现,用于TotalEnergies关键工业设备的异常检测。该方法最初受到Sipple, J.(2020)关于智能建筑中人工智能异常检测的工作的启发。从那时起,这种方法被改编、应用和扩展到有效地处理多维时间序列数据,同时在设计上保持模型的可解释性。人工智能模型已成功应用于北海的各种资产,并能够检测工业旋转设备中的异常行为,从而提高了可见性、效率和可靠性。本文还讨论了与人工智能模型的实现相关的业务案例和变更管理过程的动机。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI Augmented Engineering Intelligence for Industrial Equipment
This paper presents an Artificial Intelligence (AI) based implementation for anomaly detection in critical industrial equipment at TotalEnergies. The approach was initially inspired by the work of Sipple, J. (2020), on AI anomaly detection in smart buildings. This approach has since then been adapted, applied, and extended to also handle multidimensional time series data effectively, whilst keeping model interpretability by design. The AI models have been successfully deployed in various North Sea assets and have been able to detect anomalous behaviour in the industrial rotating equipment, leading to improved visibility, efficiency, and reliability. The paper also discusses the motivations for the business case and change management processes associated with the implementation of the AI models.
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