工业物联网的重放驱动持续学习

Sagar Sen, Simon Myklebust Nielsen, E. J. Husom, Arda Goknil, Simeon Tverdal, Leonardo Sastoque Pinilla
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引用次数: 1

摘要

工业物联网(IIoT)利用数千个相互连接的传感器和计算设备来监控和控制大型复杂的工业过程。工业物联网中的机器学习(ML)应用程序使用从多个传感器获取的数据来执行预测性维护等任务。在记住过去有用的学习经验的同时,这些应用需要适应不断变化的传感器数据,这些数据来自工业过程和环境条件的变化。本文提出了一个持续的学习管道,从不断发展的数据中学习,同时重播旧数据的选定部分。该管道被配置为产生机器学习体验(例如,训练基线神经网络模型),在重播部分旧数据的同时使用新数据改进基线模型,并在给定IIoT传感器数据流的情况下使用特定模型版本进行推断/预测。我们通过三个工业案例研究,从人工智能工程的角度评估了我们的方法,即预测刀具磨损、剩余使用寿命以及从CNC加工和拉削操作中获得的传感器数据的异常情况。我们的研究结果表明,为重放驱动的持续学习配置经验,可以在不断发展的数据上动态维护机器学习性能,同时最大限度地减少遗留传感器数据的过度积累。
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Replay-Driven Continual Learning for the Industrial Internet of Things
The Industrial Internet of Things (IIoT) leverages thousands of interconnected sensors and computing devices to monitor and control large and complex industrial processes. Machine learning (ML) applications in IIoT use data acquired from multiple sensors to perform tasks such as predictive maintenance. While remembering useful learning from the past, these applications need to adapt learning for evolving sensor data stemming from changes in industrial processes and environmental conditions. This paper presents a continual learning pipeline to learn from the evolving data while replaying selected parts of the old data. The pipeline is configured to produce ML experiences (e.g., training a baseline neural network model), improve the baseline model with the new data while replaying part of the old data, and infer/predict using a specific model version given a stream of IIoT sensor data. We have evaluated our approach from an AI Engineering perspective using three industrial case studies, i.e., predicting tool wear, remaining useful lifetime, and anomalies from sensor data acquired from CNC machining and broaching operations. Our results show that configuring experiences for replay-driven continual learning allows dynamic maintenance of ML performance on evolving data while minimizing the excessive accumulation of legacy sensor data.
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