On the Performance of Machine Learning at the Network Edge to Detect Industrial IoT Faults

Yuri Santo, B. Dalmazo, R. Immich, Andre Riker
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引用次数: 1

Abstract

Industrial Internet-of-Things (IoT) massively deploys intelligent computing in industrial production and manufacturing environments seeking automation, reliability, and control. Machine Learning models provide intelligent decisions to drive manufacturing systems to the next level of productivity, efficiency, and safety. One of the critical challenges that must be faced is the deployment of Machine Learning models at the network edge to detect data anomalies caused by Industrial IoT hardware failures, since industrial IoT devices are prone to errors and failures. These anomalies can harm the industrial IoT system by producing false alarms, consuming network resources, and affecting productivity. Because of that, it is critical to rely on low latency and high precision detection systems to verify the data received from industrial IoT devices. In light of this, we assessed key performance indicators of five machine learning models running at edge computing, to provide in-depth discussions. The performance results were obtained from an oil refinery scenario using a real industrial IoT dataset. The performance was measured in terms of (a) Accuracy, (b) Precision, (c) Recall, (d) F1 score, (e) Training time, and (f) Response time.
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机器学习在网络边缘检测工业物联网故障的性能研究
工业物联网(IoT)在工业生产和制造环境中大规模部署智能计算,寻求自动化、可靠性和控制。机器学习模型提供智能决策,推动制造系统达到更高的生产力、效率和安全性。必须面对的关键挑战之一是在网络边缘部署机器学习模型,以检测由工业物联网硬件故障引起的数据异常,因为工业物联网设备容易出现错误和故障。这些异常会产生假警报,消耗网络资源,影响生产力,从而危害工业物联网系统。因此,依靠低延迟和高精度的检测系统来验证从工业物联网设备接收的数据至关重要。鉴于此,我们评估了在边缘计算下运行的五个机器学习模型的关键性能指标,以提供深入的讨论。性能结果来自使用真实工业物联网数据集的炼油厂场景。性能的衡量标准是:(a)准确性,(b)精度,(c)召回率,(d) F1分数,(e)训练时间,(f)反应时间。
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