Porting and Execution of Anomalies Detection Models on Embedded Systems in IoT: Demo Abstract

B. Sudharsan, Pankesh Patel, Abdul Wahid, Muhammad Yahya, J. Breslin, M. Ali
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引用次数: 6

Abstract

In the Industry 4.0 era, Microcontrollers (MCUs) based tiny embedded sensor systems have become the sensing paradigm to interact with the physical world. In 2020, 25.6 billion MCUs were shipped, and over 250 billion MCUs are already operating in the wild. Such low-power, low-cost MCUs are being used as the brain to control diverse applications and soon will become the global digital nervous system. In an Industrial IoT setup, such tiny MCU-based embedded systems are equipped with anomaly detection models and mounted on production plant machines for monitoring the machine's health/condition. These models process the machine's health data (from temperature, RPM, vibration sensors) and raise timely alerts when it predicts/detects data patterns that show deviations from the normal operation state. In this demo, we train One Class Support Vector Machines (OC-SVM) based anomaly detection models and port the trained models to their MCU executable versions. We then deploy and execute the ported models on 4 popular MCUs and report their on-board inference performance along with their memory (Flash and SRAM) consumption. The steps/procedure that we show in the demo is generic, and the viewers can use it to efficiently port a wide variety of datasets-trained classifiers and execute them on different resource-constrained MCU and small CPU-based devices.
物联网嵌入式系统异常检测模型的移植与执行:演示摘要
在工业4.0时代,基于微控制器(mcu)的微型嵌入式传感器系统已成为与物理世界交互的传感范例。2020年,全球出货了256亿台mcu,超过2500亿台mcu已经投入使用。这种低功耗、低成本的mcu被用作控制各种应用的大脑,很快将成为全球数字神经系统。在工业物联网设置中,这种基于mcu的微型嵌入式系统配备了异常检测模型,并安装在生产工厂机器上,以监测机器的健康/状态。这些模型处理机器的健康数据(来自温度、转速、振动传感器),并在预测/检测到显示偏离正常运行状态的数据模式时及时发出警报。在这个演示中,我们训练了基于一类支持向量机(OC-SVM)的异常检测模型,并将训练好的模型移植到它们的MCU可执行版本中。然后,我们在4个流行的mcu上部署和执行移植模型,并报告其板载推理性能及其内存(Flash和SRAM)消耗。我们在演示中展示的步骤/过程是通用的,观众可以使用它来有效地移植各种数据集训练的分类器,并在不同的资源受限的MCU和小型基于cpu的设备上执行它们。
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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