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An energy efficient IoT data compression approach for edge machine learning

机译:用于边缘机器学习的高能效IoT数据压缩方法

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Many IoT systems generate a huge and varied amount of data that need to be processed and responded to in a very short time. One of the major challenges is the high energy consumption due to the transmission of data to the cloud.Edge computing allows the workload to be offloaded from the cloud at a location closer to the source of data that need to be processed while saving time, improving privacy, and reducing network traffic. In this paper, we propose an energy efficient approach for IoT data collection and analysis. First of all, we apply a fast error-bounded lossy compressor on the collected data prior to transmission, that is considered to be the greatest consumer of energy in an IoT device. In a second phase, we rebuild the transmitted data on an edge node and process it using supervised machine learning techniques. To validate our approach, we consider the context of driving behavior monitoring in intelligent vehicle systems where vital signs data are collected from the driver using a Wireless Body Sensor Network (WBSN) and wearable devices and sent to an edge node for stress level detection. The experimentation results show that the amount of transmitted data has been reduced by up to 103 times without affecting the quality of medical data and driver stress level prediction accuracy. (C) 2019 Elsevier B.V. All rights reserved.
机译:许多物联网系统会生成大量多样的数据,需要在很短的时间内进行处理和响应。面临的主要挑战之一是由于将数据传输到云而导致的高能耗。边缘计算使工作负载可以从云上卸载到更靠近需要处理的数据源的位置,同时可以节省时间,改进隐私,并减少网络流量。在本文中,我们提出了一种用于物联网数据收集和分析的节能方法。首先,我们在传输之前对收集到的数据应用快速错误限制的有损压缩器,这被认为是物联网设备中最大的能源消耗。在第二阶段,我们在边缘节点上重建传输的数据,并使用监督的机器学习技术对其进行处理。为了验证我们的方法,我们考虑了智能车辆系统中驾驶行为监控的背景,在该系统中,使用无线人体传感器网络(WBSN)和可穿戴设备从驾驶员那里收集生命体征数据,并将其发送到边缘节点以进行压力水平检测。实验结果表明,传输的数据量最多减少了103倍,而没有影响医学数据的质量和驾驶员压力水平的预测准确性。 (C)2019 Elsevier B.V.保留所有权利。

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