Design and Performance Evaluation of an Ultralow-Power Smart IoT Device With Embedded TinyML for Asset Activity Monitoring

被引:27
作者
Giordano, Marco [1 ]
Baumann, Nicolas [1 ]
Crabolu, Michele [2 ]
Fischer, Raphael [1 ]
Bellusci, Giovanni [2 ]
Magno, Michele [1 ]
机构
[1] Swiss Fed Inst Technol, Ctr Project Based Learning, CH-8092 Zurich, Switzerland
[2] Hilti Corp, Corp Res & Technol, FL-9494 Schaan, Liechtenstein
关键词
Monitoring; Sensors; Intelligent sensors; Drilling; Batteries; Wireless sensor networks; Neural networks; Asset management; condition monitoring; construction; 40; energy efficiency; low-power design; smart sensors; tool usage monitoring; wireless sensor networks; SENSOR NODE; ACCELEROMETER; TECHNOLOGIES; INTERNET; SYSTEM;
D O I
10.1109/TIM.2022.3165816
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
This article proposes a proof-of-concept device to continuously assess the usage of handheld power tools and detect construction working tasks (e.g., different drilling works) along with potential misusages, e.g., drops, with an energy-efficient architecture design. The designed device is based on Bluetooth low energy (BLE) and NFC connectivity. BLE is used to exchange data with a gateway, whereas NFC has been chosen as an energy-efficient wake-up mechanism. A temperature and humidity sensor is embedded to monitor storage conditions and an accelerometer for tool usage monitoring. The ARM Cortex-M4 core embedded in the BLE module is exploited to process the information at the edge. A Tiny Machine Learning (TinyML) algorithm is proposed to process the data directly on board and achieve low latency and high energy efficiency. The TinyML algorithm has been developed embedded in the proposed device to detect four different usage classes (tool transportation, no-load, metal, and wood drilling). A dataset containing more than 280 min of three-axis accelerations during different activities has been acquired with the device attached to a construction rotary hammer drill and used to train and validate the algorithm. A neural architecture search has been performed to optimize the trade-off between accuracy and complexity, achieving an accuracy of 90.6% with a model size of roughly 30 kB. The experimental results showed an ultralow power consumption in sleep mode of 550 nA and a peak power consumption of 8 mA while running TinyML on the edge. This results in a balanced combination of edge processing capabilities and low power consumption, enabling to obtain a smart Internet of Things (IoT) device in the field with a long lifetime of up to four years in operation and 17 years in shelf mode with a standard 250-mAh coin battery. This work enables a long battery lifetime operation of device degradation and utility analysis, further closing the gap between edge processing and fine granularity data evaluation.
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页数:11
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