基于tinyml的气体泄漏检测系统

Anargyros Gkogkidis, Vasileios Tsoukas, Stefanos Papafotikas, Eleni Boumpa, A. Kakarountas
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引用次数: 4

摘要

物联网设备通常用于智能家居,以提供照明、娱乐和方便访问等智能服务,但它们也用于在紧急情况下向居住者发出警告。由于现有神经网络实现的计算密集型性质,数据必须传输到云端进行分析以产生智能机器。TinyML是一种很有前途的方法,科学界已经将其作为构建自主和安全设备的方法提出,这些设备可以收集、分析和输出数据,而不需要将数据传输到远程实体。本文提出了一个基于tinyml的有害气体泄漏检测系统。该系统可以通过训练来检测不正常情况,并通过发送到智能手机或集成屏幕的BLE技术通知居住者。提出了两个不同的测试用例,并通过实验进行了评估。对于烟雾探测测试用例,系统达到了F1-Score 0.77,而对于氨测试用例,F1-Score的评价指标为0.70。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A TinyML-based system for gas leakage detection
Internet of Things devices are commonly utilized in smart homes to provide smart services such as lighting, entertainment, and easy access, but they are also employed to warn occupants in the event of an emergency. Due to the computationally intensive nature of existing Neural Network implementations, data must be transmitted to the cloud for analysis to produce intelligent machines. TinyML is a promising approach that the scientific community has proposed as a method of constructing autonomous and secure devices that can collect, analyze, and output data without requiring it to be transferred to remote entities. This work presents a TinyML-based system for detecting hazardous gas leaks. The system may be trained to detect irregularities and notify occupants using BLE technology via a message sent to their smartphones, as well as through an integrated screen. Two different test cases are presented and evaluated via experiments. For the smoke detection test case the system achieved an F1-Score of 0.77, whereas for the ammonia test case the evaluation metric of F1-Score is 0.70.
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