针对水的可饮用性分类问题的高能效 TinyML 模型

IF 3.8 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Emanuel Adler Medeiros Pereira, Jeferson Fernando da Silva Santos, Erick de Andrade Barboza
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引用次数: 0

摘要

安全饮用水是一种重要资源,也是一项基本人权,但仍有数十亿人无法获得安全饮用水,这给他们的健康带来了诸多风险。水质监测的一个关键障碍是管理和分析大量数据。机器学习模型在水质监测中的应用日益普及,为决策者提供了帮助,并保障了公众健康。集成系统将电子传感器与机器学习模型相结合,可提供即时反馈,并可在任何地点实施。这种系统的运行不受互联网连接的影响,也不依赖于化学或实验室分析得出的数据。本研究的目的是开发一种高能效的 TinyML 模型,用于对水的可饮用性进行分类,该模型可作为嵌入式系统运行,并完全依赖于通过电子传感获得的数据。与在云中运行的类似模型相比,拟议模型所需的内存空间减少了 51.2%,执行所有推理测试的速度提高了约 99.95%,能耗降低了约 99.95%。性能的提升使分类模型能够在资源非常有限的设备中运行数年。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An energy efficient TinyML model for a water potability classification problem

Safe drinking water is an essential resource and a fundamental human right, but its access continues beyond billions of people, posing numerous health risks. A key obstacle in monitoring water quality is managing and analyzing extensive data. Machine learning models have become increasingly prevalent in water quality monitoring, aiding decision makers and safeguarding public health. An integrated system, which combines electronic sensors with a Machine Learning model, offers immediate feedback and can be implemented in any location. This type of system operates independently of an Internet connection and does not depend on data derived from chemical or laboratory analysis. The aim of this study is to develop an energy-efficient TinyML model to classify water potability that operates as an embedded system and relies solely on the data available through electronic sensing. When compared with a similar model functioning in the Cloud, the proposed model requires 51.2% less memory space, performs all inference tests approximately 99.95% faster, and consumes about 99.95% less energy. This increase in performance enables the classification model to run for years in devices that are very resource-constrained.

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来源期刊
Sustainable Computing-Informatics & Systems
Sustainable Computing-Informatics & Systems COMPUTER SCIENCE, HARDWARE & ARCHITECTUREC-COMPUTER SCIENCE, INFORMATION SYSTEMS
CiteScore
10.70
自引率
4.40%
发文量
142
期刊介绍: Sustainable computing is a rapidly expanding research area spanning the fields of computer science and engineering, electrical engineering as well as other engineering disciplines. The aim of Sustainable Computing: Informatics and Systems (SUSCOM) is to publish the myriad research findings related to energy-aware and thermal-aware management of computing resource. Equally important is a spectrum of related research issues such as applications of computing that can have ecological and societal impacts. SUSCOM publishes original and timely research papers and survey articles in current areas of power, energy, temperature, and environment related research areas of current importance to readers. SUSCOM has an editorial board comprising prominent researchers from around the world and selects competitively evaluated peer-reviewed papers.
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