利用智能电表的电力消耗数据进行脆弱性检测的机器学习模型

Kijung Kim, Shimpei Ohsugi, N. Koshizuka
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引用次数: 3

摘要

随着老年人数量的增加,支持老年人日常生活和福祉的医疗保健系统引起了人们的关注。特别是,虚弱综合征是许多国家面临的最重大挑战之一,因为它与死亡率和住院率高度相关。近年来,随着信息通信技术(ICT)的发展,提出了许多基于传感器的脆弱性检测模型。然而,由于传感器的安装和管理,其中许多需要非常高的成本。因此,本研究的目的是提出一种基于机器学习的脆弱性检测模型,该模型仅使用来自智能电表的电力消耗数据,而不使用传感器等其他设备。此外,我们通过一个案例研究来检验我们模型的可行性,我们对24位老年人进行了研究。作为一项cast研究的结果,对于一个2类分类问题(虚弱或非虚弱),我们可以以82%的准确率、77%的精确度、84%的召回率和80%的f分检测虚弱。我们的研究结果表明,更多的老年人可以通过智能电表进行虚弱诊断。此外,由于虚弱是一种可逆的状况,可以通过早期和适当的干预恢复到健康状态,我们的模型有可能延长老年人的健康预期。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Model for Frailty Detectxion using Electric Power Consumption Data from Smart Meter
With the increase of the number of the elderly, healthcare systems to support the daily life and wellbeing of the elderly attracted attention. Especially, frailty syndrome is one of the most significant challenges faced by many countries because of its high association with mortality and hospitalization. Recently, with the progress of ICT (Information and Communication Technology), many frailty detection models which use sensors were proposed. However, many of them require very high costs caused by the installation and management of sensors. Therefore, the objective of this study is to propose a machine learning-based frailty detection model using only electric power consumption data from smart meter, which uses no other devices such as sensors. Also, we examined the feasibility of our model through a case study, in which we have conducted on 24 elderly people. As a result of a cast study, we could detect frailty with 82% accuracy, 77% precision, 84% recall, and 80% f-score for a 2-class classification problem (frailty or non-frailty). The results of our study show that more elderly people can receive frailty diagnoses through smart meters. Moreover, since frailty is a reversible condition that could be restored to a healthy status with early and appropriate intervention, our model has potential to extend the healthy expectancy of the elderly.
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