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实现远程养老:带活动识别功能的智能能源数据系统的设计与实现。

Enabling Remote Elderly Care: Design and Implementation of a Smart Energy Data System with Activity Recognition.

机构信息

Department of Electronic Engineering, Universidad Técnica Federico Santa María, Valparaíso 2390123, Chile.

出版信息

Sensors (Basel). 2023 Sep 16;23(18):7936. doi: 10.3390/s23187936.

Abstract

Seniors face many challenges as they age, such as dementia, cognitive and memory disorders, vision and hearing impairment, among others. Although most of them would like to stay in their own homes, as they feel comfortable and safe, in some cases, older people are taken to special institutions, such as nursing homes. In order to provide serious and quality care to elderly people at home, continuous remote monitoring is perceived as a solution to keep them connected to healthcare service providers. The new trend in medical health services, in general, is to move from 'hospital-centric' services to 'home-centric' services with the aim of reducing the costs of medical treatments and improving the recovery experience of patients, among other benefits for both patients and medical centers. Smart energy data captured from electrical home appliance sensors open a new opportunity for remote healthcare monitoring, linking the patient's health-state/health-condition with routine behaviors and activities over time. It is known that deviation from the normal routine can indicate abnormal conditions such as sleep disturbance, confusion, or memory problems. This work proposes the development and deployment of a smart energy data with activity recognition (SEDAR) system that uses machine learning (ML) techniques to identify appliance usage and behavior patterns oriented to older people living alone. The proposed system opens the door to a range of applications that go beyond healthcare, such as energy management strategies, load balancing techniques, and appliance-specific optimizations. This solution impacts on the massive adoption of telehealth in third-world economies where access to smart meters is still limited.

摘要

老年人随着年龄的增长会面临许多挑战,例如痴呆、认知和记忆障碍、视力和听力受损等。尽管他们大多数人都希望留在自己的家中,因为他们感到舒适和安全,但在某些情况下,老年人会被送到特殊机构,如养老院。为了在家中为老年人提供严肃和优质的护理,持续的远程监控被视为一种解决方案,可以使他们与医疗保健服务提供者保持联系。总的来说,医疗保健服务的新趋势是从“以医院为中心”的服务向“以家庭为中心”的服务转变,目的是降低医疗费用,改善患者的康复体验,以及为患者和医疗中心带来其他好处。从电器传感器捕获的智能能源数据为远程医疗监测开辟了新的机会,将患者的健康状况/健康状况与随着时间的推移的常规行为和活动联系起来。众所周知,偏离正常的日常生活模式可能表明存在异常情况,如睡眠障碍、混乱或记忆问题。这项工作提出了开发和部署一个使用机器学习(ML)技术的智能能源数据和活动识别(SEDAR)系统,该系统旨在识别独居老年人的电器使用和行为模式。所提出的系统为一系列应用打开了大门,这些应用不仅限于医疗保健,还包括能源管理策略、负载平衡技术和特定于电器的优化。这个解决方案对于第三世界经济体的远程医疗的大规模采用产生了影响,这些经济体中智能电表的普及仍然有限。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/74d6/10535999/29b4aa6e2cbe/sensors-23-07936-g001.jpg

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