Mining Human Activity Patterns From Smart Home Big Data for Health Care Applications
Nowadays, there is an ever-increasing migration of people to urban areas. Health care service is one of the most challenging aspects that is greatly affected by the vast influx of people to city centers. Consequently, cities around the world are investing heavily in digital transformation in an effo...
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doaj-042e62f990124156bec7ab4499c1a7ad2021-03-29T20:15:34ZengIEEEIEEE Access2169-35362017-01-015131311314110.1109/ACCESS.2017.27199217959184Mining Human Activity Patterns From Smart Home Big Data for Health Care ApplicationsAbdulsalam Yassine0https://orcid.org/0000-0003-3539-0945Shailendra Singh1Atif Alamri2Department of Software Engineering, Lakehead University, Thunder Bay, ON, CanadaDepartment of Electrical Engineering and Computer Science, DISCOVER Laboratory, Ottawa, Ontario, CanadaDepartment of Software Engineering, College of Computer and Information Sciences, King Saud University, Riyadh, Saudi ArabiaNowadays, there is an ever-increasing migration of people to urban areas. Health care service is one of the most challenging aspects that is greatly affected by the vast influx of people to city centers. Consequently, cities around the world are investing heavily in digital transformation in an effort to provide healthier ecosystems for people. In such a transformation, millions of homes are being equipped with smart devices (e.g., smart meters, sensors, and so on), which generate massive volumes of fine-grained and indexical data that can be analyzed to support smart city services. In this paper, we propose a model that utilizes smart home big data as a means of learning and discovering human activity patterns for health care applications. We propose the use of frequent pattern mining, cluster analysis, and prediction to measure and analyze energy usage changes sparked by occupants' behavior. Since people's habits are mostly identified by everyday routines, discovering these routines allows us to recognize anomalous activities that may indicate people's difficulties in taking care for themselves, such as not preparing food or not using a shower/bath. This paper addresses the need to analyze temporal energy consumption patterns at the appliance level, which is directly related to human activities. For the evaluation of the proposed mechanism, this paper uses the U.K. Domestic Appliance Level Electricity data set-time series data of power consumption collected from 2012 to 2015 with the time resolution of 6 s for five houses with 109 appliances from Southern England. The data from smart meters are recursively mined in the quantum/data slice of 24 h, and the results are maintained across successive mining exercises. The results of identifying human activity patterns from appliance usage are presented in detail in this paper along with the accuracy of shortand long-term predictions.https://ieeexplore.ieee.org/document/7959184/Big datasmart citiessmart homeshealth care applicationsbehavioral analyticsfrequent pattern |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Abdulsalam Yassine Shailendra Singh Atif Alamri |
spellingShingle |
Abdulsalam Yassine Shailendra Singh Atif Alamri Mining Human Activity Patterns From Smart Home Big Data for Health Care Applications IEEE Access Big data smart cities smart homes health care applications behavioral analytics frequent pattern |
author_facet |
Abdulsalam Yassine Shailendra Singh Atif Alamri |
author_sort |
Abdulsalam Yassine |
title |
Mining Human Activity Patterns From Smart Home Big Data for Health Care Applications |
title_short |
Mining Human Activity Patterns From Smart Home Big Data for Health Care Applications |
title_full |
Mining Human Activity Patterns From Smart Home Big Data for Health Care Applications |
title_fullStr |
Mining Human Activity Patterns From Smart Home Big Data for Health Care Applications |
title_full_unstemmed |
Mining Human Activity Patterns From Smart Home Big Data for Health Care Applications |
title_sort |
mining human activity patterns from smart home big data for health care applications |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2017-01-01 |
description |
Nowadays, there is an ever-increasing migration of people to urban areas. Health care service is one of the most challenging aspects that is greatly affected by the vast influx of people to city centers. Consequently, cities around the world are investing heavily in digital transformation in an effort to provide healthier ecosystems for people. In such a transformation, millions of homes are being equipped with smart devices (e.g., smart meters, sensors, and so on), which generate massive volumes of fine-grained and indexical data that can be analyzed to support smart city services. In this paper, we propose a model that utilizes smart home big data as a means of learning and discovering human activity patterns for health care applications. We propose the use of frequent pattern mining, cluster analysis, and prediction to measure and analyze energy usage changes sparked by occupants' behavior. Since people's habits are mostly identified by everyday routines, discovering these routines allows us to recognize anomalous activities that may indicate people's difficulties in taking care for themselves, such as not preparing food or not using a shower/bath. This paper addresses the need to analyze temporal energy consumption patterns at the appliance level, which is directly related to human activities. For the evaluation of the proposed mechanism, this paper uses the U.K. Domestic Appliance Level Electricity data set-time series data of power consumption collected from 2012 to 2015 with the time resolution of 6 s for five houses with 109 appliances from Southern England. The data from smart meters are recursively mined in the quantum/data slice of 24 h, and the results are maintained across successive mining exercises. The results of identifying human activity patterns from appliance usage are presented in detail in this paper along with the accuracy of shortand long-term predictions. |
topic |
Big data smart cities smart homes health care applications behavioral analytics frequent pattern |
url |
https://ieeexplore.ieee.org/document/7959184/ |
work_keys_str_mv |
AT abdulsalamyassine mininghumanactivitypatternsfromsmarthomebigdataforhealthcareapplications AT shailendrasingh mininghumanactivitypatternsfromsmarthomebigdataforhealthcareapplications AT atifalamri mininghumanactivitypatternsfromsmarthomebigdataforhealthcareapplications |
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