van Kasteren Yasmin, Bradford Dana, Zhang Qing, Karunanithi Mohan, Ding Hang
Adaptive Social and Economic Systems, Commonwealth Scientific and Industrial Research Organisation, Dutton Park, Australia.
Australian e-Health Reseach Centre, Commonwealth Scientific and Industrial Research Organisation, Herston, Australia.
JMIR Mhealth Uhealth. 2017 Jun 13;5(6):e52. doi: 10.2196/mhealth.5773.
An ongoing challenge for smart homes research for aging-in-place is how to make sense of the large amounts of data from in-home sensors to facilitate real-time monitoring and develop reliable alerts.
The objective of our study was to explore the usefulness of a routine-based approach for making sense of smart home data for the elderly.
Maximum variation sampling was used to select three cases for an in-depth mixed methods exploration of the daily routines of three elderly participants in a smart home trial using 180 days of power use and motion sensor data and longitudinal interview data.
Sensor data accurately matched self-reported routines. By comparing daily movement data with personal routines, it was possible to identify changes in routine that signaled illness, recovery from bereavement, and gradual deterioration of sleep quality and daily movement. Interview and sensor data also identified changes in routine with variations in temperature and daylight hours.
The findings demonstrated that a routine-based approach makes interpreting sensor data easy, intuitive, and transparent. They highlighted the importance of understanding and accounting for individual differences in preferences for routinization and the influence of the cyclical nature of daily routines, social or cultural rhythms, and seasonal changes in temperature and daylight hours when interpreting information based on sensor data. This research has demonstrated the usefulness of a routine-based approach for making sense of smart home data, which has furthered the understanding of the challenges that need to be addressed in order to make real-time monitoring and effective alerts a reality.
智能家居适老化研究面临的一个持续挑战是如何理解来自家庭传感器的大量数据,以促进实时监测并开发可靠的警报。
我们研究的目的是探索一种基于日常活动的方法在解读老年人智能家居数据方面的有用性。
采用最大差异抽样法,选择了三个案例,对智能家居试验中的三名老年参与者的日常活动进行深入的混合方法探索,使用了180天的用电和运动传感器数据以及纵向访谈数据。
传感器数据与自我报告的日常活动准确匹配。通过将日常运动数据与个人日常活动进行比较,能够识别出表明疾病、丧亲之痛恢复、睡眠质量和日常活动逐渐恶化的日常活动变化。访谈和传感器数据还识别出随着温度和日照时间变化而出现的日常活动变化。
研究结果表明,基于日常活动的方法使传感器数据的解读变得容易、直观且透明。这些结果强调了在根据传感器数据解读信息时,理解和考虑个人在日常活动偏好上的差异以及日常活动的周期性、社会或文化节奏以及温度和日照时间的季节性变化的影响的重要性。这项研究证明了基于日常活动的方法在解读智能家居数据方面的有用性,这进一步加深了我们对为实现实时监测和有效警报而需要解决的挑战的理解。