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首页> 外文期刊>Wireless personal communications: An Internaional Journal >Smart Fall Prediction for Elderly Care Using iPhone and Apple Watch
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Smart Fall Prediction for Elderly Care Using iPhone and Apple Watch

机译:使用iPhone和Apple Watch对老年人护理的智能秋季预测

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摘要

Along with the annually increasing elderly population, the issues particularly regarding the elderly care are gaining inevitable attention. Nursing and taking care of the elderly people is now the emphasized issue. Besides, the social phenomena of large urban-rural gap and population emigration cause serious shortage of nursing manpower. Among the needs for good care, falls present extreme risks in the elderly population. The shortage of nursing manpower causes the impossible provision of real-time-care for the elderly fall accidents. This study uses the three-axis accelerometer in Apple watch to measure the movement and to input it to the High-Level Fuzzy Petri Net (HLFPN) prediction model. Based on the HLFPN model, fuzzy reasoning is performed to predict the users' daily motions including walking, sitting down, and falls. With the application to elderly exercise model, this system would transmit real-time positioning datasets when there are falls for the rapid and proper treatment so as to minimize the elderly injury caused by falls. Based on the experimental datasets regarding forward fall, backward fall, right-sided fall, and left-sided fall, the obtained precision values are 95.45%, 97.72%, 94.67%, and 95.12%, respectively. Walking, running, and falls could also be distinguished in this study. It is expected that this study could assist in solving the problem of nursing manpower shortage, providing immediate assistance for the elderly on the occasion of falls.
机译:随着年长的老年人口,特别是老年人护理的问题正在取得不可避免的关注。护理和照顾老年人现在是强调的问题。此外,大城乡差距和人口移民的社会现象导致护理人力的严重短缺。在良好照顾的需求中,跌倒了老年人口的极端风险。护理人力短缺导致对老年秋季事故进行实时护理的不可能提供。本研究采用Apple Watch中的三轴加速度计测量移动并将其输入到高级模糊Petri网(HLFPN)预测模型中。基于HLFPN模型,进行模糊推理,以预测用户的日常运动,包括步行,坐下来落下。随着对老年运动模式的应用,当快速和适当的治疗时,该系统将传输实时定位数据集,以便最大限度地减少由跌倒造成的老年损伤。基于对前落下的实验数据集,落后,右侧落下和左侧下降,所获得的精度值分别为95.45%,97.72%,94.67%和95.12%。在这项研究中也可以区分散步,跑步和跌倒。预计本研究可以协助解决护理人力短缺问题,在跌倒时为老年人提供立即援助。

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