An autonomous Artificial Internet of Things (AIoT) system for elderly dementia patients monitoring in a smart home is presented. The system mainly implements two functions based on the activity inference of the sensor data, which are real time abnormal activity monitoring and trend prediction of disease related activities. Specifically, CASAS dataset is employed to train a Random Forest (RF) model for activity inference. Then, another RF model trained by the output data of activity inference is used for abnormal activity monitoring. Particularly, RF is chosen for these tasks because of its balanced trade offs between accuracy, time efficiency, flexibility, and interpretability. Moreover, Long Short Term Memory (LSTM) is utilised to forecast the disease related activity trend of a patient. Consequently, the accuracy of two RF classifiers designed for activity inference and abnormal activity detection is greater than 99 percent and 94 percent, respectively. Furthermore, using the duration of sleep as an example, the LSTM model achieves accurate and evident future trends prediction.
翻译:该系统主要基于感官数据的活动推论,主要有两个功能,即实时异常活动监测和疾病相关活动趋势预测,具体地说,CASAS数据集用于培训随机森林活动推论模型,然后用活动推断结果数据培训的另一个RF模型用于异常活动监测,特别是选择RF用于这些任务,因为它在准确性、时间效率、灵活性和可解释性之间进行了平衡的权衡,此外,利用长期内存(LSTM)来预测患者与疾病有关的活动趋势,因此,为活动推断和异常活动检测设计的两个RF分类器的精确度分别超过99%和94%,此外,以睡眠时间为例,LSTM模型实现了准确和明显的未来趋势预测。