Exploring The Implementation of AI in a Cost-effective Device for Predicting Sleep Quality

Jing Peng Lee, Bruce Yu, Kenneth Y T Lim
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Abstract

This report presents the development and effectiveness of an Arduino-based sleep tracking device that can accurately measure various parameters of sleep, including movement, temperature, sound, light intensity, and humidity. The device was designed to be low-cost and easy to use, while not compromising on its ability to accurately measure sleep activity. The effectiveness of the device was evaluated by collecting data from test subjects and comparing it to the data collected by other sleep tracking devices. The collected data was then processed and used to train Artificial Intelligence (AI) models such as Backward Propagation Neural Network, Linear Regression Model, and Grey Relation Analysis, to predict the sleep quality rating from 0% to 100% and to identify the main cause of poor sleep. The results of the study demonstrated that the Arduino-based sleep tracking device is an effective and cost-efficient tool for measuring various parameters of sleep. However, the pressure sensor may sometimes result in inaccurate readings, which can be addressed through data cleaning and filtering. Furthermore, the use of AI models was able to predict the sleep quality rating and identify the main causes of poor sleep with high accuracy. Further research is needed to evaluate the device's performance over a longer period of time and in a larger sample of participants.
探索人工智能在高性价比睡眠质量预测设备中的应用
本报告介绍了一种基于arduino的睡眠跟踪设备的开发和有效性,该设备可以准确测量睡眠的各种参数,包括运动、温度、声音、光强和湿度。该设备的设计成本低,使用方便,同时不影响其准确测量睡眠活动的能力。通过收集测试对象的数据,并将其与其他睡眠跟踪设备收集的数据进行比较,来评估该设备的有效性。然后对收集到的数据进行处理并用于训练人工智能(AI)模型,如反向传播神经网络、线性回归模型和灰色关联分析,以预测0%至100%的睡眠质量评级,并确定睡眠质量差的主要原因。研究结果表明,基于arduino的睡眠跟踪设备是一种有效且经济的工具,可以测量睡眠的各种参数。然而,压力传感器有时可能导致读数不准确,这可以通过数据清洗和过滤来解决。此外,人工智能模型的使用能够预测睡眠质量评级,并准确地确定睡眠质量差的主要原因。进一步的研究需要在更长的时间和更大的参与者样本中评估该设备的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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