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Prediction of Smarthphone Charging using K-Nearest Neighbor Machine Learning

机译:基于最近邻机器学习的智能手机充电预测

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This paper proposes smartphone charging system using kNN for increasing charging time accuracy. Smartphone charging is done every time to ensure the battery is fully charged. The smart phone user's habits lead to decreased in battery capacity and battery life faster than it should. Stopping the charging cycle on time is required to avoid decreasing capacity and battery life due to overcharging. Charging predictions are performed or stopped by viewing the state of charge and timestamp periodically that are sent over from the smartphone and processed using the k-Nearest Neighbor algorithm. The smartphone will stop charging when the prediction of k-Nearest Neighbor gets the state of charge and the timestamp in seconds according to the user's habit of getting the 100 percent state of charge and the timestamp. Based on experiments have been done, the result show, K-nearest neighborhood machine learning algorithm can predict the charging decision to be continued or stopped and in this case, K = 2 is the optimal K because the F1-Score is close to 1 and higher F1-Score (0.78) compared with other K.
机译:本文提出了一种使用kNN的智能手机充电系统,以提高充电时间的准确性。每次都会对智能手机充电,以确保电池充满电。智能手机用户的习惯导致电池容量下降,并且电池寿命比正常情况要快。需要按时停止充电周期,以避免由于过度充电而导致容量减少和电池寿命降低。通过定期查看从智能手机发送并使用k最近邻居算法处理的充电状态和时间戳,可以执行或停止充电预测。当k最近邻的预测根据用户获取100%充电状态和时间戳的习惯而获得充电状态和时间戳(以秒为单位)时,智能手机将停止充电。基于已进行的实验,结果表明,K近邻机器学习算法可以预测充电决策是继续还是停止,在这种情况下,因为F1-Score接近1,所以K = 2是最优K。与其他K相比,F1-得分更高(0.78)。

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