论文标题

清真寺智能圆顶系统使用机器学习算法

Mosques Smart Domes System using Machine Learning Algorithms

论文作者

Lababede, Mohammad Awis Al, Blasi, Anas H., Alsuwaiket, Mohammed A.

论文摘要

世界各地数百万名清真寺正在遇到一些问题,例如通风和难以摆脱细菌,尤其是在清真寺的拥挤时间导致空气污染和细菌的传播,除了令人不快的气味以及在祈祷时期令人不安的气味外,在大多数清真寺中没有足够的窗户来通风清真寺。本文旨在通过使用天气特征和外部温度构建智能清真寺圆顶模型来解决这些问题。应用机器学习算法(例如K最近的邻居和决策树)来预测圆顶的状态。本文的实验应用于沙特阿拉伯的先知清真寺,该清真寺基本上包含27个手动移动的圆顶。使用不同的评估方法对两种机器学习算法进行了测试和评估。在比较了两种算法的结果后,DT算法的精度较高98%,与KNN算法的精度相比,DT算法的精度为98%。最后,这项研究的结果很有希望,对所有清真寺都将使用我们提出的模型自动控制圆顶有所帮助。

Millions of mosques around the world are suffering some problems such as ventilation and difficulty getting rid of bacteria, especially in rush hours where congestion in mosques leads to air pollution and spread of bacteria, in addition to unpleasant odors and to a state of discomfort during the pray times, where in most mosques there are no enough windows to ventilate the mosque well. This paper aims to solve these problems by building a model of smart mosques domes using weather features and outside temperatures. Machine learning algorithms such as k Nearest Neighbors and Decision Tree were applied to predict the state of the domes open or close. The experiments of this paper were applied on Prophet mosque in Saudi Arabia, which basically contains twenty seven manually moving domes. Both machine learning algorithms were tested and evaluated using different evaluation methods. After comparing the results for both algorithms, DT algorithm was achieved higher accuracy 98% comparing with 95% accuracy for kNN algorithm. Finally, the results of this study were promising and will be helpful for all mosques to use our proposed model for controlling domes automatically.

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