Middle East AI

This Week arXiv

Mosques Smart Domes System using Machine Learning Algorithms

arXiv · · Notable

Summary

This paper proposes a smart dome system for mosques that uses machine learning to automatically control dome ventilation based on weather conditions and outside temperatures. The system was tested on the Prophet Mosque in Saudi Arabia using K-Nearest Neighbors and Decision Tree algorithms. The Decision Tree algorithm achieved a higher accuracy of 98% compared to 95% for the k-NN algorithm.

Keywords

smart domes · mosques · ventilation · machine learning · decision tree

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