CYAILGAug 30, 2020

Mosques Smart Domes System using Machine Learning Algorithms

arXiv:2009.10616v19 citations
Originality Synthesis-oriented
AI Analysis

It addresses air quality and comfort problems for mosque attendees, but is an incremental application of existing methods to a specific domain.

This paper tackled ventilation and hygiene issues in mosques by developing a smart dome system using machine learning algorithms like Decision Tree and k-Nearest Neighbors to predict dome states, achieving 98% accuracy with Decision Tree.

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.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes