Movement Control of Smart Mosque's Domes using CSRNet and Fuzzy Logic Techniques
- URL: http://arxiv.org/abs/2410.18123v1
- Date: Sun, 13 Oct 2024 09:39:44 GMT
- Title: Movement Control of Smart Mosque's Domes using CSRNet and Fuzzy Logic Techniques
- Authors: Anas H. Blasi, Mohammad Awis Al Lababede, Mohammed A. Alsuwaiket,
- Abstract summary: This paper proposes a smart dome model to preserve the fresh air and allow the sunlight to enter the mosque.
The proposed model controls domes movements based on the weather conditions and the overcrowding rates in the mosque.
- Score: 0.0
- License:
- Abstract: Mosques are worship places of Allah and must be preserved clean, immaculate, provide all the comforts of the worshippers in them. The prophet's mosque in Medina/ Saudi Arabia is one of the most important mosques for Muslims. It occupies second place after the sacred mosque in Mecca/ Saudi Arabia, which is in constant overcrowding by all Muslims to visit the prophet Mohammad's tomb. This paper aims to propose a smart dome model to preserve the fresh air and allow the sunlight to enter the mosque using artificial intelligence techniques. The proposed model controls domes movements based on the weather conditions and the overcrowding rates in the mosque. The data have been collected from two different resources, the first one from the database of Saudi Arabia weather's history, and the other from Shanghai Technology Database. Congested Scene Recognition Network (CSRNet) and Fuzzy techniques have applied using Python programming language to control the domes to be opened and closed for a specific time to renew the air inside the mosque. Also, this model consists of several parts that are connected for controlling the mechanism of opening/closing domes according to weather data and the situation of crowding in the mosque. Finally, the main goal of this paper has been achieved, and the proposed model has worked efficiently and specifies the exact duration time to keep the domes open automatically for a few minutes for each hour head.
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