Smart Luminaires for Commercial Building by Application of Daylight Harvesting Systems

Nowadays, in commercial buildings, the major source of light is artificial lights (LED) which consume a major portion of conventional electricity. Commercial buildings such as schools, colleges, hotels, and malls are designed with quite old lighting systems with fluorescent lamps. Due to the crisis of non-renewable resources of power, the adoption of a smart renewable grid to supply electricity is increasing day by day. This paper is mainly focused to upgrade the existing commercial building infrastructure with application daylight harvesting systems with the integration of Artificial Intelligence. This system is composed of intelligent light collectors, optic fiber guided medium, intelligent luminaires, and control systems. Different controllers are integrated into the framework that is co-ordinated through IoT. The hybrid system will show energy conservation for both old and new commercial buildings.

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