Design and Realization Large-Scale Intelligent Lighting System with Adjustable Light

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Abstract:

In the process of large scale design of intelligent lighting system, the adjustable light is used for lighting, it can save a lot of energy, and lighting and energy-saving are completed. Therefore, large-scale intelligent lighting system is proposed in this paper, and the system design is obtained. According to the situation, the sensor is used to gather the natural state of the light. A reasonable illumination condition is selected. The voltage conversion processing is taken, and adjustable lighting control model is established. Simulation results show that the large-scale intelligent lighting system is applied in the lighting, the power consumption of lighting can be reduced, and the satisfactory results are obtained.

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552-555

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November 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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