CONTROL OF THE LIGHTING SYSTEM USING A GENETIC ALGORITHM
Abstract
The manufacturing, distribution and use of electricity are of fundamental
mportance for the social life and they have the biggest influence on the
nvironment associated with any human activity. The energy needed for building
ighting makes up 20-40% of the total consumption. This paper displays the
evelopment of the mathematical model and genetic algorithm for the control of
immable lighting on problems of regulating the level of internal lighting and
ncrease of energetic efficiency using daylight. A series of experiments using the
ptimization algorithm on the the realized model confirmed very high savings in
lectricity consumption.
Dates
- Submission Date2012-02-03
- Revision Date2012-03-02
- Acceptance Date2012-03-13
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Volume
16,
Issue
11,
Pages237 -250