solving security constrained unit commitment by particle swarm optimization

نویسندگان

shiva alipour ghorbani

hossein nasiraghdam

چکیده

the issue of unit commitment is one of the most important economic plans in power system. in modern and traditional power systems, in addition to being economical of the planning, the issue of security in unit operation is also of great importance. hence power system operation confronts units’ participation and input considering network security constrains. the issue of units’ participation is defined as an optimization problem aimed at determining units' on or off condition and optimized level of units’ production

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عنوان ژورنال:
journal of artificial intelligence in electrical engineering

ناشر: ahar branch,islamic azad university, ahar,iran

ISSN 2345-4652

دوره 4

شماره 14 2016

میزبانی شده توسط پلتفرم ابری doprax.com

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