reinforcement learning based pid control of wind energy conversion systems

نویسندگان

mohammad esmaeil akbari

noradin ghadimi

چکیده

in this paper an adaptive pid controller for wind energy conversion systems (wecs) has been developed. theadaptation technique applied to this controller is based on reinforcement learning (rl) theory. nonlinearcharacteristics of wind variations as plant input, wind turbine structure and generator operational behaviordemand for high quality adaptive controller to ensure both robust stability and safe performance. thus, areinforcement learning algorithm is used for online tuning of pid coefficients in order to enhance closed loopsystem performance. in this study, at start the proposed controller is applied to two pure mathematical plants,and then the closed loop wecs behavior is discussed in the presence of a major disturbance.

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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 3

شماره 10 2014

میزبانی شده توسط پلتفرم ابری doprax.com

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