An Improved Harmonic Current Detection Method Based on Variable Forgetting Factor RLS Algorithm

The effects of compensating and restraining the power system harmonics using active power filter are determined by the detection precision and its dynamic response characters. To improve both of them, a harmonic current detection algorithm based on variable forgetting factor Recursive Least-Squares...

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Vydáno v:Applied Mechanics and Materials Ročník 291-294; s. 2459 - 2463
Hlavní autoři: Vu, Minh Guang, Li, Yun Lu, Wang, Da Zhi, Han, Wei
Médium: Journal Article
Jazyk:angličtina
Vydáno: Zurich Trans Tech Publications Ltd 13.02.2013
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ISBN:9783037856345, 3037856343
ISSN:1660-9336, 1662-7482, 1662-7482
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Shrnutí:The effects of compensating and restraining the power system harmonics using active power filter are determined by the detection precision and its dynamic response characters. To improve both of them, a harmonic current detection algorithm based on variable forgetting factor Recursive Least-Squares algorithm is presented. The occurrence of the dynamic process is identified firstly by the judgment condition which is given by the algorithm, and then the forgetting factor is assigned dynamically, so that the convergent speed is significantly improved. The algorithm overcomes the impact of low-pass filter of traditional p-q or ip-iq algorithm, and releases the contradiction cased by the conflicting requirements of forgetting factor value between steady process and dynamic process. So it has better dynamic performance. Simulation and experiments prove the validity and feasibility of the approaches.
Bibliografie:Selected, peer reviewed papers from the 2012 International Conference on Sustainable Energy and Environmental Engineering (ICSEEE 2012), December 29-30, 2012, Guangzhou, China
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content type line 14
ISBN:9783037856345
3037856343
ISSN:1660-9336
1662-7482
1662-7482
DOI:10.4028/www.scientific.net/AMM.291-294.2459