Publisher: Taylor & Francis Ltd
E-ISSN: 1532-5016|43|1|69-82
ISSN: 1532-5016
Source: Electric Power Components and Systems, Vol.43, Iss.1, 2015-01, pp. : 69-82
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Abstract
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