Clustering load distribution substation based on similarity of load curves using statistic-fuzzy methods

Having accurate information of load is one of the key points of the proper operation and investment in distribution networks. Identification and classification of substation loads and consumer services is the first step in: estimation and reconstruction of load distribution substations, proper operation, load forecasting, comprehensive plans and other studies.

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