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Distribution Network Service Restoration Interval Number Group Decision-Making Using Grey TOPSIS Method

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Proceedings of the 6th International Asia Conference on Industrial Engineering and Management Innovation
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Abstract

Considering the participation of multiple dispatchers in decision-making and the influence of load change on power distribution network service restoration, a grey technique for order preference by similarity to an ideal solution (Grey TOPSIS) group decision-making method for distribution network service restoration is proposed in this paper. Firstly, five evaluation indices such as load restoration amount, load capacity margin, switching times, load transfer amount and load balance rate are selected. Interval grey number is used to represent service restoration decision-making matrix. Attribute values of efficiency index and cost index are standardized respectively. On this basis, the weight of each index is determined. Finally, Grey TOPSIS method is used to collect decision-making information of each restoration decision-making expert and obtain service restoration scheme sorting. The test on typical six-feeder power distribution system shows that the proposed method can make scientific service restoration group decision in the case of load change.

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Correspondence to Tian-lei Zang .

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Zang, Tl., Yang, Jw., He, Zy., Qian, Qq. (2016). Distribution Network Service Restoration Interval Number Group Decision-Making Using Grey TOPSIS Method. In: Qi, E. (eds) Proceedings of the 6th International Asia Conference on Industrial Engineering and Management Innovation. Atlantis Press, Paris. https://doi.org/10.2991/978-94-6239-145-1_43

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