Multi-objective Collaborative Planning Method for Micro-energy Systems Considering Thermoelectric Coupling Clusters
DOI:
https://doi.org/10.13052/dgaej2156-3306.38514Keywords:
Multi-objective collaborative planning, electric heating load, power grid interaction, thermoelectric coupling, integrated energyAbstract
As the continuous development of integrated energy system and distributed power supply, operation economy and regional energy Internet reliability, especially micro-energy system, are increasing. Therefore, it is necessary to build multi-energy complementary micro-energy system, innovate energy supply mode, realize collaborative and efficient utilization among multi-energy systems, improve energy utilization efficiency and absorb renewable energy. In this paper, the decision model of distribution network planning scheme including distributed generator supply is established from four aspects: investment and operation cost, extra reserve capacity, energy conservation, reliability cost. The decision model involves a lot of parameter calculation and selection judgment, so after the decision goal is determined, an decision framework based on DS-MAS is established, that is, parameters are automatically calculated and selected based on different scenarios. Model validity is proved via a practical decision project.
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