Coordinated Operation of Active Distribution Network Considering Customers' Reliability Requirements

In recent years, with the development of distributed energy and the increased flexibility of active distribution networks (ADN), the interactive operation of ADNs has been widely concerned. Moreover, in some economically developed regions, the demand for customer diversification and personalized power consumption is increasing, which puts new requirements on the operation of active power distribution networks. In this paper, based on the coordinated multi-agents of active distribution network, fuzzy decision theory is adapted to implement the coordinated optimization operation of ADNs, and achieves the cascade utilization of adjustable resources by considering distinct power supply requirements of customers. The ADN agent will interact with actively assigned network participants based on the system's real-time unbalanced power to reduce power imbalances in ADN operations. The simulation results show that the proposed method can effectively realize the optimal operation of ADN under the premise of satisfying the power supply requirements of customers.

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