IEEE Access (Jan 2021)

A Comprehensive Network Restoration Model for Active Distribution Network Considering Forecast Uncertainty

  • Guanghe Wang,
  • Xiang Lei,
  • Han Wu,
  • Kai Sun,
  • Lijun Wang,
  • Yi Ding,
  • Che Wang

DOI
https://doi.org/10.1109/ACCESS.2021.3109071
Journal volume & issue
Vol. 9
pp. 130997 – 131005

Abstract

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The active distribution network management (ADNM) equipped by active distribution networks (ADNs) can enhance the resilience of the network after failure. This paper proposes a novel comprehensive post-event network restoration model and its chance-constrained variant for ADN that considering the dispatch of distributed generation (DG), energy storage system (ESS), demand response (DR), static var compensator (SVC), and network reconfiguration to fully investigate the potential of the ADNM in network restoration. In this paper, the line failure, bus failure, and the uncertainty from load and DG output forecast error are considered. Specifically, the line and bus failures are modeled by an enhanced fictitious network technique, while the uncertainty of load and DG output forecast is modeled by the chance-constrained optimization. The power flow is described by a linearized DistFlow model, and thus the deterministic and chance-constrained network restoration models are programmed by the mixed-integer linear programming (MILP). The proposed deterministic and chance-constrained restoration models are tested on the IEEE 33 bus system. Results demonstrate the effectiveness of the proposed deterministic and chance-constrained network restoration model.

Keywords