4.7 Article

Mixed-integer linear programming models and algorithms for generation and transmission expansion planning of power systems

期刊

EUROPEAN JOURNAL OF OPERATIONAL RESEARCH
卷 297, 期 3, 页码 1071-1082

出版社

ELSEVIER
DOI: 10.1016/j.ejor.2021.06.024

关键词

OR in energy; Power systems; Generation transmission expansion; Mixed-integer programming; Decomposition algorithm

资金

  1. Center of Advanced Process Decionmaking at Carnegie Mellon University
  2. Department of Energy

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This paper focuses on the challenge of optimizing generation and transmission expansion planning in power systems with increasing penetration of renewable generating units. A mixed-integer linear programming model is proposed, along with theoretical comparisons of three different transmission expansion formulations. Through a case study, it is shown that the tailored Benders decomposition algorithm outperforms the nested Benders decomposition in solving the GEP and TEP problems simultaneously.
With the increasing penetration of renewable generating units, especially in remote areas not well connected with load demand, there are growing interests to co-optimize generation and transmission expansion planning (GTEP) in power systems. Due to the volatility in renewable generation, a planner needs to include the operating decisions into the planning model to guarantee feasibility. However, solving the GTEP problem with hourly operating decisions throughout the planning horizon is computationally intractable. Therefore, we propose several spatial and temporal simplifications to the problem. Built on the generation expansion planning (GEP) formulation of Lara et al. (2018), we propose a mixed-integer linear programming formulation for the GTEP problem. Three different formulations, i.e., a big-M formulation, a hull formulation, and an alternative big-M formulation, are reported for transmission expansion. We theoretically compare the tightness of the LP relaxations of the three formulations. The proposed MILP GTEP model typically involves millions or tens of millions of variables, which makes the model not directly solvable by the commercial solvers. To address this computational challenge, we propose a nested Benders decomposition algorithm and a tailored Benders decomposition algorithm that exploit the structure of the GTEP problem. Using a case study from Electric Reliability Council of Texas (ERCOT), we are able to show that the proposed tailored Benders decomposition outperforms the nested Benders decomposition. The coordination in the optimal generation and transmission expansion decisions from the ERCOT study implies that there is an additional value in solving GEP and TEP simultaneously. (c) 2021 Elsevier B.V. All rights reserved.

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