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A multistage decision-dependent stochastic bilevel programming approach for power generation investment expansion planning

机译:用于发电投资扩展计划的多阶段决策相关随机双层规划方法

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In this article, we study the long-term power generation investment expansion planning problem under uncertainty. We propose a bilevel optimization model that includes an upper-level multistage stochastic expansion planning problem and a collection of lower-level economic dispatch problems. This model seeks for the optimal sizing and siting for both thermal and wind power units to be built to maximize the expected profit for a profit-oriented power generation investor. To address the future uncertainties in the decision-making process, this article employs a decision-dependent stochastic programming approach. In the scenario tree, we calculate the non-stationary transition probabilities based on discrete choice theory and the economies of scale theory in electricity systems. The model is further reformulated as a single-level optimization problem and solved by decomposition algorithms. The investment decisions, computation times, and optimality of the decision-dependent model are evaluated by case studies on IEEE reliability test systems. The results show that the proposed decision-dependent model provides effective investment plans for long-term power generation expansion planning.
机译:在本文中,我们研究了不确定性下的长期发电投资扩展计划问题。我们提出了一个双层优化模型,该模型包括一个较高级别的多阶段随机扩展计划问题和一系列较低级别的经济调度问题。该模型为将要建造的火力和风力发电机组寻求最佳的尺寸和选址,以最大化以盈利为导向的发电投资者的预期利润。为了解决决策过程中未来的不确定性,本文采用了一种与决策有关的随机规划方法。在方案树中,我们基于离散选择理论和电力系统的规模经济理论,计算了非平稳过渡概率。该模型被进一步重新构造为单级优化问题,并通过分解算法进行求解。通过在IEEE可靠性测试系统上进行案例研究来评估决策模型的投资决策,计算时间和最优性。结果表明,提出的决策依赖模型为长期发电扩展计划提供了有效的投资计划。

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