首页> 外文会议>IEEE Power Energy Society General Meeting >Generation Capacity Expansion Planning under hydro uncertainty using Stochastic Mixed Integer Programming and scenario reduction
【24h】

Generation Capacity Expansion Planning under hydro uncertainty using Stochastic Mixed Integer Programming and scenario reduction

机译:利用随机混合整数规划和情景减少,使用随机混合整数规划下的水力不确定性

获取原文

摘要

Generation Capacity Expansion Planning (GCEP) is the process of deciding on a set of optimal new investments in generation capacity to adequately supply future loads, while satisfying technical and reliability constraints. This paper shows the application of Stochastic Mixed-Integer Programming (SMIP) to account for hydrological uncertainty in GCEP for the Chilean Central Interconnected System, using a two-stage SMIP multi-period model with investments and optimal power flow (OPF). The substantial computational challenges posed by GCEP imply compromising between the detail of the stochastic hydrological variables and the detail of the OPF. We selected a subset of hydrological scenarios to represent the historical hydro variability using moment-based scenario reduction techniques. The tradeoff between modeling accuracy and computational complexity was explored both regarding the simplification of the MIP problem and the differences in the variables of interest. Using a simplified OPF model we found the difference of using a subset of hydro scenarios to be small when compared with using a full representation of the stochastic variable. Overall, SMIP with scenario reduction provided optimal capacity expansion plans whose investment plus expected operational costs were between 1.3% and 1.9% cheaper than using a deterministic approach and proved to be more robust to hydro variability.
机译:发电能力扩张规划(GCEP)是决定一系列最佳新投资的过程,以充分供需负载,同时满足技术和可靠性约束。本文显示了随机混合整数编程(SMIP)的应用,以考虑智利中央互连系统的GCEP中的水文不确定性,使用具有投资和最佳功率流(OPF)的两阶段Smip多时期模型。 GCEP构成的实质计算挑战意味着在随机水文变量细节和OPF的细节之间损害。我们选择了一种水文场景的子集,以使用基于时刻的场景减少技术来代表历史水力变化。关于MIP问题的简化以及感兴趣的变量的差异,探讨了建模准确度和计算复杂性之间的权衡。使用简化的OPF模型,我们发现使用随机变量的完整表示相比,使用水电方案的子集进行差异。总体而言,揭示情景减少提供了最佳的能力扩张计划,其投资加上预期业务成本比使用确定性方法便宜1.3%和1.9%,并被证明对水电变异更加强大。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号