Transmission network expansion planning with stochastic multivariate load and wind modeling

Mingyang Sun, I. Konstantelos, G. Strbac
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引用次数: 1

Abstract

The increasing penetration of intermittent energy sources along with the introduction of shiftable load elements renders transmission network expansion planning (TNEP) a challenging task. In particular, the ever-expanding spectrum of possible operating points necessitates the consideration of a very large number of scenarios within a cost-benefit framework, leading to computational issues. On the other hand, failure to adequately capture the behavior of stochastic parameters can lead to inefficient expansion plans. This paper proposes a novel TNEP framework that accommodates multiple sources of operational stochasticity. Inter-spatial dependencies between loads in various locations and intermittent generation units' output are captured by using a multivariate Gaussian copula. This statistical model forms the basis of a Monte Carlo analysis framework for exploring the uncertainty state-space. Benders decomposition is applied to efficiently split the investment and operation problems. The advantages of the proposed model are demonstrated through a case study on the IEEE 118-bus system. By evaluating the confidence interval of the optimality gap, the advantages of the proposed approach over conventional techniques are clearly demonstrated.
随机多变量负荷和风模型下输电网扩容规划
随着间歇性能源的日益普及以及可移动负荷元件的引入,输电网络扩展规划(TNEP)成为一项具有挑战性的任务。特别是,可能操作点的范围不断扩大,需要在成本效益框架内考虑非常多的场景,从而导致计算问题。另一方面,未能充分捕捉随机参数的行为可能导致低效的扩展计划。本文提出了一种新的TNEP框架,该框架可容纳多个操作随机性来源。采用多变量高斯联结法捕获了不同位置的负荷与间歇发电机组输出之间的空间依赖关系。该统计模型构成了探索不确定性状态空间的蒙特卡罗分析框架的基础。采用弯管机分解法,有效地分割了投资和运行问题。以IEEE 118总线系统为例,验证了该模型的优越性。通过评估最优性差距的置信区间,清楚地证明了该方法相对于传统技术的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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