论文标题
电力系统中基于高斯的基于高斯过程的双重优化方法 - 一个关键的负载恢复案例
Gaussian Process-based Approach for Bilevel Optimization in the Power System -- A Critical Load Restoration Case
论文作者
论文摘要
二重优化问题可用于表示功率系统与网格连接实体(称为追随者)(例如数据中心)之间的协作交互。大多数现有方法都认为,此类追随者的响应行为可以在操作决策中提供给电力系统,这在现实中可能是站不住脚的。这项工作提出了一个新的想法,即不假设电力系统的无所不知,解决了二聚体优化问题。追随者的响应将由使用高斯流程回归的功率系统决策的函数来表示。然后,可以通过功率系统及其追随者分别解决双层问题中的两个层。这不仅避免了全知的假设,而且显着提高了计算效率而不会损害准确性,尤其是对于复杂较低层的问题而言。此外,开发了一种二重性临界负载恢复模型来测试所提出的技术。与常规方法相比,提出的恢复模型考虑了负载侧操作和不同的负载边缘值,并且可以准确估计负载侧损失并实现更好的恢复解决方案。两项案例研究从不同的角度验证了拟议方法的优势。
Bilevel optimization problems can be used to represent the collaborative interaction between a power system and grid-connected entities, called the followers, such as data centers. Most existing approaches assume that such followers' response behaviors are made available to the power system in the operation decision-making, which may be untenable in reality. This work presents a novel idea of solving bilevel optimization problems without assuming power systems' omniscience. The followers' responses will be represented by a function of the power system's decisions using Gaussian Process Regression. Then the two layers in the bilevel problem can be solved separately by the power system and its followers. This not only avoids the omniscience assumption, but also significantly increases the computational efficiency without compromising accuracy, especially for the problems with a complex lower layer. Moreover, a bilevel critical load restoration model is developed to test the proposed technique. Compared to the conventional methods, the proposed restoration model considers the load-side operation and the varying load marginal value, and can accurately estimate load-side loss and achieve better restoration solutions. Two case studies validate the advantages of the proposed approaches from different perspectives.