论文标题

分析深度学习的替代模型,用于具有动态TTC约束的运营计划

Analytic Deep Learning-based Surrogate Model for Operational Planning with Dynamic TTC Constraints

论文作者

Qiu, Gao, Liu, Youbo, Liu, Junyong, Zhao, Junbo, Wang, Lingfeng, Liu, Tingjian, Gao, Hongjun

论文摘要

风能的渗透增加引入了关键走廊的更多操作变化,传统的耗时的瞬态稳定性约束了总传输能力(TTC)操作计划无法满足实时监控需求。本文开发了一种更高效的方法,可以通过基于分析的深度学习替代模型来解决该挑战。关键思想是求助于开发一种计算廉价的替代模型的深度学习,以取代与TTC相关的原始耗时的差异差异限制。但是,基于深度学习的替代模型介绍了在优化过程中难以处理的隐式规则。为此,我们得出了隐式替代模型的Jacobian和Hessian矩阵,并最终将其转移到分析公式中,可以通过内部点方法轻松求解。替代建模和问题重新调整使我们能够实现显着提高的计算效率,并且可以将屈服的解决方案用于运营计划。在经过修改的IEEE 39总线系统上进行的数值结果证明了该方法在处理计算效率和准确性的同时,在处理Complicated TTC约束时的有效性。

The increased penetration of wind power introduces more operational changes of critical corridors and the traditional time-consuming transient stability constrained total transfer capability (TTC) operational planning is unable to meet the real-time monitoring need. This paper develops a more computationally efficient approach to address that challenge via the analytical deep learning-based surrogate model. The key idea is to resort to the deep learning for developing a computationally cheap surrogate model to replace the original time-consuming differential-algebraic constraints related to TTC. However, the deep learning-based surrogate model introduces implicit rules that are difficult to handle in the optimization process. To this end, we derive the Jacobian and Hessian matrices of the implicit surrogate models and finally transfer them into an analytical formulation that can be easily solved by the interior point method. Surrogate modeling and problem reformulation allow us to achieve significantly improved computational efficiency and the yielded solutions can be used for operational planning. Numerical results carried out on the modified IEEE 39-bus system demonstrate the effectiveness of the proposed method in dealing with com-plicated TTC constraints while balancing the computational efficiency and accuracy.

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