电力系统电压裕度稳定指标区间预测的双向门控循环单元灰狼优化器

M. Massaoudi, S. Refaat, A. Ghrayeb, H. Abu-Rub
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引用次数: 1

摘要

尽管光伏发电系统对智能电网至关重要,但由于天气变化导致的光伏发电输出的不确定性可能导致电力系统的电力稳定问题,从而导致电压崩溃。数据驱动的短期电压稳定裕度评估是电力系统设计和运行的一项关键技术,受负荷动态特性的制约。本文讨论了使用深度学习来提高VSM的准确性和量化与预测值相关的不确定性。VSM的区间估计对于实时监测短期电压稳定性,防止电压快速崩溃和持续低电压无恢复具有重要意义。该方法采用多目标灰狼优化器(GWO)算法优化的双向门控循环单元(GRU)。采用IEEE59和IEEE Nordic-44总线系统进行时域仿真,为电网稳定性评估提供训练样本,并保持高水平的网格可观测性。生成的n - 1应急测试用例数据使用基于PSS/E的电力系统工程模拟器进行时域仿真。由故障引起的电压事件产生的特征包括干扰后的电压幅度、角度、频率以及系统母线的有功和无功轨迹。结果表明,该方法能够及时进行稳定性评估,具有较高的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bidirectional Gated Recurrent Unit Based-Grey Wolf Optimizer for Interval Prediction of Voltage Margin Stability Index in Power Systems
Despite the importance of Photovoltaic (PV) generation systems for smart grids, the uncertainty of PV power outputs due to weather variations can cause power stability problems leading up to voltage collapse in power systems. Governed by load dynamics, data-driven short-term Voltage Stability Margin (VSM) assessment is a critical technique for power system design and operation. This paper addresses improving the VSM accuracy and quantifying the uncertainties associated with the predicted values using deep learning. Interval estimation of VSM is significant for monitoring short-term voltage stability in real-time against fast voltage collapse and sustained low voltage without recovery. The proposed solution lies in the use of a Bidirectional Gated Recurrent Unit (GRU) optimized by a multi-objective Grey Wolf optimizer (GWO) algorithm. Time domain simulation results are conducted using IEEE59 and IEEE Nordic-44 bus systems to provide the training samples and maintain a high level of grid observability for the grid stability evaluation. The generated N-l contingency test cases data were conducted using Power System Simulator for Engineering (PSS/E)-based time domain simulations. The generated features from fault-induced voltage events include the post-disturbance voltage magnitude, angles, frequencies, and active and reactive power trajectories of the system buses. The obtained results show that the proposed method can enable timely stability assessment with higher effectiveness.
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