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Robust Voltage Control Considering Uncertainties of Renewable Energies and Loads via Improved Generative Adversarial Network

机译:考虑通过改进的生成对抗网络,考虑可再生能量的不确定性和负载的鲁棒电压控制

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摘要

The fluctuation of output power of renewable energies and loads brings challenges to the scheduling and operation of the distribution network. In this paper, a robust voltage control model is proposed to cope with the uncertainties of renewable energies and loads based on an improved generative adversarial network (IGAN). Firstly, both real and predicted data are used to train the IGAN consisting of a discriminator and a generator. The noises sampled from the Gaussian distribution are fed to the generator to generate a large number of scenarios that are utilized for robust voltage control after scenario reduction. Then, a new improved wolf pack algorithm (IWPA) is presented to solve the formulated robust voltage control model, since the accuracy of the solutions obtained by traditional methods is limited. The simulation results show that the IGAN can accurately capture the probability distribution characteristics and dynamic nonlinear characteristics of renewable energies and loads, which makes the scenarios generated by IGAN more suitable for robust voltage control than those generated by traditional methods. Furthermore, IWPA has a better performance than traditional methods in terms of convergence speed, accuracy, and stability for robust voltage control.
机译:可再生能源和负载的输出功率的变动带来的配电网络的调度和运行的挑战。在本文中,一个强大的电压控制模型,提出了应付可再生能源和负载的基于改进的生成对抗网络(IgA肾病)上的不确定性。首先,实际和预测的数据被用来训练由鉴别器和发电机的IgA肾病。从高斯分布采样的噪声被馈送到发生器,用于产生大量被用于场景还原后鲁棒电压控制方案。然后,提出了一种新的改进狼包算法(IWPA)解决配制鲁棒电压控制模式,因为用传统的方法获得的解的精度受到限制。仿真结果表明,IgA肾病可以准确地捕捉的概率分布的特性和可再生能源和负载的动态非线性特性,这使得由IgA肾病更适合于比传统的方法产生的那些鲁棒电压控制所产生的场景。此外,IWPA比在强大的电压控制的收敛速度,精度和稳定性方面的传统方法有更好的表现。

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