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Nonlinear neural control with power systems applications.

机译:非线性神经控制在电力系统中的应用。

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Extensive studies have been undertaken on the transient stability of large interconnected power systems with flexible ac transmission systems (FACTS) devices installed. Varieties of control methodologies have been proposed to stabilize the postfault system which would otherwise eventually lose stability without a proper control. Generally speaking, regular transient stability is well understood, but the mechanism of load-driven voltage instability or voltage collapse has not been well understood. The interaction of generator dynamics and load dynamics makes synthesis of stabilizing controllers even more challenging.;There is currently increasing interest in the research of neural networks as identifiers and controllers for dealing with dynamic time-varying nonlinear systems. This study focuses on the development of novel artificial neural network architectures for identification and control with application to dynamic electric power systems so that the stability of the interconnected power systems, following large disturbances, and/or with the inclusion of uncertain loads, can be largely enhanced, and stable operations are guaranteed.;The latitudinal neural network architecture is proposed for the purpose of system identification. It may be used for identification of nonlinear static/dynamic loads, which can be further used for static/dynamic voltage stability analysis. The properties associated with this architecture are investigated.;A neural network methodology is proposed for dealing with load modeling and voltage stability analysis. Based on the neural network models of loads, voltage stability analysis evolves, and modal analysis is performed. Simulation results are also provided.;The transient stability problem is studied with consideration of load effects. The hierarchical neural control scheme is developed. Trajectory-following policy is used so that the hierarchical neural controller performs as almost well for non-nominal cases as they do for the nominal cases. The adaptive hierarchical neural control scheme is also proposed to deal with the time-varying nature of loads. Further, adaptive neural control, which is based on the on-line updating of the weights and biases of the neural networks, is studied. Simulations provided on the faulted power systems with unknown loads suggest that the proposed adaptive hierarchical neural control schemes should be useful for practical power applications.
机译:对于安装了柔性交流传输系统(FACTS)的大型互连电源系统的瞬态稳定性,已经进行了广泛的研究。已经提出了各种控制方法来稳定故障后系统,否则将在没有适当控制的情况下最终失去稳定性。一般而言,常规的瞬态稳定性已广为人知,但负载驱动的电压不稳定性或电压崩溃的机理尚未得到很好的理解。发电机动力学和负载动力学的相互作用使稳定控制器的合成更具挑战性。;目前,对于神经网络作为用于处理动态时变非线性系统的标识符和控制器的研究越来越受到关注。这项研究专注于开发用于识别和控制的新型人工神经网络体系结构,并将其应用于动态电力系统,以便可以在很大的干扰之后和/或在不确定的负载下极大地提高互连电力系统的稳定性。为了保证系统辨识,提出了一种经纬度的神经网络架构。它可用于识别非线性静态/动态负载,并可进一步用于静态/动态电压稳定性分析。研究了与该架构有关的特性。提出了一种神经网络方法来处理负载建模和电压稳定性分析。基于负载的神经网络模型,发展了电压稳定性分析,并进行了模态分析。还提供了仿真结果。;考虑了负载效应,研究了暂态稳定问题。开发了分级神经控制方案。使用轨迹跟踪策略,以便分层神经控制器在非标称情况下的性能几乎与标称情况一样好。还提出了适应性的分层神经控制方案,以应对负荷的时变性质。此外,研究了基于神经网络的权重和偏差的在线更新的自适应神经控制。在未知负载的故障电力系统上提供的仿真表明,提出的自适应分层神经控制方案应对实际电力应用有用。

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