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Learning Techniques to Train Neural Networks as a State Selector in Direct Power Control of DSTATCOM for Voltage Flicker Mitigation

机译:用于培训神经网络作为DSTATCOM直接电源控制的状态选择器的技术选择,用于电压闪烁缓解

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Neural networks are receiving attention as controllers for many industrial applications. Although these networks eliminate the need for mathematical models, they require a lot of training to understand the model of a plant or a process. Issues such as learning speed, stability, and weight convergence remain as areas of research and comparison of many training algorithms. This paper discusses the application of neural networks to control DSTATCOM using direct power control (DPC). A neural network is used to emulate the state selector of the DPC. The training algorithms used in this paper are the adaptive neuron model and the extended Kalman filter. Computer simulations of the DPC with neural network system using the abovementioned algorithms are presented and compared. Discussions about the adaptive neuron model and the extended Kalman filter algorithms as the most promising training techniques are presented, giving their advantages and disadvantages.
机译:神经网络正在作为许多工业应用的控制器受到关注。虽然这些网络消除了对数学模型的需求,但它们需要大量的培训来理解工厂的模型或过程。学习速度,稳定性和体重收敛等问题仍然是许多训练算法的研究和比较。本文讨论了神经网络应用使用直接电源控制(DPC)控制DSTATCOM。神经网络用于模拟DPC的状态选择器。本文中使用的训练算法是自适应神经元模型和扩展卡尔曼滤波器。呈现使用上述算法的DPC计算机模拟,并进行比较。关于自适应神经元模型和扩展卡尔曼滤波器算法的讨论,作为最有前途的训练技术,赋予其优缺点。

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