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Cloud Neural Algorithm based Load Frequency Control in Interconnected Power System

机译:基于云神经算法的互连电力系统负载频率控制

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In order to effectively increase the control quality of the load frequency controller, this paper proposes a Cloud-Neural Network PI controller based on cloud theory to solve the adverse effects of uncertainties in interconnected power system. Cloud theory solves uncertain problems by skillfully combining probability statistics with fuzzy theory, but relies heavily on artificial experience, while proposed cloud neural network algorithm can learn cloud control rules by itself. Therefore, cloud-neural network PI controller can solve the problem of fixing the membership functions of input variables and fuzzy rules by clouds algorithm, and implement the nonlinear mapping between variables by neural network. Compared with cloud theory, this new algorithm retains self-learning function of the neural network and does not depend on artificial experience. On the Matlab platform, comparison of Cloud-Neural Network PI controller, Cloud PI controller and traditional PI controller is made in complex nonlinear power system, and simulation results show that proposed Cloud-Neural Network PI controller has strong adaptive and self-learning capabilities, presenting better robust performance and dynamic-static characteristic.
机译:为了有效地提高负载频率控制器的控制质量,本文提出了一种基于云理论的云神经网络PI控制器,解决了不确定性在互联电力系统中的不利影响。云理论通过巧妙地将概率统计与模糊理论结合起来解决了不确定的问题,但依赖于人工经验,而提出的云神经网络算法本身可以学习云控制规则。因此,云 - 神经网络PI控制器可以通过云算法来解决输入变量和模糊规则的成员函数的问题,并实现神经网络变量之间的非线性映射。与云理论相比,这种新算法保留了神经网络的自学习功能,不依赖于人工体验。在MATLAB平台上,云 - 神经网络PI控制器,云PI控制器和传统PI控制器的比较是复杂的非线性电力系统,仿真结果表明,提出的云神经网络PI控制器具有强大的自适应和自学习能力,呈现更强的稳健性能和动态静态特性。

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