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Static ATC Estimation Using Fully Complex-Valued Radial Basis Function Neural Network

机译:静态ATC估计使用完全复数径向基函数神经网络

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In the deregulated power systems, the available transfer capability (ATC) should be known for secure and reliable operation. ATC mainly depends on load for a particular transaction. Due to complex nature of load, it is better if the ATC estimator is able to handle this complex nature. This paper presents fully complex-valued radial basis function (FC-RBF) neural network approach for ATC estimation for bilateral transaction under normal condition. The training patterns for neural network are generated using differential evolution algorithm (DEA). The important feature of the proposed method is the use of input reduction techniques to improve the performance of the developed network. Differential evolution feature selection (DEFS) technique is proposed to reduce the complexity and training time of neural network. The proposed method is tested on IEEE 118 bus system, and results are compared with DEA and repeated power flow (RPF) results. The test results show that the proposed method reduces the training time and it is suitable for online application.
机译:在解除管制电力系统中,应以安全可靠的操作已知可用的传输能力(ATC)。 ATC主要取决于特定交易的负载。由于载荷的复杂性,如果ATC估计器能够处理这种复杂性,则更好。本文介绍了正常条件下双边交易的ATC估计的全复杂价值径向基函数(FC-RBF)神经网络方法。使用差分演进算法(DEA)生成神经网络的训练模式。所提出的方法的重要特点是使用输入减少技术来提高开发网络的性能。提出了差分演进特征选择(DEFS)技术以降低神经网络的复杂性和培训时间。该方法在IEEE 118总线系统上测试,并将结果与​​DEA和重复的功率流(RPF)进行比较。测试结果表明,该方法降低了培训时间,它适用于在线申请。

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