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Characterization of Stand Alone AC Generators During No-Break Power Transfer Using Radial Basis Networks

机译:基于径向基网络的无中断功率传输期间独立交流发电机的特性

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摘要

This paper describes the use of an artificial intelligence-electromagnetic modeling approach for the performance prediction of stand alone synchronous generators during no break power transfer (NBPT) operating conditions. This approach uses radial basis networks (RBNs), which have the advantage of not being locked into local minima as could do feedforward neural networks. The RBNs are simply linear function approximators that use radial basis functions which are powerful techniques for interpolation in multidimensional space. The RBN is used to evaluate the stresses accompanying this mode of operation which may result in the failure of the diodes in the rotating rectifier bridge of the generator brushless field exciter. The modeling approach is applied in a case study of two standalone synchronous generators system for aerospace applications. This study resulted in the prediction of the system performance characteristics including the peak currents and reverse voltages of the rotating diodes. The simulation results were validated by comparison to experimental data.
机译:本文介绍了人工智能-电磁建模方法在无间断功率传输(NBPT)运行条件下用于独立同步发电机性能预测的方法。该方法使用径向基网络(RBN),其优点是不会像前馈神经网络那样被锁定在局部最小值中。 RBN只是使用径向基函数的简单线性函数逼近器,径向基函数是在多维空间中进行插值的强大技术。 RBN用于评估伴随此操作模式的应力,该应力可能导致发电机无刷励磁机的旋转整流桥中的二极管失效。该建模方法应用于两个独立的航空航天同步发电机系统的案例研究。这项研究可以预测系统性能特征,包括旋转二极管的峰值电流和反向电压。通过与实验数据进行比较来验证仿真结果。

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