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An artificial-neural-network method for the identification of saturated turbogenerator parameters based on a coupled finite-element/state-space computational algorithm

机译:基于有限元/状态空间耦合计算算法的饱和汽轮发电机参数辨识的人工神经网络方法

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摘要

An artificial neural network (ANN) is used in the identification of saturated synchronous machine parameters under diverse operating conditions. The training data base for the ANN is generated by a time-stepping coupled finite-element/state-space (CFE-SS) modeling technique which is used in the computation of the saturated parameters of a 20-kV, 733-MVA, 0.85 PF (lagging) turbogenerator at discrete load points in the P-Q capability plane for three different levels of terminal voltage. These computed parameters constitute a learning data base for a multilayer ANN structure which is successfully trained using the backpropagation algorithm. Results indicate that the trained ANN can identify saturated machine-reactances for arbitrary load points in the P-Q plane with an error less than 2% of those values obtained directly from the CFE-SS algorithm. Thus, significant savings in computational time are obtained in such parameter computation tasks.
机译:人工神经网络(ANN)用于在各种运行条件下识别饱和同步电机参数。 ANN的训练数据库是通过时步耦合有限元/状态空间(CFE-SS)建模技术生成的,该技术用于计算20 kV,733-MVA,0.85的饱和参数在三种不同级别的端子电压下,PQ能力平面中离散负载点处的PF(滞后)涡轮发电机。这些计算出的参数构成了多层ANN结构的学习数据库,该多层ANN结构已使用反向传播算法成功进行了训练。结果表明,经过训练的ANN可以识别P-Q平面中任意载荷点的饱和机器反应,其误差小于直接从CFE-SS算法获得的那些值的2%。因此,在这样的参数计算任务中节省了计算时间。

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