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首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >Online Detecting of Inter-Turn Short-Circuit in Generator Rotor Winding Relying on ν-SVR Machine
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Online Detecting of Inter-Turn Short-Circuit in Generator Rotor Winding Relying on ν-SVR Machine

机译:在ν-SVR机器上依赖发电机转子绕组匝间短路的在线检测

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摘要

To probe an accurate diagnosing approach for synchronous generator (SG) with rotor winding inter-turn short-circuit, a novel online monitoring and detecting method relying on the nu-support vector regression (nu-SVR) machine was proposed, and its effectiveness was further verified by the micro-synchronous generator dynamic simulation. Terminal voltage, active and reactive power of SG were selected as input variables for a novel prediction model based on the nu-SVR, and field current was selected as an output variable of the prediction model. The structures and parameters of the field current prediction model were optimized with the particle swarm optimization (PSO) algorithm and training samples, then the prediction model was established and the field current prediction got under way. By comparing the predicted field current with the corresponding online measured field current, inter-turn short-circuit of rotor winding in SG could be detected sensitively once its absolute value of the prediction relative error exceeded a specific threshold. The micro-synchronous generator dynamic simulation indicated that the proposed online detecting approach based on the nu-SVR machine overcame the shortage of the back-propagation (BP) diagnosis method for misdiagnosis, and its accuracy, sensitivity and threshold setting range of the diagnosis method was the most prominent among these diagnosis methods such as the BP diagnosis method, the Bayesian regularization back-propagation (BRBP) diagnosis method and the epsilon-support vector regression (epsilon-SVR) diagnosis method.
机译:为了探测具有转子绕组的同步发电机(SG)的准确诊断方法,提出了依赖于NU-SCHONT向量回归(NU-SVR)机器的新型在线监测和检测方法,其有效性是通过微同步发电机动态仿真进一步验证。 SG的端电压,主动和无功功率被选择为基于NU-SVR的新型预测模型的输入变量,并选择场电流作为预测模型的输出变量。使用粒子群优化(PSO)算法和训练样本进行了优化了场电流预测模型的结构和参数,然后建立了预测模型,并在路上得到了现场电流预测。通过将预测的场电流与相应的在线测量的场电流进行比较,一旦其预测相对误差的绝对值超过特定阈值,就可以灵敏地检测SG中的转子绕组的匝间短路。微观同步发电机动态仿真表明,基于Nu-SVR机器的在线检测方法克服了误诊的后传播(BP)诊断方法的短缺,及其精度,灵敏度和阈值设置范围的诊断方法在这些诊断方法中最突出的是BP诊断方法,贝叶斯正则化反向传播(BRBP)诊断方法和ε-支持载体回归(EPSILON-SVR)诊断方法。

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