首页> 外文会议>Industrial Electronics, Control and Instrumentation, 1994. IECON '94., 20th International Conference on >Modeling faulted switched reluctance motors using evolutionary neural networks
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Modeling faulted switched reluctance motors using evolutionary neural networks

机译:使用进化神经网络对故障开关磁阻电机建模

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The work presented examines the feasibility of using artificial neural networks (ANNs) and evolutionary algorithms (EAs) to model fault free and faulted switched reluctance motor (SRM) drive systems. SRMs are capable of functioning despite the presence of faults. Faults impart transient changes to machine inductances in a manner that is difficult to model analytically. After this transient period, SRMs are capable of functioning at a reduced level of performance. ANNs are applied for their well known interpolation capabilities for highly nonlinear systems. EAs are employed for their ability to search a complex structural and parametric space as necessary to find good ANN solutions. In this paper, the ANN structure and training regimen are described for application to an example SRM drive system under normal and abnormal operating conditions.
机译:提出的工作检验了使用人工神经网络(ANN)和进化算法(EA)建模无故障和故障开关磁阻电机(SRM)驱动系统的可行性。即使存在故障,SRM仍能够运行。故障会以难以分析建模的方式将瞬态变化赋予电机电感。在此过渡期之后,SRM能够以降低的性能运行。人工神经网络因其众所周知的用于高度非线性系统的插值功能而得到应用。 EA被用来搜索复杂的结构和参数空间,以找到良好的ANN解决方案。在本文中,将描述ANN结构和训练方案,以应用于正常和异常运行条件下的示例SRM驱动系统。

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