Nonlinear estimation of torque in switched reluctance motors using grid locking and preferential training techniques on self-organizing neural networks

J.J. Garside, R. Brown, T.L. Ruchti, X. Feng
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引用次数: 6

Abstract

The torque of a switched reluctance motor (SRM) can be estimated using a topology-preserving self-organizing neural network map. Since self-organizing maps tend to contract at region boundaries, a procedure for locking neuron weights at specific locations in a region is presented. A strategy for preferentially training neuron weights on the region boundaries is introduced. As an example of these training techniques, a one-dimensional neural network will approximate a nonlinear function. In general an n-dimension mapping can be used to approximate an m-dimensional system for n>
基于网格锁定和自组织神经网络优先训练技术的开关磁阻电机转矩非线性估计
利用保持拓扑的自组织神经网络映射可以估计开关磁阻电机的转矩。由于自组织映射倾向于在区域边界处收缩,因此提出了在区域中特定位置锁定神经元权值的方法。介绍了一种在区域边界上优先训练神经元权值的策略。作为这些训练技术的一个例子,一维神经网络将近似一个非线性函数。一般来说,n维映射可以用来近似n>的m维系统。
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