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MRAC Combined Neural Networks for Ultra-Sonic Motor

机译:模型参考自适应神经网络对超声波相结合电动机

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摘要

It is difficult for an ultra-sonic motor (USM) to derive a plant model based on the physical analysis. It is well-known that PID control can be constructed even if there is no plant model. In practice, many PID controllers for USM have been proposed. However, there are limitations of control performance on the conventional fixed-gain type PID control because USM causes serious characteristic changes of the plant during operation and contains non-linearity caused by frictions. It is well-known that a model reference adaptive control (MRAC) is very effective to compensate characteristic changes of the plant. However it is not useful for non-linearity of the plant. Then we propose an improved design scheme of MRAC combined with neural networks (NN). The feature of the proposed design scheme is that an improved architecture of the NN is adopted, as a result a simple calculation expression of the Jacobian is derived.
机译:很难一个超声波马达()推导植物模型基于物理分析。即使没有建造工厂模型。在实践中,许多PID控制器对超声电机被提出。在传统的控制性能固定增益型PID控制,因为振子结构的原因严重的植物的特征变化在操作过程中,包含非线性由摩擦引起的。模型参考自适应控制(模型参考自适应)非常有效的补偿特性的变化植物。非线性的植物。提高了模型参考自适应结合的设计方案神经网络(NN)。设计方案是一种改进的体系结构采用神经网络作为一个简单的结果雅可比矩阵的计算表达式派生的。

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