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Enhanced Direct Torque Control for Doubly Fed Induction Machine by Active Learning Method

机译:通过主动学习方法增强了双馈电机的直接扭矩控制

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This paper implements trial and error actively as a method called Active Learning Method (ALM) in Direct Torque Control (DTC) that is accompanied by some problems such as non accuracy of flux, torque estimator, torque and flux ripple caused by non-optimality of switching and imprecision in motor model which are all the inherent characteristics. To overcome these difficulties ALM is used on DTC for Doubly-Fed Induction Machines (DFIM) which are motors or generators having twist on both stator and rotor subsequence power is transferred between shaft and system. ALM adopts itself with torque and flux estimators and estimates the outputs with regards to errors in torque and flux estimation by repetition therefore achieves the object of omitting inaccuracies in control system hence confirming the effectiveness. Another concept in ALM called Ink Drop Spread (IDS) handles different modeling target to predict on the data consequensing a behavior curve in DTC.
机译:本文将试验和误差充值为直接扭矩控制(DTC)中的一种方法,该方法伴随着诸如非最优性引起的磁通量,扭矩估计器,扭矩和磁通脉动等一些问题电机模型中的切换和不精确,这是所有固有特性。为了克服这些困难,ALM用于DTC用于双馈感应机器(DFIM),其是具有在轴和系统之间的转子和转子后续功率上具有扭曲的电动机或发电机。 ALM采用扭矩和焊剂估计,并估计关于扭矩和磁通误差的输出通过重复估计,因此实现了控制系统中省略不准确性的对象,因此确认了效果。 ALM中的另一个概念称为墨滴扩展(IDS)处理不同的建模目标以预测结果在DTC中产生行为曲线的数据。

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