首页> 外文会议>Industry Applications Conference, 1996. Thirty-First IAS Annual Meeting, IAS '96., Conference Record of the 1996 IEEE >Adaptive real-time tracking controller for induction motor drives using neural designs
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Adaptive real-time tracking controller for induction motor drives using neural designs

机译:使用神经设计的感应电动机驱动器的自适应实时跟踪控制器

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This paper presents a learning architecture for the identification and control of nonlinear induction motor dynamics with unknown parameters. The control and identification parameters are adjusted simultaneously in real-time using the dynamic backpropagation algorithm. Both identification and control are carried out at pre-specified (and possibly different) time intervals, as the system is in operation. The proposed architecture adapts and generalizes its learning to a wide variety of loads, and in addition provides the necessary abstraction when measurements are contaminated with noise. Extensive simulations reveal that neural designs are effective means of system identification and control for time-varying nonlinear systems, in the presence of uncertainty. The difficulties addressed by this article include incomplete system knowledge, nonlinearity, noise and delays.
机译:本文提出了一种用于识别和控制参数未知的非线性感应电动机动力学的学习架构。使用动态反向传播算法可同时实时调整控制和识别参数。当系统运行时,识别和控制都在预先指定的(可能不同的)时间间隔进行。所提出的体系结构将其学习适应和推广到各种各样的负载中,此外,当测量结果被噪声污染时,该体系结构还提供了必要的抽象。大量的仿真表明,在存在不确定性的情况下,神经设计是时变非线性系统进行系统识别和控制的有效手段。本文解决的困难包括不完整的系统知识,非线性,噪声和延迟。

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