Nonlinear Autoregressive Moving Average-L2 Model Based Adaptive Control of Nonlinear Arm Nerve Simulator System

Mustefa Jibril
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引用次数: 1

Abstract

This paper considers the trouble of the usage of approximate strategies for realizing the neural controllers for nonlinear SISO systems. In this paper, we introduce the nonlinear autoregressive moving average (NARMA-L2) model which might be approximations to the NARMA model. The nonlinear autoregressive moving average (NARMA-L2) model is an precise illustration of the input–output behavior of finite-dimensional nonlinear discrete time dynamical systems in a neighborhood of the equilibrium state. However, it isn't always handy for purposes of neural networks due to its nonlinear dependence on the manipulate input. In this paper, nerves system based arm position sensor device is used to degree the precise arm function for nerve patients the use of the proposed systems. In this paper, neural network controller is designed with NARMA-L2 model, neural network controller is designed with NARMA-L2 model system identification based predictive controller and neural network controller is designed with NARMA-L2 model based model reference adaptive control system. Hence, quite regularly, approximate techniques are used for figuring out the neural controllers to conquer computational complexity. Comparison were made among the neural network controller with NARMA-L2 model, neural network controller with NARMA-L2 model system identification based predictive controller and neural network controller with NARMA-L2 model reference based adaptive control for the preferred input arm function (step, sine wave and random signals). The comparative simulation result shows the effectiveness of the system with a neural network controller with NARMA-L2 model based model reference adaptive control system. Index Terms: Nonlinear autoregressive moving average, neural network, Model reference adaptive control, Predictive controller DOI: 10.7176/ISDE/11-2-02 Publication date: March 31 st 2020
基于非线性自回归移动平均- l2模型的非线性臂神经模拟器系统自适应控制
本文考虑了使用近似策略实现非线性SISO系统的神经控制器的麻烦。本文介绍了非线性自回归移动平均(NARMA- l2)模型,它可以近似于NARMA模型。非线性自回归移动平均(NARMA-L2)模型是有限维非线性离散时间动力系统在平衡状态附近的输入-输出行为的精确描述。然而,由于它对操纵输入的非线性依赖,对于神经网络来说,它并不总是很方便。本文采用基于神经系统的手臂位置传感器装置,对神经系统患者的手臂功能进行精确定位。本文采用NARMA-L2模型设计了神经网络控制器,采用NARMA-L2模型设计了基于系统辨识的神经网络控制器,采用NARMA-L2模型设计了基于模型参考的神经网络控制器。因此,有规律地使用近似技术来计算神经控制器以克服计算复杂性。比较了基于NARMA-L2模型的神经网络控制器、基于NARMA-L2模型系统辨识的预测控制器和基于NARMA-L2模型参考的神经网络控制器对首选输入臂函数(步进、正弦波和随机信号)的自适应控制。对比仿真结果表明了神经网络控制器与基于NARMA-L2模型的模型参考自适应控制系统的有效性。索引术语:非线性自回归移动平均,神经网络,模型参考自适应控制,预测控制器DOI: 10.7176/ISDE/11-2-02出版日期:2020年3月31日
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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