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PERFORMANCE-INDEX FUNCTIONS IN NETWORKED CONTROL SYSTEMS WITH DISTURBANCE AND NOISE

机译:具有干扰和噪声的网络控制系统的性能指标函数

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This paper presents performance-index functions (PIFs) in networked control systems (NCSs) with disturbance and noise using nonlinear approximations. Based on experimental data, exponential and polynomial approximations are formulated to describe the system performance versus frequency and disturbance. Approximation methods can be used to estimate the amount of disturbance at a given frequency. Once the frequency and the magnitude of disturbance are determined, the optimal sampling frequency can be calculated from PIFs. The exponential and polynomial approximation techniques can be used for an NCS to run within an allowable performance level using PIFs with minimizing the system bandwidth utilization (BU). In this paper, a DC motor speed control system through network is used as an example. From experimental data, the coefficients for exponential and polynomial approximation equations are calculated using a trust-region algorithm and a linear least squares algorithm, respectively. Although the exponential method traces the experimental data better than the polynomial one, it will also take up more resources in real time and may degrade the NCS performance if its calculation time takes more than the allowable time for a given sampling period. Thus a balance between cost and performance should be maintained.
机译:本文使用非线性逼近来介绍具有干扰和噪声的网络控制系统(NCS)中的性能指标函数(PIF)。根据实验数据,采用指数和多项式近似来描述系统性能与频率和干扰的关系。近似方法可用于估计给定频率下的干扰量。一旦确定了干扰的频率和大小,便可以从PIF中计算出最佳采样频率。指数和多项式逼近技术可用于NCS,使其在使用PIF的情况下在允许的性能级别内运行,同时将系统带宽利用率(BU)降至最低。本文以通过网络的直流电动机调速系统为例。根据实验数据,分别使用信任区算法和线性最小二乘算法计算指数和多项式逼近方程的系数。尽管指数方法比多项式方法能更好地跟踪实验数据,但是它也会实时占用更多资源,并且如果计算时间超过给定采样周期的允许时间,则可能会降低NCS性能。因此,应保持成本与性能之间的平衡。

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