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Estimating Random Delays in Modbus Over TCP/IP Network Using Experiments and General Linear Regression Neural Networks with Genetic Algorithm Smoothing

机译:使用实验和通用线性回归神经网络估计TCP / IP网络上的Modbus随机延迟,具有遗传算法平滑

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Time-varying delays adversely affect the performance of networked control systems (NCS) and in the worst case can destabilize the entire system. Therefore, modeling network delays are important for designing NCS. However, modeling time-varying delays are challenging because of their dependence on multiple parameters, such as length, contention, connected devices, protocol employed, and channel loading. Further, these multiple parameters are inherently random and delays vary in a nonlinear fashion with respect to time. This makes estimating random delays challenging. This investigation presents a methodology to model delays in NCS using experiments and general regression neural network (GRNN) due to their ability to capture nonlinear relationship. To compute the optimal smoothing parameter that computes the best estimates, genetic algorithm is used. The objective of the genetic algorithm is to compute the optimal smoothing parameter that minimizes the mean absolute percentage error (MAPE). Our results illustrate that the resulting GRNN is able to predict the delays with less than 3 % error. The proposed delay model gives a framework to design compensation schemes for NCS subjected to time-varying delays.
机译:时变延迟对网络控制系统(NCS)的性能产生不利影响,并且在最坏的情况下可以使整个系统稳定。因此,建模网络延迟对于设计NCS很重要。然而,建模时变延迟是具有挑战性的,因为它们对多个参数的依赖性,例如长度,争用,连接的设备,采用的协议和信道加载。此外,这些多个参数本质上是随机的,并且延迟在相对于时间以非线性方式变化。这使得估算随机延迟具有挑战性。本研究提出了一种方法来使用实验和一般回归神经网络(GRNN)来模拟NCS的模型延迟,这是由于它们捕获非线性关系的能力。为了计算计算最佳估计的最佳平滑参数,使用遗传算法。遗传算法的目的是计算最佳平滑参数,最小化平均绝对百分比误差(MAPE)。我们的结果说明了得到的GRNN能够预测误差小于3%的延迟。所提出的延迟模型提供了一个框架,用于设计经过多变延迟的NCS的补偿方案。

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