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首页> 外文期刊>Journal of Chemical Engineering & Process Technology >Artificial Neural Networks Controller for Crude Oil Distillation Column ofBaiji Refinery
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Artificial Neural Networks Controller for Crude Oil Distillation Column ofBaiji Refinery

机译:百济炼厂原油蒸馏塔的人工神经网络控制器

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摘要

A neural networks controller is developed and used to regulate the temperatures in a crude oil distillation unit. Two types of neural networks are used; neural networks predictive and nonlinear autoregressive moving average (NARMA-L2) controllers. The neural networks controller that is implemented in the neural network toolbox software uses a neural network model of a nonlinear plant to predict future plant performance. Artificial neural network in MATLAB simulator is used to model Baiji crude oil distillation unit based on data generated from aspen-HYSYS simulator. A comparison has been made between two methods to test the effectiveness and performance of the responses. The results show that a good improvement is achieved when the NARMA-L2 controller is used with maximum mean square error of 103.1 while the MSE of neural predictive is 182.7 respectively. Also shown priority of neural networks NARMA-L2 controller which gives less offset value and the temperature response reach the steady state value in less time with lower over-shoot compared with neural networks predictive controller.
机译:开发了神经网络控制器并将其用于调节原油蒸馏装置中的温度。使用两种类型的神经网络。神经网络预测和非线性自回归移动平均(NARMA-L2)控制器。在神经网络工具箱软件中实现的神经网络控制器使用非线性工厂的神经网络模型来预测未来的工厂性能。利用MATLAB仿真器中的人工神经网络,基于aspen-HYSYS仿真器生成的数据对百济原油蒸馏装置进行建模。在两种方法之间进行了比较,以测试响应的有效性和性能。结果表明,使用NARMA-L2控制器时最大均方误差为103.1,而神经预测的MSE分别为182.7,可以实现良好的改进。还显示了神经网络NARMA-L2控制器的优先级,与神经网络预测控制器相比,该控制器具有较小的偏移值,并且温度响应在较短的时间内具有较少的过冲,并且可以达到稳态值。

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