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Application of Artificial Neural Networks Based Monte Carlo Simulation in the Expert System Design and Control of Crude Oil Distillation Column of a Nigerian Refinery

机译:基于人工神经网络的蒙特卡罗模拟在尼日利亚炼油厂原油精馏塔专家系统设计与控制中的应用。

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This research work investigated comparative studies of expert system design and control of crude oil distillation column (CODC) using artificial neural networks based Monte Carlo (ANNBMC) simulation of random processes and artificial neural networks (ANN) model which were validated using experimental data obtained from functioning crude oil distillation column of Port-Harcourt Refinery, Nigeria by MATLAB computer program. Ninety percent (90%) of the experimental data sets were used for training while ten percent (10%) were used for testing the networks. The maximum relative errors between the experimental and calculated data obtained from the output variables of the neural network for CODC design were 1.98 error % and 0.57 error % when ANN only and ANNBMC were used respectively while their respective values for the maximum relative error were 0.346 error % and 0.124 error % when they were used for the controller prediction. Larger number of iteration steps of below 2500 and 5000 were required to achieve convergence of less than 10-7?for the training error using ANNBMC for both the design of the CODC and controller respectively while less than 400 and 700 iteration steps were needed to achieve convergence of 10-4?using ANN only. The linear regression analysis performed revealed the minimum and maximum prediction accuracies to be 80.65% and 98.79%; and 98.38% and 99.98% when ANN and ANNBMC were used for the CODC design respectively. Also, the minimum and maximum prediction accuracies were 92.83% and 99.34%; and 98.89% and 99.71% when ANN and ANNBMC were used for the CODC controller respectively as both methodologies have excellent predictions. Hence, artificial neural networks based Monte Carlo simulation is an effective and better tool for the design and control of crude oil distillation column.
机译:这项研究工作使用基于蒙特卡洛的人工神经网络(ANNBMC)随机过程模拟和人工神经网络(ANN)模型进行了专家系统设计和控制,对原油蒸馏塔(CODC)的专家系统进行了比较研究,并使用从MATLAB计算机程序在尼日利亚哈科特港精炼厂的原油蒸馏塔中运行。实验数据集的百分之九十(90 %)用于训练,而网络的测试则占百分之十(10 %)。当仅使用ANN和ANNBMC时,从神经网络的CODC设计输出数据获得的实验数据和计算数据之间的最大相对误差分别为1.98误差%和0.57误差%,而它们各自的最大相对误差分别为当它们用于控制器预测时,误差为0.346%,误差为0.124%。对于CODC和控制器的设计,使用ANNBMC分别需要不到2500和5000的大量迭代步骤来实现小于10-7?的训练误差收敛,而分别需要少于400和700的迭代步骤仅使用ANN收敛10-4?进行的线性回归分析显示,最小和最大预测精度分别为80.65%和98.79%。当ANN和ANNBMC用于CODC设计时,分别为98.38%和99.98%。同样,最小和最大预测准确度分别为92.83%和99.34%。当ANN和ANNBMC分别用于CODC控制器时,分别为98.89%和99.71%,因为这两种方法都具有出色的预测。因此,基于人工神经网络的蒙特卡洛模拟是用于原油蒸馏塔设计和控制的有效且更好的工具。

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