利用简单的实验室测试预测煤油馏分的烟点:人工神经网络与传统相关性比较

IF 0.7 4区 工程技术 Q4 ENGINEERING, CHEMICAL
Kahina Bedda
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引用次数: 0

摘要

摘要 在本研究中,采用了人工神经网络(ANN)模型和三种著名的相关关系,根据比重和馏分温度预测了 430 种煤油馏分的烟点。人工神经网络模型是用 MATLAB 软件开发的,它是一个具有单隐层的前馈多层感知器。通过使用 nftool 命令进行试错,确定了隐层神经元的最佳数量、最佳训练算法以及连接权重和偏置的最佳值。为了避免模型的过度拟合,采用了交叉验证的早期停止技术。使用 Levenberg-Marquardt 反向传播算法训练了由 17 个西格玛隐神经元和一个线性输出神经元组成的模型。该模型预测烟点的确定系数为 0.852,平均绝对偏差为 1.4 毫米,平均绝对相对偏差为 6%。统计分析结果表明,ANN 模型的预测精度高于传统的相关系数。事实上,除有效性外,所提出的估计烟点的 ANN 方法还具有成本低、易于实施的优点,因为它依赖于简单的实验室测试。因此,所开发的 ANN 模型是一种可靠的工具,可用于石油精炼厂对煤油馏分进行快速质量控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Prediction of Smoke Points of Kerosene Distillates Using Simple Laboratory Tests: Artificial Neural Network versus Conventional Correlations

Prediction of Smoke Points of Kerosene Distillates Using Simple Laboratory Tests: Artificial Neural Network versus Conventional Correlations

Prediction of Smoke Points of Kerosene Distillates Using Simple Laboratory Tests: Artificial Neural Network versus Conventional Correlations

In the present study, an artificial neural network (ANN) model and three well-known correlations were used to predict the smoke points of 430 kerosene distillates from their specific gravities and distillation temperatures. The ANN model was developed in MATLAB software, it is a feedforward multilayer perceptron with a single hidden layer. The optimal number of neurons in the hidden layer as well as the best training algorithm and the best values of connection weights and biases were determined by trial and error using the nftool command. The early stopping technique by cross-validation was employed to avoid overfitting of the model. The developed model composed of 17 sigmoid hidden neurons and one linear output neuron was trained with the Levenberg-Marquardt backpropagation algorithm. This model allowed the prediction of smoke points with a coefficient of determination of 0.852, an average absolute deviation of 1.4 mm and an average absolute relative deviation of 6%. Statistical analysis of the results indicated that the prediction accuracy of the ANN model is higher than that of the conventional correlations. Indeed, in addition to its effectiveness, the proposed ANN method for the estimation of smoke points has the advantages of low-cost and easy implementation, as it relies on simple laboratory tests. Thus, the developed ANN model is a reliable tool that can be used in petroleum refineries for fast quality control of kerosene distillates.

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来源期刊
CiteScore
1.20
自引率
25.00%
发文量
70
审稿时长
24 months
期刊介绍: Theoretical Foundations of Chemical Engineering is a comprehensive journal covering all aspects of theoretical and applied research in chemical engineering, including transport phenomena; surface phenomena; processes of mixture separation; theory and methods of chemical reactor design; combined processes and multifunctional reactors; hydromechanic, thermal, diffusion, and chemical processes and apparatus, membrane processes and reactors; biotechnology; dispersed systems; nanotechnologies; process intensification; information modeling and analysis; energy- and resource-saving processes; environmentally clean processes and technologies.
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