A nonlinear autoregressive exogenous neural network (NARX-NN) model for the prediction of solvent-based oil extraction from Hura crepitans seeds

IF 1 Q4 ENGINEERING, CHEMICAL Chemical Product and Process Modeling Pub Date : 2023-02-15 DOI:10.1515/cppm-2022-0032
Olajide Olukayode Ajala, Joel Olatunbosun Oyelade, E. Oke, O. Oniya, B. K. Adeoye
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引用次数: 1

Abstract

Abstract Vegetable oils are a crucial source of raw materials for many industries. In order to meet the rising demand for oil on global scale, it has become essential to investigate underutilized plant oilseeds. Hura crepitans seeds are one of the underused plant oilseeds from which oil can be produced via solvent-based extraction. For the purpose of predicting the oil yield from Hura crepitans seeds, the extraction process was modelled using a nonlinear autoregressive exogenous neural network (NARX-NN). The input variables to the model are seed/solvent ratio, extraction temperature and extraction time, while oil yield is the response output variable. NARX-NN model is based on 200 data samples, and model architecture comprises of 3 inputs, 1 hidden layer (with 15 neurons) and 1 output with 2 delay elements. The performance evaluation was carried out to examine the accuracy of the developed model in predicting oil yield from Hura crepitans using different statistical indices. The overall correlation coefficient, R (0.80829), mean square error, MSE (0.0120), root mean square error, RMSE (0.1080) and standard prediction error, SEP (0.1666) show that NARX-NN model can accurately be used for the prediction oil yield from Hura crepitans seeds.
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基于非线性自回归外源神经网络(NARX-NN)模型的胡拉籽溶剂萃取过程预测
摘要植物油是许多工业原料的重要来源。为了满足全球范围内日益增长的石油需求,研究未充分利用的植物油籽变得至关重要。胡拉可丽草籽是一种未被充分利用的植物油籽,可以通过溶剂萃取生产油。为了预测Hura crepitans种子的产油量,使用非线性自回归外源神经网络(NARX-NN)对提取过程进行了建模。模型的输入变量是种子/溶剂比、提取温度和提取时间,而油产量是响应输出变量。NARX-NN模型基于200个数据样本,模型架构包括3个输入、1个隐藏层(具有15个神经元)和1个具有2个延迟元件的输出。进行性能评估是为了检验所开发的模型在使用不同的统计指数预测Hura可丽耐油产量方面的准确性。总体相关系数R(0.80829)、均方误差MSE(0.0120)、均方根误差RMSE(0.1080)和标准预测误差SEP(0.1666。
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来源期刊
Chemical Product and Process Modeling
Chemical Product and Process Modeling ENGINEERING, CHEMICAL-
CiteScore
2.10
自引率
11.10%
发文量
27
期刊介绍: Chemical Product and Process Modeling (CPPM) is a quarterly journal that publishes theoretical and applied research on product and process design modeling, simulation and optimization. Thanks to its international editorial board, the journal assembles the best papers from around the world on to cover the gap between product and process. The journal brings together chemical and process engineering researchers, practitioners, and software developers in a new forum for the international modeling and simulation community. Topics: equation oriented and modular simulation optimization technology for process and materials design, new modeling techniques shortcut modeling and design approaches performance of commercial and in-house simulation and optimization tools challenges faced in industrial product and process simulation and optimization computational fluid dynamics environmental process, food and pharmaceutical modeling topics drawn from the substantial areas of overlap between modeling and mathematics applied to chemical products and processes.
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