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

Author:

Ajala Olajide Olukayode1ORCID,Oyelade Joel Olatunbosun2,Oke Emmanuel Olusola3,Oniya Oluwole Oluwatoyin4,Adeoye Babatunde Kazeem5

Affiliation:

1. Chemical Engineering Department , Obafemi Awolowo University , Ile-Ife , Nigeria

2. Agricultural Engineering Department , Obafemi Awolowo University , Ile-Ife , Osun State , Nigeria

3. Chemical Engineering Department , Micheal Okpara University of Agriculture , Umudike , Nigeria

4. Agricultural Engineering Department , Ladoke Akintola University of Technology , Ogbomoso , Oyo State , Nigeria

5. Food Science and Technology Department , Federal University of Technology , Akure , Nigeria

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.

Publisher

Walter de Gruyter GmbH

Subject

Modeling and Simulation,General Chemical Engineering

Reference21 articles.

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2. Oniya, O, Oyelade, JO, Ogunkunle, O, Idowu, DO. Optimization of solvent extraction of oil from sandbox kernels (Hura crepitans L.) by a response surface method. Energy Pol Res 2017;4:36–43. https://doi.org/10.1080/23815639.2017.1324332.

3. Nde, D, Foncha, A. Optimization methods for the extraction of vegetable oils: a review. Processes 2020;8:1–21. https://doi.org/10.3390/pr8020209.

4. Adewuyi, A, Awolade, P, Oderinde, R. Hura crepitans seed oil: an alternative feedstock for biodiesel production. J Fuel 2014;2014:1–8. https://doi.org/10.1155/2014/464590.

5. Oniya, O, Akande, F, Adedeji, A, Olukayode, O. Transesterification of Hura crepitans oil for biodiesel production. J Eng Appl Sci Res 2014;6:91–9.

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