A layer-sensitivity based artificial neural network for characterization of oil palm fruitlets

This paper presents an intelligent means of addressing characterization and grading problems in the oil palm industry for the purpose of quality control. A Layer-Sensitivity Based Artificial Neural Network (LSB_ANN) which updates its layer weights based on sensitivity analysis was designed to predic...

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Main Authors: Adedayo, Ojo O., Onibonoje, Moses, Isa, Maryam
Format: Article
Published: Chaoyang University of Technology 2021
Online Access:http://psasir.upm.edu.my/id/eprint/95759/
https://gigvvy.com/journals/ijase/articles/18/1/
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spelling my.upm.eprints.957592023-04-04T06:40:18Z http://psasir.upm.edu.my/id/eprint/95759/ A layer-sensitivity based artificial neural network for characterization of oil palm fruitlets Adedayo, Ojo O. Onibonoje, Moses Isa, Maryam This paper presents an intelligent means of addressing characterization and grading problems in the oil palm industry for the purpose of quality control. A Layer-Sensitivity Based Artificial Neural Network (LSB_ANN) which updates its layer weights based on sensitivity analysis was designed to predict the oil content and dielectric constant of mature oil palm fruitlets. The LSB_ANN was designed, optimized and trained with 604 data points obtained from laboratory microwave coaxial sensor measurements within 2- 4 GHz. The performance evaluation of the model when tested with a separate set of data showed that the properties of the fruitlets were accurately modeled. To further investigate the generalization ability of the trained neural network, three other neural network training algorithms were deployed for the same dataset. A multi-criteria evaluation of the performances of the networks showed that the proposed LSB_ANN outperformed the other three in generalization accuracy, time and computing resources. The LSB_ANN therefore represents a handy tool for rapid and intelligent characterization of oil palm fruitlets for quality control and research purposes. Chaoyang University of Technology 2021 Article PeerReviewed Adedayo, Ojo O. and Onibonoje, Moses and Isa, Maryam (2021) A layer-sensitivity based artificial neural network for characterization of oil palm fruitlets. International Journal of Applied Science and Engineering, 18 (1). pp. 1-7. ISSN 1727-2394; ESSN: 1727-7841 https://gigvvy.com/journals/ijase/articles/18/1/ 10.6703/IJASE.202103_18(1).011
institution Universiti Putra Malaysia
building UPM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Putra Malaysia
content_source UPM Institutional Repository
url_provider http://psasir.upm.edu.my/
description This paper presents an intelligent means of addressing characterization and grading problems in the oil palm industry for the purpose of quality control. A Layer-Sensitivity Based Artificial Neural Network (LSB_ANN) which updates its layer weights based on sensitivity analysis was designed to predict the oil content and dielectric constant of mature oil palm fruitlets. The LSB_ANN was designed, optimized and trained with 604 data points obtained from laboratory microwave coaxial sensor measurements within 2- 4 GHz. The performance evaluation of the model when tested with a separate set of data showed that the properties of the fruitlets were accurately modeled. To further investigate the generalization ability of the trained neural network, three other neural network training algorithms were deployed for the same dataset. A multi-criteria evaluation of the performances of the networks showed that the proposed LSB_ANN outperformed the other three in generalization accuracy, time and computing resources. The LSB_ANN therefore represents a handy tool for rapid and intelligent characterization of oil palm fruitlets for quality control and research purposes.
format Article
author Adedayo, Ojo O.
Onibonoje, Moses
Isa, Maryam
spellingShingle Adedayo, Ojo O.
Onibonoje, Moses
Isa, Maryam
A layer-sensitivity based artificial neural network for characterization of oil palm fruitlets
author_facet Adedayo, Ojo O.
Onibonoje, Moses
Isa, Maryam
author_sort Adedayo, Ojo O.
title A layer-sensitivity based artificial neural network for characterization of oil palm fruitlets
title_short A layer-sensitivity based artificial neural network for characterization of oil palm fruitlets
title_full A layer-sensitivity based artificial neural network for characterization of oil palm fruitlets
title_fullStr A layer-sensitivity based artificial neural network for characterization of oil palm fruitlets
title_full_unstemmed A layer-sensitivity based artificial neural network for characterization of oil palm fruitlets
title_sort layer-sensitivity based artificial neural network for characterization of oil palm fruitlets
publisher Chaoyang University of Technology
publishDate 2021
url http://psasir.upm.edu.my/id/eprint/95759/
https://gigvvy.com/journals/ijase/articles/18/1/
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score 13.1944895