The Application of Neural Networks in Balancing Production of Crude Sunflower Oil and Meal

The aim of the research is to predict specific output characteristics of half finished goods (crude sunflower oil and meal) on the basis of specific input variables (quality and composition of sunflower seeds), with the help of artificial neural networks. This is an attempt to predict the amount muc...

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Bibliographic Details
Main Authors: Bojan Ivetic, Dragica Radosav
Format: Article
Language:English
Published: UIKTEN 2014-08-01
Series:TEM Journal
Subjects:
Online Access:http://www.temjournal.com/documents/vol3no3/The%20Application%20of%20Neural%20Networks%20in%20Balancing%20Production%20of%20Crude%20Sunflower%20Oil%20and%20Meal.pdf
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spelling doaj-2aa9b4527c8b4a18b5fec02b00dd3d0e2020-11-24T23:39:18ZengUIKTENTEM Journal2217-83092217-83332014-08-0133202209The Application of Neural Networks in Balancing Production of Crude Sunflower Oil and Meal Bojan Ivetic0Dragica Radosav1Oil factory Banat, SerbiaUniversity of Novi Sad, Tehnical faculty "Mihajlo Pupin", Zrenjanin, SerbiaThe aim of the research is to predict specific output characteristics of half finished goods (crude sunflower oil and meal) on the basis of specific input variables (quality and composition of sunflower seeds), with the help of artificial neural networks. This is an attempt to predict the amount much more precisely than is the case with technological calculations commonly used in the oil industry. All input variables are representing the data received by the laboratory, and the output variables except category % of oil which is obtained by measuring the physical quantity of produced crude sunflower oil and sunflower consumed quantity of the processing quality. The correct prediction of the output variables contributes to better sales planning, production of sunflower oil, and better use of storage. Also, the correct prediction of technological results of the quality of crude oil and meal provides timely response and also preventing getting rancid and poor-quality oil, timely categorizing meal, which leads to proper planning and sales to the rational utilization of storage space, allows timely response technologists and prevents the growth of microorganisms in the meal. http://www.temjournal.com/documents/vol3no3/The%20Application%20of%20Neural%20Networks%20in%20Balancing%20Production%20of%20Crude%20Sunflower%20Oil%20and%20Meal.pdfneural networksartificial intelligencecrude sunflower oilbalancing production.
collection DOAJ
language English
format Article
sources DOAJ
author Bojan Ivetic
Dragica Radosav
spellingShingle Bojan Ivetic
Dragica Radosav
The Application of Neural Networks in Balancing Production of Crude Sunflower Oil and Meal
TEM Journal
neural networks
artificial intelligence
crude sunflower oil
balancing production.
author_facet Bojan Ivetic
Dragica Radosav
author_sort Bojan Ivetic
title The Application of Neural Networks in Balancing Production of Crude Sunflower Oil and Meal
title_short The Application of Neural Networks in Balancing Production of Crude Sunflower Oil and Meal
title_full The Application of Neural Networks in Balancing Production of Crude Sunflower Oil and Meal
title_fullStr The Application of Neural Networks in Balancing Production of Crude Sunflower Oil and Meal
title_full_unstemmed The Application of Neural Networks in Balancing Production of Crude Sunflower Oil and Meal
title_sort application of neural networks in balancing production of crude sunflower oil and meal
publisher UIKTEN
series TEM Journal
issn 2217-8309
2217-8333
publishDate 2014-08-01
description The aim of the research is to predict specific output characteristics of half finished goods (crude sunflower oil and meal) on the basis of specific input variables (quality and composition of sunflower seeds), with the help of artificial neural networks. This is an attempt to predict the amount much more precisely than is the case with technological calculations commonly used in the oil industry. All input variables are representing the data received by the laboratory, and the output variables except category % of oil which is obtained by measuring the physical quantity of produced crude sunflower oil and sunflower consumed quantity of the processing quality. The correct prediction of the output variables contributes to better sales planning, production of sunflower oil, and better use of storage. Also, the correct prediction of technological results of the quality of crude oil and meal provides timely response and also preventing getting rancid and poor-quality oil, timely categorizing meal, which leads to proper planning and sales to the rational utilization of storage space, allows timely response technologists and prevents the growth of microorganisms in the meal.
topic neural networks
artificial intelligence
crude sunflower oil
balancing production.
url http://www.temjournal.com/documents/vol3no3/The%20Application%20of%20Neural%20Networks%20in%20Balancing%20Production%20of%20Crude%20Sunflower%20Oil%20and%20Meal.pdf
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