COMPARISON OF GENETIC ALGORITHM AND NEURAL NETWORK APPROACHES FOR THE PROGNOSIS OF MECHANICAL IDLE RUNNING LOSSES IN AGRICULTURE TRACTOR TRANSMISSION

An experimental investigation of mechanical idle running losses in an agriculture tractor transmission was used to collect a wide range of data. The influence of the engine rotation speed, the number of switched-on gears, and the oil level in the transmission gearbox on the idle running losses was d...

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Main Authors: Rosen IVANOV, Donka IVANOVA
Format: Article
Language:English
Published: Silesian University of Technology 2022-09-01
Series:Transport Problems
Subjects:
Online Access:http://transportproblems.polsl.pl/pl/Archiwum/2022/zeszyt3/2022t17z3_05.pdf
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author Rosen IVANOV
Donka IVANOVA
author_facet Rosen IVANOV
Donka IVANOVA
author_sort Rosen IVANOV
collection DOAJ
description An experimental investigation of mechanical idle running losses in an agriculture tractor transmission was used to collect a wide range of data. The influence of the engine rotation speed, the number of switched-on gears, and the oil level in the transmission gearbox on the idle running losses was determined. Adequate regression models in cases of switched-on and switched-off PTO were received. A genetic algorithm was used to optimize mathematical models obtained using regression analysis. A feed-forward artificial neural network was also developed to estimate the same experimental data for mechanical idle running losses in transmission. A back-propagation algorithm was used when training and testing the network. A comparison of the correlation coefficient, reduced chi-square, mean bias error, and root mean square error between the experimental data and fit values of the obtained models was made. It was concluded that the neural network represented the mechanical idle running losses in tractor transmission more accurately than other models.
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spelling doaj.art-d23953e485e04ce9a7440a8d7554c8822023-01-03T03:37:47ZengSilesian University of TechnologyTransport Problems1896-05962300-861X2022-09-01173515910.20858/tp.2022.17.3.05COMPARISON OF GENETIC ALGORITHM AND NEURAL NETWORK APPROACHES FOR THE PROGNOSIS OF MECHANICAL IDLE RUNNING LOSSES IN AGRICULTURE TRACTOR TRANSMISSIONRosen IVANOV0https://orcid.org/0000-0002-0573-4316Donka IVANOVA1https://orcid.org/0000-0002-3548-4610University of RuseUniversity of RuseAn experimental investigation of mechanical idle running losses in an agriculture tractor transmission was used to collect a wide range of data. The influence of the engine rotation speed, the number of switched-on gears, and the oil level in the transmission gearbox on the idle running losses was determined. Adequate regression models in cases of switched-on and switched-off PTO were received. A genetic algorithm was used to optimize mathematical models obtained using regression analysis. A feed-forward artificial neural network was also developed to estimate the same experimental data for mechanical idle running losses in transmission. A back-propagation algorithm was used when training and testing the network. A comparison of the correlation coefficient, reduced chi-square, mean bias error, and root mean square error between the experimental data and fit values of the obtained models was made. It was concluded that the neural network represented the mechanical idle running losses in tractor transmission more accurately than other models.http://transportproblems.polsl.pl/pl/Archiwum/2022/zeszyt3/2022t17z3_05.pdftractor transmission efficiencyidle running lossesneural networkgenetic algorithm
spellingShingle Rosen IVANOV
Donka IVANOVA
COMPARISON OF GENETIC ALGORITHM AND NEURAL NETWORK APPROACHES FOR THE PROGNOSIS OF MECHANICAL IDLE RUNNING LOSSES IN AGRICULTURE TRACTOR TRANSMISSION
Transport Problems
tractor transmission efficiency
idle running losses
neural network
genetic algorithm
title COMPARISON OF GENETIC ALGORITHM AND NEURAL NETWORK APPROACHES FOR THE PROGNOSIS OF MECHANICAL IDLE RUNNING LOSSES IN AGRICULTURE TRACTOR TRANSMISSION
title_full COMPARISON OF GENETIC ALGORITHM AND NEURAL NETWORK APPROACHES FOR THE PROGNOSIS OF MECHANICAL IDLE RUNNING LOSSES IN AGRICULTURE TRACTOR TRANSMISSION
title_fullStr COMPARISON OF GENETIC ALGORITHM AND NEURAL NETWORK APPROACHES FOR THE PROGNOSIS OF MECHANICAL IDLE RUNNING LOSSES IN AGRICULTURE TRACTOR TRANSMISSION
title_full_unstemmed COMPARISON OF GENETIC ALGORITHM AND NEURAL NETWORK APPROACHES FOR THE PROGNOSIS OF MECHANICAL IDLE RUNNING LOSSES IN AGRICULTURE TRACTOR TRANSMISSION
title_short COMPARISON OF GENETIC ALGORITHM AND NEURAL NETWORK APPROACHES FOR THE PROGNOSIS OF MECHANICAL IDLE RUNNING LOSSES IN AGRICULTURE TRACTOR TRANSMISSION
title_sort comparison of genetic algorithm and neural network approaches for the prognosis of mechanical idle running losses in agriculture tractor transmission
topic tractor transmission efficiency
idle running losses
neural network
genetic algorithm
url http://transportproblems.polsl.pl/pl/Archiwum/2022/zeszyt3/2022t17z3_05.pdf
work_keys_str_mv AT rosenivanov comparisonofgeneticalgorithmandneuralnetworkapproachesfortheprognosisofmechanicalidlerunninglossesinagriculturetractortransmission
AT donkaivanova comparisonofgeneticalgorithmandneuralnetworkapproachesfortheprognosisofmechanicalidlerunninglossesinagriculturetractortransmission