Artificial neural network and stepwise approach for predicting tractive efficiency of the tractor (CASE JX75T)
Other Title(s)
لشبكات العصبية و الانحدار التدريجي للتنبؤ بكفاءة السحب للجرار (CASE JX75T)
Joint Authors
Hammud, Majid Salih
al-Maliki, Salim Ajar Bandar
al-Khafaji, Ahmad Hamzah Umran
Source
The Iraqi Journal of Agricultural Science
Issue
Vol. 50, Issue 4 (31 Aug. 2019), pp.1008-1017, 10 p.
Publisher
University of Baghdad College of Agriculture
Publication Date
2019-08-31
Country of Publication
Iraq
No. of Pages
10
Main Subjects
Mechanical Engineering
Agriculture
Topics
Abstract EN
The aim of this study is to develop and predict models of tractive efficiency using the artificial neural network and stepwise approach.
The tractive efficiency of tractor (CASE JX75T) was measured experimentally.
Experiments were conducted in the site of Basrah University.
Which had silty clay soil texture.
The field conditions included effect of two level of cone index (550 and 980 kPa), two level of moisture content (8 and 21%), three forward speeds (0.54, 0.83 and 1.53 m/s) and four level of tillage depths (10, 15, 20 and 25 cm).
The results illustrated that both developed models (stepwise approach and ANN technique) had acceptable performance for predicting tractive efficiency of tractor under various field conditions.
However, ANN model outperformed stepwise model, where 4-7-1 topology showed the best power for predicting tractive efficiency with R-squared of 0.97 and MSE of 0.0074 with Levenberg-Marquardt training algorithm.
The analysis of variance demonstrated that the studied parameters had single significant effect on tractive efficiency.
The most parameter influential on tractive efficiency was tillage depth followed forward speed, cone index and moisture content.
American Psychological Association (APA)
al-Maliki, Salim Ajar Bandar& Hammud, Majid Salih& al-Khafaji, Ahmad Hamzah Umran. 2019. Artificial neural network and stepwise approach for predicting tractive efficiency of the tractor (CASE JX75T). The Iraqi Journal of Agricultural Science،Vol. 50, no. 4, pp.1008-1017.
https://search.emarefa.net/detail/BIM-903668
Modern Language Association (MLA)
al-Maliki, Salim Ajar Bandar…[et al.]. Artificial neural network and stepwise approach for predicting tractive efficiency of the tractor (CASE JX75T). The Iraqi Journal of Agricultural Science Vol. 50, no. 4 (2019), pp.1008-1017.
https://search.emarefa.net/detail/BIM-903668
American Medical Association (AMA)
al-Maliki, Salim Ajar Bandar& Hammud, Majid Salih& al-Khafaji, Ahmad Hamzah Umran. Artificial neural network and stepwise approach for predicting tractive efficiency of the tractor (CASE JX75T). The Iraqi Journal of Agricultural Science. 2019. Vol. 50, no. 4, pp.1008-1017.
https://search.emarefa.net/detail/BIM-903668
Data Type
Journal Articles
Language
English
Notes
Text in English ; abstracts in English and Arabic.
Record ID
BIM-903668