Application of Machine Learning Techniques to Predict Haul Truck Fuel Consumption in Open-Pit Mines

Publish Year: 1401
نوع سند: مقاله ژورنالی
زبان: English
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JR_JMAE-13-1_005

تاریخ نمایه سازی: 29 فروردین 1401

Abstract:

The haul trucks consume a significant energy source in open-pit mines, where diesel fuel is widely used as the main energy source. Improving the haul truck fuel consumption can considerably decrease the operating cost of mining, and more importantly, reduce the pollutants and greenhouse gas emissions. This work aims to model and evaluate the diesel fuel consumption of the mining haul trucks. The machine learning techniques including multiple linear regression, random forest, artificial neural network, support vector machine, and kernel nearest neighbor are implemented and investigated in order to predict the haul truck fuel consumption based on the independent variables such as the payload, total resistance, and actual speed. The prediction models are built on the actual dataset collected from an Iron ore open-pit mine located in the Yazd province, Iran. In order to evaluate the goodness of the predicted models, the coefficient of determination, mean square error, and mean absolute error are investigated. The results obtained demonstrate that the artificial neural network has the highest accuracy compared to the other models (coefficient of determination = ۰.۹۰۳, mean square error = ۴۸۹.۱۷۳, and mean absolute error = ۱۳.۴۴۰). In contrast, the multiple linear regression exhibits the worst result in all statistical metrics. Finally, a sensitivity analysis is used to evaluate the significance of the independent variables.

Authors

S. Alamdari

Faculty of Engineering, Tarbiat Modares University, Tehran, Iran

M.H. Basiri

Faculty of Engineering, Tarbiat Modares University, Tehran, Iran

A. Mousavi

Faculty of Engineering, Tarbiat Modares University, Tehran, Iran

A. Soofastaei

Vale Artificial Intelligence Center, Brisbane, QLD ۴۰۰۰, Australia

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  • Zohuri, B. and McDaniel, P. (۲۰۲۱). Electricity production and renewable ...
  • Darling, P. (۲۰۱۱). SME mining engineering handbook. SME ...
  • Holmberg, K. Kivikytö-Reponen, P. Härkisaari, P. Valtonen, K. and Erdemir, ...
  • Bozorgebrahimi, E. Hall, RA. and Blackwell, G.H. (۲۰۰۳). Sizing equipment ...
  • Alla, H.R. Hall, R. and Apel, D.B. (۲۰۲۰). Performance evaluation ...
  • DOE U.S. (۲۰۰۷). Mining industry energy bandwidth study. Washingt US ...
  • Palacios, J.L. Fernandes, I. Abadias, A. Valero, A. Valero, A. ...
  • Norgate, T. and Haque, N. (۲۰۱۰). Energy and greenhouse gas ...
  • Soofastaei, A. Aminossadati, S.M. Arefi, M.M. and Kizil, M.S. (۲۰۱۶). ...
  • Kecojevic, V. and Komljenovic, D. (۲۰۱۰). Haul truck fuel consumption ...
  • Antoung, L. and Hachibli, K. (۲۰۰۷). Improving motor efficiency in ...
  • Bogunovic, D. Kecojevic, V. Lund, V. Heger, M. and Mongeon, ...
  • Chingooshi, L. Daws, Y. and Madden, K. (۲۰۱۰). Energy-smart mining: ...
  • Sahoo, LK. Bandyopadhyay, S. and Banerjee, R. (۲۰۱۴). Benchmarking energy ...
  • Kecojevic, V. Vukotic, I. and Komljenovic, D. (۲۰۱۴). Production, consumption ...
  • Carmichael, DG. Bartlett, BJ. Kaboli, AS. (۲۰۱۴). Surface mining operations: ...
  • Liu, F. Cai, Q. Chen, S. and Zhou, W. (۲۰۱۵). ...
  • Siami-Irdemoosa, E. Dindarloo, S.R. (۲۰۱۵). Prediction of fuel consumption of ...
  • Soofastaei, A. Aminossadati, S.M. Kizil, M.S. and Knights, P, (۲۰۱۶), ...
  • da Cunha Rodovalho, E. Lima, HM. and de Tomi, G. ...
  • Dindarloo, SR. and Siami-Irdemoosa, E. (۲۰۱۶). Determinants of fuel consumption ...
  • Peralta, S. Sasmito, A.P. and Kumral, M. (۲۰۱۶). Reliability effect ...
  • Jassim, HSH. Lu, W. and Olofsson, T. (۲۰۱۸). Assessing energy ...
  • Mitchell, T.M. (۱۹۹۷). Machine Learning. New York: McGrawHill ...
  • Ohadi, B. Sun, X. Esmaieli, K. and Consens, MP. (۲۰۲۰). ...
  • Bastami, R. Bazzazi, A.A. Shoormasti, H.H. and Ahangari, K. (۲۰۲۰). ...
  • Bakhsandeh Amnieh, H. Mohammadi, A. and Mozdianfard, M. (۲۰۱۳). Predicting ...
  • Srivastava, A. Choudhary, B.S. and Sharma, M. (۲۰۲۱). A Comparative ...
  • Lashgari, A. and Sayadi, A.R. (۲۰۱۳). Statistical approach to determination ...
  • Choi, Y. Nguyen, H. Bui, X.N. Nguyen-Thoi, T. and Park, ...
  • Avalos, S. Kracht, W. and Ortiz, JM. (۲۰۲۰). Machine Learning ...
  • Betrie, G.D. Tesfamariam, S. Morin, K.A. and Sadiq, R. (۲۰۱۳). ...
  • Khademi Hamidi, J. Shahriar, K. Rezai, B. and Rostami, J. ...
  • Ross, SM. (۲۰۲۰). Introduction to Probability and Statistics for Engineers ...
  • Stangierski, J. Weiss, D. and Kaczmarek, A. (۲۰۱۹). Multiple regression ...
  • Liu, H. and Lang, B, (۲۰۱۹). Machine learning and deep ...
  • Breiman, L. (۲۰۰۱). Random forests. Mach Learn ۴۵:۵–۳۲. https://doi.org/۱۰.۱۰۲۳/A:۱۰۱۰۹۳۳۴۰۴۳۲۴ ...
  • Qi, Y. (۲۰۱۲). Random Forest for Bioinformatics. In: Ensemble Machine ...
  • Behrang, M.A. Assareh, E. Ghanbarzadeh, A. and Noghrehabadi, A.R. (۲۰۱۰). ...
  • Zhang, G. Patuwo, B.E. Hu, M.Y. (۱۹۹۸). Forecasting with artificial ...
  • Shang, Y. Nguyen, H. Bui, XN. Tran, Q.H. and Moayedi, ...
  • Jain, A.K. Jianchang, Mao. and Mohiuddin, K.M. (۱۹۹۶) Artificial neural ...
  • Abiodun, OI. Jantan, A. Omolara, AE. Dada, KV. Mohamed, NA. ...
  • Cortes, C. Vapnik, V. (۱۹۹۵). Support-vector networks. Mach Learn ۲۰:۲۷۳–۲۹۷. ...
  • Gholami, R. and Fakhari, N. (۲۰۱۷). Support Vector Machine: Principles, ...
  • Tomar, D. and Agarwal, S. (۲۰۱۳). A survey on data ...
  • Kramer, O. (۲۰۱۳). K-Nearest Neighbors. In: Dimensionality Reduction with Unsupervised ...
  • TAN, S. (۲۰۰۵). Neighbor-weighted K-nearest neighbor for unbalanced text corpus. ...
  • Rodrigues, É.O. (۲۰۱۸). Combining Minkowski and Chebyshev: New distance proposal ...
  • Soofastaei, A. Karimpour, E. Knights, P. and Kizil, M.S. (۲۰۱۸). ...
  • Pedregosa, F. Varoquaux, G. Gramfort, A. Michel, V. Thirion, B. ...
  • Haykin, S. (۲۰۰۸). Neural Networks and Learning Machines, ۳rd edition ...
  • Garson, D.G. (۱۹۹۱). Interpreting neural network connection weights. ۶:۴۶–۵۱ ...
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