Title of article :
Performance evaluation of gang saw using hybrid ANFIS-DE and hybrid ANFIS-PSO algorithms
Author/Authors :
Dormishi, A.R Faculty of Mining - Petroleum & Geophysics - Shahrood University of Technology - Shahrood, Iran , Ataei, M Faculty of Mining - Petroleum & Geophysics - Shahrood University of Technology - Shahrood, Iran , Khaloo Kakaie, R Faculty of Mining - Petroleum & Geophysics - Shahrood University of Technology - Shahrood, Iran , Shaffiee Haghshenas, S Young Researchers and Elite Club - Rasht Branch - Islamic Azad University - Rasht, Iran , Mikaeil, R Department of Mining and Metallurgical Engineering - Urmia University of Technology - Urmia, Iran
Abstract :
One of the most significant and effective criteria in the process of cutting dimensional
rocks using the gang saw is the maximum energy consumption rate of the machine, and
its accurate prediction and estimation can help designers and owners of this industry to
achieve an optimal and economic process. In the present research work, it is attempted
to study and provide models for predicting the maximum energy consumption of the
gang saw during the process of soft dimensional rocks with the help of an intelligent
optimization model such as random non-linear techniques, i.e. the Hybrid ANFIS-DE
and Hybrid ANFIS-PSO algorithms based upon 4 physical and mechanical parameters
including uniaxial compressive strength, Mohs hardness, Schimazek’s F-abrasiveness
factors, Young modulus, and an operational characteristic of the machine, i.e. production
rate. During this research work, 120 samples are tested on 12 carbonate rocks. The
maximum energy consumption of the cutting machine during this work is measured and
used as a modeling output for evaluating the performance of cutting machine. Also
meta-heuristic algorithms including DE and PSO algorithms are used for training the
Adaptive Neural Fuzzy Inference System (ANFIS). In addition, the PSO algorithm has a
higher ability in terms of model output and performance indices and has a superiority
over the differential evolution algorithm. Furthermore, comparison between the
measured datasets with the ANFIS-DE and ANFIS-PSO models indicate the accuracy
and ability of the ANFIS-PSO model in predicting the performance of gang saw
considering the machine’s properties and the cut rock
Keywords :
ANFIS-PSO , ANFIS-DE , Gang Saw , Cutting Rate , Maximum Energy Consumption (MEC)
Journal title :
Astroparticle Physics