Article ID Journal Published Year Pages File Type
809598 International Journal of Rock Mechanics and Mining Sciences 2014 9 Pages PDF
Abstract

•Data for this study was obtained from natural stone in-situ cutting conditions.•Evolving intelligence techniques were employed for the predict SEcut.•The employed techniques included ANFIS, DENFIS, and EFuNN.•The highest SEcut prediction accuracy was achieved using the ANFIS approach.•The stone cutting and strength parameters alone are sufficient to predict SEcut.

Specific cutting energy (SEcut) values are used for the determination of energy requirements of the stone cutting process and are thus useful in predicting the cost and production schedule. In this study, adaptive hybrid intelligence (AHI) techniques were employed to develop SEcut prediction models based on 40 different natural building stones in nineteen different stone processing plants. The feed rate, depth of cut, which are cutting process working parameters, and uniaxial compressive strength, bending strength and point load strength of the rock to be cut which constitute rock physico-mechanical properties were used as the input parameters in the development of SEcut prediction models. The AHI techniques included Adaptive Neuro-Fuzzy Inference System (ANFIS), Dynamic Evolving Neuro-Fuzzy Inference System (DENFIS), and Evolving Fuzzy Neural Networks (EFuNN). Among the AHI techniques, ANFIS gave the best SEcut prediction accuracy. The results also showed that it is possible to predict specific cutting energy of natural stone cutting operations with higher accuracy (R2=0.95) with the developed ANFIS prediction models using depth of cut, feed rate and uniaxial compressive strength values of natural building stones.

Related Topics
Physical Sciences and Engineering Earth and Planetary Sciences Geotechnical Engineering and Engineering Geology
Authors
, , ,