Application of adaptive neuro-fuzzy inference system and cuckoo optimization algorithm for analyzing electro chemical machining process

Electrochemical machining process (ECM) is increasing its importance due to some of the specific advantages which can be exploited during machining operation. The process offers several special privileges such as higher machining rate, better accuracy and control, and wider range of materials that can be machined. Contribution of too many predominate parameters in the process, makes its prediction and selection of optimal values really complex, especially while the process is programmized for machining of hard materials. In the present work in order to investigate effects of electrolyte concentration, electrolyte flow rate, applied voltage and feed rate on material removal rate (MRR) and surface roughness (SR) the adaptive neuro-fuzzy inference systems (ANFIS) have been used for creation predictive models based on experimental observations. Then the ANFIS 3D surfaces have been plotted for analyzing effects of process parameters on MRR and SR. Finally, the cuckoo optimization algorithm (COA) was used for selection solutions in which the process reaches maximum material removal rate and minimum surface roughness simultaneously. Results indicated that the ANFIS technique has superiority in modeling of MRR and SR with high prediction accuracy. Also, results obtained while applying of COA have been compared with those derived from confirmatory experiments which validate the applicability and suitability of the proposed techniques in enhancing the performance of ECM process.

[1]  J. A. McGeough,et al.  Intelligent concurrent manufacturability evaluation of design for electrochemical machining , 1996 .

[2]  Ramin Rajabioun,et al.  Cuckoo Optimization Algorithm , 2011, Appl. Soft Comput..

[3]  J. McGeough Advanced Methods Of Machining , 1988 .

[4]  R. Karthikeyan,et al.  Study of electrochemical machining characteristics of Al/SiCp composites , 2009 .

[5]  Mohan Kumar Pradhan,et al.  Neuro-fuzzy and neural network-based prediction of various responses in electrical discharge machining of AISI D2 steel , 2010 .

[6]  K. Chandrasekaran,et al.  Multi-objective scheduling problem: Hybrid approach using fuzzy assisted cuckoo search algorithm , 2012, Swarm Evol. Comput..

[7]  Sami Ekici,et al.  An adaptive neuro-fuzzy inference system (ANFIS) model for wire-EDM , 2009, Expert Syst. Appl..

[8]  Hamid Baseri,et al.  Improvement of dry EDM process characteristics using artificial soft computing methodologies , 2012, Prod. Eng..

[9]  Hamid Baseri,et al.  Artificial evolutionary approaches to produce smoother surface in magnetic abrasive finishing of hardened AISI 52100 steel , 2013 .

[10]  Jagdev Singh,et al.  An Adaptive Neuro-Fuzzy Inference System modeling for material removal rate in stationary ultrasonic drilling of sillimanite ceramic , 2010, Expert systems with applications.

[11]  T. A. El-Taweel,et al.  Performance analysis of wire electrochemical turning process—RSM approach , 2011 .

[12]  S. Babajanzade Roshan,et al.  Optimization of friction stir welding process of AA7075 aluminum alloy to achieve desirable mechanical properties using ANFIS models and simulated annealing algorithm , 2013, The International Journal of Advanced Manufacturing Technology.

[13]  Asit Baran Puri,et al.  Multiple-response optimisation of electrochemical grinding characteristics through response surface methodology , 2013 .

[14]  Dilip Kumar Pratihar,et al.  Forward and reverse mappings of electrical discharge machining process using adaptive network-based fuzzy inference system , 2010, Expert Syst. Appl..

[15]  B. Bhattacharyya,et al.  Investigation for controlled ellectrochemical machining through response surface methodology-based approach , 1999 .

[16]  Reza Teimouri,et al.  Parametric study along with selection of optimal solutions in dry wire cut machining of cemented tungsten carbide (WC-Co) , 2013 .

[17]  Mohammad Bakhshi-Jooybari,et al.  Modeling and optimization of spring-back in bending process using multiple regression analysis and neural computation , 2014 .

[18]  Jyh-Shing Roger Jang,et al.  ANFIS: adaptive-network-based fuzzy inference system , 1993, IEEE Trans. Syst. Man Cybern..

[19]  O. V. Krishnaiah Chetty,et al.  On Some Aspects of Surface Formation in ECM , 1981 .