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Hybrid evolutionary multi-objective optimization and analysis of machining operations
Authors:Kalyanmoy Deb  Rituparna Datta
Affiliation:1. Department of Mechanical Engineering , Indian Institute of Technology Kanpur , PIN 208016 , India;2. Department of Information and Service Economy , Aalto University School of Economics , FI-00100 , Helsinki , Finland deb@iitk.ac.in;4. Department of Mechanical Engineering , Indian Institute of Technology Kanpur , PIN 208016 , India
Abstract:Evolutionary multi-objective optimization (EMO) has received significant attention in recent studies in engineering design and analysis due to its flexibility, wide-spread applicability and ability to find multiple trade-off solutions. Optimal machining parameter determination is an important matter for ensuring an efficient working of a machining process. In this article, the use of an EMO algorithm and a suitable local search procedure to optimize the machining parameters (cutting speed, feed and depth of cut) in turning operations is described. Thereafter, the efficiency of the proposed methodology is demonstrated through two case studies – one having two objectives and the other having three objectives. Then, EMO solutions are modified using a local search procedure to achieve a better convergence property. It has been demonstrated here that a proposed heuristics-based local search procedure in which the problem-specific heuristics are derived from an innovization study performed on the EMO solutions is a computationally faster approach than the original EMO procedure. The methodology adopted in this article can be used in other machining tasks or in other engineering design activities.
Keywords:multi-objective optimization  NSGA-II  ε-constraint method  local search  hybrid algorithm  machining parameters  innovative design principles
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