Paper Title
Bio-Inspired Metaheuristics Search Algorithms for Optimizing Manufacturing Process
Abstract
Traditional search methods used to solve manufacture engineering optimization problems fail to find the global
optimum when dealing with a complex objective function and a large number of decision variables. Bio-inspired
metaheuristics search algorithms shows significant performance in handling multi-model function optimization with many
constraints. They can efficiently explore the search space and produce results that are more global in nature. Compared with
other metaheuristic algorithm, the CSA has the advantage of less parameter setting and easy implementation. Two cutting
tools Cases study of engineering problems are used to demonstrate the CSA. The results of case studies show the CSA
perform a promising result in engineering optimization problem. A performance comparison with genetic algorithms,
particle swarm optimization and cuckoo search is also presented in the paper and shows the ascendancy with better
convergence rate.
Keywords - Crow Search Algorithm, Engineering Optimization Problem, Parameter Optimization, Cutting Tools