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A review: use of evolutionary algorithm for optimisation of machining parameters

机译:综述:使用进化算法优化加工参数

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Optimisation of machining parameters is crucial to ensure higher productivity and optimum outcomes in machining processes. By optimising machining parameters, a particular machining process can produce better machining outcomes within equivalent resources. This paper reviews past studies to achieve the desired outputs; minimum surface roughness (SR), highest material removal rate (MRR), lowest production cost, and the shortest production time of machining processes and various optimisation attempts in terms of varying parameters that affect the outcomes. The review deliberates the optimisation methods employed and analyses the performance discussing the relevant parameters that must have been considered by past researchers. To date, most studies have been focusing on optimising conventional machining processes such as turning, milling, and drilling. Optimisation works have been performed parametrically, experimentally, and numerically, where discrete variations of the parameters are investigated, while others are remained constant. Lately, evolutionary algorithm, statistical approaches such as genetic algorithm (GA), particle swarm optimisation (PSO), and cuckoo search algorithm (CSA) have been utilised in simultaneous optimisation of the parameters of the desired outputs and its great potential in optimising machining processes is recognisable.
机译:优化加工参数对于确保更高的生产率和加工过程的最佳结果至关重要。通过优化加工参数,特定的加工过程可以在同等资源范围内产生更好的加工结果。本文回顾了过去的研究,以实现预期的结果;最小的表面粗糙度(SR)、最高的材料去除率(MRR)、最低的生产成本、最短的加工工艺生产时间,以及各种影响结果的参数优化尝试。该综述讨论了所采用的优化方法,并分析了性能,讨论了过去研究人员必须考虑的相关参数。迄今为止,大多数研究都集中在优化传统加工工艺,如车削、铣削和钻孔。优化工作已通过参数、实验和数值进行,其中研究了参数的离散变化,而其他参数保持不变。最近,进化算法、统计方法(如遗传算法(GA)、粒子群优化(PSO)和布谷鸟搜索算法(CSA)被用于同时优化所需输出的参数,其在优化加工过程中的巨大潜力是可以识别的。

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