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Fuzzy based multi‑response optimization: a case study on EDM machining process

机译:基于模糊的多响应优化:EDM加工过程的案例研究

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The current study challenges the multi-objective optimization of electric discharge machining (EDM) parameters. EDM is used for creating profiles by machining of workpiece that are difficult to machine by conventional method. In the current work four responses such as material removal rate (production rate), tool wear rate, surface roughness (quality) and circularity (profile) are collectively investigated with varying controlling parameters. The human decision for best combination of controlling parameters for highest performance has uncertainties, which results in inferior solution. The multiple responses along with uncertainties and impreciseness can be addressed by combining a neuro-fuzzy system with particle swarm optimization (PSO). To illustrate the superiority of the proposed approach a set of experiment have been conducted in EDM process using AISI D2 tool steel as workpiece and brass tool. The experimental plan was made according to the Box-Behnken response surface methodology design with four process parameters namely discharge current, pulse-on-time, duty factor, and flushing pressure. The four response parameters such as material removal rate, tool wear rate, surface roughness, and circularity of machined components were optimized simultaneously. One unique Multi-response Performance Characteristic Index was obtained by combining the four responses using the proposed neuro-fuzzy technique. A regression model was developed on single response and optimized by PSO to obtain the optimal parameter setting. An experiment was conducted on optimal parameter to test the optimum performance. It is observed that the EDM responses were affected significantly by discharge current and pulse-on-time. The increase in pulse-on-time leads to larger surface cracks and more micro-pores on the machined surface.Article Highlights RSM was proven to be an effective statistical tool for reducing the experimental runs, and also establishes the relation between multiple inputs and single output.The neuro-fuzzy system combined with PSO results a suitable model to convert multiple response into an equivalent single response.The presented approach can be a practical method for situations where multiple conflicting objectives are needed to be optimized at the same time.
机译:目前的研究挑战了电气放电加工(EDM)参数的多目标优化。 EDM用于通过加工难以通过传统方法加工的工件来创建型材。在当前的工作中,通过不同的控制参数共同研究了诸如材料去除率(生产率),工具磨损率,表面粗糙度(质量)和圆度(剖面)的诸如材料去除率(生产率),刀具磨损率(剖面)。用于最高性能控制参数的最佳组合的人为决定具有不确定性,导致劣质解决方案。通过将具有粒子群优化(PSO)的神经模糊系统组合来解决多重响应以及不确定性和不精确性。为了说明所提出的方法的优越性,通过AISI D2工具钢作为工件和黄铜工具,在EDM工艺中进行了一组实验。实验计划根据Box-Behnken响应表面方法设计进行,具有四个工艺参数,即放电电流,脉冲导通时间,占空比和冲洗压力。同时优化了四种响应参数,例如材料去除率,工具磨损率,表面粗糙度和机加工组件的圆形度。通过使用所提出的神经模糊技术结合四种响应来获得一种独特的多响应性能特征指标。在单次响应上开发了回归模型,并通过PSO进行了优化以获得最佳参数设置。在最佳参数上进行实验以测试最佳性能。观察到EDM反应通过放电电流和脉冲时间而受到显着影响。脉冲导致脉冲的增加导致机加工表面上的较大表面裂缝和更多微孔。突出显示RSM被证明是用于减少实验运行的有效统计工具,并且还建立了多个输入与单个之间的关系输出。与PSO相结合的神经模糊系统结果是将多个响应转换成等效单个响应的合适模型。所提出的方法可以是需要同时优化多种冲突目标的情况的实用方法。

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