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Mechanism and Parameter Optimization in Grinding and Polishing of M300 Steel by an Elastic Abrasive

机译:M300钢弹性磨料磨抛机理与参数优化

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摘要

In order to achieve high quality polishing of a M300 mold steel curved surface, an elastic abrasive is introduced in this paper and its polishing parameters are optimized so that the mirror roughness can be achieved. Based on the Preston equation and Hertz Contact Theory, the theoretical material removal rate (MRR) equation for surface polishing of elastic abrasives is obtained. The effects of process parameters on MRR are analyzed and the polishing parameters to be optimized are as follows: particle size (S), rotational speed (Wt), cutting depth (Ap) and feed speed (Vf). The Taguchi method is applied to design the orthogonal experiment with four factors and three levels. The influence degree of various factors on the roughness of the polished surface and the combination of parameters to be optimized were obtained by the signal-to-noise ratio method. The particle swarm optimization algorithm optimized with the back propagation (BP) neural network algorithm (PSO-BP) is used to optimize the polishing parameters. The results show that the rotational speed has the greatest influence on the roughness, the influence degree of abrasive particle size is greater than that of feed speed, and cutting depth has the least influence. The optimum parameters are as follows: particle size (S) = #1200, rotational speed (Wt) = 4500 rpm, cutting depth (Ap) = 0.25 mm and feed speed (Vf) = 0.8 mm/min. The roughness of the surface polishing with optimum parameters is reduced to 0.021 μm.
机译:为了实现M300模具钢曲面的高质量抛光,本文引入了一种弹性磨料,并对其抛光参数进行了优化,以实现镜面粗糙度。基于Preston方程和Hertz接触理论,获得了弹性磨料表面抛光的理论材料去除率(MRR)方程。分析了工艺参数对MRR的影响,优化的抛光参数如下:粒径(S),转速(Wt),切削深度(Ap)和进给速度(Vf)。采用田口法设计了四个因子,三个层次的正交实验。通过信噪比方法获得了各种因素对抛光表面粗糙度的影响程度以及需要优化的参数组合。使用反向传播(BP)神经网络算法(PSO-BP)优化的粒子群优化算法来优化抛光参数。结果表明,转速对粗糙度的影响最大,磨料粒径的影响程度大于进给速度的影响,切削深度的影响最小。最佳参数如下:粒度(S)=#1200,旋转速度(Wt)= 4500 rpm,切削深度(Ap)= 0.25 mm,进给速度(Vf)= 0.8 mm / min。具有最佳参数的表面抛光的粗糙度降低到0.021μm。

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