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Modeling the Milling Tool Wear by Using an Evolutionary SVM-based Model from Milling Runs Experimental Data

机译:通过使用铣削的基于进化的SVM的模型建模铣削刀具磨损运行实验数据

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The main aim of this research work is to build a new practical hybrid regression model to predict the milling tool wear in a regular cut as well as entry cut and exit cut of a milling tool. The model was based on Particle Swarm Optimization (PSO) in combination with support vector machines (SVMs). This optimization mechanism involved kernel parameter setting in the SVM training procedure, which significantly influences the regression accuracy. Bearing this in mind, a PSO-SVM-based model, which is based on the statistical learning theory, was successfully used here to predict the milling tool flank wear (output variable) as a function of the following input variables: the time duration of experiment, depth of cut, feed, type of material, etc. To accomplish the objective of this study, the experimental dataset represents experiments from runs on a milling machine under various operating conditions. In this way, data sampled by three different types of sensors (acoustic emission sensor, vibration sensor and current sensor) were acquired at several positions. A second aim is to determine the factors with the greatest bearing on the milling tool flank wear with a view to proposing milling machine's improvements. Firstly, this hybrid PSO-SVM-based regression model captures the main perception of statistical learning theory in order to obtain a good prediction of the dependence among the flank wear (output variable) and input variables (time, depth of cut, feed, etc.). Indeed, regression with optimal hyperparameters was performed and a determination coefficient of 0.95 was obtained. The agreement of this model with experimental data confirmed its good performance. Secondly, the main advantages of this PSO-SVM-based model are its capacity to produce a simple, easy-to-interpret model, its ability to estimate the contributions of the input variables, and its computational efficiency. Finally, the main conclusions of this study are exposed.
机译:这项研究工作的主要目的是建立一种新的实际混合回归模型,以预测铣削工具的铣削工具磨损以及铣削工具的入口切割和退出切割。该模型基于粒子群优化(PSO)与支持向量机(SVM)组合。这种优化机制涉及SVM培训过程中的内核参数设置,这显着影响了回归精度。考虑到这一点,这里成功地使用了一种基于统计学习理论的基于PSO-SVM的模型,以预测铣削工具侧面磨损(输出变量)作为以下输入变量的函数:持续时间实验,切割,饲料,材料类型等的深度,实验到本研究的目的,实验数据集代表在各种操作条件下铣床上的运行的实验。以这种方式,在多个位置获取由三种不同类型的传感器(声发射传感器,振动传感器和电流传感器)采样的数据。第二个目的是确定铣削工具侧翼佩戴的最大轴承的因素,以提出铣削机的改进。首先,这种混合PSO-SVM的回归模型捕获了统计学习理论的主要感知,以便在侧面磨损(输出变量)和输入变量(时间,切割,饲料的时间,剪切,饲料等)对依赖性的良好预测。)。实际上,进行了具有最佳超参数的回归,获得了0.95的确定系数。该模型与实验数据的协议证实了其良好的性能。其次,基于PSO-SVM的模型的主要优点是其产生简单,易于解释模型的能力,其能够估计输入变量的贡献及其计算效率。最后,本研究的主要结论暴露。

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