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首页> 外文期刊>Journal of manufacturing science and engineering: Transactions of the ASME >Iterative Learning Method for Drilling Depth Optimization in Peck Deep-Hole Drilling
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Iterative Learning Method for Drilling Depth Optimization in Peck Deep-Hole Drilling

机译:佩斯深孔钻井深度优化的迭代学习方法

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Due to the enclosed chip evacuation space in deep hole drilling process, chips are accumulated in drill flutes as drilling depth increases, resulting in the increase of drilling torque and lead to drill breakage. Peck drilling is a widely used method to periodically alleviate the drilling torque caused by chip evacuation; the drilling depth in each step directly determines both drill life and machining efficiency. The existing drilling depth optimization methods face problems including low accuracy of the prediction model, the hysteresis of signal diagnosis, and onerous experiments. To overcome these problems, a novel drilling depth optimization method for peck drilling based on the iterative learning optimization is proposed. First, the chip evacuation torque coefficients (CFTC's) are introduced into the chip evacuation torque model to simplify the model for learning. Then, the effect of chip removal process in peck drilling on drilling depth is analyzed. The extended depth coefficient by chip removal (EDCbCR) is introduced to develop the relationship between the extended depth in each drilling step and drilling depth. On the foundation of the modeling above, an iterative learning method for drilling depth optimization in peck drilling is developed, in which a modified Newton's method is proposed to maximize machining efficiency and avoid drill breakage. In experiments with different cutting parameters, the effectiveness of the proposed method is validated by comparing the optimized and measured results. The results show that the presented learning method is able to obtain the maximum drilling depth accurately with the error less than 10%.
机译:由于深孔钻井过程中的封闭芯片抽空空间,芯片在钻槽中累积,因为钻孔深度增加,导致钻孔扭矩的增加并导致钻孔破损。 Peck钻孔是一种广泛使用的方法,可以定期缓解由芯片疏散引起的钻孔扭矩;每个步骤中的钻孔深度直接确定钻头寿命和加工效率。现有钻探深度优化方法面临问题,包括预测模型的低精度,信号诊断的滞后和繁重的实验。为了克服这些问题,提出了一种基于迭代学习优化的佩克钻井的新型钻井深度优化方法。首先,将芯片抽空扭矩系数(CFTC)引入芯片抽空扭矩模型,以简化学习模型。然后,分析了芯片去除过程在挖掘钻井深度钻探中的效果。引入芯片去除(EDCBCR)的扩展深度系数以在每个钻孔步骤和钻孔深度之间产生延伸深度之间的关系。在上述建模的基础上,开发了一种挖掘钻井深度优化的迭代学习方法,其中提出了改进的牛顿的方法来最大限度地提高加工效率并避免钻孔破损。在具有不同切割参数的实验中,通过比较优化和测量结果来验证所提出的方法的有效性。结果表明,所提出的学习方法能够准确地获得最大钻孔深度,误差小于10%。

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