Computer Aided Process Planning for Rough Machining Based on Machine Learning with Certainty Evaluation of Inferred Results

Naofumi Komura, Kazuma Matsumoto, Shinji Igari, Takashi Ogawa, Sho Fujita, K. Nakamoto
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引用次数: 1

Abstract

Process planning is well known as the key toward achieving highly efficient machining. However, it is difficult to standardize machining skills for process planning, which depend heavily on skilled operators. Hence, in a previous study, a computer aided process planning (CAPP) system using machine learning is developed to determine the operation parameters for finish machining of dies and molds. On the other hand, in rough machining, it is assumed that some machining operations are conducted sequentially using a respective tool according to the workpiece shape, which induces a much higher complexity in process planning. Therefore, in this study, machine learning is adopted to determine operation parameters for rough machining. The developed CAPP system converts the removal volume into a voxel model and infers a machining operation for each voxel. The inferred machining operation is visualized using different colors and identified corresponding to the voxel. Finally, the removal volume is classified using three different machining operations. However, machine learning is said to have a critical problem in that it is difficult to understand the reasons for the inferred results. Hence, it is necessary for the CAPP system to demonstrate the certainty level of the determined operation parameters. Thus, this study proposes a method for calculating the degree of certainty. If an artificial neural network is trained sufficiently, similar inferred results would always be obtained. Consequently, by using the Monte Carlo dropout to delete weights at random, the certainty level is defined as the variance of the inferred results. To verify the usefulness of the CAPP system, a case study is conducted by assuming rough machining of dies and molds. The results confirm that the machining operations are inferred with high accuracy, and the proposed method is effective for evaluating the certainty of the inferred results.
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基于机器学习的粗加工计算机辅助工艺规划及推断结果的确定性评价
众所周知,工艺规划是实现高效加工的关键。然而,工艺规划的加工技能很难标准化,这在很大程度上取决于熟练的操作人员。因此,在先前的研究中,开发了一种使用机器学习的计算机辅助工艺规划(CAPP)系统,以确定模具精加工的操作参数。另一方面,在粗加工中,假定一些加工操作是根据工件形状使用各自的刀具顺序进行的,这就导致了工艺规划的复杂性大大增加。因此,本研究采用机器学习来确定粗加工的操作参数。所开发的CAPP系统将去除量转换为体素模型,并为每个体素推断出加工操作。推断的加工操作使用不同的颜色进行可视化,并根据体素进行识别。最后,使用三种不同的加工操作对去除量进行分类。然而,据说机器学习有一个关键问题,即很难理解推断结果的原因。因此,CAPP系统有必要证明所确定的运行参数的确定程度。因此,本研究提出了一种计算确定性程度的方法。如果人工神经网络得到充分的训练,总是会得到类似的推断结果。因此,通过使用蒙特卡罗dropout随机删除权重,确定性水平被定义为推断结果的方差。为了验证CAPP系统的有效性,以模具粗加工为例进行了实例研究。结果表明,该方法对推断结果的确定性评价是有效的。
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