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首页> 外文期刊>Journal of Advanced Mechanical Design, Systems, and Manufacturing >Process planning for die and mold machining based on pattern recognition and deep learning
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Process planning for die and mold machining based on pattern recognition and deep learning

机译:基于模式识别和深度学习的模具加工工艺规划

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Dies and molds are necessary elements in the manufacturing of current industrial products. There is increasing pressure to machine high quality complicated surfaces at low cost. The standardization of process planning is said to be a key to improving the efficiency of machining operations in practice. Thus, computer aided process planning (CAPP) systems are urgently needed to reduce the time and effort of preparing machining operations. However, it is difficult to generalize process planning that continues to depend on skillful experts and requires long preparation time for die and mold machining. On the other hand, to overcome issues that are difficult to generalize, it is well known that machine learning has the capability to estimate valid values according to past case data. Therefore, this study aims to develop a CAPP system that can determine machining process information for complicated surfaces of die and mold based on pattern recognition and deep learning, a kind of machine learning. A network architecture called 3D u-net is adapted to effectively analyze whole images by producing segmented regions. Using a voxel model representing targeted shape, it becomes easier to deal with the complicated surfaces of die and mold generally and three-dimensionally, as skilled experts pay attention to whole geometrical features. Cutting tool type and tool path pattern are treated as machining process information determined in a CAPP system. The results of case studies confirm that the developed CAPP system is effective in determining the machining process information even for complicated surfaces according to the implicit machining know-how.
机译:模具和模具是当前工业产品制造中的必要元素。在低成本的情况下加工高质量复杂表面的压力越来越大。据说过程规划的标准化是提高实践中加工操作效率的关键。因此,迫切需要计算机辅助处理计划(CAPP)系统来减少准备加工操作的时间和精力。然而,难以概括持续依赖熟练专家的过程规划,并且需要长时间准备模具和模具加工时间。另一方面,为了克服难以概括的问题,众所周知,机器学习具有根据过去的情况数据估计有效值的能力。因此,本研究旨在开发一个CAPP系统,可以根据模式识别和深度学习确定模具和模具复杂表面的加工过程信息,一种机器学习。一种名为3D U-Net的网络架构适于通过产生分段区域来有效地分析整个图像。使用代表有针对性形状的体素模型,通常和三维地处理模具和模具的复杂表面变得更容易,因为熟练的专家注意整个几何特征。切削刀具类型和刀具路径图案被视为在CAPP系统中确定的加工过程信息。案例研究结果证实,发达的CAPP系统在根据隐式加工专业知识的情况下,即使对于复杂的表面,也有效地确定加工过程信息。

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