Study on Process Design Based on Language Analysis and Image Discrimination Using CNN Deep Learning

Akio Hayashi, Y. Morimoto
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Abstract

At present, machining with numerically controlled (NC) machine tools is mostly performed by NC programs generated by computer-aided design and computer-aided manufacturing (CAD/CAM) systems. However, even if the machining shape to be machined is the same, there are numerous machining processes involving a series of operations such as determining the machining area, machining order, and machining conditions. These are entrusted to the user, and automation is difficult. In addition, these tasks depend on the experience and know-how of skilled engineers, and it is very difficult to convert them into algorithms and reflect them in the creation of NC programs. Therefore, in this study, artificial intelligence (AI) was used for the process design of multi-tasking machine tools, with the goal of determining and automating the process design using shape examples. We propose a shape recognition method that includes image analysis by AI. This image analysis makes it possible to determine the characteristics of the machining shape, and the machining operator can easily judge the machining process based on the CAD model. Furthermore, because there are shapes that cannot be determined from image data alone, shape features are also extracted from the STEP file of the CAD model. A language analysis of the STEP file can find the characteristic components and their numerical information to determine the coordinates of the shape features. By combining image analysis and language analysis, the method can easily judge the process based on the information in the CAD model. Finally, using the generated learning model and analysis program, we conducted a test to determine whether a multitasking machine tool is necessary for machining.
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基于CNN深度学习的语言分析和图像识别流程设计研究
目前,数控机床的加工大多是通过计算机辅助设计和计算机辅助制造(CAD/CAM)系统生成的数控程序来完成的。然而,即使要加工的加工形状相同,也有许多加工工序涉及到确定加工面积、加工顺序、加工条件等一系列操作。这些都是委托给用户的,很难实现自动化。此外,这些任务依赖于熟练工程师的经验和专业知识,很难将其转换为算法并在NC程序的创建中反映出来。因此,在本研究中,将人工智能(AI)用于多任务机床的工艺设计,目的是通过形状示例确定和自动化工艺设计。我们提出了一种包含人工智能图像分析的形状识别方法。这种图像分析使得确定加工形状的特征成为可能,加工操作者可以根据CAD模型方便地判断加工过程。此外,由于存在无法单独从图像数据中确定形状的情况,因此还从CAD模型的STEP文件中提取形状特征。对STEP文件进行语言分析可以找到特征分量及其数值信息,从而确定形状特征的坐标。该方法将图像分析和语言分析相结合,可以方便地根据CAD模型中的信息对过程进行判断。最后,利用生成的学习模型和分析程序进行了测试,以确定多任务机床是否需要加工。
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