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A neural network based methodology for machining operations selection in Computer-Aided Process Planning for rotationally symmetrical parts

机译:基于神经网络的旋转对称零件计算机辅助工艺规划中加工操作选择的方法

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摘要

The relevant literature on machining operations selection in Computer-Aided Process Planning (CAPP) by decision trees, expert systems and neural networks has been reviewed, highlighting their contributions and shortcomings. This paper aims at contributing to the applicability of back-propagation neural network method for the selection of all possible operations for machining rotationally symmetrical components, by prestructuring the neural network with prior domain knowledge in the form of heuristic or thumb rules. It has been achieved by developing two forms of representation for the input data to the neural network. The external representation is used to enter the crisp values of the input decision variables (namely the feature type and its attributes such as diameter or width, tolerance and surface finish). The purpose of internal representation is to categorize the above crisp values into sets, which correspond to all the possible different ranges of the above input variables encountered in the antecedent ‘IF’ part of the thumb rules mentioned above. The input layer of the neural network has been designed in such a way that one neuronal node is allocated for each of the feature types and the sets of various feature attributes. In the output layer of the neural network, one neuronal node is allocated to each of the various feasible machining operation sequences found in the consequent ‘THEN’ part of the thumb rules. A systematic method for training of the neural network has been presented with the above thumb rules used to serve as guidelines for choosing the input patterns of the training examples. This method simplifies the process of training, reduces the time for preparation of training examples and hence the time to develop the overall process planning system. It can further help ensure that the entire problem domain is represented in a better manner and improve the quality of response of the neural network. The example of an industrially-relevant rotationally symmetrical workpiece has been analyzed using the proposed approach to demonstrate its potential for use in the real manufacturing environment. By this novel methodology, workpieces of complex shapes can be handled by investing a very limited amount of time, hence making it attractive and cost effective for industrial applications.
机译:对有关通过决策树,专家系统和神经网络在计算机辅助过程计划(CAPP)中选择加工操作的相关文献进行了综述,突出了它们的贡献和不足。本文旨在通过使用启发式或经验法则形式的先验域知识对神经网络进行预构造,来提高反向传播神经网络方法在选择加工旋转对称零件的所有可能操作中的适用性。通过为神经网络的输入数据开发两种表示形式,可以实现这一点。外部表示用于输入输入决策变量的清晰值(即要素类型及其属性,例如直径或宽度,公差和表面粗糙度)。内部表示的目的是将上述明快的值分类为多个集合,这些集合对应于上述经验法则的“ IF”部分中遇到的上述输入变量的所有可能的不同范围。神经网络的输入层的设计方式是,为每个特征类型和各种特征属性集分配一个神经元节点。在神经网络的输出层中,将一个神经元节点分配给在拇指规则的“ THEN”部分的相应各种可行的加工操作序列中。已经提出了一种用于训练神经网络的系统方法,上面的拇指规则用作选择训练示例输入模式的指导。此方法简化了培训过程,减少了准备培训示例的时间,从而减少了开发整个过程计划系统的时间。它可以进一步帮助确保以更好的方式表示整个问题域,并改善神经网络的响应质量。使用提出的方法分析了与工业相关的旋转对称工件的示例,以证明其在实际制造环境中使用的潜力。通过这种新颖的方法,可以通过花费非常有限的时间来处理复杂形状的工件,从而使其对工业应用具有吸引力并具有成本效益。

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