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Generating resource based flexible form manufacturing features through objective driven clustering

机译:通过目标驱动的集群生成基于资源的灵活表格制造特征

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The development of a new feature based technique for automated manufacturability evaluation (ME) of machined parts is reported in this article. Key to this approach is a new type of feature called a resource based flexible form manufacturingfeature. This type of manufacturing feature incorporates available factory resources and permits unlimited variations in the geometric form as dictated by tool accessibility. A ME system based on this new feature definition is overviewed. Through aprocess of automatic feature recognition, a manufacturing feature based description of a part is generated which is then used as a form of high level operation plan on which accurate estimates of production cost and time can be made. This paper focuses on the feature recognition algorithm, which is termed Objective Driven Clustering. The recognition algorithm consists of generating feature primitives, which are operational subplans for subregions of a part. Subsequently, primitives are intelligentlyselected and grouped in a clustering process that uses heuristics, constraints and a user defined evaluation objective to form manufacturing features. The methodology accommodates parts with complex surfaces and interacting form features. It is alsosensitive to a variety of part, factory and evaluation related parameters including the evaluation objective, accessibility, part material, D&T, available machines and tools, tool cost, tool change time and setup change time. A prototype system ArizonaState University Manufacturability Evaluator (ASUME) used in validating the methodology is discussed.
机译:本文报道了一种基于特征的新技术,该技术用于对机械零件进行自动可制造性评估(ME)。这种方法的关键是一种新型功能,称为基于资源的灵活表格制造功能。这种类型的制造功能结合了可用的工厂资源,并允许通过工具可访问性来决定几何形状的无限变化。概述了基于此新功能定义的ME系统。通过自动特征识别过程,将生成基于零件的制造特征描述,然后将其用作高级操作计划的形式,在该计划上可以对生产成本和时间进行准确的估算。本文着重于特征识别算法,称为目标驱动聚类。识别算法包括生成特征基元,这些特征基元是零件子区域的操作子计划。随后,在使用启发式,约束和用户定义的评估目标以形成制造特征的聚类过程中,智能地选择基元并进行分组。该方法适用于具有复杂表面和相互作用形式特征的零件。它还对零件,工厂和评估相关的各种参数敏感,包括评估目标,可访问性,零件材料,D&T,可用的机器和工具,工具成本,工具更换时间和设置更换时间。讨论了用于验证方法论的原型系统亚利桑那州立大学可制造性评估器(ASUME)。

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