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首页> 外文期刊>Artificial Intelligence Review: An International Science and Engineering Journal >Intelligent Fixture Design through a Hybrid System of Artificial Neural Network and Genetic Algorithm
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Intelligent Fixture Design through a Hybrid System of Artificial Neural Network and Genetic Algorithm

机译:人工神经网络与遗传算法混合的智能夹具设计

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摘要

In designing fixtures for machining operations, clamping scheme is a complex and highly nonlinear problem that entails the frictional contact between the workpiece and the clamps. Such parameters as contact area, state of contact, clamping force, wear and damage in the contact area and deformation of the component are of special interest. A viable fixture plan must include the optimum values of clamping forces. Along research efforts carried out in this area, this comprehensive problem in fixture design needs further investigation. In this study, a hybrid learning system that uses nonlinear finite element analysis (FEA) with a supportive combination of artificial neural network (ANN) and genetic algorithm (GA) is discussed. A frictional, model of workpart-fixture system under cutting and clamping forces is solved through FEA. Training and querying an ANN takes advantage of the results of FEA. The ANN is required to recognize a pattern between the clamping forces and state of contact in the workpieee-fixture system and the workpiece maximum elastic deformation.. Using the identified pattern, a GA-based program determines the optimum values for clamping forces that do not cause excessive deformation/stress in the component. The advantage of this work against similar studies is manifestation of exact state of contact between clamp elements and workpart. The results contribute to automation of fixture design task and computer aided process planning (CAPP).
机译:在设计用于机械加工的夹具时,夹紧方案是一个复杂且高度非线性的问题,需要在工件和夹具之间进行摩擦接触。诸如接触面积,接触状态,夹紧力,接触面积中的磨损和损坏以及部件的变形等参数是特别令人关注的。可行的夹具计划必须包括最佳夹紧力值。在这一领域的研究工作中,夹具设计中的这一综合问题需要进一步研究。在这项研究中,讨论了一种混合学习系统,该系统使用非线性有限元分析(FEA)与人工神经网络(ANN)和遗传算法(GA)的支持相结合。通过有限元分析,求解了在切削力和夹紧力作用下的工件夹具系统的摩擦模型。训练和查询ANN可以利用FEA的结果。要求ANN识别夹紧力和工件夹具系统中的接触状态与工件最大弹性变形之间的模式。使用识别出的模式,基于GA的程序可以确定不存在夹紧力的最佳值导致组件过度变形/受力。与类似研究相比,这项工作的优势在于可显示夹紧元件与工件之间确切的接触状态。结果有助于夹具设计任务和计算机辅助过程计划(CAPP)的自动化。

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