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Direct and inverse models in metal forming: A soft computing approach.

机译:金属成型中的正向和反向模型:一种软计算方法。

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A non-traditional framework is presented for building inexact models in metal forming using the softcomputing approach. Architecture for building integrated inverse models is developed using neurocomputing.; To date efforts in process modeling have tried to develop exact laws (equations). This dissertation takes the contrasting approach of formulating inexact direct models with their inherent imprecision expressed using fuzzy sets. The approach departs from traditional approaches by replacing equation based relationships with rule based relationships. Fuzzy sets are used to quantify the rules. The theory of approximate reasoning is used to implement inference from these rules. The approach integrates neural networks into the model to learn the inverse model from the direct model.; A Windows® based system is built to implement the framework. The system is object oriented, modular and extensible. It supports the activities involved in building soft models. New models can be built from ground up. The framework is generic and can be used to build inexact rule-based models in any domain. It is shown that models developed using this approach are able to incorporate more complex relationships than is possible with differential or regression equation based approaches. A Model can be built using numerical data or a priori knowledge expressed in terms of rules. The model is stored in a linguistically interpretable form. Modelers and users can modify or adjust a given soft model by adding more knowledge.; The approach is applied to three case studies in metal forming: (1) austenite grain size model in hot forging, (2) damage value model in cold forging and (3) static recrystallization model in hot rolling. The results are analyzed using traditional graphing and compared to traditional approaches. Inverse models are built for the three case studies using neural networks.
机译:提出了一个非传统框架,用于使用软计算方法在金属成型中建立不精确的模型。使用神经计算开发了用于构建集成逆模型的体系结构。迄今为止,过程建模方面的努力已经尝试开发出精确的定律(方程式)。本文采用对比方法,即用模糊集表示不精确的直接模型,其固有的不精确性。通过用基于规则的关系替换基于等式的关系,该方法不同于传统方法。模糊集用于量化规则。近似推理理论用于根据这些规则进行推理。该方法将神经网络集成到模型中,以从直接模型中学习逆模型。构建了一个基于Windows ®的系统来实现该框架。该系统是面向对象的,模块化的和可扩展的。它支持构建软模型所涉及的活动。可以从头开始构建新模型。该框架是通用的,可用于在任何领域中构建不精确的基于规则的模型。结果表明,与基于微分或回归方程的方法相比,使用此方法开发的模型能够合并更复杂的关系。可以使用数字数据或以规则表示的先验知识来构建模型。该模型以语言可解释的形式存储。建模者和用户可以通过添加更多知识来修改或调整给定的软模型。该方法应用于金属成形的三个案例研究:(1)热锻中的奥氏体晶粒尺寸模型,(2)冷锻中的损伤值模型和(3)热轧中的静态再结晶模型。使用传统图形分析结果,并将其与传统方法进行比较。使用神经网络为这三个案例研究建立了逆模型。

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