首页> 外文会议>ASME(American Society of Mechanical Engineers) Pressure Vessels and Piping Conference vol.2: Computer Technology; 20050717-21; Denver,CO(US) >Incorporating Neural Network Material Models within Finite Element Analysis for Rheological Behavior Prediction
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Incorporating Neural Network Material Models within Finite Element Analysis for Rheological Behavior Prediction

机译:将神经网络材料模型纳入流变行为预测的有限元分析中

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The accuracy of a finite element model for design and analysis of a metal forging operation is limited by the incorporated material model's ability to predict deformation behavior over a wide range of operating conditions. Current rheological models prove deficient in several respects due to the difficulty in establishing complicated relations between many parameters. More recently, artificial neural networks (ANN) have been suggested as an effective means to overcome these difficulties. To this end, a robust ANN with the ability to determine flow stresses based on strain, strain rate, and temperature is developed and linked with finite element code. Comparisons of this novel method with conventional means are carried out to demonstrate the advantages of this approach.
机译:用于设计和分析金属锻造操作的有限元模型的准确性受到所采用的材料模型预测各种工作条件下的变形行为的能力的限制。由于难以建立许多参数之间的复杂关系,目前的流变模型在几个方面都被证明是不足的。最近,人工神经网络(ANN)已被建议作为克服这些困难的有效手段。为此,开发了一种能够基于应变,应变速率和温度确定流应力的鲁棒人工神经网络,并与有限元代码关联。将该新方法与常规方法进行比较以证明该方法的优点。

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