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NEURAL NETWORK BUSHING MODEL DEVELOPMENT USING SIMULATION

机译:基于仿真的神经网络穿线模型开发

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摘要

Neural networks are computationally efficient mathematical models that can be used to model quantitative and qualitative data. A neural network can be created through training with known input and output load-deflection data such that it learns to generalize the material characteristics without over-predicting the training data and losing its ability to anticipate behavior outside the training set. The challenge in creating a neural network model of a rubber bushing in a virtual model of a prototype assembly, for instance, is the lack of a physical prototype assembly. This paper describes a method by which data can be measured from a virtual prototype and used to define an appropriate data acquisition for the physical bushing. Training data can then be acquired using these guidelines and used for neural network model development. Subsequently, the enhanced model can then be used in the virtual simulation environment to increase the accuracy of the simulation results.
机译:神经网络是计算有效的数学模型,可用于对定量和定性数据进行建模。可以通过使用已知的输入和输出载荷-变形数据进行训练来创建神经网络,从而使它学会概括材料特性,而不会过度预测训练数据并失去其预测训练集以外行为的能力。例如,在原型装配的虚拟模型中创建橡胶衬套的神经网络模型所面临的挑战是缺少物理原型装配。本文介绍了一种方法,通过该方法可以从虚拟原型中测量数据,并用于为物理套管定义合适的数据采集。然后可以使用这些指南获取训练数据,并将其用于神经网络模型开发。随后,可以在虚拟仿真环境中使用增强的模型,以提高仿真结果的准确性。

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