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Optimizing road test simulation using neural network modeling techniques

机译:使用神经网络建模技术优化路考模拟

摘要

Growing interest in the use of virtual simulation tools as part of the automotive product development process is driven by the need for automotive manufacturers and parts suppliers to develop better quality products in shorter time at lower cost.Component and full vehicle durability testing is one aspect of product development for which time savings can be realized. Traditionally, accelerated durability simulations have been performed using full vehicles by driving physical prototypes on specially designed road surfaces, simulating the vehiclesu27 service life. In the last thirty years, durability testing has been accelerated in the laboratory environment where measured vehicle excitation inputs have been edited to contain only the most damaging portions. The goal of the current research is to advance the process further through the use of high-fidelity virtual prototype durability simulations, which reveal the consequences of design decisions made much earlier in the product development cycle before the first physical prototypes are built.Virtual durability full vehicle models are computationally complex. Linearizing the individual models of nonlinear components such as shock absorbers and elastomeric bushings has been a typical method used to simplify the vehicle model. The focus of the current research is to develop a methodology to increase the fidelity of these nonlinear component models using computationally economical techniques, thus increasing the precision of the results of the full vehicle model and the speed at which the results are obtained.Neural networks are mathematical models that possess the flexibility and computational efficiency desired for this application. These models are capable of generalizing component behaviour using training data that represents the full range of component behaviour that is to be modeled.The current research describes the methodology required to develop and implement neural network models of nonlinear automotive components into simplified and full-vehicle virtual durability models. The data used to train the neural networks includes hysteresis effects that are not modeled with the methods currently available in the multibody dynamics software package. Correlation of the results of the virtual durability simulation with the laboratory test results is performed to show the validity of the methodology that was developed.
机译:汽车制造商和零件供应商需要在更短的时间内以更低的成本开发更高质量的产品,这促使人们对在汽车产品开发过程中使用虚拟仿真工具的兴趣日益浓厚。可以节省时间的产品开发。传统上,通过在特殊设计的路面上驾驶物理原型来模拟整车的使用寿命,使用整车进行加速的耐久性仿真。在过去的三十年中,在实验室环境中加速了耐久性测试,在实验室环境中,已对测得的车辆励磁输入进行编辑以仅包含最具破坏性的部分。当前研究的目的是通过使用高保真虚拟原型耐久性仿真来进一步推进该过程,该仿真揭示了在制造第一个物理原型之前在产品开发周期中更早做出的设计决策的后果。车辆模型计算复杂。线性化非线性元件(如减震器和弹性衬套)的各个模型已经成为简化车辆模型的典型方法。当前研究的重点是开发一种使用计算经济的技术来提高这些非线性组件模型的保真度的方法,从而提高完整车辆模型的结果的精度和获得结果的速度。具有此应用程序所需的灵活性和计算效率的数学模型。这些模型能够使用表示要建模的整个组件行为的训练数据来概括组件行为。当前研究描述了将非线性汽车组件的神经网络模型开发和实现为简化的全车虚拟模型所需的方法。耐用性模型。用于训练神经网络的数据包括没有使用多体动力学软件包中当前可用方法建模的磁滞效应。将虚拟耐久性仿真的结果与实验室测试结果进行关联,以显示所开发方法的有效性。

著录项

  • 作者

    Johrendt Jennifer Leslie;

  • 作者单位
  • 年度 2005
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类

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