Using high-fidelity discrete element simulation to calibrate an expeditious terramechanics model in a multibody dynamics framework

Yuemin Zhang, Junpeng Dai, Wei Hu, Dan Negrut
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Abstract

The wheel-soil interaction has great impact on the dynamics of off-road vehicles in terramechanics applications. The Soil Contact Model (SCM), which anchors an empirical method to characterize the frictional contact between a wheel and soil, has been widely used in off-road vehicle dynamics simulations because it quickly produces adequate results for many terramechanics applications. The SCM approach calls for a set of model parameters that are obtained via a bevameter test. This test is expensive and time consuming to carry out, and in some cases difficult to set up, e.g., in extraterrestrial applications. We propose an approach to address these concerns by conducting the bevameter test in simulation, using a model that captures the physics of the actual experiment with high fidelity. To that end, we model the bevameter test rig as a multibody system, while the dynamics of the soil is captured using a discrete element model (DEM). The multibody dynamics--soil dynamics co-simulation is used to replicate the bevameter test, producing high-fidelity ground truth test data that is subsequently used to calibrate the SCM parameters within a Bayesian inference framework. To test the accuracy of the resulting SCM terramechanics, we run single wheel and full rover simulations using both DEM and SCM terrains. The SCM results match well with those produced by the DEM solution, and the simulation time for SCM is two to three orders of magnitude lower than that of DEM. All simulations in this work are performed using Chrono, an open-source, publicly available simulator. The scripts and models used are available in a public repository for reproducibility studies and further research.
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在多体动力学框架下利用高保真离散元素模拟校准快速地形力学模型
车轮与土壤之间的相互作用对越野车在地形力学应用中的动态性能有很大影响。土壤接触模型(SCM)是表征车轮与土壤之间摩擦接触的一种经验方法,因其能快速生成适用于许多梯田机械应用的结果,已被广泛应用于越野车动力学仿真。单片机方法需要一组模型参数,这些参数通过双参数测试获得。这种测试既昂贵又耗时,而且在某些情况下很难设置,例如在地外应用中。为了解决这些问题,我们提出了一种在模拟中进行比容计测试的方法,使用的模型能够高保真地捕捉实际实验的物理过程。为此,我们将贝弗米特试验台作为一个多体系统建模,同时使用离散元件模型(DEM)捕捉土壤的动力学特性。多体动力学-土壤动力学协同模拟用于复制贝伐米试验,产生高保真地面实况试验数据,随后用于在贝叶斯推理框架内校准单片机参数。为了测试 SCM 地形力学结果的准确性,我们使用 DEM 和 SCM 地形进行了单轮和全漫游车模拟。SCM 的结果与 DEM 解决方案的结果非常吻合,而且 SCM 的模拟时间比 DEM 的模拟时间短 2 到 3 个数量级。这项工作中的所有模拟都是使用 Chrono 进行的,Chrono 是一个开源、公开可用的模拟器。所使用的脚本和模型可在公共存储库中获取,用于可重复性研究和进一步研究。
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