Testing Design Optimization for Uncertainty Reduction in Generating Off-Road Mobility Map

Zhen Hu, Z. Mourelatos, D. Gorsich, P. Jayakumar, Monica Majcher
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Abstract

The Next Generation NATO Reference Mobility Model (NG-NRMM) plays a vital role in vehicle mobility prediction and mission planning. The complicated vehicle-terrain interactions and the presence of heterogeneous uncertainty sources in the modeling and simulation (M&S) result in epistemic uncertainty/errors in the vehicle mobility prediction for given terrain and soil conditions. In this paper, the uncertainty sources that cause the uncertainty in mobility prediction are first partitioned into two levels, namely uncertainty in the M&S and uncertainty in terrain and soil maps. With a focus on the epistemic uncertainty in the M&S, this paper presents a testing design optimization framework to effectively reduce the uncertainty in the M&S and thus increase the confidence in generating off-road mobility maps. A Bayesian updating approach is developed to reduce the epistemic uncertainty/errors in the M&S using mobility testing data collected under controllable terrain and soil conditions. The updated models are then employed to generate off-road mobility maps for any given terrain and soil maps. Two types of design strategies, namely testing design for model selection and testing design for uncertainty reduction, are investigated in the testing design framework to maximize the information gain subject to limited resources. Results of a numerical example demonstrate the effectiveness of the proposed mobility testing design optimization framework.
越野机动地图生成中降低不确定性的测试设计优化
下一代北约参考机动模型(NG-NRMM)在车辆机动预测和任务规划中起着至关重要的作用。复杂的车辆-地形相互作用以及建模和仿真中存在的异质不确定性源导致给定地形和土壤条件下车辆机动性预测的认知不确定性/误差。本文首先将导致机动性预测不确定性的不确定性源划分为两个层次,即M&S中的不确定性和地形土图中的不确定性。针对自动驾驶系统中的认知不确定性,提出了一种测试设计优化框架,以有效降低自动驾驶系统中的不确定性,从而提高越野机动地图生成的置信度。利用在可控地形和土壤条件下收集的机动性测试数据,提出了一种贝叶斯更新方法来减少M&S的认知不确定性/误差。然后使用更新后的模型为任何给定的地形和土壤地图生成越野机动地图。在测试设计框架下,研究了在有限资源下实现信息增益最大化的两种设计策略,即针对模型选择的测试设计和针对减少不确定性的测试设计。数值算例验证了所提出的机动性测试设计优化框架的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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