Model-based Validation as Probabilistic Inference

Harrison Delecki, Anthony Corso, Mykel J. Kochenderfer
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Abstract

Estimating the distribution over failures is a key step in validating autonomous systems. Existing approaches focus on finding failures for a small range of initial conditions or make restrictive assumptions about the properties of the system under test. We frame estimating the distribution over failure trajectories for sequential systems as Bayesian inference. Our model-based approach represents the distribution over failure trajectories using rollouts of system dynamics and computes trajectory gradients using automatic differentiation. Our approach is demonstrated in an inverted pendulum control system, an autonomous vehicle driving scenario, and a partially observable lunar lander. Sampling is performed using an off-the-shelf implementation of Hamiltonian Monte Carlo with multiple chains to capture multimodality and gradient smoothing for safe trajectories. In all experiments, we observed improvements in sample efficiency and parameter space coverage compared to black-box baseline approaches. This work is open sourced.
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基于模型的验证作为概率推理
估计故障分布是验证自治系统的关键步骤。现有的方法侧重于在小范围的初始条件下发现故障,或者对被测系统的特性做出限制性假设。我们将序列系统故障轨迹分布的估计框架为贝叶斯推理。我们基于模型的方法使用系统动力学的展开来表示故障轨迹上的分布,并使用自动微分计算轨迹梯度。我们的方法在倒立摆控制系统、自动驾驶车辆场景和部分可观测的月球着陆器中得到了验证。采样使用一个现成的哈密顿蒙特卡罗实现与多链来捕获多模态和梯度平滑的安全轨迹。在所有实验中,我们都观察到与黑盒基线方法相比,样本效率和参数空间覆盖率有所提高。这项工作是开源的。
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