飞行管理系统中轨迹预测的自适应压力测试

Robert J. Moss, Ritchie Lee, Nicholas Visser, J. Hochwarth, J. Lopez, Mykel J. Kochenderfer
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引用次数: 11

摘要

为了在飞行关键系统中发现故障事件及其可能性,我们研究了一种称为自适应压力测试的先进黑盒压力测试方法的使用。我们分析了一个发展中的商业飞行管理系统的轨迹预测器,该系统将横向航路点和途中环境条件的集合作为输入。我们的目的是寻找与预测的横向轨迹不一致有关的失败事件。这项工作的目的是找到可能出现的故障,并将它们报告给开发人员,以便他们能够在部署之前处理并潜在地解决系统的缺点。为了提高搜索性能,本工作扩展了自适应压力测试公式,通过收集搜索期间的状态转换并在模拟推出结束时进行评估,将其更广泛地应用于具有情景奖励的顺序决策问题。我们使用一种改进的蒙特卡罗树搜索算法和渐进扩展作为我们的对抗强化学习器。将其性能与直接蒙特卡罗模拟和交叉熵方法作为替代重要采样基线进行了比较。目标是发现传统的基于需求的测试无法发现的潜在问题。结果表明,我们的适应性压力测试方法发现了更多的失败,并且与基线方法相比,发现失败的可能性更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Stress Testing of Trajectory Predictions in Flight Management Systems
To find failure events and their likelihoods in flight-critical systems, we investigate the use of an advanced black-box stress testing approach called adaptive stress testing. We analyze a trajectory predictor from a developmental commercial flight management system which takes as input a collection of lateral waypoints and en-route environmental conditions. Our aim is to search for failure events relating to inconsistencies in the predicted lateral trajectories. The intention of this work is to find likely failures and report them back to the developers so they can address and potentially resolve shortcomings of the system before deployment. To improve search performance, this work extends the adaptive stress testing formulation to be applied more generally to sequential decision-making problems with episodic reward by collecting the state transitions during the search and evaluating at the end of the simulated rollout. We use a modified Monte Carlo tree search algorithm with progressive widening as our adversarial reinforcement learner. The performance is compared to direct Monte Carlo simulations and to the cross-entropy method as an alternative importance sampling baseline. The goal is to find potential problems otherwise not found by traditional requirements-based testing. Results indicate that our adaptive stress testing approach finds more failures and finds failures with higher likelihood relative to the baseline approaches.
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