The dynamic response of the legged robot locomotion is non-Lipschitz and can be stochastic due to environmental uncertainties. To test, validate, and characterize the safety performance of legged robots, existing solutions on observed and inferred risk can be incomplete and sampling inefficient. Some formal verification methods suffer from the model precision and other surrogate assumptions. In this paper, we propose a scenario sampling based testing framework that characterizes the overall safety performance of a legged robot by specifying (i) where (in terms of a set of states) the robot is potentially safe, and (ii) how safe the robot is within the specified set. The framework can also help certify the commercial deployment of the legged robot in real-world environment along with human and compare safety performance among legged robots with different mechanical structures and dynamic properties. The proposed framework is further deployed to evaluate a group of state-of-the-art legged robot locomotion controllers from various model-based, deep neural network involved, and reinforcement learning based methods in the literature. Among a series of intended work domains of the studied legged robots (e.g. tracking speed on sloped surface, with abrupt changes on demanded velocity, and against adversarial push-over disturbances), we show that the method can adequately capture the overall safety characterization and the subtle performance insights. Many of the observed safety outcomes, to the best of our knowledge, have never been reported by the existing work in the legged robot literature.
翻译:脚步机器人的动态反应不是Lipschitz, 并且可能由于环境不确定性而变得不稳。 要测试、验证和定性脚步机器人的安全性能, 现有关于观察到和推断风险的解决方案可能是不完整的, 取样效率低。 一些正式的核查方法受到模型精度和其他代孕假设的影响。 在本文件中, 我们提出一个基于假设的抽样测试框架, 以描述脚步机器人的总体安全性能, 具体指明:(一) 机器人( 就一组国家而言) 在哪里具有潜在安全性, 以及 (二) 机器人在指定的数据集中的安全性能如何。 这个框架还可以帮助验证在现实世界环境中使用脚步机器人的商业性部署, 以及人性化和比较具有不同机械结构和动态特性的脚步式机器人的安全性能。 这个拟议框架还被进一步用于评估一组基于各种模型、 深神经网络 的机械手法控制器的总体安全性能, 以及强化基于文献的学习方法。 在一系列已研究过的脚步马路机器人的预定工作领域( e. g. track the clobilfill robotal devely ex ex ass real develvieward) exfact ex ex exfact the ex ex exing the expealviewcolviewn the ex ex exfolviewn.