Recent advances in safety-critical risk-aware control are predicated on apriori knowledge of the disturbances a system might face. This paper proposes a method to efficiently learn these disturbances online, in a risk-aware context. First, we introduce the concept of a Surface-at-Risk, a risk measure for stochastic processes that extends Value-at-Risk -- a commonly utilized risk measure in the risk-aware controls community. Second, we model the norm of the state discrepancy between the model and the true system evolution as a scalar-valued stochastic process and determine an upper bound to its Surface-at-Risk via Gaussian Process Regression. Third, we provide theoretical results on the accuracy of our fitted surface subject to mild assumptions that are verifiable with respect to the data sets collected during system operation. Finally, we experimentally verify our procedure by augmenting a drone's controller and highlight performance increases achieved via our risk-aware approach after collecting less than a minute of operating data.
翻译:安全临界风险意识控制方面的最新进展取决于对系统可能面临的扰动的优先了解。本文件提出一种方法,在风险意识背景下,在网上有效了解这些扰动。首先,我们引入了 " 地对地 " 概念,这是延展 " 价值对地 " 的随机过程的一种风险评估措施 -- -- 这是风险意识控制界中常用的风险评估措施。第二,我们将模型与真实系统演进之间的国家差异规范作为标价对价的随机程序,并通过高森进程回归,确定其地表对地表对地的高度约束。第三,我们根据在系统运行期间收集的数据集可核实的温度假设,提供了我们安装的表面准确性的理论结果。最后,我们通过增加无人机控制器,实验性地核查我们的程序,并突出在收集不到一分钟操作数据后通过风险意识方法实现的性能提高。