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Predictive Runtime Monitoring for Linear Stochastic Systems and Applications to Geofence Enforcement for UAVs

机译:线性随机系统的预测运行时监视及其在无人机地理围栏执行中的应用

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We propose a predictive runtime monitoring approach for linear systems with stochastic disturbances. The goal of the monitor is to decide if there exists a possible sequence of control inputs over a given time horizon to ensure that a safety property is maintained with a sufficiently high probability. We derive an efficient algorithm for performing the predictive monitoring in real time, specifically for linear time invariant (LTI) systems driven by stochastic disturbances. The algorithm implicitly defines a control envelope set such that if the current control input to the system lies in this set, there exists a future strategy over a time horizon consisting of the next TV steps to guarantee the safety property of interest. As a result, the proposed monitor is oblivious of the actual controller, and therefore, applicable even in the presence of complex control systems including highly adaptive controllers. Furthermore, we apply our proposed approach to monitor whether a UAV will respect a "geofence" defined by a geographical region over which the vehicle may operate. To achieve this, we construct a data-driven linear model of the UAVs dynamics, while carefully modeling the uncertainties due to wind, GPS errors and modeling errors as time-varying disturbances. Using realistic data obtained from flight tests, we demonstrate the advantages and drawbacks of the predictive monitoring approach.
机译:我们为具有随机干扰的线性系统提出了一种预测性的运行时监视方法。监控器的目标是确定在给定的时间范围内是否存在控制输入的可能顺序,以确保以足够高的概率维护安全性。我们导出了一种实时执行预测监视的有效算法,特别是对于由随机干扰驱动的线性时不变(LTI)系统。该算法隐式定义了一个控制包络集,这样,如果系统的当前控制输入位于该包集中,则存在一个由下一个电视步骤组成的时间范围内的未来策略,以确保所关注的安全性。结果,所提出的监视器忽略了实际的控制器,因此,即使在包括高度自适应的控制器的复杂控制系统的存在下,也可适用。此外,我们应用我们提出的方法来监视无人机是否会遵守车辆可在其上操作的地理区域所定义的“地理范围”。为了实现这一目标,我们构建了无人机动力的数据驱动线性模型,同时仔细建模了由于风,GPS误差和建模误差引起的不确定性(随时间变化的干扰)。使用从飞行测试中获得的真实数据,我们演示了预测性监视方法的优缺点。

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