基于局部交通和估计的自动驾驶汽车有界多维模态逻辑

Bingqing Xu, Qin Li
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引用次数: 4

摘要

自动驾驶汽车的决策模块通常是一个周期性的程序。在每个循环中,该程序根据从汽车传感器收集的当前交通信息做出加速、刹车、启动变道过程或转弯过程等决策。在混合类型车辆的城市交通中,实时性能要求是决策程序的关键,而获取交通的全局知识则不太现实。在这样的环境下,车辆之间的通信不可靠且耗时,因此通常很难知道下一个周期其他车辆的确切驾驶决策。为了保证安全,可行的解决方案需要对其他车辆在不久的将来的驾驶决策进行合理的估计。在本文中,我们提出了一种BMML (Bounded Multi-dimensional Modal Logic,有界多维模态逻辑)来描述具有时空特性的交通状况,并考虑到它们在不久的将来的估计演变。该逻辑包含一个原始空间逻辑,以导航算子和估计算子作为模态算子。BMML公式的满足取决于当前交通状况的快照和捕获关于其他车辆驾驶决策的可信信息的估计结构。在给定快照和估计结构的情况下,可以通过简单的确定性推理来确定BMML公式是否满足要求,因此将BMML公式作为自动驾驶汽车决策程序的保护条件是可行的。通过一系列小示例说明了BMML的用法。
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A bounded multi-dimensional modal logic for autonomous cars based on local traffic and estimation
The decision-making module on an autonomous car is usually a periodic program. In every cycle, the program makes a decision such as acceleration, brake, initiating a lane change process or a turn process based on the current traffic information gathered from car sensors. In urban traffic with mixed type of vehicles, the real-time performance requirement is critical for the decision-making program while acquiring global knowledge of the traffic is less practical. In such an environment, communications between vehicles are unreliable and time-consuming, so it is often difficult to know the exact driving decisions of other cars in the next cycle. In order to guarantee safety, a feasible solution requires the reasonable estimation on the driving decisions of other cars in the near future. In this paper, we propose a BMML (Bounded Multi-dimensional Modal Logic) to specify the traffic situations with spatio-temproral properties taking account of the estimated evolvement on them in the near future. The logic contains a primitive spatial logic with navigation operators and estimation operators as modal operators. The satisfaction of a BMML formula depends on a snapshot of the current traffic condition and an estimation structure capturing the believed information on the driving decisions of other cars. Given a snapshot and an estimation structure, the satisfaction of a BMML formula can be determined with simple and deterministic reasoning, so it is feasible for taking a BMML formula as the guard condition of the decision-making program of an autonomous car. The usage of BMML is illustrated with a series of small examples.
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