We present a novel path-planning algorithm to reduce localization error for a network of robots cooperatively localizing via inter-robot range measurements. The quality of localization with range measurements depends on the configuration of the network, and poor configurations can cause substantial localization errors. To reduce the effect of network configuration on localization error for moving networks we consider various optimality measures of the Fisher information matrix (FIM), which have well-studied relationships with the localization error. In particular, we pose a trajectory planning problem with constraints on the FIM optimality measures. By constraining these optimality measures we can control the statistical properties of the localization error. To efficiently generate trajectories which satisfy these FIM constraints we present a prioritized planner which leverages graph-based planning and unique properties of the range-only FIM. We show results in simulated experiments that demonstrate the trajectories generated by our algorithm reduce worst-case localization error by up to 42\% in comparison to existing planning approaches and can scalably plan distance-efficient trajectories in complicated environments for large numbers of robots.
翻译:为了减少网络配置对移动网络本地化错误的影响,我们认为,渔业信息矩阵(FIM)的各种最佳度量与本地化错误有着很好研究的关系。特别是,我们由于FIM最佳度量的制约而造成了轨迹规划问题。通过限制这些最佳度量,我们可以控制本地化错误的统计特性。为了高效生成满足FIM限制条件的轨迹,我们提出了一个优先规划器,利用仅限范围FIM的图形规划和独特性能。我们展示了模拟实验的结果,这些实验显示我们算法产生的轨迹与本地化错误的关系最差,与现有的规划方法相比,可以减少最差的本地化误差42 ⁇,并且可以对复杂环境中大量机器人的远距离轨迹进行可变规划。