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引用次数: 0
摘要
本文对基于间隙的导航技术 "潜在间隙"(Potential Gap)进行了扩展,为运动学平面非全局机器人模型提供了局部规划层面的安全保证,从而实现了 "更安全的间隙"(Safer Gap)。它依赖于从机器人到间隙的可导航自由空间子集,表示为钥匙孔区域。该区域由以机器人为中心的最大无碰撞圆盘和穿过间隙的无碰撞梯形区域的结合体定义。Safer Gap 首先在锁孔区域内生成基于贝塞尔的无碰撞路径。得分最高路径的锁孔区域由实时合成的基于浅层神经网络的归零障碍函数(ZBF)编码。非线性模型预测控制(NMPC)利用锁孔 ZBF 约束和贝塞尔路径的输出跟踪,合成出安全的运动学可行轨迹。如果 NMPC 优化未能在规定时间内收敛到一个解决方案,潜在间隙投影算子将作为最后的行动,以确保安全。Safer Gap 的仿真和实验验证证实了其无碰撞导航特性。
Safer Gap: Safe Navigation of Planar Nonholonomic Robots With a Gap-Based Local Planner
This paper extends the gap-based navigation technique
Potential Gap
with safety guarantees at the local planning level for a kinematic planar nonholonomic robot model, leading to
Safer Gap
. It relies on a subset of navigable free space from the robot to a gap, denoted the keyhole region. The region is defined by the union of the largest collision-free disc centered on the robot and a collision-free trapezoidal region directed through the gap.
Safer Gap
first generates Bézier-based collision-free paths within the keyhole regions. The keyhole region of the top scoring path is encoded by a shallow neural network-based zeroing barrier function (ZBF) synthesized in real-time. Nonlinear Model Predictive Control (NMPC) with
Keyhole ZBF
constraints and output tracking of the Bézier path, synthesizes a safe kinematically feasible trajectory. The
Potential Gap
projection operator serves as a last action to enforce safety if the NMPC optimization fails to converge to a solution within the prescribed time. Simulation and experimental validation of
Safer Gap
confirm its collision-free navigation properties.
期刊介绍:
The scope of this journal is to publish peer-reviewed articles that provide a timely and concise account of innovative research ideas and application results, reporting significant theoretical findings and application case studies in areas of robotics and automation.