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机场机器人自动行李推车收集的社会合规路径规划

Socially Compliant Path Planning for Robotic Autonomous Luggage Trolley Collection at Airports.

作者信息

Wang Jiankun, Meng Max Q-H

机构信息

Department of Electronic Engineering, The Chinese University of Hong Kong, Hong Kong, China.

出版信息

Sensors (Basel). 2019 Jun 19;19(12):2759. doi: 10.3390/s19122759.

Abstract

This paper describes a socially compliant path planning scheme for robotic autonomous luggage trolley collection at airports. The robot is required to efficiently collect all assigned luggage trolleys in a designated area, while avoiding obstacles and not offending the pedestrians. This path planning problem is formulated in this paper as a Traveling Salesman Problem (TSP). Different from the conventional solutions to the TSP, in which the Euclidean distance between two sites is used as the metric, a high-dimensional metric including the factor of pedestrians' feelings is applied in this work. To obtain the new metric, a novel potential function is firstly proposed to model the relationship between the robot, luggage trolleys, obstacles, and pedestrians. The Social Force Model (SFM) is utilized so that the pedestrians can bring extra influence on the potential field, different from ordinary obstacles. Directed by the attractive and repulsive force generated from the potential field, a number of paths connecting the robot and the luggage trolley, or two luggage trolleys, can be obtained. The length of the generated path is considered as the new metric. The Self-Organizing Map (SOM) satisfies the job of finding a final path to connect all luggage trolleys and the robot located in the potential field, as it can find the intrinsic connection in the high dimensional space. Therefore, while incorporating the new metric, the SOM is used to find the optimal path in which the robot can collect the assigned luggage trolleys in sequence. As a demonstration, the proposed path planning method is implemented in simulation experiments, showing an increase of efficiency and efficacy.

摘要

本文描述了一种用于机场机器人自主行李车收集的社会兼容路径规划方案。要求机器人在指定区域内高效收集所有分配的行李车,同时避开障碍物且不冒犯行人。本文将此路径规划问题表述为旅行商问题(TSP)。与传统的TSP解决方案不同,传统方案使用两个地点之间的欧几里得距离作为度量,而在这项工作中应用了一种包含行人感受因素的高维度量。为了获得新的度量,首先提出了一种新颖的势函数来对机器人、行李车、障碍物和行人之间的关系进行建模。利用社会力模型(SFM),使得行人能够对势场产生额外影响,这与普通障碍物不同。在势场产生的吸引力和排斥力的引导下,可以获得连接机器人与行李车或两辆行李车的多条路径。所生成路径的长度被视为新的度量。自组织映射(SOM)满足找到连接所有行李车和位于势场中的机器人的最终路径的任务,因为它能够在高维空间中找到内在联系。因此,在纳入新的度量的同时,使用SOM来找到最优路径,使机器人能够按顺序收集分配的行李车。作为演示,所提出的路径规划方法在模拟实验中得以实现,显示出效率和效能的提高。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3a38/6630452/16ee2ee1aea9/sensors-19-02759-g001.jpg

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