基于DQN的履带起重机实时避障

W. Guo, Xin Wang, Bo Jiao
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引用次数: 1

摘要

履带式起重机在作业现场载重数十吨的情况下,安全始终是一个重要的考虑因素。然而,在其工作场所周围,除了静态障碍物外,还有许多动态障碍物,如工人和工程车辆。在拥挤的工作场所,这些障碍物是起重机的潜在危险。因此,动态升降路径规划系统可以降低升降工程项目中的风险概率和损失。然而,目前提出的大多数方法关注的是完全已知环境下的搜索路径。针对履带式起重机在部分已知环境下的无行走情况,提出了一种动态避障规划方法。该规划器将提升模块视为具有离散旋转和平移运动的三维凸机器人。首先,采用Resnet块对Deep Q-network神经网络结构进行改进,实现履带式起重机的实时路径规划;在此基础上,对人工势场法(APFM)进行了改进,并将其应用于吊装模块的路径搜索。为了缩短训练时间,我们还利用APFM生成的数据对神经网络进行预训练。最后,通过仿真对APFM和DQN的性能进行了验证和比较。仿真结果验证了该规划方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time Obstacles Avoidance for Crawler Crane based on DQN
Safety always is a crucial consideration for crawler cranes running with dozens of tons of load in its work site. However, around its work site, besides static obstacles, there are many dynamic obstacles, such as workers and engineering vehicles. These obstacles are potential risk for crane in congested work site. Therefore, risk probability and loss can be reduced in project of lifting engineering by dynamic lift-path planning system. However, presently, most proposed methods pay attention to search path in totally known environment. In this paper, we present a dynamic obstacles avoidance planner for crawler cranes in no-walk scenarios in partially known environment. This planner considers the lifted module as a 3DOF convex robot with discrete rotational and translational motions. First, we improved the structure of neural network of Deep Q-network by applying Resnet block for achieving real-time path planning for crawler crane. Thereafter, we also improved Artificial Potential Field Method (APFM) and apply it to search path for lifted module. And for shortening training time, we also apply the data generated by APFM to pre-train our neural network. Finally, we verified and compared the performance of APFM and DQN by simulation. The result of simulation can demonstrate the effectiveness of the presented planner.
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