Trajectory Predictions with Details in a Robotic Twin-Crane System

Ning Zhao;Gabriel Lodewijks;Zhuorui Fu;Yu Sun;Yue Sun
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引用次数: 2

Abstract

Nowadays, more automated or robotic twin-crane systems (RTCSs) are employed in ports and factories to improve material handling efficiency. In a twin-crane system, cranes must travel with a minimum safety distance between them to prevent interference. The crane trajectory prediction is critical to interference handling and crane scheduling. Current trajectory predictions lack accuracy because many details are simplified. To enhance accuracy and lessen the trajectory prediction time, a trajectory prediction approach with details (crane acceleration/deceleration, different crane velocities when loading/unloading, and trolley movement) is proposed in this paper. Simulations on different details and their combinations are conducted on a container terminal case study. According to the simulation results, the accuracy of the trajectory prediction can be improved by 20%. The proposed trajectory prediction approach is helpful for building a digital twin of RTCSs and enhancing crane scheduling.
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机器人双起重机系统的详细轨迹预测
如今,越来越多的自动化或机器人双桥系统(RTCSs)被用于港口和工厂,以提高物料处理效率。在双起重机系统中,起重机之间必须保持最小的安全距离,以防止相互干扰。起重机轨迹预测是干扰处理和起重机调度的关键。目前的轨迹预测缺乏准确性,因为许多细节都被简化了。为了提高轨迹预测精度,减少轨迹预测时间,提出了一种考虑起重机加减速、装卸时起重机不同速度、小车运动等细节的轨迹预测方法。以某集装箱码头为例,对不同细节及其组合进行了仿真。仿真结果表明,该方法可将弹道预测精度提高20%。提出的轨迹预测方法有助于建立rtcs的数字孪生模型,提高起重机调度能力。
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