自动导向车辆系统中的事件序列重建

Yizhi Qu, Lingxi Li, Yaobin Chen, Yaping Dai
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引用次数: 0

摘要

本文研究了用Petri网建模的自动导引车辆系统(agv)中事件序列的重构问题。我们假设agv中车辆的每个位置(即网络中的每个位置)都配备了能够检测车辆存在的传感器。此外,每个传感器的观测是异步的,由于缺乏全局时间,每个传感器只知道其局部观测的排序。我们的目标是基于这些异步传感器观测重建车辆的运动轨迹(过渡射击序列)。我们开发了一种算法,能够获得与传感器观测和Petri网结构一致的事件序列。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Event sequence reconstruction in automated guided vehicle systems
This paper addresses the problem of reconstructing the event sequences in an automated guided vehicle system (AGVs) that is modeled as a Petri net. We assume that every location of vehicles in the AGVs (i.e., each place in the net) is equipped with a sensor that is able to detect the presence of vehicles. Furthermore, the observation of each sensor is asynchronous and each sensor only knows the ordering of its local observations due to the lack of global time. Our goal is to reconstruct the movement trajectories (transition firing sequences) of vehicles based on these asynchronous sensor observations. We develop an algorithm that is able to obtain these event sequences that are consistent with both sensor observations and the Petri net structure.
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