Abstract

In order to improve the horizontal transportation efficiency of the terminal Automated Guided Vehicles (AGVs), it is necessary to focus on coordinating the time and space synchronization operation of the loading and unloading of equipment, the transportation of equipment during the operation, and the reduction in the completion time of the task. Traditional scheduling methods limited dynamic response capabilities and were not suitable for handling dynamic terminal operating environments. Therefore, this paper discusses how to use delivery task information and AGVs spatiotemporal information to dynamically schedule AGVs, minimizes the delay time of tasks and AGVs travel time, and proposes a deep reinforcement learning algorithm framework. The framework combines the benefits of real-time response and flexibility of the Convolutional Neural Network (CNN) and the Deep Deterministic Policy Gradient (DDPG) algorithm, and can dynamically adjust AGVs scheduling strategies according to the input spatiotemporal state information. In the framework, firstly, the AGVs scheduling process is defined as a Markov decision process, which analyzes the system’s spatiotemporal state information in detail, introduces assignment heuristic rules, and rewards the reshaping mechanism in order to realize the decoupling of the model and the AGVs dynamic scheduling problem. Then, a multi-channel matrix is built to characterize space–time state information, the CNN is used to generalize and approximate the action value functions of different state information, and the DDPG algorithm is used to achieve the best AGV and container matching in the decision stage. The proposed model and algorithm frame are applied to experiments with different cases. The scheduling performance of the adaptive genetic algorithm and rolling horizon approach is compared. The results show that, compared with a single scheduling rule, the proposed algorithm improves the average performance of task completion time, task delay time, AGVs travel time and task delay rate by 15.63%, 56.16%, 16.36% and 30.22%, respectively; compared with AGA and RHPA, it reduces the tasks completion time by approximately 3.10% and 2.40%.

Highlights

  • With the development of the international logistics industry, about 70% of the world’s total trade volume is borne by ocean shipping

  • The results show that this method can minimize the maximum completion time and improve the efficiency of the terminal Automated Guided Vehicles (AGVs) horizontal transportation operation

  • AGVs based on the descheduling, the scheduling system assigns tasks to the specified AGVs based on the descheduling, the scheduling system assigns tasks to the specified

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Summary

Introduction

With the development of the international logistics industry, about 70% of the world’s total trade volume is borne by ocean shipping. The artificial intelligence approach empowers the logistics transportation system in the automated terminal, automatically acquiring knowledge and skills through computer or intelligent simulation system simulation learning, continuously improving the system performance to achieve a self-improvement of the system This effectively alleviates the difficult problem of AGVs dynamic scheduling with the participation of multiple logistics equipment. Through reasonable tasks allocation and effective integration of resources, we improve the operational efficiency of the horizontal transportation of AGVs, which helps to improve the throughput rate of automated terminal. It has some reference significance for the optimization of AGVs dynamic scheduling in a real automated terminal.

Literature Review
Problem Description
AGVs Dynamic Scheduling Model
System State Information
Action Space Expression
Reward Design and Reshaping
Optimal Scheduling Strategy
CDA Scheduling Algorithm
CDA Algorithm Network Structure
Algorithm Update Process
17: End for
Implementation of AGVs Dynamic Scheduling
Experiments
Experimental Parameters Setting
Experimental
Parameter Experiment
Results
Conclusions and Future Research
Full Text
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