Paper ID: 2501.02749

Enhancing Robot Route Optimization in Smart Logistics with Transformer and GNN Integration

Hao Luo, Jianjun Wei, Shuchen Zhao, Ankai Liang, Zhongjin Xu, Ruxue Jiang

This research delves into advanced route optimization for robots in smart logistics, leveraging a fusion of Transformer architectures, Graph Neural Networks (GNNs), and Generative Adversarial Networks (GANs). The approach utilizes a graph-based representation encompassing geographical data, cargo allocation, and robot dynamics, addressing both spatial and resource limitations to refine route efficiency. Through extensive testing with authentic logistics datasets, the proposed method achieves notable improvements, including a 15% reduction in travel distance, a 20% boost in time efficiency, and a 10% decrease in energy consumption. These findings highlight the algorithm's effectiveness, promoting enhanced performance in intelligent logistics operations.

Submitted: Jan 6, 2025