基于深度学习模型和区块链技术的物流配送路线优化研究

Xiaoshan Yang, Weiwei Guan
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引用次数: 0

摘要

日益增长的数据时代反映在当今社会的各个方面。在物流领域,特别是在城市道路条件复杂的情况下,如何选择最优配送路径,缩短配送时间是一个值得关注的问题。然而,针对传统算法在求解城市物流车辆分配时所面临的问题,基于区域链技术的方法可以更好地解决路径优化问题。设计了一种基于注意力机制和LSTM模型的深度强化学习算法,并将其应用于物流车辆配送路径规划。通过样本训练实验得到了物流车辆的配送优化路径,为物流配送路径的优化提供了一种新的思路。
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Research on logistics distribution route optimization based on deep learning model and block chain technology
The growing data age is reflected in all aspects of today's society. In the field of logistics, especially when the road conditions in urban areas are complex, how to select the optimal distribution path and reduce the distribution time is a problem worthy of attention. Aiming at the problems faced by traditional algorithms in solving the distribution of logistics vehicles in urban areas, however, the method based on regional chain technology can better solve the path optimization problem. A deep reinforcement learning algorithm based on attention mechanism and LSTM model is designed and applied to the distribution path planning of logistics vehicles. The distribution optimization path of logistics vehicles is obtained through sample training experiments, Thus, it provides a new idea for the optimization of logistics distribution path.
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