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Container Terminal Liner Berthing Time Prediction with Computational Logistics and Deep Learning

机译:集装箱终端衬垫与计算物流和深度学习的停泊时间预测

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The quayside running conditions play a key role in container terminal logistics systems, and the terminal liner berthing time (LBT) is the central index of quayside service efficiency that is also the important evidence and guidance to task scheduling and resource allocation at container terminals. The computational logistics and deep learning are combined to discuss the prediction of LBT by the generalization, unification and integration of the essence and connotation of computation. It is supposed to integrate the deep neural networks learning computation and logistics generalized computation for container terminals (LGC-CT) cross the boundaries between information space and physical world. A deep learning model is designed and executed to predict and evaluate LBT at a typical container terminal in China based on its LBT data for the past four years, which is also intended to lay a good foundation for the configuration, deployment and execution of LGC-CT. The deep neural networks are designed and implemented by the fusion of long short-term memory network, gated recurrent unit one, Gaussian noise one and dense one with TensorFlow 2.3, which demonstrates the feasibility and credibility of the proposed compound computing architecture and paradigms preliminarily.
机译:Quayside运行条件在集装箱终端物流系统中发挥关键作用,终端衬垫停靠时间(LBT)是码头边界服务效率的中心指标,也是集装箱终端任务调度和资源分配的重要证据和指导。计算物流和深度学习组合以讨论LBT的预测,概括,统一和整合的本质和计算的整合。它应该将深度神经网络学习计算和物流广义计算集成为容器终端(LGC-CT)跨越信息空间和物理世界之间的边界。设计和执行深度学习模型,以根据过去四年的基于其LBT数据在中国的典型集装箱码头中预测和评估LBT,这也旨在为LGC的配置,部署和执行奠定良好的基础 - CT。深度神经网络是由长短期存储器网络的融合,门控复发单元,高斯噪声一个和密集的,具有TensoRFlow 2.3的融合来设计和实现,这表明了所提出的复合计算架构和范例初步的可行性和可信度。

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