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Computational Logistics for Container Terminal Handling Systems with Deep Learning

机译:具有深度学习的集装箱终端处理系统的计算物流

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Container terminals are playing an increasingly important role in the global logistics network; however, the programming, planning, scheduling, and decision of the container terminal handling system (CTHS) all are provided with a high degree of nonlinearity, coupling, and complexity. Given that, a combination of computational logistics and deep learning, which is just about container terminal-oriented neural-physical fusion computation (CTO-NPFC), is proposed to discuss and explore the pattern recognition and regression analysis of CTHS. Because the liner berthing time (LBT) is the central index of terminal logistics service and carbon efficiency conditions and it is also the important foundation and guidance to task scheduling and resource allocation in CTHS, a deep learning model core computing architecture (DLM-CCA) for LBT prediction is presented to practice CTO-NPFC. Based on the quayside running data for the past five years at a typical container terminal in China, the deep neural networks model of the DLM-CCA is designed, implemented, executed, and evaluated with TensorFlow 2.3 and the specific feature extraction package of tsfresh. The DLM-CCA shows agile, efficient, flexible, and excellent forecasting performances for LBT with the low consuming costs on a common hardware platform. It interprets and demonstrates the feasibility and credibility of the philosophy, paradigm, architecture, and algorithm of CTO-NPFC preliminarily.
机译:集装箱码头正在播放的全球物流网络中越来越重要的作用;然而,编程,规划,调度和集装箱码头处理系统(CTHS)的决定有关的所有提供具有高度的非线性,耦合,和复杂性。鉴于此,计算物流和深学习,这是几乎集装箱面向终端的神经物理融合计算(CTO-NPFC)的组合,提出了讨论和探讨的模式识别和CTHS的回归分析。因为衬垫停泊时间(LBT)是终端物流服务和碳效率条件中心指数,它也是重要的基础和指导,在CTHS任务调度和资源分配,深学习模型芯计算体系结构(DLM-CCA)对于LBT预测,提出实行CTO-NPFC。基于对在中国典型的集装箱码头在过去五年运行数据的码头时,DLM-CCA的深层神经网络模型的设计,实施,执行,并与TensorFlow 2.3和tsfresh的具体特征提取包评估。该DLM-CCA显示灵活,为LBT高效,灵活和出色的性能预测与低消费的一个通用硬件平台的成本。它解释并初步展示了理念,模式,体系结构和CTO-NPFC的算法的可行性和可信性。

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