State Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing (LIESMARS), Wuhan University, Wuhan 430079, China.
Department of Geography, University of California at Santa Barbara, Santa Barbara, CA 93106, USA.
Sensors (Basel). 2019 Sep 27;19(19):4197. doi: 10.3390/s19194197.
Automatic Identification System (AIS) data could support ship movement analysis, and maritime network construction and dynamic analysis. This study examines the global maritime network dynamics from multi-layers (bulk, container, and tanker) and multidimensional (e.g., point, link, and network) structure perspectives. A spatial-temporal framework is introduced to construct and analyze the global maritime transportation network dynamics by means of big trajectory data. Transport capacity and stability are exploited to infer spatial-temporal dynamics of system nodes and links. Maritime network structure changes and traffic flow dynamics grouping are then possible to extract. This enables the global maritime network between 2013 and 2016 to be investigated, and the differences between the countries along the 21st-century Maritime Silk Road and other countries, as well as the differences between before and after included by 21st-century Maritime Silk Road to be revealed. Study results indicate that certain countries, such as China, Singapore, Republic of Korea, Australia, and United Arab Emirates, build new corresponding shipping relationships with some ports of countries along the Silk Road and these new linkages carry significant traffic flow. The shipping dynamics exhibit interesting geographical and spatial variations. This study is meaningful to policy formulation, such as cooperation and reorientation among international ports, evaluating the adaptability of a changing traffic flow and navigation environment, and integration of the maritime economy and transportation systems.
自动识别系统(AIS)数据可支持船舶运动分析以及海洋网络的构建和动态分析。本研究从多层(散货、集装箱和油轮)和多维(如点、链路和网络)结构角度考察全球海洋网络动态。引入了一个时空框架,通过大数据轨迹构建和分析全球海洋运输网络动态。利用运输能力和稳定性来推断系统节点和链路的时空动态。然后可以提取海洋网络结构变化和交通流动态分组。利用该方法对 2013 年至 2016 年期间的全球海洋网络进行了调查,揭示了 21 世纪海上丝绸之路沿线国家与其他国家之间的差异,以及 21 世纪海上丝绸之路包含的国家前后的差异。研究结果表明,中国、新加坡、韩国、澳大利亚和阿拉伯联合酋长国等某些国家与丝绸之路沿线国家的一些港口建立了新的相应航运关系,这些新的连接具有显著的交通流量。航运动态表现出有趣的地理和空间变化。本研究对于政策制定具有重要意义,例如国际港口之间的合作和重新定位、评估交通流量和航行环境变化的适应性,以及海洋经济和运输系统的整合。