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大数据驱动的船舶碳排放在线溯源清单及特征——以天津港为例。

Big data-driven carbon emission traceability list and characteristics of ships in maritime transportation-a case study of Tianjin Port.

机构信息

Merchant Marine Academy, Shanghai Maritime University, Shanghai, 200210, China.

Institute of Computing Technology Chinese Academy of Sciences, Beijing, 100190, China.

出版信息

Environ Sci Pollut Res Int. 2023 Jun;30(27):71103-71119. doi: 10.1007/s11356-023-27104-z. Epub 2023 May 9.

Abstract

As Chi na's shipping industry continues to develop, ship emissions have become a significant source of pollutants. Consequently, it has become imperative to comprehend accurately the nature and attributes of ship pollutant emissions and understand their causation and effect as a crucial aspect of pollution control and legislation. This paper employs high-precision automatic identification system (AIS) dynamic and static data, along with pollutant emission parameters, to estimate the pollutant emissions from a ship's main engine, auxiliary engine, and boiler using a dynamic approach. Additionally, the study considers the sailing state and trajectory of the vessel and analyzes the characteristics of ship carbon emissions. Taking Tianjin Port as an example, this study conducts a multi-dimensional analysis of pollutant emissions to gain insight into the causation and effect of pollutants based on the collected big AIS data. The results show that the pollutant emissions in this region are mainly concentrated in the vicinity of Tianjin Port land port area, Dagusha Channel, and the Main Shipping Channel of Tianjin Xingang Fairway. Carbon emissions peak in September and are lower in June and December. Through accurate analysis of pollutant emission sources and emission characteristics in the region, this paper establishes the regular relationship between pollutant emissions and possible influencing factors and provides data support for China to formulate accurate pollutant emission reduction policies and regulate ship construction technology and carbon trading.

摘要

随着中国航运业的不断发展,船舶排放已成为污染物的重要来源。因此,准确了解船舶污染物排放的性质和属性,以及理解其成因和影响,成为污染控制和立法的重要方面。本文采用高精度自动识别系统(AIS)动态和静态数据以及污染物排放参数,通过动态方法估算船舶主机、辅机油和锅炉的污染物排放量。此外,本研究还考虑了船舶的航行状态和轨迹,并分析了船舶碳排放的特征。以天津港为例,本研究对污染物排放进行了多维分析,基于收集的大量 AIS 数据,深入探讨了污染物的成因和影响。结果表明,该区域的污染物排放主要集中在天津港陆域港区、大沽沙航道和天津新港主航道附近。碳排放峰值出现在 9 月,6 月和 12 月较低。通过对该区域污染物排放源和排放特征的准确分析,本文建立了污染物排放与可能影响因素之间的规律关系,为中国制定准确的污染物减排政策和规范船舶建造技术及碳交易提供了数据支持。

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