Tongji University, Shanghai, China.
Shanghai Marine Diesel Engine Research Institute, Shanghai, China.
PLoS One. 2022 Sep 16;17(9):e0274236. doi: 10.1371/journal.pone.0274236. eCollection 2022.
Shipping emissions have aroused wide concern in the world. In order to promote the implementation of emission regulations, this study develop a ship based sniffing technique to perform remote measurement of the SO2, NOx and CO2 from ships entering and leaving Shanghai port at the open sea. The ship emission prediction model, Smoke diffusion model and source identification model were developed to automatically analyze the emission data and screen the object ship source based on Automatic Identification System (AIS) system. The fueling documents of the detected ship were obtained from maritime sector and the results precision of the sniffer technique was evaluated by comparing the measured Fuel sulfur content (FSC) with actual value deduced from fueling documents. The influences of wind speed and direction, object ship parameters and monitoring distance on the identification of object ship and accuracy of the calculated FSC were thoroughly investigated and the corresponding correction factors under different conditions were deduced. The modified emission factor ratio of CO2 to NOx were proposed in order to improve the accuracy. It is demonstrated that with wind speed higher than 2 m/s and test distance shorter than 400m, the sniffer technique exhibit high efficiency and accuracy for the remote emissions measurement of ship upwind with detection rate higher than 90% and test error of FSC below 15%. To reduce the influence of the wind direction, at least two sniffer systems were required to guarantee that at least one station is in the downwind of the ship lane. Based on the results and discussion, a novel sniffer monitoring system with two buoy based sniffing stations placed close to each side of the ship lane far off shore was proposed to realize the remote monitoring of ship emissions.
船舶排放引起了全球广泛关注。为了促进排放法规的实施,本研究开发了一种基于船舶的嗅探技术,用于对进出上海港的船舶在公海进行远程测量 SO2、NOx 和 CO2。开发了船舶排放预测模型、烟雾扩散模型和源识别模型,以基于自动识别系统(AIS)自动分析排放数据,并根据 AIS 筛选目标船舶源。从海事部门获得检测到的船舶的加油文件,并通过比较从加油文件推导出的实际燃料硫含量(FSC)与嗅探器技术测量的 FSC 值来评估嗅探器技术的结果精度。彻底研究了风速和风向、目标船参数和监测距离对目标船识别和计算的 FSC 精度的影响,并推导出了不同条件下的相应修正系数。为了提高准确性,提出了 CO2 与 NOx 的修正排放因子比。结果表明,在风速高于 2m/s 且测试距离小于 400m 的情况下,嗅探器技术对船舶上风方向的远程排放测量具有高效率和高精度,检测率高于 90%,FSC 测试误差低于 15%。为了减少风向的影响,至少需要两个嗅探器系统,以确保至少有一个站位于航道下风侧。基于结果和讨论,提出了一种新型的嗅探监测系统,该系统由两个浮标式嗅探站组成,放置在航道两侧近海处,以实现船舶排放的远程监测。