Xu Yunzhen, Du Pei, Wang Jianzhou
School of Basic Medical Science, Lanzhou University, Lanzhou, 730000, Gansu Province, China.
School of Statistics, Dongbei University of Finance and Economics, Dalian 116025, China.
Environ Pollut. 2017 Apr;223:435-448. doi: 10.1016/j.envpol.2017.01.043. Epub 2017 Jan 23.
As the atmospheric environment pollution has been becoming more and more serious in China, it is highly desirable to develop a scientific and effective early warning system that plays a great significant role in analyzing and monitoring air quality. However, establishing a robust early warning system for warning the public in advance and ameliorating air quality is not only an extremely challenging task but also a public concerned problem for human health. Most previous studies are focused on improving the prediction accuracy, which usually ignore the significance of uncertainty information and comprehensive evaluation concerning air pollutants. Therefore, in this paper a novel robust early warning system was successfully developed, which consists of three modules: evaluation module, forecasting module and characteristics estimating module. In this system, a new dynamic fuzzy synthetic evaluation is proposed and applied to determine air quality levels and primary pollutants, which can be regarded as the research objectives; Moreover, to further mine and analyze the characteristics of air pollutants, four different distribution functions and interval forecasting method are also employed that can not only provide predictive range, confidence level and the other uncertain information of the pollutants future values, but also assist decision-makers in reducing and controlling the emissions of atmospheric pollutants. Case studies utilizing hourly PM, PM and SO data collected from Tianjin and Shanghai in China are applied as illustrative examples to estimate the effectiveness and efficiency of the proposed system. Experimental results obviously indicated that the developed novel early warning system is much suitable for analyzing and monitoring air pollution, which can also add a novel viable option for decision-makers.
在中国,随着大气环境污染日益严重,迫切需要开发一种科学有效的预警系统,该系统在空气质量分析和监测中发挥着重要作用。然而,建立一个强大的预警系统以提前向公众发出警报并改善空气质量,不仅是一项极具挑战性的任务,也是一个关乎公众健康的问题。以往的大多数研究都集中在提高预测准确性上,通常忽略了不确定性信息和空气污染物综合评估的重要性。因此,本文成功开发了一种新颖的强大预警系统,它由三个模块组成:评估模块、预测模块和特征估计模块。在该系统中,提出并应用了一种新的动态模糊综合评估方法来确定空气质量等级和主要污染物,这可被视为研究目标;此外,为了进一步挖掘和分析空气污染物的特征,还采用了四种不同的分布函数和区间预测方法,这些方法不仅可以提供污染物未来值的预测范围、置信水平和其他不确定信息,还能帮助决策者减少和控制大气污染物的排放。利用从中国天津和上海收集的每小时PM、PM和SO数据进行案例研究,作为说明所提出系统有效性和效率的示例。实验结果明显表明,所开发的新颖预警系统非常适合分析和监测空气污染,这也为决策者增加了一种新颖可行的选择。