Control charts for dynamic process monitoring with an application to air pollution surveillance

Xiulin Xie, P. Qiu
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引用次数: 2

Abstract

Air pollution is a major global public health risk factor. Among all air pollutants, PM 2 . 5 is especially harmful. It has been well demonstrated that chronic exposure to PM 2 . 5 can cause many health problems, including asthma, lung cancer and cardiovascular diseases. To tackle problems caused by air pollution, governments have put a huge amount of resources to improve air quality and reduce the impact of air pollution on public health. In this effort, it is extremely important to develop an air pollution surveillance system to constantly monitor the air quality over time, and give a signal promptly once the air quality is found to deteriorate so that a timely government intervention can be implemented. To monitor a sequential process, a major statistical tool is the statistical process control (SPC) chart. However, traditional SPC charts are based on the assumptions that process observations at different time points are independent and identically distributed. These assumptions are rarely valid in environmental data because seasonality and serial correlation are common in such data. To overcome this difficulty, we suggest a new control chart in this paper, which can properly accommodate dynamic temporal pattern and serial correlation in a sequential process. Thus, it can be used for effective air pollution surveillance. This method is demonstrated by an application to monitor the daily average PM 2 . 5 levels in Beijing, and shown to be effective and reliable in detecting the increase of PM 2 . 5 levels.
动态过程监测的控制图及其在空气污染监测中的应用
空气污染是一个主要的全球公共卫生风险因素。在所有空气污染物中,PM 2。5尤其有害。已充分证明,长期暴露于PM 2。会导致许多健康问题,包括哮喘、肺癌和心血管疾病。为了解决空气污染造成的问题,各国政府投入了大量资源来改善空气质量,减少空气污染对公众健康的影响。在这方面,极为重要的是建立空气污染监测系统,持续监测空气质素,并在发现空气质素恶化时立即发出信号,以便政府及时采取干预措施。为了监控一个连续的过程,一个主要的统计工具是统计过程控制(SPC)图表。然而,传统的SPC图是基于不同时间点的过程观察是独立和相同分布的假设。这些假设在环境数据中很少有效,因为季节性和序列相关性在这类数据中很常见。为了克服这一困难,本文提出了一种新的控制图,它可以很好地适应序列过程中的动态时间模式和序列相关性。因此,它可以用于有效的空气污染监测。该方法通过监测日平均PM 2的应用得到了验证。并被证明在检测PM 2的增加方面是有效和可靠的。5的水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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