使用可变带通周期块引导法分析曼哈顿 PM2.5 的季节性和周期性模式

Yanan Sun, Edward Valachovic
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引用次数: 0

摘要

空气质量是环境健康的重要组成部分。对直径为 2.5 微米或更小的颗粒物(PM2.5)的监测和分析在了解空气质量变化方面起着关键作用。本研究侧重于应用一种新的带通自举法,即可变带通周期块自举法(VBPBB)来分析时间序列数据,该数据提供了美国纽约曼哈顿 16 年间 PM2.5 日均浓度的模型预测。VBPBB 可用于探索该 PM2.5 日均值数据集的周期相关(PC)主成分。该方法使用带通滤波器从数据集中分离出不同的 PC 成分,去除包括噪声在内的不必要干扰,并对 PC 成分进行绑定。这样可以保留 PC 结构,更好地理解时间序列数据的周期特征。VBPBB 的结果与其他块引导技术的结果进行了比较。研究结果表明了 PM2.5 水平升高的潜在趋势,提供了其他方法所忽略的重要的半年和一周模式的证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Seasonal and Periodic Patterns of PM2.5 in Manhattan using the Variable Bandpass Periodic Block Bootstrap
Air quality is a critical component of environmental health. Monitoring and analysis of particulate matter with a diameter of 2.5 micrometers or smaller (PM2.5) plays a pivotal role in understanding air quality changes. This study focuses on the application of a new bandpass bootstrap approach, termed the Variable Bandpass Periodic Block Bootstrap (VBPBB), for analyzing time series data which provides modeled predictions of daily mean PM2.5 concentrations over 16 years in Manhattan, New York, the United States. The VBPBB can be used to explore periodically correlated (PC) principal components for this daily mean PM2.5 dataset. This method uses bandpass filters to isolate distinct PC components from datasets, removing unwanted interference including noise, and bootstraps the PC components. This preserves the PC structure and permits a better understanding of the periodic characteristics of time series data. The results of the VBPBB are compared against outcomes from alternative block bootstrapping techniques. The findings of this research indicate potential trends of elevated PM2.5 levels, providing evidence of significant semi-annual and weekly patterns missed by other methods.
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