| Literature DB >> 24470786 |
Jacob J Oleson1, Naresh Kumar2, Brian J Smith1.
Abstract
Many advancements have been introduced to tackle spatial and temporal structures in data. When the spatial and/or temporal domains are relatively large, assumptions must be made to account for the sheer size of the data. The large data size, coupled with realities that come with observational data, make it difficult for all of these assumptions to be met. In particular, air quality data are very sparse across geographic space and time, due to a limited air pollution monitoring network. These "missing" values make it diffcult to incorporate most dimension reduction techniques developed for high-dimensional spatiotemporal data. This article examines aerosol optical depth (AOD), an indirect measure of radiative forcing, and air quality. The spatiotemporal distribution of AOD can be influenced by both natural (e.g., meteorological conditions) and anthropogenic factors (e.g., emission from industries and transport). After accounting for natural factors influencing AOD, we examine the spatiotemporal relationship in the remaining human influenced portion of AOD. The presented data cover a portion of India surrounding New Delhi from 2000 - 2006. The proposed method is demonstrated showing how it can handle the large spatiotemporal structure containing so much missing data for both meteorologic conditions and AOD over time and space.Entities:
Keywords: AOD; Bayesian; air quality; autoregressive; spatial correlation; temporal correlation
Year: 2013 PMID: 24470786 PMCID: PMC3901316 DOI: 10.1007/s10651-012-0221-4
Source DB: PubMed Journal: Environ Ecol Stat ISSN: 1352-8505 Impact factor: 1.119