Landsat Land Use Classification for Assessing Health Risk from Industrial Air Pollution


如何引用文章

全文:

开放存取 开放存取
受限制的访问 ##reader.subscriptionAccessGranted##
受限制的访问 订阅存取

详细

This study investigated to what extent risk estimates can be modified by involving in the process readily available space data and well-tested processing methods. We classify Landsat data for these types using the support vector algorithm and small characteristic training sites for each type. The dispersion modeling problem, unlike most classification tasks, is tolerant of unclassified areas. We show that the classification obtained is better than available global maps based on MODIS or Landsat. For a large chemical plant, we perform dispersion modeling and calculate the maximal hourly concentrations and acute risk from the main pollutant. We compare several versions of calculated risk based on the surface parameters assessed from global maps and variants of Landsat classification to show that the latter are twice as accurate as the former (with a ~20 and ~40% error, respectively). Risk estimates are shown to vary considerably (by ~25%) depending on the yearly set of Landsat data used, so that using multi-year data is a must, unless land use changes considerably over the period. Thus, in assessing the hazard from air pollution from any specific plant, which is an obligatory procedure for establishing the plant’s sanitary protection zone and obtaining the pollutant emission permit, it is desirable to use Landsat data.

作者简介

B. Balter

Space Research Institute, Russian Academy of Sciences

编辑信件的主要联系方式.
Email: Balter@mail.ru
俄罗斯联邦, Moscow, 117997

D. Balter

Space Research Institute, Russian Academy of Sciences

Email: Balter@mail.ru
俄罗斯联邦, Moscow, 117997

V. Egorov

Space Research Institute, Russian Academy of Sciences

Email: Balter@mail.ru
俄罗斯联邦, Moscow, 117997

M. Stalnaya

Space Research Institute, Russian Academy of Sciences

Email: Balter@mail.ru
俄罗斯联邦, Moscow, 117997

M. Faminskaya

Russian State Social University

Email: Balter@mail.ru
俄罗斯联邦, Moscow, 129226

补充文件

附件文件
动作
1. JATS XML

版权所有 © Pleiades Publishing, Ltd., 2018