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首页> 外文期刊>Frontiers of environmental science & engineering >PyLUR: Efficient software for land use regression modeling the spatial distribution of air pollutants using GDAL/OGR library in Python
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PyLUR: Efficient software for land use regression modeling the spatial distribution of air pollutants using GDAL/OGR library in Python

机译:Pylure:使用GDAL / OGR库在Python中使用GDAL / OGR库建模空气污染物的空间分布的高效软件

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摘要

Land use regression (LUR) models have been widely used in air pollution modeling. This regression-based approach estimates the ambient pollutant concentrations at un-sampled points of interest by considering the relationship between ambient concentrations and several predictor variables selected from the surrounding environment. Although conceptually quite simple, its successful implementation requires detailed knowledge of the area, expertise in GIS, statistics, and programming skills, which makes this modeling approach relatively inaccessible to novice users. In this contribution, we present a LUR modeling and pollution-mapping software named PyLUR. It uses GDAL/OGR libraries based on the Python platform and can build a LUR model and generate pollutant concentration maps efficiently. This self-developed software comprises four modules: a potential predictor variable generation module, a regression modeling module, a model validation module, and a prediction and mapping module. The performance of the newly developed PyLUR is compared to an existing LUR modeling software called RLUR (with similar functions implemented on R language platform) in terms of model accuracy, processing efficiency and software stability. The results show that PyLUR out-performs RLUR for modeling in the Bradford and Auckland case studies examined. Furthermore, PyLUR is much more efficient in data processing and it has a capability to handle detailed GIS input data.
机译:土地利用回归(LUR)模型已广泛用于空气污染建模。基于回归的方法通过考虑环境浓度与选自周围环境的几个预测变量之间的关系,估计了环境污染物在未采样点的浓度。虽然概念上非常简单,但其成功的实施需要详细了解该地区,GIS,统计和编程技能的专业知识,这使得新手用户的建模方法相对无法进入。在这一贡献中,我们提出了一个名为Pylut的Lur建模和污染映射软件。它使用基于Python平台的GDAL / OGR库,并可以建立LUR模型并有效地产生污染物浓度图。这种自主开发的软件包括四个模块:潜在的预测变量变量模块,回归建模模块,模型验证模块和预测和映射模块。在模型精度,处理效率和软件稳定性方面,将新开发的幽门的性能与名为RLUR的现有LUR建模软件进行比较,以便在模型精度,加工效率和软件稳定性方面。结果表明,在布拉德福德和奥克兰案例研究中进行了建模的幽门外出的rlur。此外,幽门在数据处理中更有效,并且它具有处理详细的GIS输入数据的能力。

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