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Physical Sciences and Mathematics Commons™
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Articles 1 - 4 of 4
Full-Text Articles in Physical Sciences and Mathematics
Slides: Costs And Benefits Of Oil Shale Development, James T. Bartis
Slides: Costs And Benefits Of Oil Shale Development, James T. Bartis
The Promise and Peril of Oil Shale Development (February 5)
Presenter: James T. Bartis, Senior Policy Researcher, Rand Corporation
21 slides
Slides: The Peril Of Energy Usage, Mike Tupper
Slides: The Peril Of Energy Usage, Mike Tupper
The Promise and Peril of Oil Shale Development (February 5)
Presenter: Mike Tupper, Executive Vice President, Composite Technology Development, Inc.
9 slides
Slides: The Elusive Bonanza, Randy Udall
Slides: The Elusive Bonanza, Randy Udall
The Promise and Peril of Oil Shale Development (February 5)
Presenter: Randy Udall, Co-founder, Association for the Study of Peak Oil-USA
62 slides
Assessing Annual And Seasonal Spatial Variability Of Ambient Pm10 Using Linear Regression Analysis In A United States-Mexico Urban Sprawl, Mario Ivan Garcia
Assessing Annual And Seasonal Spatial Variability Of Ambient Pm10 Using Linear Regression Analysis In A United States-Mexico Urban Sprawl, Mario Ivan Garcia
Open Access Theses & Dissertations
As air quality issues grow progressively in the consciousness of the global community, stakeholders are pressing for epidemiologic studies of air pollution. The effects of chronic exposure to ambient air pollution remain a difficult challenge due to its substantial small-scale spatial variation. Recent approaches to assess intra-urban exposure have employed the use of proximity-based assessment, interpolation methods, emission-meteorological models, dispersions models, and land-use regression (LUR) models.
This thesis assesses the spatial variability of ambient particulate matter (PM10) obtained by five self-governing models for the area of El Paso. Using multiple linear regression analysis five regression-based equations were developed to predict …