Statistical Applications for Environmental Analysis and Risk Assessment Statistical Applications for Environmental Analysis and Risk Assessment

Statistical Applications for Environmental Analysis and Risk Assessment

    • ¥17,800
    • ¥17,800

Publisher Description

Statistical Applications for Environmental Analysis and Risk Assessment guides readers through real-world situations and the best statistical methods used to determine the nature and extent of the problem, evaluate the potential human health and ecological risks, and design and implement remedial systems as necessary. Featuring numerous worked examples using actual data and “ready-made” software scripts, Statistical Applications for Environmental Analysis and Risk Assessment also includes:

• Descriptions of basic statistical concepts and principles in an informal style that does not presume prior familiarity with the subject

• Detailed illustrations of statistical applications in the environmental and related water resources fields using real-world data in the contexts that would typically be encountered by practitioners

• Software scripts using the high-powered statistical software system, R, and supplemented by USEPA’s ProUCL and USDOE’s VSP software packages, which are all freely available

• Coverage of frequent data sample issues such as non-detects, outliers, skewness, sustained and cyclical trend that habitually plague environmental data samples

• Clear demonstrations of the crucial, but often overlooked, role of statistics in environmental sampling design and subsequent exposure risk assessment.

GENRE
Nonfiction
RELEASED
2014
May 6
LANGUAGE
EN
English
LENGTH
656
Pages
PUBLISHER
Wiley
SELLER
John Wiley & Sons, Inc.
SIZE
6.4
MB
Introducing Social Statistics Introducing Social Statistics
2021
Statistics in Environmental Sciences Statistics in Environmental Sciences
2019
Comparing Groups Comparing Groups
2012
Applied Statistics for Public Service: How to make Data-Driven Decisions using SPSS Applied Statistics for Public Service: How to make Data-Driven Decisions using SPSS
2020
Fundamentals of Correlation and Regression Fundamentals of Correlation and Regression
2015
Geostatistical Functional Data Analysis Geostatistical Functional Data Analysis
2021