Development and Evaluation of Infilling Methods for Missing Hydrologic and Chemical Watershed Monitoring Data

Watershed monitoring programs generally do not have perfect data collection success rates due to a variety of field and laboratory factors. A major source of error in many stream-gaging records is lost or missing data caused by malfunctioning stream-side equipment. Studies estimate that between 5 an...

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Main Author: Johnston, Carey Andrew
Other Authors: Environmental Engineering
Format: Others
Published: Virginia Tech 2011
Subjects:
Online Access:http://hdl.handle.net/10919/10028
http://scholar.lib.vt.edu/theses/available/etd-091799-174256
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spelling ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-100282020-09-29T05:40:00Z Development and Evaluation of Infilling Methods for Missing Hydrologic and Chemical Watershed Monitoring Data Johnston, Carey Andrew Environmental Engineering Grizzard, Thomas J. Godrej, Adil N. Post, Harold E. II pollutant load calculation quality assurance and control surface water quality watershed monitoring infilling models nonpoint source pollution missing data Watershed monitoring programs generally do not have perfect data collection success rates due to a variety of field and laboratory factors. A major source of error in many stream-gaging records is lost or missing data caused by malfunctioning stream-side equipment. Studies estimate that between 5 and 20 percent of stream-gaging data may be marked as missing for one reason or another. Reconstructing or infilling missing data methods generate larger sets of data. These larger data sets generally generate better estimates of the sampled parameter and permit practical applications of the data in hydrologic or water quality calculations. This study utilizes data from a watershed monitoring program operating in the Northern Virginia area to: (1) identify and summarize the major reasons for the occurrence of missing data; (2) provide recommendations for reducing the occurrence of missing data; (3) describe methods for infilling missing chemical data; (4) develop and evaluate methods for infilling values to replace missing chemical data; and (5) recommend different infilling methods for various conditions. An evaluation of different infilling methods for chemical data over a variety of factors (e.g., amount of annual rainfall, whether the missing chemical parameter is strongly correlated with flow, amount of missing data) is performed using Monte Carlo modeling. Using the results of the Monte Carlo modeling, a Decision Support System (DSS) is developed for easy application of the most appropriate infilling method. Master of Science 2011-08-06T16:02:39Z 2011-08-06T16:02:39Z 1999-08-24 1999-09-17 2000-09-30 1999-09-30 Thesis etd-091799-174256 http://hdl.handle.net/10919/10028 http://scholar.lib.vt.edu/theses/available/etd-091799-174256 vita.pdf report12.PDF In Copyright http://rightsstatements.org/vocab/InC/1.0/ ETD application/pdf Virginia Tech
collection NDLTD
format Others
sources NDLTD
topic pollutant load calculation
quality assurance and control
surface water quality
watershed monitoring
infilling models
nonpoint source pollution
missing data
spellingShingle pollutant load calculation
quality assurance and control
surface water quality
watershed monitoring
infilling models
nonpoint source pollution
missing data
Johnston, Carey Andrew
Development and Evaluation of Infilling Methods for Missing Hydrologic and Chemical Watershed Monitoring Data
description Watershed monitoring programs generally do not have perfect data collection success rates due to a variety of field and laboratory factors. A major source of error in many stream-gaging records is lost or missing data caused by malfunctioning stream-side equipment. Studies estimate that between 5 and 20 percent of stream-gaging data may be marked as missing for one reason or another. Reconstructing or infilling missing data methods generate larger sets of data. These larger data sets generally generate better estimates of the sampled parameter and permit practical applications of the data in hydrologic or water quality calculations. This study utilizes data from a watershed monitoring program operating in the Northern Virginia area to: (1) identify and summarize the major reasons for the occurrence of missing data; (2) provide recommendations for reducing the occurrence of missing data; (3) describe methods for infilling missing chemical data; (4) develop and evaluate methods for infilling values to replace missing chemical data; and (5) recommend different infilling methods for various conditions. An evaluation of different infilling methods for chemical data over a variety of factors (e.g., amount of annual rainfall, whether the missing chemical parameter is strongly correlated with flow, amount of missing data) is performed using Monte Carlo modeling. Using the results of the Monte Carlo modeling, a Decision Support System (DSS) is developed for easy application of the most appropriate infilling method. === Master of Science
author2 Environmental Engineering
author_facet Environmental Engineering
Johnston, Carey Andrew
author Johnston, Carey Andrew
author_sort Johnston, Carey Andrew
title Development and Evaluation of Infilling Methods for Missing Hydrologic and Chemical Watershed Monitoring Data
title_short Development and Evaluation of Infilling Methods for Missing Hydrologic and Chemical Watershed Monitoring Data
title_full Development and Evaluation of Infilling Methods for Missing Hydrologic and Chemical Watershed Monitoring Data
title_fullStr Development and Evaluation of Infilling Methods for Missing Hydrologic and Chemical Watershed Monitoring Data
title_full_unstemmed Development and Evaluation of Infilling Methods for Missing Hydrologic and Chemical Watershed Monitoring Data
title_sort development and evaluation of infilling methods for missing hydrologic and chemical watershed monitoring data
publisher Virginia Tech
publishDate 2011
url http://hdl.handle.net/10919/10028
http://scholar.lib.vt.edu/theses/available/etd-091799-174256
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