Spatial Prediction and Optimized Sampling Design for Sodium Concentration in Groundwater.

Sodium is an integral part of water, and its excessive amount in drinking water causes high blood pressure and hypertension. In the present paper, spatial distribution of sodium concentration in drinking water is modeled and optimized sampling designs for selecting sampling locations is calculated f...

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Main Authors: Erum Zahid, Ijaz Hussain, Gunter Spöck, Muhammad Faisal, Javid Shabbir, Nasser M AbdEl-Salam, Tajammal Hussain
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2016-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5040421?pdf=render
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spelling doaj-e829f48a25f14c5cbc4eb4b9568534e02020-11-24T22:04:00ZengPublic Library of Science (PLoS)PLoS ONE1932-62032016-01-01119e016181010.1371/journal.pone.0161810Spatial Prediction and Optimized Sampling Design for Sodium Concentration in Groundwater.Erum ZahidIjaz HussainGunter SpöckMuhammad FaisalJavid ShabbirNasser M AbdEl-SalamTajammal HussainSodium is an integral part of water, and its excessive amount in drinking water causes high blood pressure and hypertension. In the present paper, spatial distribution of sodium concentration in drinking water is modeled and optimized sampling designs for selecting sampling locations is calculated for three divisions in Punjab, Pakistan. Universal kriging and Bayesian universal kriging are used to predict the sodium concentrations. Spatial simulated annealing is used to generate optimized sampling designs. Different estimation methods (i.e., maximum likelihood, restricted maximum likelihood, ordinary least squares, and weighted least squares) are used to estimate the parameters of the variogram model (i.e, exponential, Gaussian, spherical and cubic). It is concluded that Bayesian universal kriging fits better than universal kriging. It is also observed that the universal kriging predictor provides minimum mean universal kriging variance for both adding and deleting locations during sampling design.http://europepmc.org/articles/PMC5040421?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Erum Zahid
Ijaz Hussain
Gunter Spöck
Muhammad Faisal
Javid Shabbir
Nasser M AbdEl-Salam
Tajammal Hussain
spellingShingle Erum Zahid
Ijaz Hussain
Gunter Spöck
Muhammad Faisal
Javid Shabbir
Nasser M AbdEl-Salam
Tajammal Hussain
Spatial Prediction and Optimized Sampling Design for Sodium Concentration in Groundwater.
PLoS ONE
author_facet Erum Zahid
Ijaz Hussain
Gunter Spöck
Muhammad Faisal
Javid Shabbir
Nasser M AbdEl-Salam
Tajammal Hussain
author_sort Erum Zahid
title Spatial Prediction and Optimized Sampling Design for Sodium Concentration in Groundwater.
title_short Spatial Prediction and Optimized Sampling Design for Sodium Concentration in Groundwater.
title_full Spatial Prediction and Optimized Sampling Design for Sodium Concentration in Groundwater.
title_fullStr Spatial Prediction and Optimized Sampling Design for Sodium Concentration in Groundwater.
title_full_unstemmed Spatial Prediction and Optimized Sampling Design for Sodium Concentration in Groundwater.
title_sort spatial prediction and optimized sampling design for sodium concentration in groundwater.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2016-01-01
description Sodium is an integral part of water, and its excessive amount in drinking water causes high blood pressure and hypertension. In the present paper, spatial distribution of sodium concentration in drinking water is modeled and optimized sampling designs for selecting sampling locations is calculated for three divisions in Punjab, Pakistan. Universal kriging and Bayesian universal kriging are used to predict the sodium concentrations. Spatial simulated annealing is used to generate optimized sampling designs. Different estimation methods (i.e., maximum likelihood, restricted maximum likelihood, ordinary least squares, and weighted least squares) are used to estimate the parameters of the variogram model (i.e, exponential, Gaussian, spherical and cubic). It is concluded that Bayesian universal kriging fits better than universal kriging. It is also observed that the universal kriging predictor provides minimum mean universal kriging variance for both adding and deleting locations during sampling design.
url http://europepmc.org/articles/PMC5040421?pdf=render
work_keys_str_mv AT erumzahid spatialpredictionandoptimizedsamplingdesignforsodiumconcentrationingroundwater
AT ijazhussain spatialpredictionandoptimizedsamplingdesignforsodiumconcentrationingroundwater
AT gunterspock spatialpredictionandoptimizedsamplingdesignforsodiumconcentrationingroundwater
AT muhammadfaisal spatialpredictionandoptimizedsamplingdesignforsodiumconcentrationingroundwater
AT javidshabbir spatialpredictionandoptimizedsamplingdesignforsodiumconcentrationingroundwater
AT nassermabdelsalam spatialpredictionandoptimizedsamplingdesignforsodiumconcentrationingroundwater
AT tajammalhussain spatialpredictionandoptimizedsamplingdesignforsodiumconcentrationingroundwater
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