2022
DOI: 10.5194/egusphere-egu22-10351
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Public Drinking Water Access in Texas (United States) Communities During The Winter Storm 2021

Abstract: <p>The Winter Storm of February 2021 left millions of Americans in Gulf Coast states without access to reliable, clean domestic water during the COVID19 pandemic. In the state of Texas, over 17 million people served by public drinking water systems were placed under boil water advisories for periods ranging from one day to more than one month. We combine public boil water advisory data with demographic information from the 2010 United States Census to understand the affected populations. Addition… Show more

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“…To explore relationships between public water system characteristics, we performed inferential statistical analyses, including Pearson correlation coefficients (which provide a measure of linear correlation between two variables) and principal component analysis (PCA) using MATLAB. The goal of PCA is to reduce the dimensionality of the data set by finding the combination of variables that best explain the total variance [32]. Variables that displayed strong positive skewness were logarithmically transformed (specifically, number of advisory days, service area, homes served, and median income).…”
Section: Plos Watermentioning
confidence: 99%
“…To explore relationships between public water system characteristics, we performed inferential statistical analyses, including Pearson correlation coefficients (which provide a measure of linear correlation between two variables) and principal component analysis (PCA) using MATLAB. The goal of PCA is to reduce the dimensionality of the data set by finding the combination of variables that best explain the total variance [32]. Variables that displayed strong positive skewness were logarithmically transformed (specifically, number of advisory days, service area, homes served, and median income).…”
Section: Plos Watermentioning
confidence: 99%