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ANALYZING CENSORED WATER QUALITY DATA USING A NON‐PARAMETRIC APPROACH<sup>1</sup>
51
Citations
14
References
1997
Year
Density EstimationEnvironmental MonitoringEngineeringWater Quality MonitoringWater MonitoringDescriptive StatisticsWater QualityEnvironmental Risk AssessmentWater Quality DataEnvironmental AnalysisWater Quality ManagementStatisticsMaximum LikelihoodWater Quality Forecasting
ABSTRACT: In the analysis of water quality data, samples with concentrations reported below the limit of detection (LOD) are referred to as Type I censored on the left. A variety of procedures have been proposed for estimating descriptive statistics from left‐censored data. Usually, the estimation is carried out by either replacing the LOD with a constant between 0 and the LOD, or assuming the data follow a normal or lognormal distribution. In this paper, a simple transformation is proposed to convert multiple left‐censored water quality data to right‐censored data. The transformed cumulative distribution is similar to a survival function, and enables use of survival analysis techniques for left‐censored data. In particular, the product limit method (Kaplan‐Meier estimator) is applied to estimate descriptive statistics from the transformed data. The performance of the Kaplan‐Meier estimator is compared with maximum likelihood, probability plotting, and substitution methods by Monte Carlo simulations. The Kaplan‐Meier estimator performs as well as or better than these more familiar methods. Finally, the Kaplan‐Meier estimator is used to analyze some priority pollutant data collected in sediment from the central basin of Puget Sound.
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