Evaluation of Measurement Uncertainty in an Environmental Test Laboratory by Quality Assurance, Control Charting and Robust Statistics

There are broad application prospects for evaluation of measurement uncertainty in the environmental test laboratory based on quality control data accumulated in long-term routine analysis. The quality control charting method is used only for the same concentration data. Linear calibration using ref...

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Main Authors: DI Yi-an, SUN Hai-rong, SUN Pei-qin, REN Li-jun, LIU Yan, ZHOU Hao, WANG Jing-rui, LI Si-ming, LI Yu-wu
Format: Article
Language:English
Published: Science Press, PR China 2014-01-01
Series:Yankuang ceshi
Subjects:
Online Access:http://www.ykcs.ac.cn/cn/article/id/8978c4ed-a686-41a7-ad10-7a7a0a8f482a
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author DI Yi-an
SUN Hai-rong
SUN Pei-qin
REN Li-jun
LIU Yan
ZHOU Hao
WANG Jing-rui
LI Si-ming
LI Yu-wu
author_facet DI Yi-an
SUN Hai-rong
SUN Pei-qin
REN Li-jun
LIU Yan
ZHOU Hao
WANG Jing-rui
LI Si-ming
LI Yu-wu
author_sort DI Yi-an
collection DOAJ
description There are broad application prospects for evaluation of measurement uncertainty in the environmental test laboratory based on quality control data accumulated in long-term routine analysis. The quality control charting method is used only for the same concentration data. Linear calibration using reference materials can be used in different concentration measurement data but the complete quality control data cover different concentrations with the same number of measurements and should be prepared before the mathematical mode is established, which makes its application in most testing laboratories unsuitable. Robust statistics is a type of statistical analysis method where it is unnecessary to identify and delete outliers but it can also reduce the effect of outliers on the final results based on all measurement data. Quality control charting methods and robust statistics (iteration method), when outliers exist, are used to calculate intermediate precision (sR′) after normalizing different concentration data by recovery rate and are described in this paper. Five sets of data collected in our laboratory and 19 sets of data from the other laboratories, which cover routine testing items in environmental protection field, were used to verify the feasibility of the new method. It can be shown that the average difference of relative intermediate precision (ΔsR′-rsd) between robust statistics and quality control charting methods are almost in agreement (i.e. 0.15%) for the single concentration data. For the multi-level concentration data after normalization, the average difference (ΔsR′-rsd) between quality control charting and linear calibration, between robust statistics and linear calibration, are 0.43% and 0.20%, respectively. The average of difference (ΔsR′-rsd) between robust statistics and quality control charting method is 0.26%, which indicates that the results of all three methods are generally in line with each other. The principle of the new methods proposed in this paper is easy to understand and the calculation procedure is significantly simplified, making it suitable for cases of linear calibration using reference materials with direct proportion mode.
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spelling doaj.art-849da2063d0f468a80f9292c59971cc72023-02-09T07:15:37ZengScience Press, PR ChinaYankuang ceshi0254-53572014-01-013315766ykcs-33-1-57Evaluation of Measurement Uncertainty in an Environmental Test Laboratory by Quality Assurance, Control Charting and Robust StatisticsDI Yi-an0SUN Hai-rong1SUN Pei-qin2REN Li-jun3LIU Yan4ZHOU Hao5WANG Jing-rui6LI Si-ming7LI Yu-wu8National Research Center for Environmental Analysis and Measurements, Beijing 100029, ChinaChina National Accreditation Service for Conformity Assessment, Beijing 100062, ChinaChina National Accreditation Service for Conformity Assessment, Beijing 100062, ChinaNational Research Center for Environmental Analysis and Measurements, Beijing 100029, ChinaNational Research Center for Environmental Analysis and Measurements, Beijing 100029, ChinaNational Research Center for Environmental Analysis and Measurements, Beijing 100029, ChinaNational Research Center for Environmental Analysis and Measurements, Beijing 100029, ChinaNational Research Center for Environmental Analysis and Measurements, Beijing 100029, ChinaNational Research Center for Environmental Analysis and Measurements, Beijing 100029, ChinaThere are broad application prospects for evaluation of measurement uncertainty in the environmental test laboratory based on quality control data accumulated in long-term routine analysis. The quality control charting method is used only for the same concentration data. Linear calibration using reference materials can be used in different concentration measurement data but the complete quality control data cover different concentrations with the same number of measurements and should be prepared before the mathematical mode is established, which makes its application in most testing laboratories unsuitable. Robust statistics is a type of statistical analysis method where it is unnecessary to identify and delete outliers but it can also reduce the effect of outliers on the final results based on all measurement data. Quality control charting methods and robust statistics (iteration method), when outliers exist, are used to calculate intermediate precision (sR′) after normalizing different concentration data by recovery rate and are described in this paper. Five sets of data collected in our laboratory and 19 sets of data from the other laboratories, which cover routine testing items in environmental protection field, were used to verify the feasibility of the new method. It can be shown that the average difference of relative intermediate precision (ΔsR′-rsd) between robust statistics and quality control charting methods are almost in agreement (i.e. 0.15%) for the single concentration data. For the multi-level concentration data after normalization, the average difference (ΔsR′-rsd) between quality control charting and linear calibration, between robust statistics and linear calibration, are 0.43% and 0.20%, respectively. The average of difference (ΔsR′-rsd) between robust statistics and quality control charting method is 0.26%, which indicates that the results of all three methods are generally in line with each other. The principle of the new methods proposed in this paper is easy to understand and the calculation procedure is significantly simplified, making it suitable for cases of linear calibration using reference materials with direct proportion mode.http://www.ykcs.ac.cn/cn/article/id/8978c4ed-a686-41a7-ad10-7a7a0a8f482aquality assurance and control chartingrobust statistics-iteration methodlinear calibrationintermediate precisionevaluation of measurement uncertaintydata normalization
spellingShingle DI Yi-an
SUN Hai-rong
SUN Pei-qin
REN Li-jun
LIU Yan
ZHOU Hao
WANG Jing-rui
LI Si-ming
LI Yu-wu
Evaluation of Measurement Uncertainty in an Environmental Test Laboratory by Quality Assurance, Control Charting and Robust Statistics
Yankuang ceshi
quality assurance and control charting
robust statistics-iteration method
linear calibration
intermediate precision
evaluation of measurement uncertainty
data normalization
title Evaluation of Measurement Uncertainty in an Environmental Test Laboratory by Quality Assurance, Control Charting and Robust Statistics
title_full Evaluation of Measurement Uncertainty in an Environmental Test Laboratory by Quality Assurance, Control Charting and Robust Statistics
title_fullStr Evaluation of Measurement Uncertainty in an Environmental Test Laboratory by Quality Assurance, Control Charting and Robust Statistics
title_full_unstemmed Evaluation of Measurement Uncertainty in an Environmental Test Laboratory by Quality Assurance, Control Charting and Robust Statistics
title_short Evaluation of Measurement Uncertainty in an Environmental Test Laboratory by Quality Assurance, Control Charting and Robust Statistics
title_sort evaluation of measurement uncertainty in an environmental test laboratory by quality assurance control charting and robust statistics
topic quality assurance and control charting
robust statistics-iteration method
linear calibration
intermediate precision
evaluation of measurement uncertainty
data normalization
url http://www.ykcs.ac.cn/cn/article/id/8978c4ed-a686-41a7-ad10-7a7a0a8f482a
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