Uncertainty in optimal fingerprinting is underestimated
Detection and attribution analyses of climate change are crucial in determining whether the observed changes in a climate variable are attributable to human influence. A commonly used method for these analyses is optimal fingerprinting, which regresses observed climate variables on the signals, clim...
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Format: | Article |
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IOP Publishing
2021-01-01
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Series: | Environmental Research Letters |
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Online Access: | https://doi.org/10.1088/1748-9326/ac14ee |
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author | Yan Li Kun Chen Jun Yan Xuebin Zhang |
author_facet | Yan Li Kun Chen Jun Yan Xuebin Zhang |
author_sort | Yan Li |
collection | DOAJ |
description | Detection and attribution analyses of climate change are crucial in determining whether the observed changes in a climate variable are attributable to human influence. A commonly used method for these analyses is optimal fingerprinting, which regresses observed climate variables on the signals, climate model simulated responses under external forcings. The method scales the simulated response under each external forcing by a scaling factor to best match the observations. The method relies critically on the confidence intervals for the scaling factors. The coverage rate, the relative frequency a confidence interval containing the unknown true value of the corresponding scaling factor, in the prevailing practice has been noted to be lower than desired. The mechanism of this under-coverage and its impacts on detection and attribution analyses, however, have not been investigated. Here we show that the under-coverage is due to insufficient consideration of the uncertainty in estimating the natural variability when fitting the regression and making statistical inferences. The implication is that the ranges of uncertainties in important quantities such as attributable anthropogenic warming and climate sensitivity based on the optimal fingerprinting technique should be wider than what has been believed, especially when the signals are weak. As a remedy, we propose a calibration method to correct this bias in the coverage rate of the confidence levels. Its effectiveness is demonstrated in a simulation study with known ground truth. The use of a large sample of climate model simulations to estimate the natural variability helps to reduce the uncertainty of the scaling factor estimates, and the calibrated confidence intervals provide more valid uncertainty quantification than the uncalibrated. An application to detection and attribution of changes in mean temperature at the global, continental, and subcontinental scale demonstrates that weaker detection and attribution conclusions are obtained with calibrated confidence intervals. |
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issn | 1748-9326 |
language | English |
last_indexed | 2024-03-12T15:53:21Z |
publishDate | 2021-01-01 |
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series | Environmental Research Letters |
spelling | doaj.art-f427b5f8664f457bbf8d803ed241f2e62023-08-09T15:03:26ZengIOP PublishingEnvironmental Research Letters1748-93262021-01-0116808404310.1088/1748-9326/ac14eeUncertainty in optimal fingerprinting is underestimatedYan Li0https://orcid.org/0000-0003-2182-9048Kun Chen1https://orcid.org/0000-0003-3579-5467Jun Yan2https://orcid.org/0000-0003-4401-7296Xuebin Zhang3Department of Statistics, University of Connecticut , Storrs, CT 06269, United States of AmericaDepartment of Statistics, University of Connecticut , Storrs, CT 06269, United States of AmericaDepartment of Statistics, University of Connecticut , Storrs, CT 06269, United States of AmericaClimate Data Analysis Section, Environment and Climate Change Canada , Toronto, ON M3H 5T4, CanadaDetection and attribution analyses of climate change are crucial in determining whether the observed changes in a climate variable are attributable to human influence. A commonly used method for these analyses is optimal fingerprinting, which regresses observed climate variables on the signals, climate model simulated responses under external forcings. The method scales the simulated response under each external forcing by a scaling factor to best match the observations. The method relies critically on the confidence intervals for the scaling factors. The coverage rate, the relative frequency a confidence interval containing the unknown true value of the corresponding scaling factor, in the prevailing practice has been noted to be lower than desired. The mechanism of this under-coverage and its impacts on detection and attribution analyses, however, have not been investigated. Here we show that the under-coverage is due to insufficient consideration of the uncertainty in estimating the natural variability when fitting the regression and making statistical inferences. The implication is that the ranges of uncertainties in important quantities such as attributable anthropogenic warming and climate sensitivity based on the optimal fingerprinting technique should be wider than what has been believed, especially when the signals are weak. As a remedy, we propose a calibration method to correct this bias in the coverage rate of the confidence levels. Its effectiveness is demonstrated in a simulation study with known ground truth. The use of a large sample of climate model simulations to estimate the natural variability helps to reduce the uncertainty of the scaling factor estimates, and the calibrated confidence intervals provide more valid uncertainty quantification than the uncalibrated. An application to detection and attribution of changes in mean temperature at the global, continental, and subcontinental scale demonstrates that weaker detection and attribution conclusions are obtained with calibrated confidence intervals.https://doi.org/10.1088/1748-9326/ac14eebootstrap calibrationclimate changeconfidence intervaldetection and attributionnatural climate variabilityuncertainty quantification |
spellingShingle | Yan Li Kun Chen Jun Yan Xuebin Zhang Uncertainty in optimal fingerprinting is underestimated Environmental Research Letters bootstrap calibration climate change confidence interval detection and attribution natural climate variability uncertainty quantification |
title | Uncertainty in optimal fingerprinting is underestimated |
title_full | Uncertainty in optimal fingerprinting is underestimated |
title_fullStr | Uncertainty in optimal fingerprinting is underestimated |
title_full_unstemmed | Uncertainty in optimal fingerprinting is underestimated |
title_short | Uncertainty in optimal fingerprinting is underestimated |
title_sort | uncertainty in optimal fingerprinting is underestimated |
topic | bootstrap calibration climate change confidence interval detection and attribution natural climate variability uncertainty quantification |
url | https://doi.org/10.1088/1748-9326/ac14ee |
work_keys_str_mv | AT yanli uncertaintyinoptimalfingerprintingisunderestimated AT kunchen uncertaintyinoptimalfingerprintingisunderestimated AT junyan uncertaintyinoptimalfingerprintingisunderestimated AT xuebinzhang uncertaintyinoptimalfingerprintingisunderestimated |