Javascript must be enabled to continue!
Statistically impossible temperatures.
View through CrossRef
The 2021 heatwave in the Pacific Northwest of the United States and Canada was unusual in many regards. In particular, not only was the event deemed impossible prior to the human interference in the climate system, standard out-of-sample non-stationary generalized extreme value (GEV) analyses revealed it to be statistically impossible in 2021 as many observed temperatures were above the upper bound of the upper bound of fitted GEV distributions. Obviously, as the event actually occurred, these statistical models are not fit for the purpose of estimating the influence of climate change on the event’s probability.By expanding the number of physical covariates beyond just greenhouse gas concentrations and by incorporating spatial statistical techniques in a Bayesian hierarchal framework, we are able to construct a statistical model where observed temperatures during this heatwave were not “impossible” and thus estimate the change in their probabilities leading to Granger-type causal inference attribution statements.We further extend this statistical framework to all quality daily GHCN station measurements and find that while many physically plausible outlier temperatures are impossible in the simple non-stationary GEV framework, they can be explained using our more complicated non-stationary Bayesian spatial statistical model embedded in a deep learning machinery. 
Title: Statistically impossible temperatures.
Description:
The 2021 heatwave in the Pacific Northwest of the United States and Canada was unusual in many regards.
In particular, not only was the event deemed impossible prior to the human interference in the climate system, standard out-of-sample non-stationary generalized extreme value (GEV) analyses revealed it to be statistically impossible in 2021 as many observed temperatures were above the upper bound of the upper bound of fitted GEV distributions.
Obviously, as the event actually occurred, these statistical models are not fit for the purpose of estimating the influence of climate change on the event’s probability.
By expanding the number of physical covariates beyond just greenhouse gas concentrations and by incorporating spatial statistical techniques in a Bayesian hierarchal framework, we are able to construct a statistical model where observed temperatures during this heatwave were not “impossible” and thus estimate the change in their probabilities leading to Granger-type causal inference attribution statements.
We further extend this statistical framework to all quality daily GHCN station measurements and find that while many physically plausible outlier temperatures are impossible in the simple non-stationary GEV framework, they can be explained using our more complicated non-stationary Bayesian spatial statistical model embedded in a deep learning machinery.
 .
Related Results
Analyses of the Zagreb Grič observatory air temperatures indices for the period 1881 to 2017
Analyses of the Zagreb Grič observatory air temperatures indices for the period 1881 to 2017
The paper studies time series of characteristic (minimum, mean, and maximum) daily, monthly, and yearly air temperatures measured at the Zagreb Grič Observatory in the period from ...
From cold acclimation to thermomorphogenesis: a phosphoproteomics approach to decipher acclimation across the temperature spectrum
From cold acclimation to thermomorphogenesis: a phosphoproteomics approach to decipher acclimation across the temperature spectrum
Climate change is leading to more irregular weather patterns, such as heat waves and cold spells, which negatively affect ecosystems and agriculture. The resulting temperature extr...
Tectono-thermal evolution of the External Western Alps (France): evidence for rift-related thermal event
Tectono-thermal evolution of the External Western Alps (France): evidence for rift-related thermal event
<p>Raman Spectroscopy on Carbonaceous Material (RSCM) approach is commonly used to calculate thermal peaks recorded by rocks. A first calibration of the RSCM was deve...
Now You’re Thinking with Portals: Investigating Episodic Memory and Locomotion with Redirected Walking in Impossible Spaces
Now You’re Thinking with Portals: Investigating Episodic Memory and Locomotion with Redirected Walking in Impossible Spaces
Natural walking locomotion in virtual reality (VR) allows intuitive movement through a virtual environment (VE), lower rates of simulator sickness, and increased immersion. However...
Mechanical and Microstructural Response of Near Beta Ti Alloys to Hot Tensile Testing
Mechanical and Microstructural Response of Near Beta Ti Alloys to Hot Tensile Testing
AbstractHot tensile tests were carried out on Timetal-125 and Timetal-LCB near beta Ti alloys at temperatures in range of 600-1000°C and constant strain rate of 0.1 s−1. At tempera...
Analysis of the Validity of Urine LAM ELISA for Tuberculosis Infection
Analysis of the Validity of Urine LAM ELISA for Tuberculosis Infection
Objective: To explore the validity of urinary lipoarabinomannan (LAM) enzyme-linked immunosorbent assay (ELISA) assay technology for detecting MTB infection in the double infection...
Analysis on the MRI and BAEP Results of Neonatal Brain with Different Levels of Bilirubin
Analysis on the MRI and BAEP Results of Neonatal Brain with Different Levels of Bilirubin
Abstract
Background:To explore whether there is abnormality of neonatal brains’ MRI and BAEP with different bilirubin levels, and to provide an objective basis for early di...
Analysis on the MRI and BAEP Results of Neonatal Brain with Different Levels of Bilirubin
Analysis on the MRI and BAEP Results of Neonatal Brain with Different Levels of Bilirubin
Abstract
Background:To explore whether there is abnormality of neonatal brains’ MRI and BAEP with different bilirubin levels, and to provide an objective basis for early di...


