2021 Fall.Includes bibliographical references.Assessing forced climate change requires the extraction of the forced signal from the background of climate noise. Traditionally, tools for extracting forced climate change signals have focused on one atmospheric variable at a time, however, using multiple variables can reduce noise and allow for easier detection of the forced response. Following previous work, we train artificial neural networks to predict the year of single- and multi-variable maps from forced climate model simulations. To perform this task, the neural networks learn patterns that allow them to discriminate between maps from different years—that is, the neural networks learn the patterns of the forced signal amidst the shroud ...
International audienceAbstract Twelve climate models and observations are used to attribute the glob...
The use of machine learning in climate science is expanding rapidly after its success in other field...
Abstract The fidelity of climate projections is often undermined by biases in climate models due to ...
Abstract Many problems in climate science require the identification of signals obscured by both the...
Abstract It remains difficult to disentangle the relative influences of aerosols and greenhouse gase...
Materials for Detection of Forced Change within Combined Climate Fields using Explainable Neural Net...
International audienceAbstract A new detection and attribution method is presented and applied to th...
The concept of neural network models (NNM) is a statistical strategy which can be used if a superpos...
Machine learning is becoming an increasingly important tool for climate scientists, but hampered by ...
The climate system can be regarded as a dynamic nonlinear system. Thus traditional linear statistica...
Climate change temperature prediction plays a crucial role in effective environmental planning. This...
Understanding the meteorological drivers of extreme impacts in social or environmental systems is im...
Abstract A fully non-linear analysis of forcing influences on temperatures is performed in the cli...
Weather and climate prediction is dominated by high dimensionality, interactions on many different s...
Global temperature variations between 1861 and 1984 are forecast usingsregularization networks, mult...
International audienceAbstract Twelve climate models and observations are used to attribute the glob...
The use of machine learning in climate science is expanding rapidly after its success in other field...
Abstract The fidelity of climate projections is often undermined by biases in climate models due to ...
Abstract Many problems in climate science require the identification of signals obscured by both the...
Abstract It remains difficult to disentangle the relative influences of aerosols and greenhouse gase...
Materials for Detection of Forced Change within Combined Climate Fields using Explainable Neural Net...
International audienceAbstract A new detection and attribution method is presented and applied to th...
The concept of neural network models (NNM) is a statistical strategy which can be used if a superpos...
Machine learning is becoming an increasingly important tool for climate scientists, but hampered by ...
The climate system can be regarded as a dynamic nonlinear system. Thus traditional linear statistica...
Climate change temperature prediction plays a crucial role in effective environmental planning. This...
Understanding the meteorological drivers of extreme impacts in social or environmental systems is im...
Abstract A fully non-linear analysis of forcing influences on temperatures is performed in the cli...
Weather and climate prediction is dominated by high dimensionality, interactions on many different s...
Global temperature variations between 1861 and 1984 are forecast usingsregularization networks, mult...
International audienceAbstract Twelve climate models and observations are used to attribute the glob...
The use of machine learning in climate science is expanding rapidly after its success in other field...
Abstract The fidelity of climate projections is often undermined by biases in climate models due to ...