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CORDIS - EU research results
CORDIS

innovative MachIne leaRning to constrain Aerosol-cloud CLimate Impacts (iMIRACLI)

CORDIS provides links to public deliverables and publications of HORIZON projects.

Links to deliverables and publications from FP7 projects, as well as links to some specific result types such as dataset and software, are dynamically retrieved from OpenAIRE .

Deliverables

Synopsis of causal attribution for cloud changes (opens in new window)

A publication or report jointly written by all contributors to WP2, including the machine-learning-centred ESRs, that discusses and quantifies which aspects of cloud/precipitation changes are attributable to aerosol perturbations, and how these can be identified (lead: SU, contribu-tors: UOXF, ULEI, UCL, DLR).

Causal discovery in the presence of multiple time scales (opens in new window)

A publication or PhD thesis chapter introducing a novel causal inference technique for time series with interdependencies across multiple time scales (lead: DLR, contributors: UVEG, ETHZ).

Synopsis of aerosol effects on climate (opens in new window)

A publication or report jointly written by all contributors to WP3, that summarizes detectable aspects of 20th century climate change that are attributable to aerosol emissions, including progress from machine learning techniques (lead: UEDIN, contributors: SU, ETHZ, DLR, UVEG, EPFL).

Impact of sampling bias on detection/attribution (opens in new window)

A publication or PhD thesis chapter explaining the impact of the aerosol-precipitation sampling bias on observed aerosol-precipitation rela-tions (lead: ETHZ, task 3.3)

Synopsis of aerosol-cloud effect detection (opens in new window)

A publication or report jointly written by all contributors to WP1, that summarizes the possibility to detect an aerosol-cloud interaction signal in observations (lead: ULEI, contributors: UCL, ETHZ, SU).

Volcanic signal in cirrus (opens in new window)

A publication or PhD thesis chapter on the possibility to detect a significant perturbation of cirrus after a volcanic eruption (lead: ETHZ, task 1.2)

Machine learning challenges for noisy and heterogeneous climate datasets (opens in new window)

A publication or report written by the contributors to WP4 and WP1 targeting a machine learning audience to raise awareness about the par-ticular (deep) machine learning challenges of climate datasets. (lead: UCL, contributors: ULEI, SU).

Aerosol effects on cloud fraction (opens in new window)

A publication or PhD thesis chapter explaining causal effects of aerosol perturbations on cloud changes (lead: UOXF, task 2.1)

Quarterly iMIRACLI newsletters (opens in new window)
Complexity reduction using δ-MAPS (opens in new window)

A publication or PhD thesis chapter explaining the reduction of highly complex and multidimentional global climate data into vastly simpli-fied dynamic network representation (lead: EPFL, task 3.2)

Deep learning for inference and prediction in multimodal climate data (opens in new window)

A publication or PhD thesis chapter reporting about novel deep learning techniques for inference and prediction for noisy multimodal climate datasets (lead: UCL, contributors: ULEI)

Physics-aware and explainable machine learning for satellite retrievals (opens in new window)

A publication and PhD thesis chapter introducing a novel ML approach for parameter retrievals that respect physics laws and attains ex-plainable models (lead: UVEG, contributors: ETHZ)

Aerosol-cloud fingerprints in radiances (opens in new window)

A publication or PhD thesis chapter reporting about the detectability of aerosol-cloud interaction processes in satellite-observations space (lead: ULEI, task 1.1)

Publications in scientific journals, including iMIRACLI special issue (opens in new window)

Publications in scientific journals, including iMIRA-CLI special issue

Aerosol effects on 20th century climate (opens in new window)

A publication or PhD thesis chapter reporting about the signals in 20th and early 21rst century temperature and precipitation evolution at-tributable to anthropogenic aerosol (lead: UEDIN, task 3.1)

Cloud effects on aerosol (opens in new window)

A publication or PhD thesis chapter summarizing the net effect of cloud sources/sinks on aerosol concentrations (lead: SU, task 1.3)

Locally adaptive predictive modelling for spatio-temporal climate datasets (opens in new window)

A publication or PhD thesis chapter introducing a novel approach for spatio-temporal modelling (lead: UOXF, contributors: MetOffice, Am-azon).

Aerosol influence on clouds in the Arctic (opens in new window)

A publication or PhD thesis chapter summarizing the influence of aerosols onArctic clouds and how to detect any influence using observa-tions (lead: SU, task 3.2)

Key drivers of aerosol-cloud dynamics (opens in new window)

A publication or PhD thesis chapter listing the key drivers for aerosol-cloud dynamics (lead: SU, task 2.3)

Causal inference in climate science (opens in new window)

A perspective paper written by the contributors to WP6 as well as the climate WPs on the challenges of causal inference for climatological datasets (lead: DLR, contributors UVEG, ETHZ, UEDIN, UOXF)

Separability of aerosol-cloud effects by regimes (opens in new window)

A publication or PhD thesis chapter explaining how cloud regimes should optimally be defined to assess causal aerosol-cloud interactions (lead: ULEI, task 2.4, contributor: ETHZ)

Latent variable causal discovery for climate time series (opens in new window)

A publication or PhD thesis chapter introducing a novel causal inference technique for time series accounting for latent variables (lead: DLR, contributors: UOXF).

Predictive modelling for spatio-temporal data (opens in new window)

A publication or report written by the contributors to WP5 as well as the climate WPs discussing the challenges of predictive models for climatological datasets (lead: UVEG, contributors, UOXF, ULEI, MetOffice Amazon, UEDIN, ETHZ, DLR)

Isolating aerosol effects through observable analogues (opens in new window)

A publication or PhD thesis chapter on the attribution of cloud/precipitation changes to aerosol perturbations (lead: UOXF, task 2.2)

Publications

Large uncertainty in future warming due to aerosol forcing (opens in new window)

Author(s): Duncan Watson-Parris; Christopher J. Smith
Published in: Nature Climate Change, 2022, ISSN 1758-678X
Publisher: Nature Publishing Group
DOI: 10.1038/s41558-022-01516-0

ClimateBench: A benchmark dataset for data-driven climate projections (opens in new window)

Author(s): Duncan Watson-Parris, Yuhan Rao, Dirk Olivié, Øyvind Seland, Peer J Nowack, Gustau Camps-Valls, Philip Stier, Shahine Bouabid, Maura Dewey, Emilie Fons, Jessenia Margarita Marina Gonzalez, Paula Harder, Kai Jeggle, Julien Lenhardt, Peter Manshausen, Maria Novitasari, Lucile Ricard, Carla Roesch
Published in: Journal of Advances in Modeling Earth Systems, 2022, ISSN 1942-2466
Publisher: American Geophysical Union
DOI: 10.1002/essoar.10509765.2

Shipping regulations lead to large reduction in cloud perturbations (opens in new window)

Author(s): Duncan Watson-Parris, Matthew W. Christensen, Angus Laurenson, Daniel Clewley, Edward Gryspeerdt, Philip Stier
Published in: Proceedings of the National Academy of Sciences, Issue 119, 2023, ISSN 0027-8424
Publisher: National Academy of Sciences
DOI: 10.1073/pnas.2206885119

Assessing California Wintertime Precipitation Responses to Various Climate Drivers (opens in new window)

Author(s): Robert J. Allen, Jean‐Francois Lamarque, Duncan Watson‐Parris, Dirk Olivié
Published in: Journal of Geophysical Research: Atmospheres, Issue 125, 2023, ISSN 2169-897X
Publisher: AGU
DOI: 10.1029/2019jd031736

Invisible ship tracks show large cloud sensitivity to aerosol (opens in new window)

Author(s): Peter Manshausen, Duncan Watson-Parris, Matthew W. Christensen, Jukka-Pekka Jalkanen, Philip Stier
Published in: Nature, 2022, ISSN 1476-4687
Publisher: Nature Publishing Group
DOI: 10.1038/s41586-022-05122-0

Aerosol Forcing Masks and Delays the Formation of the North Atlantic Warming Hole by Three Decades (opens in new window)

Author(s): Guy Dagan, Philip Stier, Duncan Watson‐Parris
Published in: Geophysical Research Letters, Issue 47, 2023, ISSN 0094-8276
Publisher: American Geophysical Union
DOI: 10.1029/2020gl090778

Climate Impacts of COVID‐19 Induced Emission Changes (opens in new window)

Author(s): A. Gettelman, R. Lamboll, C. G. Bardeen, P. M. Forster, D. Watson‐Parris
Published in: Geophysical Research Letters, Issue 48, 2023, ISSN 0094-8276
Publisher: American Geophysical Union
DOI: 10.1029/2020gl091805

Model evaluation of short-lived climate forcers for the Arctic Monitoring and Assessment Programme: a multi-species, multi-model study (opens in new window)

Author(s): Cynthia H. Whaley, Rashed Mahmood, Knut von Salzen, Barbara Winter, Sabine Eckhardt, Stephen Arnold, Stephen Beagley, Silvia Becagli, Rong-You Chien, Jesper Christensen, Sujay M. Damani, Kostas Eleftheriadis, Nikolaos Evangeliou, Gregory S. Faluvegi, Mark Flanner, Joshua S. Fu, Michael Gauss, Fabio Giardi, Wanmin Gong, Jens Liengaard Hjorth, Lin Huang, Ulas Im, Yugo Kanaya, Srinath Krishnan, Zbign
Published in: Atmospheric Chemistry and Physics, 2022, ISSN 1680-7324
Publisher: EGU
DOI: 10.5194/acp-2021-975

Strong control of effective radiative forcing by the spatial pattern of absorbing aerosol (opens in new window)

Author(s): Andrew Williams, Philip Stier, Guy Dagan, Duncan Watson-Parris
Published in: Nature Climate Change, Issue 12, 2022, Page(s) 735-742, ISSN 1758-6798
Publisher: Nature
DOI: 10.21203/rs.3.rs-1015938/v1

The Global Atmosphere‐aerosol Model ICON‐A‐HAM2.3–Initial Model Evaluation and Effects of Radiation Balance Tuning on Aerosol Optical Thickness (opens in new window)

Author(s): M. Salzmann, S. Ferrachat, C. Tully, S. Münch, D. Watson‐Parris, D. Neubauer, C. Siegenthaler‐Le Drian, S. Rast, B. Heinold, T. Crueger, R. Brokopf, J. Mülmenstädt, J. Quaas, H. Wan, K. Zhang, U. Lohmann, P. Stier, I. Tegen
Published in: Journal of Advances in Modeling Earth Systems, Issue 14, 2023, ISSN 1942-2466
Publisher: American Geophysical Union
DOI: 10.1029/2021ms002699

Aerosol optical depth disaggregation: toward global aerosol vertical profiles (opens in new window)

Author(s): Shahine Bouabid, Duncan Watson-Parris, Sofija Stefanović, Athanasios Nenes, Dino Sejdinovic
Published in: Environmental Data Science, Issue 3, 2024, ISSN 2634-4602
Publisher: Cambridge University Press
DOI: 10.1017/eds.2024.15

Understanding cirrus clouds using explainable machine learning (opens in new window)

Author(s): Kai Jeggle, David Neubauer, Gustau Camps-Valls, Ulrike Lohmann
Published in: Environmental Data Science, Issue 2, 2023, ISSN 2634-4602
Publisher: Cambridge University Press
DOI: 10.1017/eds.2023.14

Sink, Source or Something In‐Between? Net Effects of Precipitation on Aerosol Particle Populations (opens in new window)

Author(s): Théodore Khadir, Ilona Riipinen, Sini Talvinen, Dominic Heslin‐Rees, Christopher Pöhlker, Luciana Rizzo, Luiz A. T. Machado, Marco A. Franco, Leslie A. Kremper, Paulo Artaxo, Tuukka Petäjä, Markku Kulmala, Peter Tunved, Annica M. L. Ekman, Radovan Krejci, Annele Virtanen
Published in: Geophysical Research Letters, Issue 50, 2024, ISSN 0094-8276
Publisher: American Geophysical Union
DOI: 10.1029/2023gl104325

Stratocumulus adjustments to aerosol perturbations disentangled with a causal approach (opens in new window)

Author(s): Emilie Fons, Jakob Runge, David Neubauer, Ulrike Lohmann
Published in: npj Climate and Atmospheric Science, Issue 6, 2023, ISSN 2397-3722
Publisher: Nature
DOI: 10.1038/s41612-023-00452-w

Rapid saturation of cloud water adjustments to shipping emissions (opens in new window)

Author(s): Peter Manshausen, Duncan Watson-Parris, Matthew W. Christensen, Jukka-Pekka Jalkanen, Philip Stier
Published in: Atmospheric Chemistry and Physics, Issue 23, 2023, Page(s) 12545-12555, ISSN 1680-7324
Publisher: EGU
DOI: 10.5194/acp-23-12545-2023

Aerosol absorption in global models from AeroCom Phase III (opens in new window)

Author(s): Maria Sand, Bjørn H. Samset, Gunnar Myhre, Jonas Gliß, Susanne E. Bauer, Huisheng Bian, Mian Chin, Ramiro Checa-Garcia, Paul Ginoux, Zak Kipling, Alf Kirkevåg, Harri Kokkola, Philippe Le Sager, Marianne T. Lund, Hitoshi Matsui, Twan van Noije, Samuel Remy, Michael Schulz, Philip Stier, Camilla W. Stjern, Toshihiko Takemura, Kostas Tsigaridis, Svetlana G. Tsyro, Duncan Watson-Parris
Published in: Atmospheric Chemistry and Physics, Issue 21, 2021, ISSN 1680-7324
Publisher: EGU
DOI: 10.5194/acp-2021-51

Machine learning for weather and climate are worlds apart (opens in new window)

Author(s): D. Watson-Parris
Published in: Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences, Issue 379, 2024, Page(s) 20200098, ISSN 1364-503X
Publisher: Royal Society of London
DOI: 10.1098/rsta.2020.0098

Physics-informed learning of aerosol microphysics (opens in new window)

Author(s): Paula Harder, Duncan Watson-Parris, Philip Stier, Dominik Strassel, Nicolas R. Gauger, Janis Keuper
Published in: Environmental Data Science, Issue 1, 2022, ISSN 2634-4602
Publisher: Cambridge University Press
DOI: 10.1017/eds.2022.22

On the Contribution of Fast and Slow Responses to Precipitation Changes Caused by Aerosol Perturbations (opens in new window)

Author(s): Shipeng Zhang, Philip Stier, Duncan Watson-Parris
Published in: Atmospheric Chemistry and Physics, Issue 21, 2021, ISSN 1680-7324
Publisher: EGU
DOI: 10.5194/acp-2020-1317

FaIRGP: A Bayesian Energy Balance Model for Surface Temperatures Emulation (opens in new window)

Author(s): Shahine Bouabid, Dino Sejdinovic, Duncan Watson‐Parris
Published in: Journal of Advances in Modeling Earth Systems, Issue 16, 2024, ISSN 1942-2466
Publisher: American Geophysical Union
DOI: 10.1029/2023ms003926

Marine cloud base height retrieval from MODIS cloud properties using machine learning (opens in new window)

Author(s): Julien Lenhardt, Johannes Quaas, Dino Sejdinovic
Published in: Atmospheric Measurement Techniques, Issue 17, 2024, Page(s) 5655-5677, ISSN 1867-8548
Publisher: EGU
DOI: 10.5194/amt-17-5655-2024

Identifying climate model structural inconsistencies allows for tight constraint of aerosol radiative forcing (opens in new window)

Author(s): Leighton A. Regayre, Lucia Deaconu, Daniel P. Grosvenor, David M. H. Sexton, Christopher Symonds, Tom Langton, Duncan Watson-Paris, Jane P. Mulcahy, Kirsty J. Pringle, Mark Richardson, Jill S. Johnson, John W. Rostron, Hamish Gordon, Grenville Lister, Philip Stier, Ken S. Carslaw
Published in: Atmospheric Chemistry and Physics, Issue 23, 2023, Page(s) 8749-8768, ISSN 1680-7324
Publisher: EGU
DOI: 10.5194/acp-23-8749-2023

Dependence of Fast Changes in Global and Local Precipitation on the Geographical Location of Absorbing Aerosol (opens in new window)

Author(s): Andrew I. L. Williams, Duncan Watson-Parris, Guy Dagan, Philip Stier
Published in: Journal of Climate, Issue 36, 2023, Page(s) 6163-6176, ISSN 0894-8755
Publisher: American Meteorological Society
DOI: 10.1175/jcli-d-23-0022.1

Causal inference for time series (opens in new window)

Author(s): Jakob Runge, Andreas Gerhardus, Gherardo Varando, Veronika Eyring, Gustau Camps-Valls
Published in: Nature Reviews Earth & Environment, Issue 4, 2023, Page(s) 487-505, ISSN 2662-138X
Publisher: Nature
DOI: 10.1038/s43017-023-00431-y

Investigating the sign of stratocumulus adjustments to aerosols in the ICON global storm-resolving model (opens in new window)

Author(s): Emilie Fons, Ann Kristin Naumann, David Neubauer, Theresa Lang, Ulrike Lohmann
Published in: Atmospheric Chemistry and Physics, Issue 24, 2024, Page(s) 8653-8675, ISSN 1680-7324
Publisher: EGU
DOI: 10.5194/acp-24-8653-2024

Combining Temperature and Precipitation to Constrain the Aerosol Contribution to Observed Climate Change (opens in new window)

Author(s): Carla M. Roesch, Andrew P. Ballinger, Andrew P. Schurer, Gabriele C. Hegerl
Published in: Journal of Climate, Issue 37, 2024, Page(s) 5211-5229, ISSN 0894-8755
Publisher: American Meteorological Society
DOI: 10.1175/jcli-d-23-0347.1

Pollution tracker: Finding industrial sources of aerosol emission in satellite imagery (opens in new window)

Author(s): Peter Manshausen, Duncan Watson-Parris, Lena Wagner, Pirmin Maier, Sybrand J. Muller, Gernot Ramminger and Philip Stier
Published in: Environmental Data Science, 2023, ISSN 2634-4602
Publisher: Cambridge University Press
DOI: 10.1017/eds.2023.20

Exploring Randomly Wired Neural Networks for Climate Model Emulation (opens in new window)

Author(s): William Yik, Sam J. Silva, Andrew Geiss, Duncan Watson-Parris
Published in: Artificial Intelligence for the Earth Systems, Issue 2, 2024, ISSN 2769-7525
Publisher: American Meteorological Society
DOI: 10.1175/aies-d-22-0088.1

Model calibration using ESEm v1.0.0 – an open, scalable Earth System Emulator (opens in new window)

Author(s): Duncan Watson-Parris, Andrew Williams, Lucia Deaconu, Philip Stier
Published in: Geoscientific Model Development, Issue 14, 2022, ISSN 1991-9603
Publisher: EGU
DOI: 10.5194/gmd-2021-267

network-based constraint to evaluate climate sensitivity (opens in new window)

Author(s): Lucile Ricard, Fabrizio Falasca, Jakob Runge, Athanasios Nenes
Published in: Nature Communications, Issue 15, 2024, ISSN 2041-1723
Publisher: Nature Publishing Group
DOI: 10.1038/s41467-024-50813-z

Causal Inference on Process Graphs, Part I: The Structural Equation Process Representation (opens in new window)

Author(s): Nicolas-Domenic Reiter, Andreas Gerhardus, Jonas Wahl, Jakob Runge
Published in: arXiv, 2024
Publisher: arXiv
DOI: 10.48550/arxiv.2305.11561

Causal Inference on Process Graphs, Part II: Causal Structure and Effect Identification (opens in new window)

Author(s): Nicolas-Domenic Reiter, Jonas Wahl, Andreas Gerhardus, Jakob Runge
Published in: arXiv, 2024
Publisher: arXiv
DOI: 10.48550/arxiv.2406.17422

Causal inference for temporal patterns (opens in new window)

Author(s): Reiter, Nicolas-Domenic; Gerhardus, Andreas; Runge, Jakob
Published in: arXiv publication, 2022
Publisher: arXiv Cornell University
DOI: 10.48550/arxiv.2205.15149

Asymptotic Uncertainty in the Estimation of Frequency Domain Causal Effects for Linear Processes (opens in new window)

Author(s): Nicolas-Domenic Reiter, Jonas Wahl, Gabriele C. Hegerl, Jakob Runge
Published in: arXiv, 2024
Publisher: arXiv
DOI: 10.48550/arxiv.2406.18191

IceCloudNet: Cirrus and mixed-phase cloud prediction from SEVIRI input learned from sparse supervision (opens in new window)

Author(s): Jeggle, Kai; Czerkawski, Mikolaj; Serva, Federico; Saux, Bertrand Le; Neubauer, David; Lohmann, Ulrike
Published in: Tackling Climate Change with Machine Learning: workshop at NeurIPS 2023, Issue 1, 2023
Publisher: NeurIPS
DOI: 10.48550/arxiv.2310.03499

Using Non-Linear Causal Models to Study Aerosol-Cloud Interactions in the Southeast Pacific (opens in new window)

Author(s): Jesson, Andrew; Manshausen, Peter; Douglas, Alyson; Watson-Parris, Duncan; Gal, Yarin; Stier, Philip
Published in: Tackling Climate Change with Machine Learning: workshop at NeurIPS 2021, 2021
Publisher: NeurIPS
DOI: 10.48550/arxiv.2110.15084

Unleashing the Autoconversion Rates Forecasting: Evidential Regression from Satellite Data

Author(s): Novitasari, Maria C and Quaas, Johannes and Rodrigues, Miguel
Published in: NeurIPS 2023 Workshop on Tackling Climate Change with Machine Learning, 2023
Publisher: NeurIPS

Scalable Sensitivity and Uncertainty Analysis for Causal-Effect Estimates of Continuous-Valued Interventions (opens in new window)

Author(s): Jesson, Andrew; Douglas, Alyson; Manshausen, Peter; Solal, Maëlys; Meinshausen, Nicolai; Stier, Philip; Gal, Yarin; Shalit, Uri
Published in: 36th Conference on Neural Information Processing Systems (NeurIPS 2022), 2022
Publisher: NeurIPS
DOI: 10.48550/arxiv.2204.10022

Deconditional Downscaling with Gaussian Processes (opens in new window)

Author(s): Siu Lun Chau, Shahine Bouabid, Dino Sejdinovic
Published in: 35th Conference on Neural Information Processing Systems (NeurIPS 2021), 2021
Publisher: NeurIPS
DOI: 10.48550/arxiv.2105.12909

ALAS: Active Learning for Autoconversion Rates Prediction from Satellite Data

Author(s): Maria C. Novitasari, Johannes Quaas, Miguel Rodrigues
Published in: Proceedings of The 27th International Conference on Artificial Intelligence and Statistics, 2024
Publisher: PMLR

Emulating Aerosol Microphysics with Machine Learning (opens in new window)

Author(s): Harder, Paula; Watson-Parris, Duncan; Strassel, Dominik; Gauger, Nicolas; Stier, Philip; Keuper, Janis
Published in: ICML 2021 Workshop, Tackling Climate Change with Machine Learning, Issue 1, 2021
Publisher: ICML
DOI: 10.48550/arxiv.2109.10593

Returning The Favour: When Regression Benefits From Probabilistic Causal Knowledge

Author(s): Shahine Bouabid, Jake Fawkes, Dino Sejdinovic
Published in: Proceedings of the 40th International Conference on Machine Learning, 2023
Publisher: ICML

Reconstructing Aerosols Vertical Profiles with Aggregate Output Learning (opens in new window)

Author(s): Sofija Stefanovic, Shahine Bouabid, Philip Stier, Athanasios Nenes, Dino Sejdinovic
Published in: Tackling Climate Changewith Machine Learning Workshop at ICML 2021, Issue 2021, 2021
Publisher: ICML
DOI: 10.31223/x5qw5s

Leveraging Machine Learning to Predict the Autoconversion Rates from Satellite Data

Author(s): Maria C Novitasari, Johannes Quaas, Miguel Rodrigues
Published in: NeurIPS 2021 Workshop on Tackling Climate Change with Machine Learning, 2021
Publisher: ClimateChangeAI

ALAS: Active Learning for Autoconversion Rates Prediction from Satellite Data

Author(s): Maria C Novitasari, Johanness Quaas, Miguel Rodrigues
Published in: NeurIPS 2023 Workshop on Tackling Climate Change with Machine Learning, 2023
Publisher: NeurIPS

NightVision: Generating Nighttime Satellite Imagery from Infra-Red Observations (opens in new window)

Author(s): Harder, Paula; Jones, William; Lguensat, Redouane; Bouabid, Shahine; Fulton, James; Quesada-Chacón, Dánell; Marcolongo, Aris; Stefanović, Sofija; Rao, Yuhan; Manshausen, Peter; Watson-Parris, Duncan
Published in: Tackling Climate Change with Machine Learning workshop at NeurIPS 2020., Issue 1, 2020
Publisher: NeurIPS
DOI: 10.48550/arxiv.2011.07017

Cirrus formation regimes – Data driven identification and quantification of mineral dust effect (opens in new window)

Author(s): Kai Jeggle, David Neubauer, Hanin Binder, Ulrike Lohmann
Published in: Atmospheric Chemistry and Physics Discussions, 2024, ISSN 1680-7375
Publisher: Copernicus GmbH
DOI: 10.5194/egusphere-2024-2559

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