Javascript must be enabled to continue!
Cloud detection from IASI radiance for climate analysis purposes
View through CrossRef
<p>Clouds are an essential component in our Earth system because of their importance for the weather, the water cycle and the Earth radiation budget. To better understand the climate, its past and future evolution, the development of long coherent time series of cloud properties is needed. In addition, as the clouds strongly impact the radiance at the top of the atmosphere, the detection of clear-sky scenes is a major preprocessing step for most climate and atmospheric satellite applications, such as trace gas retrieval or to derive the Earth Outgoing Longwave Radiation. &#160;</p><p>The Infrared Atmospheric Sounding Interferometer (IASI), flying on board the suite of Metop satellites for more than 15 years, has shown an excellent stability over its entire lifespan and a very good consistency between the three instruments (on board Metop-A, -B and -C). This makes the IASI dataset an excellent climate data record. For the detection and the characterization of clouds, the current IASI operational Level 2 product is highly performant. However, since it was first released in 2007, the L2 cloud data have undergone a series of updates which have not yet been reprocessed back in time. This leads to discontinuities in the data record which makes it very difficult for use in long-term studies. Even in the event of a complete reprocessing of the L2, there would also be no guarantee on the homogeneity of the futures versions. Other cloud products exist (e.g. the AVHRR-L1C, the cloud_cci, the CIRS-LMD) but those are usually either less accurate or sensitive to cloud detection or are not available in near-real-time. These limitations in the existing products triggered the development of a sensitive and coherent IASI cloud detection dataset.</p><p>Here we present a new cloud detection algorithm for the IASI measurements based on a Neural Network (NN). The input data consists of a set of 45 IASI channels. Those were selected outside the regions affected by CO<sub>2</sub>, CFC-11 and CFC-12 absorptions to avoid any long-term bias in the detection as their concentrations are evolving over time in the atmosphere. As a reference dataset, we use the current version (v6.6) of the IASI L2 cloud product. The IASI-derived NN cloud product appears to be both accurate in the cloud detection and coherent over the whole IASI period and between the three versions of the instrument. To illustrate this, we show global distributions and time series of the cloud fractions and we assess the quality of the cloud mask by comparing the NN product against several other cloud products. We also evaluate the capabilities of our NN cloud detection product to correctly distinguish cloud from dust plumes.</p>
Title: Cloud detection from IASI radiance for climate analysis purposes
Description:
<p>Clouds are an essential component in our Earth system because of their importance for the weather, the water cycle and the Earth radiation budget.
To better understand the climate, its past and future evolution, the development of long coherent time series of cloud properties is needed.
In addition, as the clouds strongly impact the radiance at the top of the atmosphere, the detection of clear-sky scenes is a major preprocessing step for most climate and atmospheric satellite applications, such as trace gas retrieval or to derive the Earth Outgoing Longwave Radiation.
&#160;</p><p>The Infrared Atmospheric Sounding Interferometer (IASI), flying on board the suite of Metop satellites for more than 15 years, has shown an excellent stability over its entire lifespan and a very good consistency between the three instruments (on board Metop-A, -B and -C).
This makes the IASI dataset an excellent climate data record.
For the detection and the characterization of clouds, the current IASI operational Level 2 product is highly performant.
However, since it was first released in 2007, the L2 cloud data have undergone a series of updates which have not yet been reprocessed back in time.
This leads to discontinuities in the data record which makes it very difficult for use in long-term studies.
Even in the event of a complete reprocessing of the L2, there would also be no guarantee on the homogeneity of the futures versions.
Other cloud products exist (e.
g.
the AVHRR-L1C, the cloud_cci, the CIRS-LMD) but those are usually either less accurate or sensitive to cloud detection or are not available in near-real-time.
These limitations in the existing products triggered the development of a sensitive and coherent IASI cloud detection dataset.
</p><p>Here we present a new cloud detection algorithm for the IASI measurements based on a Neural Network (NN).
The input data consists of a set of 45 IASI channels.
Those were selected outside the regions affected by CO<sub>2</sub>, CFC-11 and CFC-12 absorptions to avoid any long-term bias in the detection as their concentrations are evolving over time in the atmosphere.
As a reference dataset, we use the current version (v6.
6) of the IASI L2 cloud product.
The IASI-derived NN cloud product appears to be both accurate in the cloud detection and coherent over the whole IASI period and between the three versions of the instrument.
To illustrate this, we show global distributions and time series of the cloud fractions and we assess the quality of the cloud mask by comparing the NN product against several other cloud products.
We also evaluate the capabilities of our NN cloud detection product to correctly distinguish cloud from dust plumes.
</p>.
Related Results
Climate and Culture
Climate and Culture
Climate is, presently, a heatedly discussed topic. Concerns about the environmental, economic, political and social consequences of climate change are of central interest in academ...
Cloud type machine learning shows better present-day cloud representation in climate models is associated with higher climate sensitivity
Cloud type machine learning shows better present-day cloud representation in climate models is associated with higher climate sensitivity
<p>Uncertainty in cloud feedback in climate models is a major limitation in projections of future climate. We analyse cloud biases and trends in climate models relati...
Analysis of 3D cloud effects in OCO-2 XCO2 retrievals
Analysis of 3D cloud effects in OCO-2 XCO2 retrievals
Abstract. The presence of 3D cloud radiative effects in OCO-2 retrievals is
demonstrated from an analysis of 2014–2019 OCO-2 XCO2 raw retrievals, bias-corrected XCO2bc data, ground...
Hybrid Cloud Scheduling Method for Cloud Bursting
Hybrid Cloud Scheduling Method for Cloud Bursting
In the paper, we consider the hybrid cloud model used for cloud bursting, when the computational capacity of the private cloud provider is insufficient to deal with the peak number...
A Synergistic Imperative: An Integrated Policy and Education Framework for Navigating the Climate Nexus
A Synergistic Imperative: An Integrated Policy and Education Framework for Navigating the Climate Nexus
Climate change acts as a systemic multiplier of threats, exacerbating interconnected global crises that jeopardize food security, biodiversity, and environmental health. These chal...
Leveraging Artificial Intelligence for smart cloud migration, reducing cost and enhancing efficiency
Leveraging Artificial Intelligence for smart cloud migration, reducing cost and enhancing efficiency
Cloud computing has become a critical component of modern IT infrastructure, offering businesses scalability, flexibility, and cost efficiency. Unoptimized cloud migration strategi...
THE IMPACT OF CLOUD COMPUTING ON CONSTRUCTION PROJECT DELIVERY ABUJA NIGERIA
THE IMPACT OF CLOUD COMPUTING ON CONSTRUCTION PROJECT DELIVERY ABUJA NIGERIA
Cloud computing is the delivery of computing services, such as storage, processing power, and software applications, via the internet. Cloud computing offers various advantages and...
Refining Atmosphere Profiles for Aerial Target Detection Models
Refining Atmosphere Profiles for Aerial Target Detection Models
Atmospheric path radiance in the infrared is an extremely important quantity in calculating system performance in certain infrared detection systems. For infrared search and track ...


