Contributors: E. Carboni (UKRI-STFC RAL Space), G.E. Thomas (UKRI-STFC RAL Space)
Issued by: STFC RAL Space (UKRI-STFC) / Elisa Carboni
Date: 31/05/2023
Ref: C3S2_D312a_Lot1.2.1.5-v4.0_202305_PQAR_CCICloudProperties_v1.2
Official reference number service contract: 2021/C3S2_312a_Lot1_DWD/SC1
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Figure 2-1. CFC, CTP, LWP and IWP from SLSTR (ICDR dataset) for March 2017 Figure 2-2. CFC, CTP, LWP and IWP from MODIS dataset for March 2017 |
Table 2-1: Summary of the TCDR accuracy and stability of the Cloud Properties dataset (together with the GCOS requirements) extracted from table 7-2 in [D1] Table 2-2: Bias of TCDR and ICDR cloud properties estimate in comparison with MODIS |
The "CCI product family" Climate Data Record (CDR) consists of two parts. The ATSR2-AATSR Cloud Properties CDR is formed by a TCDR brokered from the ESA Cloud_cci project and an ICDR derived from the SLSTR on board of Sentinel-3. ICDR uses the same processing and infrastructure as the TCDR. Both TCDR and ICDR data have been produced by STFC RAL Space.
These Cloud Properties datasets from polar orbiting satellites consist of these variables: Cloud Fractional Cover (CFC), Cloud Phase (water/ice), Cloud Optical Thickness (COT), Cloud particle Effective Radius (CER), Liquid/Ice Water Path (LWP/IWP), and Cloud Top Pressure (CTP), Height (CTH) and Temperature (CTT).
Bias (accuracy): Mean difference between TCDR/ICDR and reference data
b=\frac{\sum_{i=1}^N (p_i - r_i)}{N} \ \ (Eq. 1) |
Where: pi is the CDR product, b is the mean bias and ri is the equivalent value from the reference dataset. N is the number of observations.
bc-RMSE (precision): Bias corrected root mean squared error to express the precision of TCDR/ICDR compared to a reference data record
bc- RMSE=\sqrt{\frac{\sum_{i=1}^N ((p-b)-r)^2}{N}} \ \ (Eq. 2) |
Where: pi is the CDR product, b is the mean bias and ri is the equivalent value from the reference dataset. N is the number of observations.
Stability: The variation of the bias over a multi-annual time period
Table 1: Summary of variables and definitions
Variables | Abbreviation | Definition |
Cloud mask / Cloud fraction | CMA/ | A binary cloud mask per pixel (L2) and from there derived monthly total cloud fractional coverage (L3C) |
Cloud optical thickness | COT | The line integral of the absorption extinction coefficient (at 0.55μm wavelength) along the vertical in cloudy pixels. |
Cloud effective radius | CER | The area-weighted radius of the cloud droplet and crystal particles, respectively. |
Cloud top pressure/ | CTP/ | The air pressure [hPa] /height [m] /temperature [K] of the uppermost cloud layer that could be identified by the retrieval system. |
Cloud liquid water path/ | LWP/ | The vertical integrated liquid/ice water content of existing cloud layers; derived from CER and COT. LWP and IWP together represent the cloud water path (CWP) |
Table 2: Definition of processing levels
Processing level | Definition |
Level-1b | The full-resolution geolocated radiometric measurements (for each view and each channel), rebinned onto a regular spatial grid. |
Level-2 (L2) | Retrieved cloud variables at full input data resolution, thus with the same resolution and location as the sensor measurements (Level-1b). |
Level-3C (L3C) | Cloud properties of Level-2 orbits of one single sensor combined (averaged) on a global spatial grid. Both daily and monthly products provided through C3S are Level-3C. |
Table 3: Definition of various technical terms used in the document
Term | Definition |
---|---|
Brokered product | The C3S Climate Data Store (CDS) provides both datasets produced within the C3S and so-called brokered products. The latter are existing products (data) produced under an independent programme or project which are made available through the CDS. |
TCDR | It is a consistently-processed time series of a geophysical variable of sufficient length and quality. |
ICDR | An Interim Climate Data Record (ICDR) denotes an extension of TCDR, processed with a processing system as consistent as possible to the generation of TCDR. |
CDR | A Climate Data Record (CDR) is defined as a time series of measurements with sufficient length, consistency, and continuity to determine climate variability and change. |
This document provides a description of the product validation results for the Essential Climate Variable (ECV) Cloud Properties. This CDR comprises inputs from two sources: (i) brokered products from the Cloud Climate Change Initiative (ESA's Cloud_cci), namely those coming from processing of the Advanced Along-Track Scanning Radiometer (A)ATSR) data and (ii) those produced under this contract for the Climate Data Store, specifically those coming from processing of the Sea and Land Surface Temperature Radiometers (SLSTR).
The Thematic Climate Data Record (TCDR) is the product brokered from the European Space Agency Cloud Climate Change Initiative (ESA Cloud_cci) ATSR2-AATSR version 3.0 (Level-3C) dataset. This is produced by RAL from the second Along-Track Scanning Radiometer (ATSR-2) on board the second European Remote Sensing Satellite (ERS-2) spanning the period 1995-2003 and the Advanced ATSR (AATSR) on board ENVISAT, spanning the period 2002-2012.
In addition, the Interim Climate Data Record (ICDR) is the product derived from the Sea and Land Surface Temperature Radiometer (SLSTR) on board of Sentinel-3 and spans the period from January 2017 to present. Validation for this SLSTR derived product for the period from January 2017 to June 2022 is described in this document. In addition to the validation of the individual products from Sentinel-3A and -3B, the merged product (Sentinel-3A+3B) is also validated spanning the period from October 2018 to present (Sentinel-3B provides data from October 2018 on).
This document provides a description of the product validation results for some of the Essential Climate Variable (ECV) Cloud Properties. These specific products are brokered to (in case of (A)ATSR) or produced for the Climate Data Store (in the case of SLSTR) by the Copernicus Climate Change Service (C3S).
The TCDR is a brokered version of ESA's Cloud_cci ATSR2-AATSR version 3.0 (Level-3C) dataset, produced by RAL from the second Along-Track Scanning Radiometer (ATSR-2) on board the second European Remote Sensing Satellite (ERS-2) which operated in the period 1995-2003 and the Advanced ATSR (AATSR) on board ENVISAT which operated in the period 2002-2012. In addition, the Sea and Land Surface Temperature Radiometer (SLSTR) on board of Sentinel-3 has been operating from 2017 to present and provides the input to the ICDR. The validation of the ICDR is over the period from January 2017 to June 2022 with not just the individual products from Sentinel-3A/B but also the merged product spanning the period from October 2018 to June 2022. The retrieval algorithm is presented in [D2] and the validation methodology refers to the Cloud_cci Product Validation and Intercomparison Report [D1]. The same methodology is applied to the SLSTR dataset.
Poulsen et al. (2019) [D3] is the paper describing the dataset that includes cloud properties as well as Surface Radiation Budget and Earth Radiation Budget products. This document will mainly refer to the Cloud_cci Product Validation and Intercomparison Report [D1].
Table 2-1 provides a summary of the estimated accuracies of the TCDR together with the GCOS requirements. The validation results are provided in [D1] section 7-2, with a recommendation for use.
For the ICDR, the intercomparison with MODIS (using only the first 5 years of SLSTR data) show biases consistent with values found for the TCDR vs MODIS comparison (D1, section 4.1) for Cloud Fractional Cover (CFC), Cloud Top Pressure (CTP) and Liquid Water Path (LWP), but higher value for Ice Water Path (IWP) SLSTR-B, with a global averaged bias of -25 g/m³ for SLSTR-A and -40 g/m³ for SLSTR-B (TCDR IWP bias with MODIS was -29 g/m³).
This document is divided in different sections:
The validation methodology is described in section 2.4 of [D1]. In addition, the validation methodology is also described in the corresponding Product Quality Assurance Document (PQAD) [D4]. In summary, the methodology uses the bias between the Cloud_cci product and the reference data to estimate the accuracy of the dataset. The bias corrected root mean squared error (bc-RMSE) is used to express the precision of CDR compared to a reference data record, which is also known as the standard deviation about the mean. Stability is calculated as the variation of the bias over a multi-annual time period.
The validation results for TCDR products are provided in [D1], section 3 and 4. The evaluation is divided in validation against high quality and satellite-based reference observations Please find information on the sensors in [D1]: CALIOP (Annex A.1), AMSR-E (A.2), DARDAR (A.3) and MODIS-C6.1 (A.10) (CALIOP, AMSR-E and DARDAR) and an intercomparison to well-established, satellite-based cloud datasets of similar kind (e.g. MODIS Collection 6.1). Table 2-1 provides a summary of the resulting TCDR accuracies.
Table 2-1: Summary of the TCDR accuracy and stability of the Cloud Properties dataset (together with the GCOS requirements) extracted from table 7-2 in [D1]. Green shaded cell indicate compliance with the requirements, yellow cells nearly compliance and red cell no compliance.
Product name | GCOS targets | Cloud CCI dataset | Comments | |
Cloud Fractional Cover (CFC) | Accuracy | 5 % | -5.1 % | Level-2 validation against CALIOP |
Stability (per decade) | 3 % | -0.52 % | Level – 3C (L3C) comparisons to MODIS C6.1 | |
Cloud Top Height (CTH)/ Pressure (CTP) | Accuracy (low/mid/high) | 0.5/0.7/ 1.6 km | 0.12 km (liquid cloud) | Level-2 validation against CALIOP |
Stability (per decade) | 15 hPa | 0.45 hPa | Level-3C (L3C) comparisons to MODIS C6.1 | |
Cloud Optical Thickness (COT) | Accuracy | 10 % | No validation (n/v) | No validation possible due to a lack of reliable reference data. Used to estimate LWP and IWP, that are validated. |
Stability (per decade) | 2 % | -0.03 % (liquid cloud) | L3C comparisons to MODIS C6.1 | |
Liquid Water Path (LWP) | Accuracy | 25 % | -2.4% | Level-2 validation against AMSR-E |
Stability (per decade) | 5 % | -0.06 %1 | L3C comparisons to MODIS C6.1 | |
Ice Water Path (IWP) | Accuracy | 25 % | -39.9 % | Level-2 validation against DARDAR |
Stability (per decade) | 5 % | -0.04 %2 | L3C comparisons to MODIS C6.1 | |
Cloud Effective Radius (CER) | Accuracy | 10 % | n/v | No validation possible due to a lack of reliable reference data. Variable is based on LWP and IWP. |
Stability (per decade) | 1μm | -0.96 μm (liquid) | L3C comparisons to MODIS C6.1 |
1 Value obtained from the difference between CDR LWP trend (0.99g/m2/decade) and MODIS LWP trend (8.06g/m2/decade) divided by mean MODIS C6.1 LWP (123g/m²).
2 Value obtained from the difference between CDR IWP trend (-2.27g/m2/decade) and MODIS IWP trend (7.82g/m2/decade) divided by mean MODIS C6.1 IWP (208g/m²).
Cloud Fractional Cover (CFC) is validated against CALIOP and reported in [D1], section 3.1.1 and compared with MODIS and reported in [D1], section 4.1.1. A slight underestimation of cloud occurrences is found in the Cloud_cci data compared to CALIOP, which is primarily due to a lack of sensitivity of passive imager data with respect to optically very thin clouds.
Cloud Top Height is validated against CALIOP and presented in [D1] section 3.1.3.
For liquid clouds only very small biases (0.12km) and bc-RMSE (0.97km) are found.
For ice clouds, the strong underestimation of cloud top height is evident and it is a common feature for all three Cloud_cci datasets. It is mainly caused by high-level, optically thin clouds. Biases are around -3.5 km and bc-RMSE around 2.3 km. Removing the optically very thin cloud layers at the top of the CALIOP profiles, improves the agreement between Cloud_cci and CALIOP substantially.
These parameters are compared against MODIS. As the quantities are also derived from satellite observations, it is not valid to calculate measures of bias and RMSE, as the MODIS values cannot be necessarily considered to be better. Nonetheless a comparison is useful. This comparison is documented in the following sections of [D1]: Cloud Top Pressure (CTP) is compared in section 4.1.2. Cloud Effective Radius (CER) is compared in section 4.1.5 and 4.1.6. Cloud Optical Thickness (COT) is compared in section 4.1.3 and 4.1.4 for liquid and ice cloud.
Validation of Liquid Water Path (LWP) is presented in [D1] section 3.1.4. It is carried out against AMSR-E products and compared with MODIS and reported in [D1] section 4.1.7.
Ice Water Path (IWP) is validated against the DARDAR IWP product and reported in [D1] section 3.1.5 and compared with MODIS which is in section 4.1.8.
Validating liquid water path over ocean against AMSR-E gives very convincing results for the CDR dataset, with bc-RMSE values of 25 g/m², only small biases (-1.44 g/m²) and high correlations (0.76). Validating ice water path against the combined CALIPSO-CloudSat product DARDAR shows good agreement with correlations of 0.45. There is a general underestimation of IWP by Cloud_cci which in terms of relative bias partly exceeds 50%.
The first 5.5 years and 3.5 years (of SLSTR-A and SLSTR-B respectively) of products have been compared against MODIS (Collection 6.1 Terra) following the same methodology described in [D1] section 4.1. We estimate the bias, i.e. mean differences, and the monthly mean global average of C3S and the MODIS data. To compute the monthly mean global average of both datasets we considered only the valid data between -60° and +60° latitude.
Table 2-2 shows the bias results from this comparison for both TCDR data (from D1) and for the ICDR. Except for the IWP, all the properties show better results (lower bias) for the ICDR in comparison to TCDR.
Figure 2-1 and Figure 2-2 show an example of ICDR monthly products for March 2017 and the equivalent monthly product from MODIS. These figures are for illustrative purposes so the user knows what to expected. Nonetheless, note that for this month, the ICDR and MODIS datasets are spatially similar across all four properties. However, there are some small differences observed. For example CTP seems much higher in the tropics in the MODIS product compared to the ICDR. For a more detailed analysis please go to the [D1].
Table 2-2: Bias of TCDR and ICDR cloud properties estimate in comparison with MODIS. (Dataset till June 2022)
Parameters | TCDR (2003-2011) bias | ICDR (2017-2022) bias | ICDR (2019-2022) bias | ICDR merged bias (SLSTR-A and B) |
CFC | -8.1% | -6% | -6% | -6% |
CTP | -25 hPa | -15 hPa | -13 hPa | -13 hPa |
LWP | -17.3 g/m2 | -9.0 g/m2 | -1.1 g/m2 | 0.67 g/m2 |
IWP | -28.8 g/m2 | -25 g/m2 | -40 g/m2 | -25 g/m2 |
Figure 2-1: CFC, CTP, LWP and IWP from SLSTR (ICDR dataset) for March 2017, (areas that have no data are shown in white).
Figure 2-2. CFC, CTP, LWP and IWP from MODIS dataset for March 2017 (areas that have no data are shown in white).
This section is not applicable. There are no additional application specific assessments known since the dataset has just been published.
The validation results for the TCDR products are presented and described in detail in [D1], section 7. In this section, a summary highlighting recommendations on usage is presented. More detailed information about the user requirements is provided in the Target Requirements and Gap Analysis Document (TRGAD) [D5].
Table 2-1 (section 2) provides an overview of the GCOS requirements for the Cloud Properties and the values achieved by TCDR. It should be noted that GCOS requirements are targets and are often not attainable using existing or historical observing systems. The Cloud_cci doesn't meet the frequency requirement (3h) due to the nature of the satellite observations, but exceeds the spatial resolution (50 km GCOS target). ICDR accuracies (estimated with the first 5 years of data) are consistent with TCDR accuracies apart from IWP where we find slightly higher bias in comparison with MODIS (section 2.2).
For nearly all validations for which a trusted reference data source is available, the compliance to GCOS requirements could be shown, e.g. cloud fractional cover stability, cloud top height accuracy and stability, liquid water path accuracy and stability and ice water path stability. Cloud fractional cover accuracy is close to the GCOS target requirements. For effective radius and optical thickness no reliable reference data is available for accuracy compliance analysis.
A general problem is the assessment of the stability. Stability assessments are based on comparisons to MODIS, which in turn however, is not an entirely reliable source itself as it is sometimes characterized by significant trends which may or may not be true.
The following are recommendations on the usage and known limitations (from [D1] table 7.1):
Cloud Fractional Cover (CFC)
Cloud Top Pressure (CTP)
Cloud optical thickness (COT)
Cloud effective radius (CER)
Liquid water content (LWP)
Ice water content (IWP)
This document has been produced in the context of the Copernicus Climate Change Service (C3S). The activities leading to these results have been contracted by the European Centre for Medium-Range Weather Forecasts, operator of C3S on behalf on the European Union (Contribution Agreement signed on 22/07/2021). All information in this document is provided “as is” and no guarantee of warranty is given that the information is fit for any particular purpose. The users thereof use the information at their sole risk and liability. For the avoidance of all doubt, the European Commission and the European Centre for Medium-Range Weather Forecasts have no liability in respect of this document, which is merely representing the author’s view. |
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