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The Global Ozone Monitoring Experiment-2 (GOME-2) instrument continues the long-term monitoring of atmospheric trace gas constituents started with GOME / ERS-2 and SCIAMACHY / Envisat. Currently, there are three GOME-2 instruments operating on board EUMETSAT's Meteorological Operational satellites MetOp-A, -B, and -C, launched in October 2006, September 2012, and November 2018, respectively. GOME-2 can measure a range of atmospheric trace constituents, with the emphasis on global ozone distributions. Furthermore, cloud properties and intensities of ultraviolet radiation are retrieved. These data are crucial for monitoring the atmospheric composition and the detection of pollutants. DLR generates operational GOME-2 / MetOp level 2 products in the framework of EUMETSAT's Satellite Application Facility on Atmospheric Chemistry Monitoring (AC-SAF). GOME-2 near-real-time products are available already two hours after sensing. The operational ozone total column products are generated using the algorithm GDP (GOME Data Processor) version 4.x integrated into the UPAS (Universal Processor for UV / VIS Atmospheric Spectrometers) processor for generating level 2 trace gas and cloud products. The new improved DOAS-style (Differential Optical Absorption Spectroscopy) algorithm called GDOAS, was selected as the basis for GDP version 4.0 in the framework of an ESA ITT. GDP 4.x performs a DOAS fit for ozone slant column and effective temperature followed by an iterative AMF / VCD computation using a single wavelength. For more details please refer to relevant peer-review papers listed on the GOME and GOME-2 documentation pages: https://atmos.eoc.dlr.de/app/docs/
Forests play a relevant role in mitigation of climate change. A major issue, however, is the scientifically well founded, transparent and verifyable monitoring of achievements in forest carbon sequestration through reduction of deforestation and forest degradation, and through fostering sustainable forest management. Monitoring is particularly difficult in diverse and inaccessible humid tropical forest areas. The proposed research will contribute to the improvement of forest carbon monitoring under the challenging conditions of humid tropical forests. Sample based field observations and model based biomass predictions will be linked to area-wide satellite remote sensing imagery (RapidEye) and to strip samples of LiDAR imagery. Techniques of linking these data sources will be further developed and analysed with respect to (1) precision of carbon estimation and (2) accuracy of carbon regionalization. The proposed project implies research on methodological improvements of both sample based forest inventories (resampling techniques for biomass, imputation of non-response) and remote sensing application to forest monitoring (regionalization, sample based application of LiDAR data). At the core of this research is the analysis of the error variance components that each data source brings into the system. Such error analysis will allow identifying optimal resource allocation for the efficient improvement of forest carbon monitoring systems.
This data collection unites the individual data sets of the COMPEX-EC (Clouds over cOMPlEX environment - EarthCARE) campaign, carried out in Kiruna 2.-16.4.2025. COMPEX-EC has been designed as an EarthCARE validation campaign. For that purpose, Polar 5 (C-GAWI) has been equipped with instrumentation similar to the one operated on EarthCARE (W-band radar, lidar, radiometers, spectral imagers). Seven research flights (summing up to more than 30 flight hours) were conducted each of them underflying the EarthCARE satellite to validate its performance.
Leuchtende Nachtwolken (NLCs, von engl. Noctilucent clouds) sind optisch dünne Wassereiswolken, die nahe der polaren Sommermesopause bei geographischen Breiten polwärts von etwa 50 Grad auftreten. NLCs wurden in den vergangenen Jahrzehnten intensiv untersucht, insbesondere aufgrund ihrer Rolle als Indikatoren der globalen Veränderung. Langzeitsatellitenmessungen der NLCs mit Hilfe der SBUV/2 Instrumente auf Nimbus-7 und der NOAA-Satellitenreihe zeigen eine signifikante Zunahme der NLC Albedo (DeLand et al., 2007) sowie der NLC Häufigkeit (Shettle et al., 2009). Dieser langfristige Trend wurde durch eine Studie von Stevens et al. (2007) in Frage gestellt, in der die Langzeittrends in SBUV/2 NLC Albedo und der NLC Eismasse bei einer konstanten Lokalzeit untersucht wurden. Erstaunlicherweise führte die ausschließliche Berücksichtigung von Messungen bei konstanter Lokalzeit dazu, dass der Langzeittrend in der NLC Albedo praktisch vollständig verschwand. Diese Ergebnisse suggerieren, dass die veränderlichen Lokalzeiten, die mit der langsamen Veränderung der Orbitparameter der NOAA Satelliten verbunden sind, den scheinbaren Langzeittrend in NLC Albedo und NLC Häufigkeiten in früheren Studien verursachen. Dieser Sachverhalt ist noch immer nicht verstanden, obwohl die Frage nach den tatsächlichen Langzeitvariationen in NLCs von entscheidender Bedeutung für das wissenschaftliche Verständnis des Klimawandels in der mittleren Atmosphäre ist. Das wissenschaftliche Hauptziel des hier vorgeschlagenen Projekts ist es die Ursachen für die oben skizzierten Diskrepanzen zwischen den verschiedenen Analysen der SBUV/2 Daten zu untersuchen, und festzustellen, ob NLC-Parameter einer Langzeitvariation unterliegen oder nicht. Zu diesem Zweck sollen Messungen der europäischen Nadir-Beobachtungsinstrumente GOME und SCIAMACHY zur Bestimmung von NLCs verwendet werden. Nadir-Messungen dieser Satelliteninstrumente sind hervorragend geeignet, um diese wissenschaftliche Fragestellung zu untersuchen, weil die Satelliten sich in Sonnen-synchronen Erdumlaufbahnen befinden, und somit Messungen bei einer bestimmten geographischen Breite stets zur selben Lokalzeit durchführt werden. Da die GOME und SCIAMACHY Nadir-Messungen bisher nicht zur Untersuchung von NLCs verwendet wurden, soll im Rahmen dieses Projekts ein NLC Auswertealgorithmus implementiert und auf den gesamten GOME und SCIAMACHY Datensatz angewandt werden. Die zu bestimmenden NLC Parameter umfassen NLC Albedo, NLC Häufigkeit sowie NLC Eismasse. Die abgeleiteten NLC Datenprodukte werden verwendet, und Sonnenzyklusvariationen und Langzeittrends in NLCs zu quantifizieren, sowie zur Untersuchung der Frage, ob die Langzeittrends in SBUV/2 NLC Messungen durch die veränderlichen Lokalzeiten dieser Satellitenmessungen beeinflusst oder gar maßgeblich verursacht werden.
This database expands the Poulton et al., 2018 (doi:10.1594/PANGAEA.888182) database of pelagic calcium carbonate (CP) rate measurements from isotopic tracer uptake in incubated discrete water samples, as discussed in Daniels et al., 2018 (doi:10.5194/essd-10-1859-2018), and accompanies Marsh et al. (in prep.). The database now includes more CP (new data n = 400; complete database n = 3165), net primary production rate (PP) (new data n = 399; complete database n = 3150), total coccolithophore cell counts (new data n = 240; complete database n = 1512), and Emiliania huxleyi cell counts (new data n = 27; complete database n = 612). This expanded database maintains the record of data, including the principal investigator, expedition, OS region, doi reference (where available), collection date and year, sample ID, latitude, longitude, sampling and light depth, and method of measuring CP. We further expand the Poulton et al. (2018) data collection by including ancillary and environmental data, including: optical depth (OD, n = 3165), pHtotal (hereinafter referred to as pHT, n = 398), temperature (n = 1160), salinity (n = 1161), and the concentrations of chlorophyll a (n = 1363), NOx (NO3 or the sum of NO3 + NO2, n = 1161), silicic acid (Si(OH)4, n= 1156), phosphate (PO4, n = 1232), dissolved inorganic carbon (DIC, n = 318), total alkalinity (TA, n = 307), bicarbonate ion concentration (n = 349), and carbonate ion concentration (n = 352). All data was matched to CP, sample bottle identifiers (Niskin bottle numbers), and/or sampling depth values. This global database (81 °N - 64 °S, 132 °E - 174 °W) now covers expeditions and upper ocean measurements (0 - 193 m) from 1989 to 2024. Global in-situ geolocated data spanning time is valuable for modelling, satellite algorithms, and capturing calcium carbonate production in the global ocean. This expanded database, including the environmental, nutrient, chlorophyll a, and carbonate chemistry data, also allows for analysis of factors influencing calcium carbonate production on a global scale. This data amalgamation contributes to understanding the biogeochemistry of the oceans, global carbon cycle, and ocean acidification.
Der Strahlungsantrieb durch anthropogene Aerosole aufgrund von Aerosol-Wolken-Wechselwirkungen ist die Hauptunsicherheit bezüglich des Antriebs des Klimawandels. Für Flüssigwasserwolken, die den Strahlungsantrieb im solaren (kurzwelligen) Spektrum dominieren, konnten mittlerweile einige Fortschritte in der Quantifizierung erzielt werden. Im Gegensatz dazu gibt es für den Strahlungsantrieb im langwelligen (terrestrischen) Spektralbereich nur sehr grobe Abschätzungen von Klimamodellen. In Vorarbeiten haben wir einen Vorschlag entwickelt, wir aktive Fernerkundung zur Charakterisierung von Eiskristallkonzentrationen und Aerosol benutzt werden könnte, um eine beobachtungsbasierte Abschätzung des Strahlungsantriebs durch Aerosol-Wolken-Wechselwirkungen im langwelligen Spektrum zu ermöglichen. Allerdings sind die Satellitendaten höchst unsicher und benötigen eine Validierung mit Referenzdaten. In FLASH wird vorgeschlagen, (i) die Satelliten-abgeleitete Eiskristallkonzentration sowie ihre Sensitivität bezüglich Temperatur, Vertikalwind und Aerosolbedingungen mit den neuen In-situ-Daten von HALO zu validieren bzw. evaluieren, (ii) die Ableitung der Eiskristallkonzentration vom Satelliten mit der von Lidar und Radar an Bord von HALO zu verifizieren, (iii) Klimamodelle zu evaluieren und zur Interpretation der statistischen Relationen zu benutzen, und (iv) schließlich eine Abschätzung des Strahlungsantriebs durch Aerosol-Wolken-Wechselwirkungen und seines Unsicherheitsbereichs zu erarbeiten. Die Rolle von FLASH im SPP 1294 ist es, die vorhandenen Daten auszuwerten und mit den Daten geplanter Kampagnen in integrierender Weise zu arbeiten mit dem Ziel, eine bessere Abschätzung des Aerosol-Wolken-Strahlungsantriebs zu erreichen, neue innovative Satellitendaten zu validieren, und die relevanten Parametrisierungen in Klimamodellen zu evaluieren und zu verbessern.
Objectives: Sustainable management of tropical moist forests through private forest owners will become increasingly important. Media report that in Brazil, particularly in Amazonia, approx. 80 percent of the timber harvested is from illegal sources. Private management of forests according to internationally acknowledged standards offers an opportunity to significantly lower the portion of illegally cut timber. Moreover, it contributes significantly to the conservation of the Amazon forest. Private forest owners show a clear long-term commitment towards the implementation of management standards according that is ecologically compatible, socially acceptable and economically viable. The project area, a pristine forest in legal Amazonia in the transition zone between moist tropical forests and savannas (cerrado), is extremely diverse in floristic and faunistic terms. The institute cooperates with the private forest owner. Main tasks are to document the faunistic and floristic diversity, to calculate the Annual Allowable Cut and to elaborate concepts for site-specific silviculture. Results: To date (Oct. 2006) the following activities were started: - a comprehensive inventory system for planning at the FMU-level has been successfully introduced; - the inventory system for the annual coupe area has been designed and data for the first coupe are being processed; - the annual allowable cut is currently calculated based on the results of the above described inventories; - two fauna surveys are completed; one focusing on large mammals and one on the avi-fauna. A long-term monitoring concept to assess the influence of forest management on the faunistic diversity is currently under development; - forest zoning is completed applying terrestrial surveys and interpreting high-resolution satellite images; - a study on the use of Bethollethia excelsa-fruits (Brazil nuts) is currently implemented; - a study on timber properties of lesser known species is currently implemented.
The project DIGSTER - Map and Go (Digital Based Terrain Mapping) aims at the technical aspects of digital terrrain mapping. For many questions in administration, planning and expertise terrrain mappings are indispensable. The whole process starting with the data acquisition in the field and ending with map products will be digitally performed by the system. Therefore, a platform appropriate for the use in the field (PDA) is combined with technologies from the disciplines of satellite navigation, remote sensing, communication, and mobile geoinformation systems. For DIGSTER a lot of practical applications already exist in connection with policies and directives on the national and also European level.
The Global Ozone Monitoring Experiment-2 (GOME-2) instrument continues the long-term monitoring of atmospheric trace gas constituents started with GOME / ERS-2 and SCIAMACHY / Envisat. Currently, there are three GOME-2 instruments operating on board EUMETSAT's Meteorological Operational satellites MetOp-A, -B, and -C, launched in October 2006, September 2012, and November 2018, respectively. GOME-2 can measure a range of atmospheric trace constituents, with the emphasis on global ozone distributions. Furthermore, cloud properties and intensities of ultraviolet radiation are retrieved. These data are crucial for monitoring the atmospheric composition and the detection of pollutants. DLR generates operational GOME-2 / MetOp level 2 products in the framework of EUMETSAT's Satellite Application Facility on Atmospheric Chemistry Monitoring (AC-SAF). GOME-2 near-real-time products are available already two hours after sensing. The operational NO2 total column products are generated using the algorithm GDP (GOME Data Processor) version 4.x integrated into the UPAS (Universal Processor for UV / VIS Atmospheric Spectrometers) processor for generating level 2 trace gas and cloud products. The operational NO2 tropospheric column products are generated using the algorithm GDP (GOME Data Processor) version 4.x for NO2 [Valks et al. (2011)] integrated into the UPAS (Universal Processor for UV / VIS Atmospheric Spectrometers) processor for generating level 2 trace gas and cloud products. The total NO2 column is retrieved from GOME solar back-scattered measurements in the visible wavelength region using the DOAS method. An additional algorithm is applied to derive the tropospheric NO2 column: after subtracting the estimated stratospheric component from the total column, the tropospheric NO2 column is determined using an air mass factor based on monthly climatological NO2 profiles from the MOZART-2 model. For more details please refer to relevant peer-review papers listed on the GOME and GOME-2 documentation pages: https://atmos.eoc.dlr.de/app/docs/
The Global Ozone Monitoring Experiment-2 (GOME-2) instrument continues the long-term monitoring of atmospheric trace gas constituents started with GOME / ERS-2 and SCIAMACHY / Envisat. Currently, there are three GOME-2 instruments operating on board EUMETSAT's Meteorological Operational satellites MetOp-A, -B and -C, launched in October 2006, September 2012, and November 2018, respectively. GOME-2 can measure a range of atmospheric trace constituents, with the emphasis on global ozone distributions. Furthermore, cloud properties and intensities of ultraviolet radiation are retrieved. These data are crucial for monitoring the atmospheric composition and the detection of pollutants. DLR generates operational GOME-2 / MetOp level 2 products in the framework of EUMETSAT's Satellite Application Facility on Atmospheric Chemistry Monitoring (AC-SAF). GOME-2 near-real-time products are available already two hours after sensing. The operational BrO (Bromine monoxide) total column products are generated using the algorithm GDP (GOME Data Processor) version 4.x integrated into the UPAS (Universal Processor for UV / VIS Atmospheric Spectrometers) processor for generating level 2 trace gas and cloud products. For more details please refer to https://atmos.eoc.dlr.de/app/missions/gome2
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