GENERATION OF HIMAWARI-8 AMVs USING THE FUTURE MTG AMV PROCESSOR

Similar documents
Recent Changes in the Derivation of Geostationary AMVs at EUMETSAT. Manuel Carranza Régis Borde Marie Doutriaux-Boucher

AN OVERVIEW OF 10 YEARS OF RESEARCH ACTIVITIES ON AMVs AT EUMETSAT

ATMOSPHERIC MOTION VECTORS DERIVED FROM MSG RAPID SCANNING SERVICE DATA AT EUMETSAT

A New Atmospheric Motion Vector Intercomparison Study

Current status and plans of JMA operational wind product

OPERATIONAL RETRIEVAL OF MSG AMVS USING THE NEW CCC METHOD FOR HEIGHT ASSIGNMENT.

STATUS AND DEVELOPMENT OF SATELLITE WIND MONITORING BY THE NWP SAF

ESTIMATION OF THE SEA SURFACE WIND IN THE VICINITY OF TYPHOON USING HIMAWARI-8 LOW-LEVEL AMVS

AVHRR Polar Winds Derivation at EUMETSAT: Current Status and Future Developments

EUMETSAT Satellite Programmes Use of McIDAS at EUMETSAT

CURRENT STATUS OF OPERATIONAL WIND PRODUCT IN JMA/MSC

EUMETSAT products and services for monitoring storms - New missions, more data and more meteorological products

METEOSAT THIRD GENERATION

RECENT UPGRADES OF AND ACTIVITIES FOR ATMOSPHERIC MOTION VECTORS AT JMA/MSC

Maryland 20746, U.S.A. Engineering Center (SSEC), University of Wisconsin Madison, Wisconsin 53706, U.S.A ABSTRACT

Assimilation of Himawari-8 data into JMA s NWP systems

THE ATMOSPHERIC MOTION VECTOR RETRIEVAL SCHEME FOR METEOSAT SECOND GENERATION. Kenneth Holmlund. EUMETSAT Am Kavalleriesand Darmstadt Germany

COMPARISON OF THE OPTIMAL CLOUD ANALYSIS PRODUCT (OCA) AND THE GOES-R ABI CLOUD HEIGHT ALGORITHM (ACHA) CLOUD TOP PRESSURES FOR AMVS

Meteosat Third Generation. The Future European Geostationary Meteorological Satellite

Atmospheric Motion Vectors: Product Guide

PRECONVECTIVE SOUNDING ANALYSIS USING IASI AND MSG- SEVIRI

Meteosat Third Generation (MTG): Lightning Imager and its products Jochen Grandell

IMPACTS OF SPATIAL OBSERVATION ERROR CORRELATION IN ATMOSPHERIC MOTION VECTORS ON DATA ASSIMILATION

FUTURE PLAN AND RECENT ACTIVITIES FOR THE JAPANESE FOLLOW-ON GEOSTATIONARY METEOROLOGICAL SATELLITE HIMAWARI-8/9

GLOBAL ATMOSPHERIC MOTION VECTOR INTER-COMPARISON STUDY

JMA s atmospheric motion vectors

EUMETSAT PLANS. K. Dieter Klaes EUMETSAT Darmstadt, Germany

IMPROVEMENTS TO EUMETSAT AMVS. Régis Borde, Greg Dew, Arthur de Smet and Jörgen Bertil Gustaffson

MSG system over view

Arctic Weather Every 10 Minutes: Design & Operation of ABI for PCW

STATUS OF JAPANESE METEOROLOGICAL SATELLITES AND RECENT ACTIVITIES OF MSC

COMPARISON OF AMV HEIGHT ASSIGNMENT BIAS ESTIMATES FROM MODEL BEST-FIT PRESSURE AND LIDAR CORRECTIONS

VALIDATION OF DUAL-MODE METOP AMVS

NUMERICAL EXPERIMENTS USING CLOUD MOTION WINDS AT ECMWF GRAEME KELLY. ECMWF, Shinfield Park, Reading ABSTRACT

ACCOUNTING FOR THE SITUATION-DEPENDENCE OF THE AMV OBSERVATION ERROR IN THE ECMWF SYSTEM

Introducing Atmospheric Motion Vectors Derived from the GOES-16 Advanced Baseline Imager (ABI)

JMA s ATMOSPHERIC MOTION VECTORS In response to Action 40.22

TOWARDS IMPROVED HEIGHT ASSIGNMENT AND QUALITY CONTROL OF AMVS IN MET OFFICE NWP

AMVS: PAST PROGRESS, FUTURE CHALLENGES

Wind tracing from SEVIRI clear and overcast radiance assimilation

Future mission : IASI-new generation

Which AMVs for which model? Chairs: Mary Forsythe, Roger Randriamampianina IWW14, 24 April 2018

RECENT ADVANCES TO EXPERIMENTAL GMS ATMOSPHERIC MOTION VECTOR PROCESSING SYSTEM AT MSC/JMA

USE, QUALITY CONTROL AND MONITORING OF SATELLITE WINDS AT UKMO. Pauline Butterworth. Meteorological Office, London Rd, Bracknell RG12 2SZ, UK ABSTRACT

Satellite observation of atmospheric dust

Assimilation of GOES Hourly and Meteosat winds in the NCEP Global Forecast System (GFS)

Derivation of AMVs from single-level retrieved MTG-IRS moisture fields

Assessment of new AMV data in the ECMWF system: First year report

NESDIS Atmospheric Motion Vector (AMV) Nested Tracking Algorithm: Exploring its Performance

EVALUATION OF TWO AMV POLAR WINDS RETRIEVAL ALGORITHMS USING FIVE YEARS OF REPROCESSED DATA

EUMETSAT NEWS. Marianne König.

AMVs in the ECMWF system:

EUMETSAT Satellite Programmes Use of McIDAS at EUMETSAT

IMPACT STUDIES OF HIGHER RESOLUTION COMS AMV IN THE KMA NWP SYSTEM

Updates on Chinese Meteorological Satellite Programs

22nd-26th February th International Wind Workshop Tokyo, Japan

AN OBSERVING SYSTEM EXPERIMENT OF MTSAT RAPID SCAN AMV USING JMA MESO-SCALE OPERATIONAL NWP SYSTEM

STATUS OF THE OPERATIONAL SATELLITE WINDS PRODUCTION AT CPTEC/INPE AND IT USAGE IN REGIONAL DATA ASSIMILATION OVER SOUTH AMERICA

MTG-IRS processing overview and performances. Dorothee Coppens and Bertrand Theodore

Masahiro Kazumori, Takashi Kadowaki Numerical Prediction Division Japan Meteorological Agency

Cloud Top Height Product: Product Guide

AVHRR Global Winds Product: Validation Report

Use of satellite winds at Deutscher Wetterdienst (DWD)

Status of EUMETSAT Current and Future Programmes

OPERATIONAL USE OF METEOSAT-8 SEVIRI DATA AND DERIVED NOWCASTING PRODUCTS. Nataša Strelec Mahović

Operational Generation And Assimilation Of Himawari-8. Atmospheric Motion Vectors

Current Status of COMS AMV in NMSC/KMA

THE EUMETSAT SATELLITE PROGRAMMES AN OVERVIEW FROM NOW TO THE FUTURE

THE LAND-SAF SURFACE ALBEDO AND DOWNWELLING SHORTWAVE RADIATION FLUX PRODUCTS

ERA-CLIM2-WP3: Satellite data reprocessing and inter-calibration

Cloud Top Height Product: Product Guide

A 2016 CEOS Chair Initiative. Non-meteorological Applications for Next Generation Geostationary Satellites

Cross-calibration of Geostationary Satellite Visible-channel Imagers Using the Moon as a Common Reference

Non-meteorological Applications for Next Generation Geostationary Meteorological Satellites

EUMETSAT Plans. K. Dieter Klaes EUMETSAT Am Kavalleriesand 31 D Darmstadt Germany. Abstract. Introduction. Programmatic Aspects

Assimilation of Himawari-8 Atmospheric Motion Vectors into the Numerical Weather Prediction Systems of Japan Meteorological Agency

NWP SAF AMV monitoring: the 8th Analysis Report (AR8)

NWP SAF AMV monitoring: the 7th Analysis Report (AR7)

RGB Experts and Developers Workshop 2017 Tokyo, Japan

For the operational forecaster one important precondition for the diagnosis and prediction of

Operational Generation and Assimilation of Himawari-8 Atmospheric Motion Vectors

The Copernicus Sentinel-5 Mission: Daily Global Data for Air Quality, Climate and Stratospheric Ozone Applications

Improving the use of satellite winds at the Deutscher Wetterdienst (DWD)

H-SAF future developments on Convective Precipitation Retrieval

Overview of Himawari-8/9

RGB Experts and Developers Workshop - Introduction Tokyo, Japan 7-9 Nov 2017

Rosemary Munro*, Graeme Kelly, Michael Rohn* and Roger Saunders

REPROCESSING OF ATMOSPHERIC MOTION VECTORS FROM METEOSAT IMAGE DATA

CLOUD TOP, CLOUD CENTRE, CLOUD LAYER WHERE TO PLACE AMVs?

IMPACT STUDIES OF AMVS AND SCATTEROMETER WINDS IN JMA GLOBAL OPERATIONAL NWP SYSTEM

WHAT CAN WE LEARN FROM THE NWP SAF ATMOSPHERIC MOTION VECTOR MONITORING?

EUMETSAT Satellite Status

CURRENT STATUS OF THE EUMETSAT METEOSAT-8 ATMOSPHERIC MOTION VECTOR QUALITY CONTROL SYSTEM

Bias correction of satellite data at Météo-France

EUMETSAT PLANS. Dr. K. Dieter Klaes EUMETSAT Am Kavalleriesand 31 D Darmstadt Germany

Feature-tracked 3D Winds from Satellite Sounders: Derivation and Impact in Global Models

UPDATES IN THE ASSIMILATION OF GEOSTATIONARY RADIANCES AT ECMWF

Preparation for Himawari 8

Instrument Calibration Issues: Geostationary Platforms

STATUS AND DEVELOPMENT OF OPERATIONAL METEOSAT WIND PRODUCTS. Mikael Rattenborg. EUMETSAT, Am Kavalleriesand 31, D Darmstadt, Germany ABSTRACT

Transcription:

GENERATION OF HIMAWARI-8 AMVs USING THE FUTURE MTG AMV PROCESSOR Manuel Carranza 1, Régis Borde 2, Masahiro Hayashi 3 1 GMV Aerospace and Defence S.A. at EUMETSAT, Eumetsat Allee 1, D-64295 Darmstadt, Germany 2 EUMETSAT, Eumetsat Allee 1, D-64295 Darmstadt, Germany 3 Meteorological Satellite Center, Japan Meteorological Agency, 3-235 Nakakiyoto, Kiyose, Tokyo 204-0012, Japan Abstract The Meteosat Third Generation (MTG) programme is intended to provide meteorological data from the geostationary orbit as a continuation of the Meteosat Second Generation (MSG) services at least until the late 2030s. The first MTG satellite is scheduled for a launch around 2019. The programme consists of a twin satellite concept, based on three-axis stabilised platforms: four imaging satellites (MTG-I) and two sounding satellites (MTG-S). Images from the Flexible Combined Imager (FCI) instrument on board the MTG-I satellites will be used to derive Atmospheric Motion Vectors (AMVs) in a wide range of frequencies, from visible to infrared. The nested tracking algorithm developed at NOAA has been recently tested at EUMETSAT using MSG data in order to assess its potential benefits for MTG, and the results have been compared to those of CLA and OCA. In preparation for the upcoming launches, the MSG AMV processor has been adapted to Himawari-8 as a first step towards adapting it to MTG. Himawari-8 was launched in October 2014 and provides operational services since July 2015. The Advanced Himawari Imager (AHI) instrument on board Himawari-8 is a 16 channel multispectral imager, and has similar spectral and spatial characteristics to the aforementioned MTG-I FCI instrument. In this paper, preliminary results of the MTG AMV processor using Himawari-8 data are presented. MSG NESTED TRACKING RESULTS The nested tracking (NT) algorithm, described in Daniels et al. (2012), is being tested at EUMETSAT, as shown in Carranza et al. (2014). A series of tests have been recently conducted, where the nested tracking algorithm in various configurations is compared with the current MSG algorithm (using both CLA and OCA height assignment methods). A five-day period, 14 th to 18 th April 2016, was selected. Only channel 10.8 µm has been considered so far, but future tests will involve other channels as well. Figure 1: Time series of average AMV pressure for CLA (black), OCA (green), NT 16x16 (light orange), NT 20x20 (dark orange), and NT 24x24 (red). Figure 1 shows the time series of average AMV pressure for the different configurations: CLA (black),

OCA (green), NT using a target box size of 16x16 pixels (light orange), NT using 20x20 pixels (dark orange), and NT using 24x24 pixels (red). The average pressure is smallest for OCA (521 hpa), then CLA (554 hpa), and then nested tracking, with consistently larger values for larger target box sizes (589 hpa, 608 hpa and 645 hpa, respectively). Figure 2: Average AMV pressure histograms for CLA (black), OCA (green), NT 16x16 (light orange), NT 20x20 (dark orange), and NT 24x24 (red). Figure 2 shows the average AMV pressure histograms for the different configurations. There is a clear redistribution of pressures from high levels to low levels when moving from OCA to CLA to NT (in accordance with the values observed in Figure 1). Figure 3: Average AMV speed (left) and direction (right) histograms for CLA / OCA (black), NT 16x16 (light orange), NT 20x20 (dark orange), and NT 24x24 (red). Figure 3 shows the average AMV speed (left) and direction (right) histograms for the different configurations. The values for CLA and OCA are the same, because the tracking is identical in both cases. The histograms are very similar in all cases, with nested tracking yielding a larger amount of slow winds with larger target box sizes. This is in agreement with the general observation that the smaller the target box, the faster the AMVs, as shown in García-Pereda et al. (2014). AMV speed statistics Region ALL HGH MID LOW Region ALL HGH MID LOW GLO 0.49 0.72 1.08-0.12 GLO 0.45 0.41 0.48 0.42 NH 1.07 1.73 0.21 0.36 NH 0.43 0.37 0.54 0.58 TR 2.04 2.62 3.67 0.68 TR 0.49 0.47 0.64 0.35 SH -2.45-4.50-0.50-1.38 SH 0.39 0.36 0.35 0.41 Table 1: Average AMV speed bias (left) and speed NRMS (right) using CLA (GLO = global, NH = northern hemisphere, TR = tropics, SH = southern hemisphere). Speed bias values are in m/s.

Region ALL HGH MID LOW Region ALL HGH MID LOW GLO 0.16 0.51-0.36-0.30 GLO 0.44 0.40 0.51 0.41 NH 0.55 1.73-2.31-0.36 NH 0.42 0.35 0.62 0.56 TR 1.90 2.40 2.58 0.65 TR 0.47 0.46 0.57 0.33 SH -3.11-4.98-1.64-1.58 SH 0.40 0.37 0.36 0.40 Table 2: Average AMV speed bias (left) and speed NRMS (right) using OCA (GLO = global, NH = northern hemisphere, TR = tropics, SH = southern hemisphere). Speed bias values are in m/s. Table 1 and Table 2 show the average AMV speed bias and speed NRMS using CLA and OCA, respectively, as a function of the geographical area and the pressure level. Region NT 16x16 NT 20x20 NT 24x24 ALL HGH MID LOW ALL HGH MID LOW ALL HGH MID LOW GLO 0.86 1.42 1.89-0.11 0.32 0.67 0.91-0.20-0.51-0.76-0.32-0.36 NH 1.94 2.86 1.55 0.44 0.80 1.53-0.01 0.20-0.88-0.84-2.17-0.15 TR 2.51 3.40 5.26 0.79 2.06 2.88 4.38 0.70 1.11 1.26 3.27 0.61 SH -2.12-4.13 0.11-1.32-2.46-4.76-0.71-1.50-2.75-5.40-1.78-1.78 Table 3: Average AMV speed bias using nested tracking (GLO = global, NH = northern hemisphere, TR = tropics, SH = southern hemisphere). All values are in m/s. Region NT 16x16 NT 20x20 NT 24x24 ALL HGH MID LOW ALL HGH MID LOW ALL HGH MID LOW GLO 0.42 0.39 0.45 0.38 0.43 0.41 0.45 0.38 0.47 0.46 0.49 0.38 NH 0.40 0.34 0.51 0.50 0.42 0.35 0.53 0.50 0.50 0.41 0.62 0.50 TR 0.47 0.45 0.64 0.31 0.48 0.46 0.63 0.31 0.48 0.49 0.60 0.31 SH 0.38 0.35 0.32 0.37 0.39 0.38 0.33 0.38 0.42 0.43 0.36 0.38 Table 4: Average AMV speed NRMS using nested tracking (GLO = global, NH = northern hemisphere, TR = tropics, SH = southern hemisphere). Table 3 and Table 4 show the average AMV speed bias and speed NRMS, respectively, for the nested tracking algorithm in the various configurations specified. According to the tables above, the statistics are very similar for CLA and NT, especially (NT 20x20), and they are slightly better for OCA in some areas. However, the speed bias shows significant differences, not only between CLA or OCA and NT, but also among the various NT configurations themselves. Indeed, it can be noted that for nested tracking the larger the target box, the smaller the speed bias. Moreover, the average AMV speed bias is positive for CLA, OCA, NT 16x16 and NT 20x20, but it is negative for NT 24x24. This can be noted particularly in the northern hemisphere, but also in the tropics and the southern hemisphere. So far it is unclear why this is the case, but it is believed that it might have something to do with the selection of cloud-edge pixels during the height assignment process. This will be further investigated in the near future. Comparing CLA and OCA, the average AMV speed bias is in general smaller for OCA in absolute value. However OCA performs worse in the southern hemisphere and for mid-level AMVs in the northern hemisphere. In any case OCA seems to present a slight improvement in certain areas like

the tropics and at low levels. This has been confirmed by analyses done at ECMWF. The values for the speed NRMS are very similar in all cases, with slightly smaller values for nested tracking. Particularly, the values are almost identical for CLA and OCA. Computing times Algorithm 1 hour 1 day CLA / OCA 5.00 min 2.0 hours NT 16x16 11.25 min 4.5 hours NT 20x20 12.50 min 5.0 hours NT 24x24 13.13 min 5.3 hours Table 5: Average computing times for one hour and one day of data. Table 5 shows the average computing times obtained with the different algorithms for the period considered. It can be noted that nested tracking takes at least twice as much time as the current CLA/OCA algorithm. Besides, the larger the target box, the longer it takes to run the algorithm. This is a drawback with respect to CLA/OCA, especially considering that the algorithm needs to run in a nearreal-time system, where timeliness is a key element; but the impact of this is still to be assessed. HIMAWARI-8 AMVs Introduction to MTG The Meteosat Third Generation (MTG) programme consists of a twin satellite concept, based on three-axis stabilised platforms (see Figure 4): - four imaging satellites (MTG-I), to be operational for at least 20 years; - two sounding satellites (MTG-S), to be operational for at least 15.5 years. Figure 4: MTG-I (left) and MTG-S (right) concepts (courtesy of ESA). The MTG-I satellite payload comprises the Flexible Combined Imager (FCI), the Lightning Imager (LI) and the Data Collection System (DCS), whereas the MTG-S satellite payload consists of the Infrared Sounder (IRS) and the Ultra-violet, Visible and Near-Infrared Sounder (UVN). The FCI instrument on board the MTG-I satellites is a continuation of the very successful Spinning Enhanced Visible and Infrared Imager (SEVIRI) instrument on board the MSG satellites. FCI comprises a total of 16 spectral channels, with better spatial, temporal and radiometric resolution, compared to SEVIRI. Eight of the channels are in the solar spectral domain (0.4 µm to 2.1 µm), with 1 km resolution, whereas the other eight channels are in the thermal spectral domain (3.8 µm to 13.3

µm), with 2 km resolution. The design allows for Full Disk Scan (FDS), with a basic repeat cycle of 10 minutes, and a European Regional Rapid Scan (RRS) which covers one-quarter of the full disk with a repeat cycle of 2.5 minutes. Comparison of MTG s FCI and Himawari-8 s AHI instruments MTG s FCI Himawari-8 s AHI Channel Wavelength Type Spatial resol. Channel Wavelength Type Spatial resol. 1 0.44 µm VIS 1 km 1 0.47 µm VIS 1 km 2 0.51 µm VIS 1 km 2 0.51 µm VIS 1 km 3 0.64 µm VIS 1 km 3 0.64 µm VIS 0.5 km 4 0.87 µm VIS 1 km 4 0.86 µm VIS 1 km 5 0.91 µm VIS 1 km 5 1.61 µm NIR 2 km 6 1.38 µm NIR 1 km 6 2.26 µm NIR 2 km 7 1.61 µm NIR 1 km 7 3.88 µm IR 2 km 8 2.25 µm NIR 1 km 8 6.24 µm WV 2 km 9 3.80 µm IR 2 km 9 6.94 µm WV 2 km 10 6.30 µm WV 2 km 10 7.35 µm WV 2 km 11 7.35 µm WV 2 km 11 8.59 µm IR 2 km 12 8.70 µm IR 2 km 12 9.64 µm IR 2 km 13 9.66 µm IR 2 km 13 10.41 µm IR 2 km 14 10.50 µm IR 2 km 14 11.24 µm IR 2 km 15 12.30 µm IR 2 km 15 12.38 µm IR 2 km 16 13.30 µm IR 2 km 16 13.28 µm IR 2 km Table 6: MTG s FCI (left) vs Himawari-8 s AHI (right) spectral channels. Table 6 shows the spectral channels of MTG s FCI instrument (on the right) and Himawari-8 s AHI instrument (on the left). It can be appreciated that there is a direct correspondence for 14 of the 16 channels; only FCI s channels 5 and 6 are not available in AHI. The overall spectral and spatial characteristics of AHI are very similar to those of FCI, which makes Himawari-8 s data a very valuable resource in testing the future MTG AMV processor. The MTG AMV processor The MTG AMV processor is largely based on the MSG AMV processor, with the following main characteristics: - processing based on three images, instead of four; - CCC method used for tracking; - OCA used for height assignment, instead of CLA; - computation of AMV height standard deviation and error; - final AMV coordinates set to the position of the tracked feature; - no intermediate product averaging; second intermediate component used as final product instead. The MTG AMV processor has been adapted to be able to run using Himawari-8 data (images, cloud products, forecast, etc.). The algorithm has been developed so that it can be further adapted to other geostationary satellite (e.g. Meteosat First Generation) data easily. This will be done in the framework of the development of the MTG L2PF (Level 2 Processing Facility). It must be noted that the cloud product used by the MTG processor in this particular study is the one from JMA, not CLA/OCA.

Thirteenth International Winds Workshop, Monterey, California, USA, 27 June - 1 July, 2016 First results Figure 5: Channel 0.64 µm AMVs, Himawari-8 (left) vs. MTG processor (right). Figure 5 shows the channel 0.64 µm (VIS) AMV fields on 19/03/2016 at 02:00 UTC for Himawari-8 (left) and the MTG processor (right). The results are very similar in both cases, especially concerning the tracking, but there are some obvious differences. In general AMVs are located slightly higher in the atmosphere for the MTG processor than for Himawari-8 (i.e. there are more dark blue AMVs). There are also more very-low-level AMVs for MTG than for Himawari-8 (i.e. there are more deep red AMVs). This is caused by the application of an inversion correction algorithm within the MTG processor, which is not the case for the Himawari-8 processor. In any case, it must be noted that the pressure used in the calculation of the Himawari-8 AMVs is computed internally as part of the AMV process itself, whereas the pressure used by the MTG processor is directly obtained from the cloud-top pressure product provided by JMA; so the results are not expected to be 100% coincident. All in all, the general distribution of AMVs is very similar for both processors, which is a fair indication that the MTG processor works as intended. Figure 6: Channel 10.41 µm AMVs, Himawari-8 (left) vs. MTG processor (right).

Similarly, Figure 6 shows the channel 10.41 µm (IR) AMV fields on 19/03/2016 at 02:00 UTC. The results are again very similar in both cases, and the same basic conclusions can be extracted as for channel 0.64 µm. Figure 7: Channel 0.64 µm (left) and channel 10.41 µm (right) AMV speed (top row), direction (middle row) and pressure (bottom row) histograms, for Himawari-8 (red) and the MTG processor (black). Figure 7 shows the channel 0.64 µm (left) and channel 10.41 µm (right) AMV speed (top row), direction (middle row) and pressure (bottom row) histograms for the considered case. The speed and direction histograms are extraordinarily similar for both channels, which indicates that the tracking is almost identical for both processors. On the other hand, the pressure histograms show the differences and features already mentioned above (e.g. higher average pressure for MTG, larger amount of verylow-level AMVs for MTG, etc.). Particularly, the peaks observed for the MTG processor at high pressure values in the pressure histograms are caused by the use of an inversion correction algorithm, which is not employed in Himawari-8, as stated above. It is intended to process larger periods of data in the near future in collaboration with JMA and KMA, in order to obtain more meaningful conclusions. A five-day period of data has already been installed onto the development server and is ready to be processed. Additional channels (i.e. water vapour channels) will also be considered.

CONCLUSIONS MSG nested tracking results Nested tracking AMVs are generally found at a lower altitude than those obtained with CLA/OCA. The average AMV speed bias is in general smaller for OCA, especially in certain areas like the tropics and at low levels, then CLA and nested tracking. However, there are some issues with OCA (i.e. larger speed bias in the southern hemisphere) that require further investigations. The average speed NRMS is similar in all cases, with slightly smaller values for nested tracking. The average AMV speed statistics (bias and NRMS) vary strongly as a function of the altitude and the geographical area. Moreover, the speed bias is very sensitive to the target box size for nested tracking, which could be an indication that there is some issue with the selection of cloud-edge pixels during the height assignment process. Currently no best nested tracking configuration has been found, although NT 20x20 seems closest to CLA than the other cases considered (NT 16x16 and NT 24x24). Further tests will be performed in the near future using a longer period of data. A minor drawback for nested tracking is that it takes longer to compute than CLA/OCA (over twice as much). This could be an important issue to be taken into account considering its operational implementation in a near-real-time environment, where timeliness is a crucial element, but its impact is unknown as of today. Himawari-8 s AMVs The speed and direction histograms obtained for channels 0.64 µm (VIS) and 10.41 µm (IR) are very similar for Himawari-8 and the MTG processor, giving an indication that the tracking is almost identical in both cases. The pressure histograms are also similar, although they present a few important differences: - the average pressure is larger for the MTG processor than for Himawari-8; - there are more very-low-level AMVs for the MTG processor; - there seems to be no inversion correction applied to the Himawari-8 AMVs. All in all, the MTG AMV processor has been proved capable of processing Himawari-8 data. It is intended that the processor will be further adapted to other geostationary satellite data in the framework of the development of the MTG L2PF, which will make it a very useful tool for various purposes. REFERENCES Carranza, M., Borde, R. and Doutriaux-Boucher, M. (2014): Recent changes in the derivation of geostationary atmospheric motion vectors at EUMETSAT. Proceedings of the Twelfth International Winds Workshop, Copenhagen, Denmark. Daniels, J., Bresky, W., Wanzong, S., Bailey, A. and Velden, C. (2012): Atmospheric motion vectors derived via a new nested tracking algorithm developed for the GOES-R Advanced Baseline Imager (ABI). Proceedings of the Eleventh International Winds Workshop, Auckland, New Zealand. García-Pereda, J. and Borde R. (2014): The impact of the tracer size and the temporal gap between images in the extraction of atmospheric motion vectors. J. Atmos. Oceanic Technol., 31, 1761 1770.