AltiKa: a Ka-band Altimetry Payload and System for Operational Altimetry during the GMES Period
<p>Instrument block diagram.</p> ">
<p>Chirp / sequencer / time base board.</p> ">
<p>Altimeter Ka-band duplexer.</p> ">
<p>Radiometer measurement cycle (A) and Radiometer calibration unit (B).</p> ">
<p>Artist view of the SSTL platform accommodation.</p> ">
<p>Waveform shapes in Ka- and Ku-bands for a 2 m significant waveheight (SWH). (Horizontal axis: Time; Vertical axis: Return Power)</p> ">
<p>Hayne's model with associated parameters.</p> ">
<p>Pointing errors effect on Ka-band waveforms. (Horizontal axis: Range gate number; Vertical axis: Return Power)</p> ">
<p>Simulated sea to land transition echo over a topography known from a DEM.</p> ">
Abstract
:1. Introduction
2. Altimetry in the GEOSS and GMES perspectives
- verification and enforcement of international treaties, and assessment of European policies;
- enabling of sustainable exploitation and management of ocean resources (offshore oil and gas industry, fisheries…)
- improvement of safety and efficiency of maritime transport, shipping, and naval operations, as well as of national security and reduction of public health risks;
- anticipation and mitigation of the effects of environmental hazards and pollution crisis (oil spills, harmful algal blooms);
- advanced marine research for better understanding of the ocean ecosystems and their variability;
- contribution to ocean climate variability studies;
- contribution to seasonal climate prediction and its effects on coastal populations;
- support to specific services for coastal management and planning.
3. The need for high resolution ocean topography measurements to observing ocean mesoscale dynamics
- More detailed comparisons of altimetry with eddy resolving models (including comparison of higher order statistics such as frequency/wavenumber spectra and Reynolds stresses);
- Regional characterization of the three dimensional frequency/wavenumber of sea level (and velocity) and relationship with forcing fields and dynamics; Relationship with turbulence theories;
- Better characterization of seasonal/interannual variations in eddy energy and relationship with forcing fields (mean current instabilities, winds);
- Phenomenological (global) characterization of eddies (eddy census): size, rotation, diameter, life time, propagation, etc. and relationship with theories and models.
- Detailed dynamical structure of eddies. Estimation of the vorticity field (in and out of the eddy), divergence and deformation fields. Use in synergy with high resolution sea-surface temperature (SST) and ocean color images. Estimation of vertical circulation and biogeochemical coupling.
- Relation and interaction between eddies and Rossby waves.
- Eddy heat fluxes (in combination with SST remote sensing data). Contribution to the total heat fluxes.
- Eddy mean flow interaction. Role of eddies on the general circulation and climate.
4. Deriving mission requirements for ocean meso-scale applications
4.1 Merging multiple altimeter missions to map ocean mesoscale signals
4.2. Ocean mesoscale mapping capabilities
- There is a large improvement in sea level mapping when two satellites are included. For example, compared to T/P alone, the combination of T/P and ERS has a mean mapping error reduced by a factor of 4 and a standard deviation reduced by a factor of 5.
- The velocity field mapping is more demanding in terms of sampling. The U and V mean mapping errors are two to four times larger than the SLA mapping error. Only a combination of three satellites can provide a velocity field mapping error below 10% of the signal variance.
4.3. Analysis from a data assimilation perspective
- The addition of a second altimeter improves the reconstruction of the mesoscale circulation by an amount comprised between 18% and 28% depending on the mission parameters. The addition of a third satellite makes an additional improvement which is between 10% and 16%, again depending on the flight configuration.
- A three-day interval between successive analyses appears to be better than smaller (one day) or longer assimilation periods (ten or twenty days).
- The observing scenarios in favour of spatial sampling (interleaved tracks, or space offset) compete very well with those in favour of temporal sampling (time offset).
- The “best” observing scheme may be different if the variable of interest is related to the surface circulation, or to the deep fields.
- The dynamical modes intensified at intermediate depth require more than two satellites to be determined without ambiguity; in a dynamical context, the lack of information concerning these modes might affect the three-dimensional flow field globally, and therefore limit the quality of the estimation near the surface as well.
- In a three satellite constellation with a specified inclination, the increase of altitude has a negative effect on the performances.
4.4 Resulting requirements for mesoscale measurements
- The minimum requirement is to continue flying a two satellite configuration (after Jason-1 and ENVISAT) with one long-term reference mission (Jason series). A two-satellite configuration provides already a good representation of the mesoscale variability (sea level mapping errors of the order of 10% of the signal variance). However, it cannot provide a sufficiently accurate estimation of the velocity field (e.g. below 10% of the signal variance) and will not allow to track small eddies (e.g. diameter below 100/150km).
- This can be very significantly improved with an optimised three satellite configuration. Compared with the Jason-1 and ENVISAT tandem (or T/P+ERS), such configurations would allow a reduction of sea level and velocity mapping errors by a factor of about 2 to 3. It is also likely to partly resolve the large scale high frequency barotropic motions (see for instance [27]). Possible orbit configurations could be based on the Jason pattern with interleaved ground-tracks (which would yield a track separation of about 100 km at the equator and a repeat period of 10 days), or an ENVISAT orbit with all three satellites overflying the same ENVISAT ground tracks (which would yield a track separation of about 80 km at the equator and a repeat period of 35/3 days). The Jason orbit based scenario is slightly better for mapping the meridional velocity field but the ENVISAT orbit based scenario has the advantage of providing measurements at high latitudes.
- To further improve the mapping quality (which is needed for some of the envisioned scientific and operational applications), it is required to resolve the high frequency and high wavenumber signals, i.e. sample the ocean with a time sampling below 10 days and 100 km. This is likely to require a constellation of more than six satellites and/or use different concepts for satellite altimetry such as wide swath techniques as described in [4-5].
5. The AltiKa payload
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- a Ka-band altimeter (35.5-36 GHz)
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- a dual-frequency radiometer (23.8/36.8 GHz),
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- a DORIS receiver,
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- a Laser Retro-reflector Array (LRA).
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- a dual-frequency antenna (omnidirectional antenna located on the nadir face of the satellite),
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- a BDR which is composed of two DORIS chains in cold redundancy accommodated inside the same electronic box. Each DORIS chain includes a MVR (Mesure de Vitesse radiale) unit achieving beacon' signals acquisition and processing, navigation, Doppler measurements storage and formatting, electrical satellite interfaces management functions, and a USO (Ultra-Stable Oscillator) delivering a very stable 10 MHz reference which is also used by the altimeter.
6. Instrument description
Description of the different units
- The Digital and Processing Unit (DPU)The Digital unit is composed of 5 boards and the mother board.
- -
- The chirp board (see Figure 2) contains the digital chirp generator, the sequencer (ASIC), and the time base which converts the 10 MHz reference from Doris to a 160 MHz reference. There is a high recurrence from the ESA CRYOSAT/SIRAL interferometric altimeter instrument for this board.
- -
- The altimeter processing board is very similar to the POSEIDON-3 one to be flown on Jason-2. The main elements are an ADC (Analog to Digital Converter), a DAPD (Digital Amplitude Phase Demodulator), the FFT 128 points ASIC, the RAM to be used for high data rate mode, the time averaging function (accumulation of elementary waveforms in order to reduce the speckle noise)
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- The DSP board which contains the DSP21020 board (SIRAL recurrence)
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- The DC/DC board (based on SIRAL)
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- The Radiometer processing board is a new development
- The Altimeter Radiofrequency Unit (ARFU)The Altimeter Radiofrequency Unit is based on POSEIDON-2/3 modules (with no C-band).
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- The bandwidth multiplier module is adapted to 500 MHz bandwidth from POSEIDON-3.The transmission (Tx) module structure (Tx Ku + Tx Ka + SSPA module and EPC + Ka LO (Local Oscillator) is recurrent from POSEIDON-3 with some internal adaptations. The SSPA (Solid State Power Amplifier) is a new development: indeed, a 2 Watt High Power Amplifier (HPA) is needed for the link budget, which represents a state of the art device.
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- The reception (Rx) module (Rx Ku + Rx Ka + reference chain + LO Ku + deramp function) is recurrent from POSEIDON-3 with some internal adaptations.
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- The Intermediate Frequency (IF) module (Digital gain application + anti-aliasing filter + LO) is fully recurrent POSEIDON.
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- DC/DC module is based on POSEIDON-3 module
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- The duplexer (see Figure 3) is the interface between the antenna, the transmission module (Tx) and the reception module (Rx). It is similar to POSEIDON-3 Ku duplexer.
- AntennaThe antenna is composed of a fixed offset reflector with a 1 m aperture, a 0.7 m focal length and a 0.1 m offset, a three-band feed (35.5-36 GHz; 23.6-24 GHz; 36.6-37 GHz) and a sky horn pointing to deep space, thus providing a cold temperature reference to the radiometer.Separation of the radiometer polarization from the altimeter polarization, and separation of Ka altimeter and radiometer channels through discrimination of polarization have been achieved by designing dedicated polarisers.
- The main antenna performances can be summarized as follows:
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- Altimeter: gain >49.3 dB and 3-dB aperture <0.6°
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- Radiometer 3-dB aperture : 0.8° at 23.8 GHz and 0.6° at 36.8 GHz SLL <-25 dB leading to a beam efficiency of 96 to 98 %
- Radiometer Radiofrequency unitThe radiometer is a total power radiometer with direct detection. The radiometer radiofrequency unit consists of two RF receivers. These receivers will be the same as the ones used in the framework of the MEGHA-TROPIQUES mission on the MADRAS radiometer. They are developed by ASTRIUM-F.
- Radiometer calibration unitThe radiometer must be switched-off during radar altimeter emission. The radiometer measurement cycle is shown on the left panel of Figure 4. In the nominal mode, radiometer receivers measure antenna temperatures (A1 to A5). In the internal calibration mode, receivers are either connected to a sky horn pointing to deep space (cold reference) (CS) or to a load at ambient temperature (hot reference) (HS). This internal calibration can be performed every few seconds. Measured temperatures are averaged over 200 ms. The radiometer calibration unit (right panel of Figure 4) performs altimeter bandwidth filtering and commutation to calibration sources.
Instrument characteristics
Instrument main modes
- Calibration modesTwo calibration modes are available on the instrument. First, the Calibration 1 mode provides the altimeter point target response (complex spectrum). The transmission channel is looped back to the corresponding receiver input through the calibration attenuator. In order to obtain a high resolution for this response, the central frequency of the spectrum analyzer can be scanned by a step thinner than the frequency resolution. The second calibration mode, the calibration 2 mode, is designed to measure the receiver transfer function after deramp (in the frequency domain) by averaging the natural thermal noise in the reception channel over a long period. Altimeter analysis window has to be positioned to a range that guarantees the absence of returned echoes.These calibrations are available by ground telecommands. The results will be used in the ground processing in order to take into account the signature of the instrument.
- The nominal acquisition and tracking modesSeveral options are available to run these modes, as a new experimental processing feature will be implemented AltiKa (as well as on the Jason-1 POSEIDON-3 altimeter): the coupling of the altimeter with the so-called DORIS/DIODE navigator (see [31] for instance, for a description and performances of the DIODE navigator onboard Jason-1). Indeed satellite position and velocity bulletins from this DORIS/DIODE navigator are available on board every 10 seconds. The idea is to use this information in the altimeter processing, either in acquisition or in tracking mode. The aim of this new mode is to improve the behavior of the instrument in coastal regions and above in-land waters. It shall be noted that the GLAS (Geoscience Laser Altimeter System) instrument onboard the ICESat platform already uses GPS (Global Positioning System) measurements and an onboard Digital Elevation Model (DEM) to control capture of the digitized laser echo return waveform on every pulse [32].
In terms of the acquisition mode
In terms of the tracking mode
Accommodation
7. Rationale for ka-band selection
Technical aspects
Ionospheric aspects
Rain issues
Minimizing penetration issues over some types of continental surfaces
In terms of radiometer instrument
8. Expected altimeter performances
Measurements objectives and principle
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- the range, standing for the distance measurement between the satellite and the sea surface,
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- the significant wave height (SWH),
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- the backscatter coefficient σ0 which is directly related to the surface wind,
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- thermal noise and antenna mispointing can also be derived from the measurement.
Ka-band waveform generation from a simulator run over ocean and non ocean surfaces
Performance of the instrument acquisition phase
Performance of the instrument tracking phase
Range bias and noise over ocean-like surfaces
9. Perspectives for an AltiKa mission and conclusion
Acknowledgments
References and Notes
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Parameter | Value |
---|---|
Altimeter band | 35.75 GHz ± 250 MHz |
Pulse bandwidth | 500 MHz |
Pulse duration | 110 μs |
Altimeter Pulse repetition frequency | 4 kHz |
Echo averaging (altimeter) | 25 ms |
Spectrum analyser (altimeter) | 128 points |
Altimeter Link budget | 11 dB (sigma naught = 6.5 dB) |
Antenna diameter | 1000 mm |
Focal length | 700 mm |
Offset | 100 mm |
Radiometer band | 23.8 GHz ± 200 MHz 36.8 GHz ± 200 MHz |
Radiometric resolution | <0.5 K |
Radiometric accuracy | <3 K |
Radiometer averaging | 200 ms |
Mass (altimeter+radiometer) | <33 kg |
Power consumption (altimeter+radiometer) | <76 W |
rate (mm/h) | 0.1 | 0.5 | 1 | 2 | 5 |
Attenuation due to rain (dB/km) | 0.02 | 0.1 | 0.2 | 0.4 | 1 |
Attenuation due to snow (dB/km) | 0.002 | 0.015 | 0.06 | 0.2 | 1.5 |
Latitude | 0° | 30° | 45° | 60° | 75° |
Maximum thickness 99% of time (km) | 4.5 | 3.5 | 2 | 0.5 | 0.2 |
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Share and Cite
Vincent, P.; Steunou, N.; Caubetq, E.; Phalippou, L.; Rey, L.; Thouvenot, E.; Verron, J. AltiKa: a Ka-band Altimetry Payload and System for Operational Altimetry during the GMES Period. Sensors 2006, 6, 208-234. https://doi.org/10.3390/s6030208
Vincent P, Steunou N, Caubetq E, Phalippou L, Rey L, Thouvenot E, Verron J. AltiKa: a Ka-band Altimetry Payload and System for Operational Altimetry during the GMES Period. Sensors. 2006; 6(3):208-234. https://doi.org/10.3390/s6030208
Chicago/Turabian StyleVincent, Patrick, Nathalie Steunou, Eric Caubetq, Laurent Phalippou, Laurent Rey, Eric Thouvenot, and Jacques Verron. 2006. "AltiKa: a Ka-band Altimetry Payload and System for Operational Altimetry during the GMES Period" Sensors 6, no. 3: 208-234. https://doi.org/10.3390/s6030208
APA StyleVincent, P., Steunou, N., Caubetq, E., Phalippou, L., Rey, L., Thouvenot, E., & Verron, J. (2006). AltiKa: a Ka-band Altimetry Payload and System for Operational Altimetry during the GMES Period. Sensors, 6(3), 208-234. https://doi.org/10.3390/s6030208