Estimating Ocean Vector Winds and Currents Using a Ka-Band Pencil-Beam Doppler Scatterometer
Abstract
:1. Introduction
2. Materials and Methods
2.1. The DopplerScatt Instrument
2.2. Current Measurement Principle
2.3. Estimation of Pulse-Pair Phase
2.4. Processing to and Radial Velocities
2.5. Estimating the Surface Velocities and Errors
2.6. Estimating the Wind Speed and Direction
2.7. Calibration
2.8. Radial Velocity Calibration
3. Results
3.1. Ocean Temporal Correlation
3.2. Wind Geophysical Model Function
3.3. Wind Retrieval Results
3.4. Surface Current Geophysical Model Function
3.5. Ocean Current Retrieval Results
4. Discussion
5. Conclusions
- Development of an end-to-end measurement model including several effects, such as quantifying the impact of cross-section variations, not previously reported.
- Detailed examination of the pulse-pair estimation algorithm, including deriving an error estimator for the Doppler velocity and validating it with experimental data.
- Development of an end-to-end error budget including both random and systematic errors. The error model was validated against measurements and showed that the DopplerScatt instrument had good stability and noise performance for both and Doppler velocities.
- Development of new calibration techniques to remove errors caused by uncertainties in the antenna pointing and other systematic (e.g., model function) errors.
- Development of a wind estimation algorithm that uses backscatter and Doppler velocities in an innovative way so that winds vectors can be estimated using a single beam, rather than the traditional two-beam architecture.
- Determined the ocean correlation time at Ka-band as a function of wind speed. The correlation times observed (>2 ms) indicate that this measurement is scalable to spaceborne applications with reasonable performance.
- Developed a Ka-band V-pol GMF which shows an overall sensitivity to wind speed similar to the one predicted by the Ku-band NSCAT GMF. The main difference between the two GMFs is in the much greater upwind cross-wind modulation seen at Ka-band, which will improve wind direction estimation. The observed modulation also exceeds the one observed at Ka-band from a platform in the Black Sea by Yurovsky et al. [23], but, due to platform geometry, the cross-wind sampling may not have been optimal for these incidence angles. Yurovsky et al. also have a global analytic form for their GMF that may constrain the modulation somewhat, and comparisons against actual data points (Yurovsky, personal communication) show better agreement with DopplerScatt observations than the analytic formula. Resolving these discrepancies will require additional data, but the current results, as well as those of Yurovsky et al., show that there is sufficient wind speed and direction sensitivity at Ka-band to obtain wind estimation performance similar to that of Ku-band scatterometers, such as QuikSCAT. Formal errors in the estimated wind speed and direction indicate performance better than spaceborne scatterometers, but the limited comparison against buoy data shows similar performance, possibly pointing to needed improvements in the GMF, possibly including current effects.
- Examined the local wind dependent part of the Doppler velocity signature. While the signature is roughly aligned with the wind direction, as for other frequencies, it deviates slightly from the true wind direction, in a fashion consistent with expected direction differences consistent with those expected for the sum of Lagrangian and Eulerian wind-driven currents [48]. However, the wind speed dependence of the Doppler currents is quite different from the one observed at C-band [8,13], where the Doppler velocity is nearly linearly dependent on wind speed. By contrast, at Ka-band, there is only a linear dependence for low winds, and the magnitude of the dependence stabilizes after a wind speed of about 4.5 m/s. In addition, the shape of the wind-dependent response is close to a sinusoid with azimuth angle; i.e., the expected response of a constant velocity vector, albeit, one that seems to propagate at a small angle to the wind direction, consistent with wind-drift measurements with HF radars [48]. This behavior was explained as due to the modulation of the backscatter cross section through a modulation transfer function (MTF) consistent with those previously observed at Ka-band. The lack of dependence of the wind correction with respect to wind speed makes the estimation of the non-wind driven part of the surface current much less sensitive to wind speed variations, although still sensitive to wind direction errors. Given that the wind-dependent correction can be made with the same instrument used for estimating the Doppler velocities, this combination is scalable to a spaceborne instrument.
Acknowledgments
Author Contributions
Conflicts of Interest
Appendix A
Appendix B
Appendix B.1. Estimator Derivation
Appendix B.2. Cramér–Rao Bound
Appendix C
Coefficient | Value | Standard Error |
---|---|---|
−54.278 | 6.527 | |
0.259 | 0.117 | |
16.361 | 8.442 | |
−0.267 | 0.152 | |
15.753 | 9.122 | |
−0.236 | 0.164 | |
39.533 | 6.892 | |
−0.318 | 0.125 | |
−25.563 | 8.779 | |
0.456 | 0.159 | |
−6.636 | 9.679 | |
0.127 | 0.175 |
Appendix D
1.5 | ||||||
2.0 | ||||||
2.5 | ||||||
3.0 | ||||||
3.5 | ||||||
4.0 | ||||||
4.5 | ||||||
5.0 | ||||||
5.5 | ||||||
6.0 | ||||||
6.5 | ||||||
7.0 | ||||||
7.5 | ||||||
8.0 | ||||||
8.5 | ||||||
9.0 | ||||||
9.5 | ||||||
10.0 | ||||||
10.5 | ||||||
11.0 | ||||||
11.5 | ||||||
12.0 | ||||||
12.5 | ||||||
13.0 | ||||||
13.5 | ||||||
14.0 | ||||||
14.5 | ||||||
15.0 | ||||||
15.5 |
Appendix E
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Parameter | Value |
---|---|
Peak Power | 100 W |
3 dB Azimuth Beamwidth | |
3 dB Azimuth Footprint | 600 m |
3 dB Elevation Beamwidth | |
3 dB Elevation Footprint | 1.4 km |
Nominal boresight angle | |
Burst Repetition Frequency | 4.5 kHz |
Inter-pulse Period | 18.4 s |
Chirp length | 6.4 s |
Pulses per burst | 4 |
Pulse Bandwidth | 5 MHz |
Azimuth Looks | 100 |
Range Resolution | 30 m |
Resolution in Elevation | 36.2 m |
Resolution in Azimuth | 485 m |
Nominal Platform Altitude | 8.53 km |
Nominal Swath | 25 km |
Scan Rate | 12 RPM |
Noise Equivalent | −37 dB |
Parameter | Accuracy |
---|---|
True Heading | 5 mdeg |
Roll & Pitch | 2.5 mdeg |
Attitude Drift | <0.01 deg/h |
Velocity | 0.5 cm/s |
Horizontal Position | <10 cm |
Vertical Position | <20 cm |
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Rodríguez, E.; Wineteer, A.; Perkovic-Martin, D.; Gál, T.; Stiles, B.W.; Niamsuwan, N.; Rodriguez Monje, R. Estimating Ocean Vector Winds and Currents Using a Ka-Band Pencil-Beam Doppler Scatterometer. Remote Sens. 2018, 10, 576. https://doi.org/10.3390/rs10040576
Rodríguez E, Wineteer A, Perkovic-Martin D, Gál T, Stiles BW, Niamsuwan N, Rodriguez Monje R. Estimating Ocean Vector Winds and Currents Using a Ka-Band Pencil-Beam Doppler Scatterometer. Remote Sensing. 2018; 10(4):576. https://doi.org/10.3390/rs10040576
Chicago/Turabian StyleRodríguez, Ernesto, Alexander Wineteer, Dragana Perkovic-Martin, Tamás Gál, Bryan W. Stiles, Noppasin Niamsuwan, and Raquel Rodriguez Monje. 2018. "Estimating Ocean Vector Winds and Currents Using a Ka-Band Pencil-Beam Doppler Scatterometer" Remote Sensing 10, no. 4: 576. https://doi.org/10.3390/rs10040576