Hindcasting and Forecasting of Surface Flow Fields through Assimilating High Frequency Remotely Sensing Radar Data
Abstract
:1. Introduction
2. Methodologies
2.1. High Frequency Radar System
2.2. Numerical Model
2.3. Data Assimilation
2.4. Implementation of Data Assimilation
3. Sensitivity Experiments
3.1. Tests of Nudging Parameters
3.2. Tests of Data Assimilation Cycle Lengths
4. Forecast Assessments of Assimilation Cycle Lengths
4.1. Assessment of Mean Surface Flow Fields
4.2. Data Assimilation Skill Score Assessment
4.3. Averaaged Kinetic Energy Assessment
4.4. Assessment of Surface Velocity Components
4.5. Assessment of Forecasted Surface Flow Fields
5. Discussion
6. Conclusions
- (1)
- Sensitivity tests performed on the nudging data assimilation parameters suggest that an influence depth of 4 m and an assimilation timescale of 1800 s were the suitable values for developing the data assimilation system for Galway Bay based on RMSE analysis during a hindcasting period. Further analysis indicated that surface flow fields were more sensitive to the depth of influence than the assimilation time scale. This is the first study that has investigated the effects of the system parameters on results, and to provide guidance for future application of this algorithm.
- (2)
- The research showed that modelling performance was also quite sensitive to data assimilation cycle lengths. Assimilation of radar data at each model computational timestep significantly improved model forecasting in comparison with using longer data assimilation cycle lengths. The RMSE of the averaged velocity components over a half-day forecasting period between the radar data and the best nudging data assimilation model was smaller than model forecasts using longer cycle lengths. The averaged east–west and north–south velocity components from the best model (NDA21) were improved by 10% and 15%, compared with the “free run”, respectively. However, there were no distinct improvements in RMSE between the other models with longer data assimilation cycle lengths. The results presented herein demonstrated better performance than all other published results in investigating this area. Additionally, results indicated that the same nudging assimilation parameters can be used for models with different cycle lengths.
- (3)
- The calculation of surface flow fields were enhanced during the forecasting period when data assimilation was employed at each model computational timestep. Surface flow fields from other assimilation models with longer cycle lengths did not significantly improve compared with model NDA0. This was the first time such a sensitivity analysis was performed.
- (4)
- The values of DASS generated during this research proved that model NDA21 improved model performance by 26% and 33% for east–west and north–south velocity components, respectively, during a +6 h forecasting period for Galway Bay; these were significant improvements.
- (5)
- Analysis of AKE further proved that updating model background states at each model computational timestep resulted in forecasting improvements. Correlation of AKE between the best nudging data assimilation model NDA21 and the radar data was improved by 12% compared with model NDA0 over a two-day forecasting. The improvement, herein, was comparable with other studies.
- (6)
- Time series graphs at a location within Galway Bay showed that implementation of data assimilation at each model step using interpolated radar data greatly enhanced both surface velocity components during forecasting period, especially for the north–south surface velocity component. Results from other assimilation models with longer data assimilation cycle lengths did not generate distinct improvements on the model forecasts; they followed the same trend as the “free run”.
- (7)
- Surface flow fields at a representative measurement timestep, 03:00 Julian Day 228, show that the best assimilation model produced significantly better surface flow circulation through the domain than the “free run” did. Improvements of vector directions in the domain were in the order of 20% at this time, compared with the “free run”.
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Model | Zd (m) | Ta (s) | RMSE (u, cm/s) | RMSE (v, cm/s) | RMSE (u, v, cm/s) |
---|---|---|---|---|---|
NDA0 | - | - | 8.71 | 7.70 | 11.62 |
NDA1 | 3 | 1200 | 79.61 | 67.79 | 104.56 |
NDA2 | 4 | 1200 | 8.13 | 7.13 | 10.81 |
NDA3 | 5 | 1200 | 8.11 | 7.15 | 10.81 |
NDA4 | 6 | 1200 | 8.44 | 7.45 | 11.26 |
NDA5 | 3 | 1500 | 63.26 | 53.93 | 83.13 |
NDA6 | 4 | 1500 | 7.88 | 6.92 | 10.48 |
NDA7 | 5 | 1500 | 8.22 | 7.25 | 10.96 |
NDA8 | 6 | 1500 | 8.50 | 7.50 | 11.33 |
NDA9 | 3 | 1800 | 52.43 | 44.69 | 68.89 |
NDA10 | 4 | 1800 | 7.80 | 6.86 | 10.39 |
NDA11 | 5 | 1800 | 8.29 | 7.31 | 11.06 |
NDA12 | 6 | 1800 | 8.53 | 7.53 | 11.38 |
NDA13 | 3 | 2100 | 44.71 | 38.14 | 58.77 |
NDA14 | 4 | 2100 | 7.81 | 6.86 | 10.40 |
NDA15 | 5 | 2100 | 8.35 | 7.37 | 11.14 |
NDA16 | 6 | 2100 | 8.55 | 7.56 | 11.41 |
NDA17 | 3 | 2400 | 38.97 | 33.26 | 51.24 |
NDA18 | 4 | 2400 | 7.84 | 6.90 | 10.44 |
NDA19 | 5 | 2400 | 9.39 | 7.40 | 11.96 |
NDA20 | 6 | 2400 | 8.57 | 7.57 | 11.43 |
Model | NDA0 | NDA21 | DA22 | NDA23 | NDA24 | NDA10 |
---|---|---|---|---|---|---|
Cycle Length (minutes) | - | MS * | 1 | 5 | 15 | 60 |
RMSE (u, cm/s) | 8.2131 | 7.3618 | 8.2189 | 8.2087 | 8.2138 | 8.2054 |
RMSE (v, cm/s) | 6.0902 | 5.2062 | 6.1026 | 6.093 | 6.0938 | 6.0956 |
RMSE (u, v, cm/s) | 10.2247 | 9.0167 | 10.2368 | 10.2229 | 10.2275 | 10.2218 |
Z (m) | (z/zd) | Exp (z/zd) | λ |
---|---|---|---|
5 | 1.25 | 3.49 | 0.00 |
15 | 3.75 | 42.52 | 0.02 |
20 | 5.00 | 148.41 | 0.08 |
25 | 6.25 | 518.01 | 0.29 |
30 | 7.50 | 1808.04 | 1.00 |
35 | 8.75 | 6310.69 | 3.51 |
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Ren, L.; Hartnett, M. Hindcasting and Forecasting of Surface Flow Fields through Assimilating High Frequency Remotely Sensing Radar Data. Remote Sens. 2017, 9, 932. https://doi.org/10.3390/rs9090932
Ren L, Hartnett M. Hindcasting and Forecasting of Surface Flow Fields through Assimilating High Frequency Remotely Sensing Radar Data. Remote Sensing. 2017; 9(9):932. https://doi.org/10.3390/rs9090932
Chicago/Turabian StyleRen, Lei, and Michael Hartnett. 2017. "Hindcasting and Forecasting of Surface Flow Fields through Assimilating High Frequency Remotely Sensing Radar Data" Remote Sensing 9, no. 9: 932. https://doi.org/10.3390/rs9090932
APA StyleRen, L., & Hartnett, M. (2017). Hindcasting and Forecasting of Surface Flow Fields through Assimilating High Frequency Remotely Sensing Radar Data. Remote Sensing, 9(9), 932. https://doi.org/10.3390/rs9090932