Assessment of Satellite-Based Precipitation Measurement Products over the Hot Desert Climate of Egypt
Abstract
:1. Introduction
2. Case Study
3. Data
3.1. Ground Observations
3.2. Satellite-Based Gridded Daily Precipitation Datasets
4. Methodology
5. Results
5.1. Validation Based on Rainfall Amount
5.2. Validation Based on Occurrences of Rainfall
6. Discussion
7. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Study | Study Area | Climate Type | Product | Main Findings |
---|---|---|---|---|
Mahmoud, et al. [33] | Saudi Arabia | Hot desert | IMERG early, late and FR | FR performed better than earlier runs, with high bias in some regions |
Dinku, et al. [34] | North Africa | Arid and Semi-arid | GSMaP and 6 other products | The probability of detection was ≤20% and false alarm ratio ≥84% |
Basheer and Elagib [35] | South Sudan | Semi-arid and sub-humid | CHIRPS v2.0 and 5 other products | On a monthly and annual scale, CHIRPS was ranked as the 2nd best with high RMSE. |
Kazamias et al. [36] | Greece | Mediterranean | IMERG FR and TRMM 3B42 | IMERG showed a strong bias in the west and a good overall correlation (0.60) |
Retalis et al. [37] | Cyprus | Mediterranean | IMERG | IMERG underestimates rainfall |
Katsanos et al. [38] | Cyprus | Mediterranean | CHIRPS | CHIRPS had good correlation but overestimated rainfall |
Caracciolo et al. [18] | Sardinia and Sicily (Italy) | Mediterranean | IMERG early and FR | IMERG showed a high correlation (0.8) on a daily level with a systematic bias as rainfall amount increased |
Tuo et al. [39] | Adige River basin (Italy) | Humid subtropical, and continental | CHIRPS and TRMM | CHIRPS rainfall produced satisfactory streamflow estimation |
WMO ID | % Missing Data | Count of Wet Days | Max Rainfall (mm/Day) | WMO ID | % Missing Data | Count of Wet Days | Max Rainfall (mm/Day) |
---|---|---|---|---|---|---|---|
623050 | 15% | 53 | 70.1 | 624170 | 5% | 7 | 8.89 |
623060 | 2% | 103 | 50.04 | 624190 | 24% | 1 | 0.25 |
623090 | 11% | 100 | 39.12 | 624200 | 3% | 8 | 102.11 |
623180 | 3% | 141 | 252.22 | 624230 | 9% | 1 | 0.51 |
623250 | 4% | 113 | 71.88 | 624320 | 31% | 1 | 72.14 |
623330 | 3% | 81 | 90.93 | 624350 | 3% | 2 | 1.02 |
623370 | 7% | 77 | 23.11 | 624400 | 6% | 16 | 101.09 |
623570 | 13% | 15 | 70.1 | 624520 | 10% | 27 | 102.11 |
623660 | 2% | 61 | 99.06 | 624550 | 3% | 38 | 7.11 |
623870 | 3% | 9 | 76.2 | 624580 | 3% | 24 | 6.1 |
623930 | 2% | 4 | 8.89 | 624590 | 6% | 17 | 99.06 |
623980 | 14% | 1 | 7.87 | 624630 | 2% | 16 | 102.11 |
624030 | 7% | 4 | 3.05 | 624650 | 5% | 2 | 1.02 |
624050 | 2% | 15 | 50.04 | 624760 | 31% | 3 | 7.87 |
624140 | 4% | 7 | 14.99 | - | - | - | - |
Index | Range | Optimal Value | |
---|---|---|---|
(1) | 0 to +∞ | 0 | |
(2) | −∞ to 1 | 1 | |
(3) | 0 to 1 | 1 |
Index | Optimal Value | |
---|---|---|
(4) | 1 | |
(5) | 0 | |
(6) | 1 | |
(7) | 1 |
Po ≥ Threshold | Po < Threshold | |
---|---|---|
Ps ≥ Threshold | Hits | False Alarms |
Ps < Threshold | Misses | Correct Negatives |
Rainfall Intensity Class | Daily Rainfall Threshold |
---|---|
All-events | No threshold |
No/tiny rainfall | P < 1 mm |
Light rainfall | 1 mm ≤ P < 2 mm |
Low moderate rainfall | 2 mm ≤ P < 5 mm |
High moderate rainfall | 5 mm ≤ P < 10 mm |
Heavy rainfall | P ≥ 10 mm |
Rainfall Intensity Class | Count of Events |
---|---|
All-events | 45,473 |
No/tiny rainfall | 44,803 |
Light rainfall | 140 |
Low–moderate rainfall | 286 |
High–moderate rainfall | 151 |
Heavy rainfall | 93 |
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Nashwan, M.S.; Shahid, S.; Wang, X. Assessment of Satellite-Based Precipitation Measurement Products over the Hot Desert Climate of Egypt. Remote Sens. 2019, 11, 555. https://doi.org/10.3390/rs11050555
Nashwan MS, Shahid S, Wang X. Assessment of Satellite-Based Precipitation Measurement Products over the Hot Desert Climate of Egypt. Remote Sensing. 2019; 11(5):555. https://doi.org/10.3390/rs11050555
Chicago/Turabian StyleNashwan, Mohamed Salem, Shamsuddin Shahid, and Xiaojun Wang. 2019. "Assessment of Satellite-Based Precipitation Measurement Products over the Hot Desert Climate of Egypt" Remote Sensing 11, no. 5: 555. https://doi.org/10.3390/rs11050555
APA StyleNashwan, M. S., Shahid, S., & Wang, X. (2019). Assessment of Satellite-Based Precipitation Measurement Products over the Hot Desert Climate of Egypt. Remote Sensing, 11(5), 555. https://doi.org/10.3390/rs11050555