Net Cloud Thinning, Low-Level Cloud Diminishment, and Hadley Circulation Weakening of Precipitating Clouds with Tropical West Pacific SST Using MISR and Other Satellite and Reanalysis Data
Abstract
:1. Introduction
- (1)
- Use the TWP domain to test how SST distribution properties such as kurtosis change with domain-mean SST, and how these changes influence local cloud-precipitation-SST relationships and the local Hadley Circulation. Key TOA cloud effects examined are cloud albedo and net cloud forcing.
- (2)
- Quantify the importance of local SST gradients versus SST in determining total high cloud amount locally and away from the highest SSTs, as well as the convective SST onset as a function of large-scale mean SST.
- (3)
- As in Kubar et al. [2], investigate the cloud structure of precipitating systems by constructing Z-α histograms; how do these change with convective strength and domain-mean SST?
- (4)
- Investigate the extent to which local and domain-wide TWP high cloud changes can be attributed to associated ω500/large-scale dynamics changes, versus those that may be related to either an Iris Effect or thermodynamic effects associated with horizontal SST structure changes.
2. Observational and Reanalysis Datasets
2.1. MISR
2.2. CERES (Clouds and the Earth’s Radiant Energy System)
2.3. TRMM 3b42
2.4. ERA-Interim
3. Cloud Definitions and Domain-Choice
4. Results and Discussion
4.1. Distribution of SST, Clouds, Rain Fraction, Albedo, and Circulation vs. Large-Scale SST
4.2. Relationships vs. SSTlocal as a Function of Mean SSTTWP
4.3. Local Cloud-Rain Rate Relationships for TWP SST Quintiles
4.4. Z-α Histograms of Cloud Fraction and Net Cloud Forcing
- (1)
- Regardless of domain-mean-SST, as precipitation increases, high cloud fraction increases, with a shift towards brighter, more reflective clouds, with thick high clouds being more abundant during heavily raining systems. The highest TWP SST quintile also has slightly more thick anvil cloud than lower TWP SSTs for heavily raining systems. Regardless of SST, these clouds are very deep, with tops between 14–15 km.
- (2)
- With increasing rain rate, there is an increase, regardless of SST, of mid-level presumably congestus clouds, centered between 6–7 km. These are moderately reflective clouds, with a mean albedo of approximately 0.4. Thicker low clouds become less abundant with increasing precipitation category.
- (3)
- The most significant change from cool domain-mean SST to warm domain-mean SST is a decrease in mid-level clouds and a stronger decrease in low-level clouds, regardless of precipitation category. The results for the different cloud categories as a function of domain-mean SST and precipitation category are summarized in Table 1.
4.5. Tropical West Pacific Domain Mean Relationships
4.6. Robustness and Representativeness of Findings
5. Conclusions
- (1)
- For any domain-mean TWP SST, high cloud fraction of raining clouds increases both with local SST and rain rate, with maximum anvil+cirrus CF maximizing as local SSTs reach 30 °C, and slightly more anvil+cirrus clouds for lower domain-mean TWP periods (e.g., the 0th–20th domain-mean SST quintile versus the 80th–100th domain-mean SST quintile). This coincides with stronger ascent near SSTs of 29–30 °C during lower TWP SST quintiles, but weaker ascent over locally cooler SSTs off the equator compared to mean warm TWP periods.
- (2)
- The net domain-effect changes in the local SST/cloud/precipitation effects is a redistribution of high clouds as a function of domain-mean TWP SST, rather than a net change such that a zero-slope assumption for the regression between TWP SST and TWP high CF cannot be rejected. When only raining portions of the grid are considered, there is an increase of high CF per degree of TWP SST warming of 10% deg−1. When only the southern SST is indexed, however, there is a net increase of high cloud amount with SST.
- (3)
- As the TWP warms, the mean net cloud forcing increases (e.g., becomes less negative) by about 10 W m−2 per degree of TWP warming for mean raining grids, though locally cloud systems have even more profound differences as a function of mean TWP SST. Where high cloud systems are more prolific, at SSTs around 29°–30°, the TOA net forcing is much less negative for the fifth TWP SST quintile compared the lowest TWP SST quintile, at around -8 W m−2 compared to −30 W/m2, when averaged over all rain rates. This is due primarily to a greater portion of cirrus clouds, and somewhat less reflective anvil clouds, and fewer moderately thick low and middle clouds, perhaps due in part to the weaker low-level convergence over high SSTs by 0.5 – 1.0 × 10−6 s−1 (highest versus lowest TWP SST quintiles).
- (4)
- For a given local rain rate, local anvil cloud fraction is the same for all five TWP SST quintiles, making anvil cloud amount a ‘universal’ proxy for rain rates in the TWP. Since anvil clouds are defined as high clouds with albedos between 0.3 and 0.6, this relationship has ramifications for validation studies of precipitation sensors, as an albedo-based high cloud definition can quantify rain rates over a range of local and large-scale SSTs. In contrast, cirrus clouds are more abundant for a given heavy rain rate (> 10 mm day−1) as the entire domain warms, and this characteristic of convection, along with slightly less thick cloud, especially for the most heavily raining clouds, makes deep convective systems less reflective as the domain-mean SST warms.
Author Contributions
Funding
Acknowledgements
Conflicts of Interest
References
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SST Range of Domain-Mean SST | Precipitation (0.0th–32nd Percentile) | Rain Rate (32nd–68th Percentile) | Rain Rate (68th–99.9th Percentile) |
---|---|---|---|
Cirrus, Anvil, Thick, (Total High CF) | Cirrus, Anvil, Thick, (Total High CF) | Cirrus, Anvil, Thick, (Total High CF) | |
26.70 °C < SST < 27.09 °C | 0.086, 0.116, 0.005, (0.207) | 0.081, 0.189, 0.025, (0.295) | 0.076, 0.240, 0.0893, (0.405) |
27.09 °C < SST < 27.29 °C | 0.077, 0.133, 0.009, (0.219) | 0.078, 0.205, 0.036, (0.319) | 0.076, 0.244, 0.120, (0.440) |
27.29 °C < SST < 27.41 °C | 0.076, 0.121, 0.012, (0.209) | 0.082, 0.196, 0.041, (0.320) | 0.084, 0.255, 0.115, (0.454) |
27.41 °C < SST < 27.51 °C | 0.089, 0.132, 0.013, (0.234) | 0.089, 0.211, 0.031, (0.331) | 0.096, 0.258, 0.107, (0.461) |
27.51 °C < SST < 27.88 °C | 0.096, 0.139, 0.011, (0.246) | 0.094, 0.216, 0.030, (0.340) | 0.093, 0.263, 0.108, (0.464) |
Middle, Low Clouds, (Total Mid + Low CF) | Middle, Low Clouds, (Total Mid + Low CF) | Middle, Low Clouds, (Total Mid + Low CF) | |
26.70 °C < SST < 27.09 °C | 0.119, 0.356, (0.475) | 0.157, 0.346, (0.503) | 0.222, 0.263, (0.485) |
27.09 °C < SST < 27.29 °C | 0.118, 0.332, (0.450) | 0.166, 0.310, (0.476) | 0.234, 0.234, (0.468) |
27.29 °C < SST < 27.41 °C | 0.119, 0.333, (0.452) | 0.150, 0.296, (0.446) | 0.205, 0.228, (0.433) |
27.41 °C < SST < 27.51 °C | 0.105, 0.300, (0.405) | 0.145, 0.271, (0.416) | 0.201, 0.212, (0.413) |
27.51 °C < SST < 27.88 °C | 0.100, 0.295, (0.395) | 0.128, 0.272, (0.400) | 0.190, 0.216, (0.406) |
TWP Variable Pairs | October 2002–September 2004 | October 2002–September 2003 (Mod. El Nino) | October 2003–September 2004 (Near-Neutral Year) |
---|---|---|---|
SSTTWP, TRMM (Raining Only) | Rain rate decreases by 4% deg−1 | Rain rate decreases by 8.5% deg−1 | Null Hypothesis of Zero Rain Rate Slope cannot be rejected |
SSTTWP, MISR High CF (All) | Null Hypothesis of Zero High CF Slope with SST cannot be rejected | Null Hypothesis of Zero High CF Slope with SST cannot be rejected | High CF Decreases by 14% deg−1 |
SSTTWP, MISR High CF (Raining Only) | High CF Increases by 10% deg−1 | High CF Increases by 15% deg−1 | Null Hypothesis of Zero High CF Slope with SST cannot be rejected |
SSTTWP, MISR Cirrus (All) | Cirrus CF Increases by 14% deg−1 | Cirrus CF Increases by 17% deg−1 | Null Hypothesis of Zero Cirrus CF Slope cannot be rejected |
SSTTWP, MISR Cirrus (Raining Only) | Cirrus CF Increases by 28% deg−1 | Cirrus CF Increases by 32% deg−1 | Cirrus CF Increases by 22% deg−1 |
SSTTWP, Low+Middle CF (Raining Only) | Low+Mid CF Decreases by 10% deg−1 | Low+Mid CF Decreases by 11% deg−1 | Low+Mid CF Decreases by 8% deg−1 |
SSTTWP, TOA Cloud Albedo (Raining Only) | Cloud Albedo Decreases by 14% deg−1 | Cloud Albedo Decreases by 12% deg−1 | Cloud Albedo Decreases by 17% deg−1 |
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Kubar, T.L.; Jiang, J.H. Net Cloud Thinning, Low-Level Cloud Diminishment, and Hadley Circulation Weakening of Precipitating Clouds with Tropical West Pacific SST Using MISR and Other Satellite and Reanalysis Data. Remote Sens. 2019, 11, 1250. https://doi.org/10.3390/rs11101250
Kubar TL, Jiang JH. Net Cloud Thinning, Low-Level Cloud Diminishment, and Hadley Circulation Weakening of Precipitating Clouds with Tropical West Pacific SST Using MISR and Other Satellite and Reanalysis Data. Remote Sensing. 2019; 11(10):1250. https://doi.org/10.3390/rs11101250
Chicago/Turabian StyleKubar, Terence L., and Jonathan H. Jiang. 2019. "Net Cloud Thinning, Low-Level Cloud Diminishment, and Hadley Circulation Weakening of Precipitating Clouds with Tropical West Pacific SST Using MISR and Other Satellite and Reanalysis Data" Remote Sensing 11, no. 10: 1250. https://doi.org/10.3390/rs11101250
APA StyleKubar, T. L., & Jiang, J. H. (2019). Net Cloud Thinning, Low-Level Cloud Diminishment, and Hadley Circulation Weakening of Precipitating Clouds with Tropical West Pacific SST Using MISR and Other Satellite and Reanalysis Data. Remote Sensing, 11(10), 1250. https://doi.org/10.3390/rs11101250