Abstract
In this study, we show that the annual monsoon depression (MD) frequency making landfall on the east coast of India shows a statistically significant decreasing trend for the period 1979–2010. Importantly, about 80% of this fall is confined to the south of 20°N. To understand the plausible reason(s) for the weakening frequency of MDs in the southern Bay of Bengal in recent decades, we examine some of the seasonal average in-situ atmospheric parameters important for tropical cyclogenesis; we use various observational data from the IMD and three atmospheric climate reanalysis datasets to account for possible quality constraints in them. Our findings suggest that the observed weakening of MD frequency south of 20°N in the Bay of Bengal since 1950s is likely due to a declining trend in the mid-tropospheric relative humidity over the Indian region. Our numerical sensitivity experiments support this finding.
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Introduction
Monsoon depressions (MDs) in the Bay of Bengal (BoB) are the most important synoptic scale transient disturbance associated with the Indian summer monsoon (June through September; henceforth JJAS) and contribute about 10% of the seasonal rainfall1. The observed long term average number of depressions per year is roughly 7 ~ 82.
A good number of MDs forming in BoB originate as low-pressure disturbances that come from the western Pacific Ocean and the South China Sea3,4,5,6. The horizontal scale of a typical MD is around 1500 km and they vertically extend up to a height of 8 km1. After the formation, they generally move westward with a typical zonal speed of about 5°/day and have a life cycle of about 3 to 5 days. These systems generally have two or three closed isobars with 2 hPa intervals. Heavy rainfall crossing even 300 mm/day is the most distinguishable phenomenon associated with these disturbances. Horizontal wind speeds of 7.5 (20) m/s at the surface (850 hPa) are noted and the strongest winds, cloudiness and precipitation are found to be the maximum in the southwest sector of the storm7. The relative vorticity has a maximum value of the order of 5 × 10−5 s−1 (12 × 10−5 s−1) at the surface (800 hPa)1,8. These disturbances have a cold core in the lower troposphere which is maintained by the evaporation of the falling rain and the adiabatic ascent7,8; a weak warm core structure sits over this cold core, maintained by latent heat release54.
Studies such as Sikka9, Mooley & Shukla10, Jadhav11, Krishnamurthy & Ajayamohan12 etc. have reported that there exists a marked relationship between central Indian monsoon rainfall and low pressure systems (LPS) in their totality, i.e., covering the Low Pressure Areas and MDs. However, some of these studies suggest that there is no significant relationship between the annual frequency/longevity of the MDs with seasonal monsoon rainfall. Notwithstanding this, rainfall from MDs is a significant contributor to seasonal rainfall in some part of the east coast of India and importantly, can cause severe floods associated with extreme rainfall13,14. Therefore, any changes in MD frequency, intensity and tracks have relevance for the floods and hydrology of various rivers/river basins. Understanding any such long term changes is therefore important for hydrological planning and management in these parts.
Recent studies report a negative trend in the frequency of MD since 1950s2,15,16,17, in spite of increasing SST over BoB. Rajeevan et al.2, Kumar & Dash18 and Jadhav & Munot17 show that the decreasing frequency in the number of MD is significantly coincident with increasing number of Low Pressure Areas during the same season. Importantly, recent studies do not find any such decreasing trend in the cyclonic activity in west north Pacific19,20. From these, it can be concluded that some background atmospheric and oceanic in situ conditions in the BoB are possibly limiting the intensification of low pressure areas into MDs.
According to Gray21, the essential environmental parameters for tropical cyclogenesis are:
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1
Large values of low-level relative vorticity (at ~950 hPa),
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2
sufficient values of Coriolis parameter;
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3
Low values of vertical shear of horizontal winds between 950 and 200 hPa. Low values of vertical shear enable the condensational warming to be concentrated over moving disturbance. The high vertical shear during the monsoon season is a reason why the MDs do not strengthen further as tropical storms
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4
Large values of ocean thermal energy;
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5
Large values of surface to mid-tropospheric equivalent potential temperature gradient, which is essential for cumulus convection and
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6
Large values of mid-tropospheric humidity (average of 500 hPa to 700 hPa), essential for deep cumulus convection and high rainfall efficiency.
Sikka1 has also identified the high Sea Surface temperature (SST), presence of low-level cyclonic vorticity in North BoB, high mid-troposphere (henceforth MT) humidity and weak vertical wind shear, as the necessary conditions, in agreement with those of Gray21.
Rao et al.22 suggest the weakening vertical shear of the easterly jet stream in recent decades as a possible reason for decrease in the frequency of MD, as such as condition is tantamount to a weakening in baroclinic instability. However, the relative importance of barotropic vs. baroclinic instability for the monsoon depressions is not yet clear23,24,25. Further, as far as the in situ conditions are concerned, as per Gray21, any decrease in vertical wind shear should rather favor the intensification of cyclonic systems in tropics due to a reduction in the ventilation effect. Interestingly, Kumar & Sankar26 cite, along with several other parameters, a weakening MT relative humidity (RH) as a potential factor for a weakening trend in synoptic disturbances in the BoB. Therefore, in this paper, we carry out a simultaneous and detailed analysis of the reanalyzed climate datasets for the period of 1950–2010 to identify whether there have been any significant decadal changes in various Gray-Sikka parameters that are favorable for tropical cyclogenesis and if so whether such changes can be the cause behind the observed decrease in MD frequency. We also examine whether the fall of the MD frequency is uniform along the east coast of India. Given that the moisture reanalysis products in the pre-satellite period may be subject to quality limitations, we verify our analysis with multiple reanalysis data sets as necessary. We also report results from various numerical sensitivity experiments we carried out using an axi-symmetric tropical cyclone model, to confirm our findings.
Results
Decadal changes in the MD frequency: a Gray-Sikka condition perspective
A time series of seasonal frequency of the MDs and for the period of 1891 to 2010 clearly shows (Figure 1a) a decreasing trend in the frequency after 1950s, which is significant at 99% confidence level (Mann-Kendall test). After 1985, the mean frequency of MD reduces to 2–3 depression/season. On the other hand, we also find a significant increasing trend in the JJAS mean SST, averaged over BoB since 1950s (figure S1.b [Supplementary Information]), in agreement with the previous studies2,17; this rules out the role of the SST in the falling frequency of the MDs. We have also verified that the area-averaged vertical wind shear (difference in the zonal winds at 850 hPa and 200 hPa) and the low level relative vorticity in the region does neither exhibit a significant trend for the period 1950–2010 (Figure S2) nor its the correlation between with the frequency of the MD significant.
A time series of the NCEP/NCAR reanalyzed MT RH over the BoB and adjoining land region for the period of 1950–2010 (Figure 1a) shows a significant decreasing trend; the reduction of 15% is significant at 99% confidence level from a Mann-Kendall test. In addition, a correlation between the de-trended MT RH and MD frequency indicates that their association strengthened since mid-1990s and significant above 95% confidence level from a two-tailed Student's t-test (Figure 1b); the correlation between the corresponding raw time series is much higher, as can be expected owing to the similar trend in both the time series. Further, as the RH from any reanalysis dataset is a derived parameter, we confirm the results by carrying out above analysis by replacing the RH with MT specific humidity.
According to Gray21, a minimum threshold of 40% the MT RH is necessary for tropical cyclogenesis. Low MT humidity would lead to the entrainment of relatively dry environment air into the parcel and a reduction in up-draft parcel buoyancy. Thus, the decrease in the MT RH over the BoB region could be a plausible reason for the decrease in the MD frequency since 1950s and more likely from the late 1970s.
However, Paltridge et al.27 and Dessler28 caution about the reliability of the slow variability in the MT humidity from the NCEP/NCAR reanalysis data. Indeed, the quality of the parameters from other reanalysis datasets may also not be entirely reliable owing to various reasons such as the sparsity of observed data and sensor changes, particularly a “shock” due the inclusion of satellite data since late 1980s in reanalysis. Therefore, to confirm our finding from the NCEP/NCAR RH datasets, we present in Figures 2.a–c, the spatial distribution of the trends in the MT RH over Indian region from NCEP/NCAR reanalysis (1950–2010), ERA-40 (1958–2002) and Modern Era Retrospective-Analysis for Research and Applications (MERRA, 1979-present), respectively. In Figure 2a, a decreasing trend in the NCEP/NCAR MT RH is seen over the whole Indian land mass, Arabian Sea and BoB. In ERA-40, we see (Figure 2b) such a significant decreasing trend over the Indian land mass, along with a relatively weaker negative trend over the BoB region abutting the east coast of the Indian peninsula. The MERRA MT RH also shows (Figure 2c) a significant trend in the southern region, particularly south of 20°N. We can conclude from Figure 2 that the decreasing trend off the coast of India south of 20°N is more or less a common feature among all the three data sets. This qualitative agreement among the various MT RH datasets gives us confidence about the weakening trend in the MT humidity in this region and therefore its role in weakening of the MDs therein.
Spatial differences in the decreasing frequency of MDs
In Figures 3(1a,1b,2a,2b), for (a) 1950–1979 and (b) 1980–2009 periods, we show the observed tracks of MD29 having genesis (1) south of 20°N and (2) north of 20°N., respectively, The number of depressions formed south (north) of 20°N during the periods 1950–1979 and 1980–2009 is 105 (53) and 43 (38), respectively. The decrease in the MD frequency is 59% (28%) for the genesis region south (north) of 20°N. Thus, though the decrease in number of depressions is seen all over the BoB, the maximum contribution comes from the south of 20°N.
This finding collates well with the finding that the MT RH has weakened in the recent decades particularly south of 20°N.
Experiments with axi-symmetric tropical cyclone model
We now present results from the three numerical experiments we carried out to ascertain the role of the MT RH in the BoB in weakening the MDs. The first experiment, hereafter referred to as the control (CTRL) run, is to simulate a MD with the mean monsoon month conditions of Calcutta, on the BoB, we further perform two sensitivity experiments by reducing the MT RH by 5% and 10%, respectively. The experiments are referred to as EXP-5% and EXP-10%, respectively. The RH profiles used for the experiments are shown in Figure 4a.
The time variation of the simulated Central Surface Pressure (CSP) from all the experiments is presented in the Figure 4b. After 40 hours (h) CSP starts dropping in all the three cases, but with a slower rate for EXP-10% compared to the CTRL experiment and EXP-5%. Up to 80 h both the CTRL run and EXP-5% show similar rate of CSP fall, but later the EXP-5% demonstrates a relatively slower rate of decrease in CSP and stabilizes at 150 h. At the mature (at 200 h) stage, when the CSP reaches a more or less steady minimum value, the difference in the simulated CSP between CTRL and EXP-5% (EXP-10%) runs is 4 (7) hPa.
The time-radius cross sections of convective rainfall for these experiments are presented in Figure 5. In all the three cases, convective rain starts to occur just after 40 h. In the CTRL run, rainfall of 20 cm/day and above is noticed in the mature stage, which is in good agreement with the observed rainfall for a typical MD1. After around 140 h, a significant amount of convective rainfall occurs towards the center of the system. On the other hand, while the convective rain starts in EXP-5% and EXP-10% at the same time as in CTRL run, the intensity in these cases, however, is much weaker. Also, only just about 5 ~ 10 cm/day rain occurs towards the center of the system in case of EXP-5% and negligible amount of rain occurs towards the center in the case of EXP-10%.
The radial distributions of the simulated Cloud Base Mass Flux (CBMF) are shown in the Figure 6. It can be seen that the convective clouds started developing at 40 hours in all the cases. This corresponds to the initial time of developing stage of the system, as can be conjectured from the time variation of CSP from the Figure 4b. The maximum simulated CBMF at this stage is typically around 100–200 g/m2/s and located around 160 km radius. Higher amounts can be seen in CTRL run compared to the other two cases. The tropospheric heating due to the latent heat release associated with the convection enhances the pressure gradient, which in turn enhances the moisture convergence towards the center of the system. The tropospheric heating which is proportional to the mass flux30,31, determines the growth of the system. Hence in CTRL run, the larger tropospheric heating due to larger CBMF produces more moisture convergence towards the center and eventually causing a wide spread precipitation towards the center. At the mature stage, the maximum CBMF values in the CTRL run are seen towards the center of the system. In contrast, very little CBMF amount is simulated in the EXP-5% and almost nil in the EXP-10%.
Tangential winds reaching a maximum of 15 m/s can be seen in case CTRL run. Whereas in EXP-5% and in EXP-10% maximum tangential wind speed is around 6–9 m/s, much below the typically observed MD wind speed1,7 of 15–20 m/s (Figure S3).
The results are in agreement with theory; from theories of growth mechanism of tropical cyclogenesis, it is clear that convective heating is the most important mechanism for the growth of MD. High MT humidity values are essential for maintaining the updraft parcel buoyancy in case of entrainment21. Low MT humidity can lead to upper level cooling, due to the re-evaporation of cumulus induced condensation by which it suppresses the growth of the disturbances. In summary, weakened MT RH results in weakened CBMF during the developing stage, which further weakens through the mature stage. All this will eventually not allow the initial incipient disturbances to grow beyond a low pressure system.
Discussion
We find that, notwithstanding an increasing trend of SST in the BoB since 1950s, the MD frequency in the Bay of Bengal has continuously fallen. The fall in the frequency is statistically significant since late 1970s. The percentage decrease in the frequency of depression is seen to be more to the south of 20°N, with a 59% fall as compared to the 28% of decadal weakening of the MD frequency north of 20°N. Our results suggest that a concurrent weakening trend in the MT RH over the Bay of Bengal south of 20°N is a major factor in reducing the MD frequency. Further, results from our sensitivity tests carried out using an axi-symmetric model strongly support the hypothesis that a weakened MT humidity results in inhibition of the amplification of the initial tropical cyclonic perturbations.
Our results may be subject to the limitations associated with the reanalysis data quality, particularly that of the MT RH; however, qualitatively similar result from all the three reanalysis datasets alleviates this concern substantially.
Interestingly, it has been documented that large-scale summer monsoon circulation in recent decades has weakened22,32,33,34,35. To explore the relevance, we carried out an analysis of decadal changes in low level moisture convergence over the Indian region and surrounding ocean. The result (Figure not shown) also indicates a general weakening of moisture convergence over the region. This indicates that the falling frequency of the MDs may be due to weakening Indian summer monsoon circulation. A question that naturally arises is whether the observed global warming in the last 3 ~ 4 decades has any role to play in the reduction of MDs in the Bay of Bengal. In this context, it is relevant to note that, as per a recent Special Report of the Intergovernmental Panel on Climate Change36, it is not yet clear whether extreme events are expected to increase due to global warming. In addition, studies such as Matsuura et al.37 indicate that interdecadal changes in tropical synoptic disturbance activity may be also due to natural decadal variability such as the in situ long-term variations in atmosphere–ocean coupling phenomena. Further, there is no general agreement among studies based on the dynamical models whether monsoons will strengthen or weaken due to global warming. For example, Krishnan et al.35 and Rajendran et al.38, using some high resolution model projections of AR4 vintage, suggest an association between the global warming and monsoon weakening. On the other hand, several AR4 model projections (e.g. Kripalani et al.39) indicate a possibility that monsoon rainfall may increase with increased global warming. More recently, Jourdain et al.40 document that projections from about 11 models of CMIP5 vintage, which are able to simulate the Indian summer Monsoon features and teleconnections realistically, indicate that the monsoon rainfall may intensify due to global warming. Further, in addition to the in situ conditions in the Bay of Bengal, remote, decadal changes, such as that in land surface temperature over Tibetan plateau may also affect the intensity of Indian summer Monsoon41,42,43, there by leading to changes in the in-situ Gray-Sikka conditions. Such issues are beyond the scope current study and needs further research, including an analysis of multi-model climate change projections.
Methods
Data
We use the MD tracks and frequency data from the “Cyclone eAtlas – IMD” published by the India Meteorological Department29 for the 1950–2010 period. For the same period, we also use the Hadley Centre Sea Ice and Sea Surface Temperature data set (HadISST)44 and wind and the relative-humidity data mainly from the NCEP/NCAR Reanalysis data set45. In addition, we use the ERA-40 datasets46 for the 1958–2002 period and MERRA47 (Modern Era-Retrospective Analysis For Research And Applications) for the period 1979–2010 for verification.
A spatial map of frequency of formation of depressions during JJAS season for the period 1950–2010 (figure S1.a) indicates29 that most MDs in the BoB occur in the region bound by 80°E–90°E and 15°N–25°N. Therefore, we average the various physical parameters over this region to obtain the corresponding representative Indices for further analysis. The individual seasonal anomalies of various parameters have been obtained by subtracting the long term seasonal climatology from the respective individual seasonal value of the parameter that year.
Model
We performed sensitivity experiments using a nineteen-level axi-symmetric model48,49 which uses a simplified variant of the Arakawa-Schubert convective parameterization scheme, after Grell50,51. The model and its variants have been extensively used to study the evolution of the tropical cyclogenesis in various tropical oceans, including BoB48,49,52.
The air-density is assumed to be a function of height only. Planetary boundary layer have been parameterized in the model using the Deardorff53 boundary layer scheme. Vertical velocity w is taken as zero at z = 0 and z = zmax i.e., at the bottom and top of the model atmosphere (zmax = 19 km).
Radius of the outer periphery of the computational domain is taken as 2500 km in this model. The domain of such a large size is used to reduce the influence of the lateral boundary on the storm structure at the center. The model atmosphere has been divided into 18 vertical layers between 0–19 km, with the 19 levels designated at 0, 1, 2, 3, …, & 19 km heights. The horizontal computational domain is divided into 21 concentric telescopic rings, with a horizontal resolution of 20 km within the 100 km, beyond which the resolution becomes coarse as one moves away.
The initial perturbation is imposed via potential temperature and is given by
For r < r0( = 300 km). zt = 19 km.
Further details of the model can be obtained from Rao & Ashok48,49. The mean vertical distribution of temperature and RH of the month June for Calcutta have been adopted as the initial conditions. However, the model sensitivity to the MT-RH was more or less similar even after we used a few available sounding profiles from the south-eastern stations such as Machilipatnam, Bhubaneswar and Visakhapatnam, which are affected by the MDs. All the experiments were conducted with a constant SST of 301 K. The integration was carried out for 240 hours in all the cases.
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Acknowledgements
We thank Prof. G. S. Bhat and Prof. R.N. Keshava Murthy for their insightful comments. We acknowledge Indian Meteorology Department, Chennai for the permission to use Cyclone eAtlas in this study. We thank the Director, IITM for his support.
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A.G.P. did the analysis and wrote the manuscript with significant inputs from K.A. K.A. conceived the idea and co-wrote the manuscript. D.V.B.R. provided and helped in setting up the axi-symmetric model. All authors discussed the results.
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Prajeesh, A., Ashok, K. & Rao, D. Falling monsoon depression frequency: A Gray-Sikka conditions perspective. Sci Rep 3, 2989 (2013). https://doi.org/10.1038/srep02989
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DOI: https://doi.org/10.1038/srep02989
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