Spatiotemporal Characterization of Drought Magnitude, Severity, and Return Period at Various Time Scales in the Hyderabad Karnataka Region of India
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Standardized Precipitation Index (SPI)
2.3. Areal Extent of Drought Severity at Different Timescales
2.4. Spatial Drought Analysis
2.5. Development of Time Scale Magnitude Frequency (TMF)
- α = Shape parameter
- u = Location parameter
- = mean
- = standard deviation
- T = return period (years) of the event of a defined duration.
3. Results and Discussion
3.1. Spatiotemporal Variation of Drought Events
Station | Longest | Strongest | Highest | |||
---|---|---|---|---|---|---|
Year | D | Year | S | Year | I | |
Afzalpur | 1972 (June–November) | 6 | 1972 (June–November) | −13.33 | 1976 (June) | −3.28 |
Aland | 1984–1985 (May–January) | 9 | 1984–1985 (May–January) | −14.33 | 2003 (December) | −3.75 |
Aurad | 1980 (July–December) | 6 | 1980 (July–December) | −8.13 | 1966 (July) | −3.08 |
Ballari | 1976 (May–December) | 8 | 1976 (May–December) | −14.55 | 2003 (June) | −4.66 |
Basavakalyan | 1972 (July–October) | 6 | 1972 (July–October) | −10.98 | 1984 (July) | −2.65 |
Bhalki | 1972 (July–November) | 2 | 1972 (July–November) | −10.93 | 1972 (September) | −2.8 |
Bidar | 1979 (April–August) | 5 | 1979 (April–August) | −7.36 | 1972 (August) | −2.78 |
Chincholli | 1971 (June–November) | 6 | 1971 (June–November) | −11.54 | 1972 (September) | −2.83 |
Chitapur | 1972 (May–December) | 8 | 1972 (May–December) | −15.5 | 1994 (July) | −3.07 |
Deodurga | 1971 (June–September) | 4 | 1972 (September–November) | −7.23 | 2011 (November) | −2.94 |
Gangavathi | 2016 (October–December) | 3 | 2016 (October–December) | −6.88 | 2003 (June) | −3.22 |
Hoovinahadagali | 1965 (April–July), 2002 (August–November) and 2008 (June–September) | 4 | 2008 (June–September) | −7.24 | 1976 (October) | −2.96 |
Hagaribommanahalli | 2003 (May–November) | 7 | 2003 (May–November) | −14.72 | 2003 (July) | −3.72 |
Hospet | 2001 (April–July), 2004 (September–December) and 2016 (September–December) | 4 | 2016 (September–December) | −8.59 | 2016 (December) | −2.92 |
Humnabad | 2001 (March–August) | 6 | 2001 (March–August) | −10.68 | 1965 (May) | −3.47 |
Jeewargi | 1992 (April–December) | 9 | 1992 (April–December) | −21.68 | 1992 (November) | −4.55 |
Kalburgi | 1972 (July–October) | 4 | 1972 (July–October) | −10.06 | 1965 (June) | −3.77 |
Koppal | 2003 (May–September) and 2016 (August–December) | 5 | 2003 (May–September) | −11.35 | 2003 (July) | −3.9 |
Kudligi | 1970 (June–November) | 6 | 1970 (June–November) | −12.51 | 1976 (July) | −3.92 |
Kustigi | 2003 (May–November) | 7 | 2003 (May–November) | −12.69 | 2011 (November) | −2.85 |
Lingasugur | 2001 (May–August) | 4 | 2014 (May–July) | −8.03 | 2014 (June) | −3.34 |
Manvi | 1994 (June–September) | 4 | 1994 (June–September) | −7.25 | 2015 (July) | −3.06 |
Raichur | 1994 (May–September) | 5 | 1994 (May–September) | −10.49 | 2011 (November) | −3.67 |
Sandur | 1976 (June–December) | 7 | 1976 (June–December) | −10.68 | 2003 (July) | −2.89 |
Sedam | 1972 (July–December) | 6 | 1972 (July–December) | −10.96 | 1979 (August) | −2.71 |
Shahpur | 1992 (Junee–October) and 1994 (May–September) | 5 | 1994 (May–September) | −8.31 | 1972 (August) | −2.44 |
Shorapur | 1986 (July–November) | 5 | 1986 (July–November) | −7.5 | 2011 (November) | −2.64 |
Sindhanur | 1997 (June–October) | 5 | 2006 (August–November) | −7.97 | 1989 (May) | −3.18 |
Sirguppa | 1972 (August–December) | 5 | 1972 (August–December) | −6.37 | 2008 (June) | −4.31 |
Yadgir | 1971 (July–November), 2014(April–August) and 2015(June–October) | 5 | 2014 (April–August) | −9.61 | 2015 (August) | −2.96 |
Yalburga | 1985 (September–December), 1991 (September–December) and 2001 (May–August) | 4 | 2001 (May–August) | −8.08 | 1984 (June) | −3.58 |
Station | Longest | Strongest | Highest | |||
---|---|---|---|---|---|---|
Year | D | Year | S | Year | I | |
Afzalpur | 1972–1973 (April–March) | 12 | 1972–1973 (April–March) | −27.64 | 1972 (October) | −3.4 |
Aland | 1984–1985 (June–September) | 16 | 1984–1985 (June–September) | −29.38 | 2004 (March) | −3.81 |
Aurad | 1965–1966 (October–August) | 11 | 1965–1966 (October–August) | −20.21 | 1971 (March) | −3.41 |
Ballari | 1976–1977 (May–March) | 11 | 1976–1977 (May–March) | −25.25 | 2003 (September) | −3.72 |
Basavakalyan | 1972–1973 (July–March) | 9 | 1972–1973 (July–March) | −20.02 | 1972 (December) | −2.98 |
Bhalki | 1972–1973 (July–February) | 8 | 1972–1973 (July–February) | −20.14 | 1972 (October) | −3.08 |
Bidar | 1971 (March–December) | 10 | 1972–1973(June–Jan) | −17.15 | 1972(October) | −2.71 |
Chincholli | 1971–1972 (January–February) | 9 | 1971–1972 (January–February) | −19.57 | 1971 (September) | −2.7 |
Chitapur | 1972–1973 (June–March) | 10 | 1972–1973 (June–March) | −24.7 | 1972 (August) | −3.36 |
Deodurga | 1972–1973 (August–February) | 7 | 1972–1973 (August–February) | −13.7 | 1971 (July) | −3.03 |
Gangavathi | 1972 (June–Jan) | 8 | 1972 (June–Jan) | −13.29 | 1963 (July) | −3 |
Hoovinahadagalli | 2002–2003 (August–March) and 2003 (May–December) | 8 | 2003 (May–December) | −15.57 | 2000 (May) | −3.13 |
Hagaribommanahalli | 2003–2004 (April–February) | 11 | 2003–2004 (April–February) | −27.45 | 2003 (July) | −4.3 |
Hospet | 1997 (May–November) | 7 | 1997 (May–November) | −12.13 | 2017 (March) | −2.91 |
Humnabad | 1972–1973 (June–February) | 9 | 1972–1973 (June–February) | −21.59 | 1965 (May) | −3.61 |
Jeewargi | 1991–1993 (December–March) | 16 | 1991–1993 (December–March) | −43.48 | 1993 (February) | −4.67 |
Kalburgi | 1972–1973 (July–March) | 9 | 1972–1973 (July–March) | −21.61 | 1965 (June) | −3.73 |
Koppal | 2016–2017 (August–March) | 8 | 2003 (May–November) | −15.86 | 2003 (July) | −3.78 |
Kudligi | 1976–1977 (June–February) | 9 | 1976–1977 (June–February) | −19.81 | 1990 (March) | −3.51 |
Kustigi | 1985–1988 (June–March) | 10 | 1985–1988 (June–March) | −21.35 | 2017 (March) | −3.02 |
Lingasugur | 2011–2012 (October–April) | 7 | 2011–2012 (October–April) | −11.96 | 2014 (June) | −3.36 |
Manvi | 2002 (April–November) | 8 | 1994 (June–November) | −11.23 | 1994 (September) | −2.94 |
Raichur | 2012–2013 (May–June) | 9 | 2012–2013 (May–June) | −15.4 | 2012 (February) | −3.76 |
Sandur | 1976–1977 (June–March) | 10 | 1976–1977 (June–March) | −19.08 | 2003 (July) | −3.03 |
Sedam | 1972–1973 (July–March) | 9 | 1972–1973 (July–March) | −20.06 | 1972 (December) | −2.72 |
Shahpur | 2002–2003 (June–Jan), 2000–2004 (September–April) and 2014 (April–November) | 9 | 2014 (April–November) | −15.37 | 2016 (March) | −2.87 |
Shorapur | 1967–1968 (May–March) | 11 | 1967–1968 (May–March) | −17.48 | 2012 (February) | −2.72 |
Sindhanur | 2016–2017 (November–August) | 10 | 2016–2017 (November–August) | −19.59 | 1989 (May) | −3.27 |
Sirguppa | 2002–2003 (June–Jan) | 8 | 2002–2003 (June–Jan) | −17.12 | 2002 (September) | −3.28 |
Yadgir | 2014 (April–December) | 9 | 2014 (April–December) | −17.38 | 1981 (March) | −3.14 |
Yalburga | 2012–2013 (May–February) | 10 | 2012–2013 (May–February) | −15.26 | 2001 (July) | −3.35 |
3.2. Areal Extent of Drought Severity in the Hyderabad Karnataka Region Based on Different Timescales
3.3. Timescale–Magnitude–Frequency (TMF) for Different Timescales in the Hyderabad–Karnataka Region
4. Conclusions with Future Research Remarks
- (1)
- Understanding the relationship between climate change and drought: Thorough investigation is needed to assess how climate change influences drought events, including their frequency, intensity, and duration. This research will provide critical insights into the mechanisms driving drought under changing climatic conditions.
- (2)
- Advancing drought mitigation strategies: The development of innovative and targeted strategies is essential to effectively mitigate the adverse effects of drought. These strategies should consider local contexts and incorporate a range of measures such as water conservation, demand management, infrastructure improvements, and more efficient irrigation systems.
- (3)
- Socioeconomic consequences of drought: Comprehensive studies should be conducted to understand the socioeconomic impacts of drought on communities, economies, and livelihoods. This research will aid in identifying vulnerable groups, assessing economic losses, and formulating appropriate policies and support mechanisms.
- (4)
- Integrated water resources management: The implementation of integrated approaches to water resources management is crucial for drought resilience. This involves coordinated planning, efficient allocation, and sustainable use of water resources across different sectors, considering environmental, social, and economic factors.
- (5)
- Enhancing drought forecasting and early-warning systems: Research efforts should focus on improving the accuracy and lead time of drought forecasting models and developing robust early-warning systems. Timely and reliable information will enable proactive drought preparedness and effective response measures.
- (6)
- Climate-resilient agricultural practices: Promoting and adopting climate-resilient agricultural practices, such as drought-tolerant crop varieties, precision irrigation, agroforestry, and soil-conservation techniques, can enhance agricultural productivity and reduce vulnerability to drought.
- (7)
- Evaluating ecological impacts: Comprehensive studies are needed to evaluate the ecological consequences of drought on ecosystems, including biodiversity loss, changes in vegetation patterns, and impacts on water-dependent habitats. This research will help guide conservation and restoration efforts.
- (8)
- Designing and developing regional water plans: Developing robust and adaptable water management plans at the regional level is essential for ensuring water availability during droughts. These plans should incorporate diverse water sources, demand management strategies, and consider potential climate change scenarios.
- (9)
- Long-term drought monitoring: Establishing and maintaining long-term drought monitoring networks and data collection systems is vital for the accurate and continuous assessment of drought conditions. This data can support decision-making processes and inform proactive drought management strategies.
- (10)
- Stakeholder engagement and capacity building: Engaging stakeholders, including local communities, policymakers, water managers, and relevant organizations, in capacity building and awareness campaigns are crucial for fostering a shared understanding of drought risks, promoting sustainable water practices, and facilitating effective drought management.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Drought Classes | SPI |
---|---|
≥2.0 | Extremely wet (EW) |
1.99 to 1.50 | Severe wet (SW) |
1.49 to 1.00 | Moderately wet (MW) |
0.99 to −0.99 | Near normal (N) |
−1.0 to −1.49 | Moderate drought (MD) |
−1.50 to −1.99 | Severe drought (SD) |
≤−2.0 | Extreme drought (ED) |
Stations | Return Period (SPI_3) | Return Period (SPI_6) | ||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
2 | 5 | 10 | 20 | 30 | 50 | 100 | 2 | 5 | 10 | 20 | 30 | 50 | 100 | |
Afzalpur | −4.33 | −6.88 | −8.56 | −10.18 | −11.11 | −12.28 | −13.85 | −4.88 | −10.05 | −13.47 | −16.76 | −18.64 | −21.00 | −24.19 |
Aland | −4.55 | −7.40 | −9.29 | −11.10 | −12.14 | −13.45 | −15.20 | −6.02 | −12.18 | −16.26 | −20.18 | −22.43 | −25.24 | −29.04 |
Aurad | −4.52 | −6.59 | −7.96 | −9.27 | −10.03 | −10.98 | −12.25 | −5.68 | −10.21 | −13.20 | −16.07 | −17.72 | −19.79 | −22.57 |
Ballari | −5.24 | −8.77 | −11.11 | −13.36 | −14.65 | −16.26 | −18.44 | −5.89 | −10.26 | −13.16 | −15.94 | −17.54 | −19.54 | −22.24 |
Basavakalyan | −4.12 | −5.99 | −7.23 | −8.42 | −9.10 | −9.96 | −11.11 | −4.82 | −8.71 | −11.29 | −13.76 | −15.18 | −16.96 | −19.36 |
Bhalki | −3.90 | −5.79 | −7.04 | −8.24 | −8.93 | −9.80 | −10.96 | −4.62 | −8.29 | −10.72 | −13.06 | −14.40 | −16.07 | −18.34 |
Bidar | −4.11 | −6.01 | −7.28 | −8.49 | −9.19 | −10.06 | −11.23 | −5.88 | −9.57 | −12.01 | −14.35 | −15.70 | −17.38 | −19.65 |
Chincholli | −4.19 | −6.37 | −7.82 | −9.20 | −10.00 | −10.99 | −12.33 | −4.75 | −8.59 | −11.13 | −13.57 | −14.97 | −16.73 | −19.09 |
Chitapur | −5.13 | −8.22 | −10.26 | −12.22 | −13.35 | −14.76 | −16.66 | −5.23 | −10.13 | −13.37 | −16.49 | −18.28 | −20.51 | −23.53 |
Deodurga | −4.09 | −5.43 | −6.32 | −7.17 | −7.66 | −8.27 | −9.09 | −4.90 | −7.77 | −9.68 | −11.50 | −12.55 | −13.87 | −15.64 |
Gangavathi | −4.24 | −5.44 | −6.23 | −7.00 | −7.43 | −7.98 | −8.72 | −5.23 | −8.09 | −9.98 | −11.80 | −12.84 | −14.15 | −15.91 |
Hoovinahadagalli | −3.88 | −5.28 | −6.21 | −7.10 | −7.61 | −8.25 | −9.11 | −5.07 | −8.18 | −10.24 | −12.21 | −13.35 | −14.77 | −16.68 |
Hagaribommanahalli | −4.70 | −7.52 | −9.40 | −11.19 | −12.22 | −13.52 | −15.26 | −6.22 | −11.67 | −15.28 | −18.75 | −20.74 | −23.23 | −26.59 |
Hospet | −3.95 | −5.43 | −6.41 | −7.36 | −7.90 | −8.58 | −9.49 | −4.89 | −7.68 | −9.52 | −11.29 | −12.31 | −13.58 | −15.29 |
Humnabad | −4.46 | −6.79 | −8.34 | −9.82 | −10.67 | −11.74 | −13.18 | −5.63 | −9.87 | −12.67 | −15.36 | −16.91 | −18.84 | −21.45 |
Jevargi | −4.11 | −6.39 | −7.89 | −9.34 | −10.17 | −11.21 | −12.61 | −5.42 | −10.44 | −13.77 | −16.96 | −18.79 | −21.09 | −24.18 |
Kalburgi | −4.46 | −6.42 | −7.71 | −8.96 | −9.67 | −10.57 | −11.77 | −5.96 | −11.01 | −14.35 | −17.56 | −19.40 | −21.71 | −24.82 |
Koppal | −5.17 | −7.41 | −8.89 | −10.31 | −11.12 | −12.15 | −13.52 | −5.41 | −9.01 | −11.39 | −13.68 | −15.00 | −16.64 | −18.86 |
Kudligi | −3.43 | −4.73 | −5.60 | −6.43 | −6.91 | −7.50 | −8.31 | −4.99 | −8.56 | −10.92 | −13.18 | −14.48 | −16.11 | −18.31 |
Kustigi | −4.02 | −6.12 | −7.52 | −8.86 | −9.63 | −10.59 | −11.89 | −5.63 | −9.84 | −12.62 | −15.28 | −16.82 | −18.74 | −21.33 |
Lingasugur | −4.53 | −6.02 | −7.02 | −7.97 | −8.51 | −9.20 | −10.12 | −5.11 | −8.03 | −9.97 | −11.82 | −12.89 | −14.23 | −16.03 |
Manvi | −3.68 | −5.04 | −5.94 | −6.80 | −7.30 | −7.92 | −8.76 | −5.66 | −8.13 | −9.76 | −11.33 | −12.23 | −13.36 | −14.88 |
Raichur | −3.60 | −5.45 | −6.67 | −7.85 | −8.53 | −9.37 | −10.51 | −5.08 | −8.50 | −10.76 | −12.93 | −14.17 | −15.73 | −17.84 |
Sandur | −4.36 | −6.93 | −8.63 | −10.26 | −11.20 | −12.37 | −13.96 | −4.88 | −9.57 | −12.67 | −15.65 | −17.36 | −19.50 | −22.38 |
Sedam | −4.57 | −6.38 | −7.58 | −8.74 | −9.40 | −10.23 | −11.35 | −5.38 | −9.12 | −11.59 | −13.97 | −15.33 | −17.04 | −19.34 |
Shahpur | −3.74 | −5.16 | −6.09 | −6.99 | −7.51 | −8.16 | −9.03 | −5.44 | −8.72 | −10.88 | −12.96 | −14.16 | −15.66 | −17.68 |
Shorapur | −4.17 | −5.52 | −6.41 | −7.26 | −7.75 | −8.36 | −9.19 | −6.38 | −10.01 | −12.41 | −14.72 | −16.05 | −17.71 | −19.94 |
Sindhanur | −4.37 | −6.02 | −7.11 | −8.16 | −8.76 | −9.51 | −10.53 | −5.73 | −9.81 | −12.52 | −15.12 | −16.61 | −18.48 | −21.00 |
Sirguppa | −4.29 | −5.99 | −7.12 | −8.20 | −8.83 | −9.61 | −10.66 | −4.94 | −8.37 | −10.64 | −12.83 | −14.08 | −15.65 | −17.77 |
Yadgir | −4.01 | −5.82 | −7.02 | −8.17 | −8.83 | −9.66 | −10.78 | −6.07 | −9.68 | −12.07 | −14.36 | −15.68 | −17.33 | −19.55 |
Yalaburga | −4.00 | −5.44 | −6.38 | −7.30 | −7.82 | −8.47 | −9.36 | −6.14 | −9.22 | −11.26 | −13.21 | −14.33 | −15.74 | −17.63 |
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Patil, R.; Polisgowdar, B.S.; Rathod, S.; Bandumula, N.; Mustac, I.; Srinivasa Reddy, G.V.; Wali, V.; Satishkumar, U.; Rao, S.; Kumar, A.; et al. Spatiotemporal Characterization of Drought Magnitude, Severity, and Return Period at Various Time Scales in the Hyderabad Karnataka Region of India. Water 2023, 15, 2483. https://doi.org/10.3390/w15132483
Patil R, Polisgowdar BS, Rathod S, Bandumula N, Mustac I, Srinivasa Reddy GV, Wali V, Satishkumar U, Rao S, Kumar A, et al. Spatiotemporal Characterization of Drought Magnitude, Severity, and Return Period at Various Time Scales in the Hyderabad Karnataka Region of India. Water. 2023; 15(13):2483. https://doi.org/10.3390/w15132483
Chicago/Turabian StylePatil, Rahul, Basavaraj Shivanagouda Polisgowdar, Santosha Rathod, Nirmala Bandumula, Ivan Mustac, Gejjela Venkataravanappa Srinivasa Reddy, Vijaya Wali, Umapathy Satishkumar, Satyanarayana Rao, Anil Kumar, and et al. 2023. "Spatiotemporal Characterization of Drought Magnitude, Severity, and Return Period at Various Time Scales in the Hyderabad Karnataka Region of India" Water 15, no. 13: 2483. https://doi.org/10.3390/w15132483
APA StylePatil, R., Polisgowdar, B. S., Rathod, S., Bandumula, N., Mustac, I., Srinivasa Reddy, G. V., Wali, V., Satishkumar, U., Rao, S., Kumar, A., & Ondrasek, G. (2023). Spatiotemporal Characterization of Drought Magnitude, Severity, and Return Period at Various Time Scales in the Hyderabad Karnataka Region of India. Water, 15(13), 2483. https://doi.org/10.3390/w15132483