Posted On: 11 MAR 2026 12:21PM by PIB Delhi Under Mission Mausam, the High-Performance Computing (HPC) systems of the Ministry of Earth Sciences were inaugurated on 26 September 2024 by the Hon’ble Prime Minister at the Indian Institute of Tropical Meteorology, Pune and the National Centre for Medium Range Weather Forecasting, Noida. The systems, named “ARKA” (computing capacity of 11.77 petaflops) and “ARUNIKA” (8.24 petaflops), along with a dedicated 1.9 petaflops AI/ML system, have increased the Ministry’s total computing capacity to 21.91 petaflops. This enhanced computational infrastructure enables development of advanced high-resolution weather and climate models and the application of Artificial Intelligence and Machine Learning (AI and ML) for forecasting. IMD has achieved a significant leap in tropical cyclone forecasting accuracy during the 2021-2025 period compared to 2016-2020. Track forecast errors have been reduced by 5-10% for lead times up to 48 hours and by 20-25% for longer lead times. Intensity forecasting has also shown substantial improvement, with a 33-35% enhancement for lead times up to 72 hours, while errors at the 96-hour lead time have decreased by 10%. The most pronounced improvement has been observed in landfall prediction, which is critical for timely coastal evacuations. Landfall point errors decreased by 35-45% for 24 to 48 hours and by about 20% for other lead periods. The average 24- hour landfall point error reduced from 31.9 km during 2016-20 to 19.0 km during 2021-25, while the 48-hour landfall error declined from 61.5 km to 34.4 km. Heatwave forecasts are now issued 4–5 days in advance, enabling effective implementation of heat action plans by State and district authorities. These improvements have resulted in significant socio-economic benefits, including timely evacuation during cyclones, better agricultural planning during the monsoon, and improved disaster preparedness, thereby reducing loss of life, property, and economic disruptions across multiple sectors. The Ministry of Earth Sciences (MoES) periodically evaluates the benefits of improvements in weather and climate services through impact assessments, verification of forecast skill scores, and feedback from user sectors such as agriculture, disaster management, aviation, fisheries, and energy. These assessments indicate that improved forecasting capabilities—implemented by institutions such as the India Meteorological Department, Indian Institute of Tropical Meteorology, and the National Centre for Medium Range Weather Forecasting—have resulted in significant public benefits, including better early warnings for cyclones, heatwaves, heavy rainfall, and other extreme weather events. The improvements have enabled timely evacuations, enhanced disaster preparedness, better agricultural decision-making, and reduced loss of life and property. Further, Mission Mausam has been designed as a multi-phase programme. The Government proposes to continue and expand the initiative in subsequent phases based on the outcomes of the first phase. Several initiatives under the mission expected to improve our understanding of the complex weather processes. The proposed second phase will focus on further strengthening the national weather observation network, enhancing high-resolution weather and climate modelling capabilities using advanced High-Performance Computing, integrating Artificial Intelligence and Machine Learning in forecasting systems. This information was submitted by Minister of State (Independent Charge) For Earth Sciences Dr. Jitendra Singh in Lok Sabha today. ******* NKR/JKP (Release ID: 2238030) Visitor Counter : 517 Read this release in: Urdu , हिन्दी , Punjabi , Telugu Ministry of Earth Sciences PARLIAMENT QUESTION: Implementation of Mission Mausam Posted On: 11 MAR 2026 12:21PM by PIB Delhi Under Mission Mausam, the High-Performance Computing (HPC) systems of the Ministry of Earth Sciences were inaugurated on 26 September 2024 by the Hon’ble Prime Minister at the Indian Institute of Tropical Meteorology, Pune and the National Centre for Medium Range Weather Forecasting, Noida. The systems, named “ARKA” (computing capacity of 11.77 petaflops) and “ARUNIKA” (8.24 petaflops), along with a dedicated 1.9 petaflops AI/ML system, have increased the Ministry’s total computing capacity to 21.91 petaflops. This enhanced computational infrastructure enables development of advanced high-resolution weather and climate models and the application of Artificial Intelligence and Machine Learning (AI and ML) for forecasting. IMD has achieved a significant leap in tropical cyclone forecasting accuracy during the 2021-2025 period compared to 2016-2020. Track forecast errors have been reduced by 5-10% for lead times up to 48 hours and by 20-25% for longer lead times. Intensity forecasting has also shown substantial improvement, with a 33-35% enhancement for lead times up to 72 hours, while errors at the 96-hour lead time have decreased by 10%. The most pronounced improvement has been observed in landfall prediction, which is critical for timely coastal evacuations. Landfall point errors decreased by 35-45% for 24 to 48 hours and by about 20% for other lead periods. The average 24- hour landfall point error reduced from 31.9 km during 2016-20 to 19.0 km during 2021-25, while the 48-hour landfall error declined from 61.5 km to 34.4 km. Heatwave forecasts are now issued 4–5 days in advance, enabling effective implementation of heat action plans by State and district authorities. These improvements have resulted in significant socio-economic benefits, including timely evacuation during cyclones, better agricultural planning during the monsoon, and improved disaster preparedness, thereby reducing loss of life, property, and economic disruptions across multiple sectors. The Ministry of Earth Sciences (MoES) periodically evaluates the benefits of improvements in weather and climate services through impact assessments, verification of forecast skill scores, and feedback from user sectors such as agriculture, disaster management, aviation, fisheries, and energy. These assessments indicate that improved forecasting capabilities—implemented by institutions such as the India Meteorological Department, Indian Institute of Tropical Meteorology, and the National Centre for Medium Range Weather Forecasting—have resulted in significant public benefits, including better early warnings for cyclones, heatwaves, heavy rainfall, and other extreme weather events. The improvements have enabled timely evacuations, enhanced disaster preparedness, better agricultural decision-making, and reduced loss of life and property. Further, Mission Mausam has been designed as a multi-phase programme. The Government proposes to continue and expand the initiative in subsequent phases based on the outcomes of the first phase. Several initiatives under the mission expected to improve our understanding of the complex weather processes. The proposed second phase will focus on further strengthening the national weather observation network, enhancing high-resolution weather and climate modelling capabilities using advanced High-Performance Computing, integrating Artificial Intelligence and Machine Learning in forecasting systems. This information was submitted by Minister of State (Independent Charge) For Earth Sciences Dr. Jitendra Singh in Lok Sabha today. ******* NKR/JKP (Release ID: 2238030) <span style="font-family:Times New Roman,Times,serif"><span style="font-size:16px">Under Mission Mausam, the High-Performance Computing (HPC) systems of the Ministry of Earth Sciences were inaugurated on 26 September 2024 by the Hon’ble Prime Minister at the Indian Institute of Tropical Meteorology, Pune and the National Centre for Medium Range Weather Forecasting, Noida. The systems, named “ARKA” (computing capacity of 11.77 petaflops) and “ARUNIKA” (8.24 petaflops), along with a dedicated 1.9 petaflops AI/ML system, have increased the Ministry’s total computing capacity to 21.91 petaflops. This enhanced computational infrastructure enables development of advanced high-resolution weather and climate models and the application of Artificial Intelligence and Machine Learning (AI and ML) for forecasting. </span></span></p> <p style="margin-right:-7.7pt; text-align:justify"> </p> <p style="margin-right:-7.7pt; text-align:justify"><span style="font-family:Times New Roman,Times,serif"><span style="font-size:16px">IMD has achieved a significant leap in tropical cyclone forecasting accuracy during the 2021-2025 period compared to 2016-2020. Track forecast errors have been reduced by 5-10% for lead times up to 48 hours and by 20-25% for longer lead times. Intensity forecasting has also shown substantial improvement, with a 33-35% enhancement for lead times up to 72 hours, while errors at the 96-hour lead time have decreased by 10%. The most pronounced improvement has been observed in landfall prediction, which is critical for timely coastal evacuations. Landfall point errors decreased by 35-45% for 24 to 48 hours and by about 20% for other lead periods. The average 24- hour landfall point error reduced from 31.9 km during 2016-20 to 19.0 km during 2021-25, while the 48-hour landfall error declined from 61.5 km to 34.4 km. Heatwave forecasts are now issued 4–5 days in advance, enabling effective implementation of heat action plans by State and district authorities. These improvements have resulted in significant socio-economic benefits, including timely evacuation during cyclones, better agricultural planning during the monsoon, and improved disaster preparedness, thereby reducing loss of life, property, and economic disruptions across multiple sectors.</span></span></p> <p style="margin-right:-7.7pt; text-align:justify"> </p> <p style="margin-right:-7.7pt; text-align:justify"><span style="font-family:Times New Roman,Times,serif"><span style="font-size:16px">The Ministry of Earth Sciences (MoES) periodically evaluates the benefits of improvements in weather and climate services through impact assessments, verification of forecast skill scores, and feedback from user sectors such as agriculture, disaster management, aviation, fisheries, and energy. These assessments indicate that improved forecasting capabilities—implemented by institutions such as the India Meteorological Department, Indian Institute of Tropical Meteorology, and the National Centre for Medium Range Weather Forecasting—have resulted in significant public benefits, including better early warnings for cyclones, heatwaves, heavy rainfall, and other extreme weather events. The improvements have enabled timely evacuations, enhanced disaster preparedness, better agricultural decision-making, and reduced loss of life and property.</span></span></p> <p style="margin-right:-7.7pt"> </p> <p style="margin-right:-7.7pt; text-align:justify"><span style="font-family:Times New Roman,Times,serif"><span style="font-size:16px">Further, Mission Mausam has been designed as a multi-phase programme. The Government proposes to continue and expand the initiative in subsequent phases based on the outcomes of the first phase. Several initiatives under the mission expected to improve our understanding of the complex weather processes. The proposed second phase will focus on further strengthening the national weather observation network, enhancing high-resolution weather and climate modelling capabilities using advanced High-Performance Computing, integrating Artificial Intelligence and Machine Learning in forecasting systems.</span></span></p> <p style="margin-right:-7.7pt; text-align:justify"> </p> <p style="margin-right:-7.7pt; text-align:justify"><span style="font-family:Times New Roman,Times,serif"><span style="font-size:16px">This information was submitted by Minister of State (Independent Charge) For Earth Sciences Dr. Jitendra Singh in Lok Sabha today. </span></span></p> <p style="margin-right:-7.7pt; text-align:center"><span style="font-family:Times New Roman,Times,serif"><span style="font-size:16px">*******</span></span></p> <p><strong><span style="font-family:Times New Roman,Times,serif"><span style="font-size:16px">NKR/JKP </span></span></strong></p> " /> var mPlayer = document.getElementById("background_music"); 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PARLIAMENT QUESTION: Implementation of Mission Mausam
For UPSC
Remember Mission Mausam inaugurated 26 September 2024 in Pune and Noida; ARKA (11.77 petaflops) and ARUNIKA (8.24 petaflops) plus 1.9 petaflops AI system; total 21.91 petaflops capacity; landfall error reduced 35-45% for 24-48 hours.
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