Abstract
AbstractDecadal climate prediction has been recognized as the important information for policy makers for agriculture, health and energy sectors and the general public for any near‐term planning. The modelling community is determined to put forward a reliable near‐term climate forecasting system, to predict annual to decadal state and variability of climate. However, deriving reliable information from the decadal prediction/hindcast is still a challenge. This study examines the decadal hindcast simulations of surface air temperature (SAT) over India in seven different ocean–atmosphere coupled models from the Coupled Model Intercomparison Project Phase 5 (CMIP5). Each decadal hindcast is available for the next 10‐years period from the initialized climate states of 1961–2006. The performance of models is assessed using different evaluation metrics, such as absolute mean difference, root mean square error, skill score and uncertainty in terms of the range of hindcasts. The multimodel ensemble mean displayed considerable skill in representing the spatial distribution of SAT over the Indian region except over the western Himalaya and Northeast India. Our results indicate that the decadal hindcasts skills improved noticeably when quantile mapping (QM) approach is used for the bias corrections. The major improvements are seen in terms of reducing absolute mean difference and uncertainty, regardless of lead time and region. The present study advocates that QM approach is useful not only for reducing bias but also for improving the decadal hindcast skill for SAT over India in the coupled models.
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