4.5 Article

CDLSTM: A Novel Model for Climate Change Forecasting

Journal

CMC-COMPUTERS MATERIALS & CONTINUA
Volume 71, Issue 2, Pages 2363-2381

Publisher

TECH SCIENCE PRESS
DOI: 10.32604/cmc.2022.023059

Keywords

Himalayas; climate change; cdlstm; facebook; temperature; rainfall

Funding

  1. Deanship of Scientific Research at Majmaah University [R-2021-236]

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This study utilizes deep learning to analyze temperature and rainfall changes in the Himalayan states of India and develops models that accurately forecast temperature and rainfall values.
Water received in rainfall is a crucial natural resource for agricul-ture, the hydrological cycle, and municipal purposes. The changing rainfall pattern is an essential aspect of assessing the impact of climate change on water resources planning and management. Climate change affected the entire world, specifically India's fragile Himalayan mountain region, which has high significance due to being a climatic indicator. The water coming from Himalayan rivers is essential for 1.4 billion people living downstream. Earlier studies either modeled temperature or rainfall for the Himalayan area; however, the combined influence of both in a long-term analysis was not performed utilizing Deep Learning (DL). The present investigation attempted to analyze the time series and correlation of temperature (1796-2013) and rainfall changes (1901-2015) over the Himalayan states in India. The Climate Deep Long Short-Term Memory (CDLSTM) model was developed and optimized to forecast all Himalayan states' temperature and rainfall values. Facebook's Prophet (FB-Prophet) model was implemented to forecast and assess the performance of the developed CDLSTM model. The performance of both models was assessed based on various performance metrics and shown significantly higher accuracies and low error rates.

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