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International Journal of Advanced Research in Computer and Communication Engineering A monthly Peer-reviewed & Refereed journal
ISSN Online 2278-1021ISSN Print 2319-5940Since 2012
IJARCCE adheres to the suggestive parameters outlined by the University Grants Commission (UGC) for peer-reviewed journals, upholding high standards of research quality, ethical publishing, and academic excellence.
← Back to VOLUME 13, ISSUE 12, DECEMBER 2024

Flood Forecasting System using ML and BD

Vaishnavi V, P. Jahnavi Sai, Pranam B U, Arjun Kumar A V

DOI: 10.17148/IJARCCE.2024.131242

Abstract: Flood is one of the most disruptive natural hazards, responsible for loss of lives and damage to properties. A number of cities are subject to monsoons influences and hence face the disaster almost every year. Early notification of flood incident could benefit the authorities and public to devise both short and long terms preventive measures, to prepare evacuation and rescue mission, and to relieve the flood victims. Geographical locations of affected areas and respective severities, for instances, are among the key determinants in most flood administration. Thus far, an effective means of anticipating flood in advance remains lacking. Existing tools were typically based on manually input and prepared data. The processes were tedious and thus prohibitive for real-time and early forecasts. Furthermore, these tools did not fully exploit more comprehensive information available in current big data platforms. Therefore, this project proposes a novel flood forecasting system based on fusing meteorological, hydrological, geospatial, and crowd source big data in an adaptive machine learning framework. Data intelligence was driven by state of the-art learning strategies. Subjective and objective evaluations indicated that the developed system was able to forecast flood incidents, happening in specific areas and time frames. It was also later revealed by benchmarking experiments that the system configured with an MLP ANN gave the most effective prediction, with correct percentage, Kappa, MAE and RMSE of 97.93, 0.89, 0.01 and0.10, respectively.

Keywords:

  • Flood forecasting
  • Natural hazards
  • Monsoon influences
  • Early notification
  • Preventive measures
  • Evacuation and rescue
  • Geographical locations
  • Big data
  • Machine learning

How to Cite:

[1] Vaishnavi V, P. Jahnavi Sai, Pranam B U, Arjun Kumar A V, “Flood Forecasting System using ML and BD,” International Journal of Advanced Research in Computer and Communication Engineering (IJARCCE), DOI: 10.17148/IJARCCE.2024.131242