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Detection of flood disaster system based on IoT, big data and convolutional deep neural network

Abstract

Natural disasters could be defined as a blend of natural risks and vulnerabilities. Each year, natural as well as human-instigated disasters, bring about infrastructural damages, distresses, revenue losses, injuries in addition to huge death roll. Researchers around the globe are trying to find a unique solution to gather, store and analyse Big Data (BD) in order to predict results related to flood based prediction system. This paper has proposed the ideas and methods for the detection of flood disaster based on IoT, BD, and convolutional deep neural network (CDNN) to overcome such difficulties. First, the input data is taken from the flood BD. Next, the repeated data are reduced by using HDFS map-reduce (). After removal of repeated data, the data are pre-processed using missing value imputation and normalization function.

Author(s)

seifedine kadry

Journal/Conference Information

Computer Communications ,DOI: 10.1016/j.comcom.2019.11.022, ISSN: 01403664, Volume: 150, Issue: 1, Pages Range: 150-157,