Please use this identifier to cite or link to this item: http://hdl.handle.net/123456789/25021
Title: Prior Recognition of Flash Floods : Concrete Optimal Neural Network Configuration Analysis for Multi-Resolution Sensing
Authors: Talha, Ahmed Khan
Muhammad, Mansoor Alam
Zeeshan, Shahid
Mazliham, Mohd Su'ud
UniKL BMI
Keywords: Artificial Intelligence
Early Forecasting System
Flash floods
modified multi-layer feed forward neural network
multi-layer perceptron
multi-resolution sensing
particle swarm optimization algorithm
sensors
Issue Date: Nov-2020
Publisher: Institute of Electrical and Electronics Engineers Inc.
Citation: Khan, Talha Ahmed, Alam, M. M., Shahid, Zeeshan and M. M. Su’ud (2020). Prior Recognition of Flash Floods: Concrete Optimal Neural Network Configuration Analysis for Multi-Resolution Sensing. IEEE Access, Vol. 8, pp. 210006-210022. https://doi: 10.1109/ACCESS.2020.3038812
Abstract: Flash floods can demolish infrastructure and property within seconds as they are very sudden. Flash floods are the main cause of the casualties and loss of properties. Existing natural disaster prediction algorithms contains false alarms. Indefinite techniques have been applied to overcome this leading issue in many countries. A competent flood management system must have the potential and tendency to identify the flash floods and atmospheric and climatic changes on early basis with less false alarm rate. Techniques which have been designed for the flash flood investigation may be categorized into following types a. Sensors based direct measurement b. Radar images c. Satellite based X-band images. The proposed research consisted of Artificial intelligence-based decision making for multi-modal sensing (direct measurement from multi-resolution sensors). A combination of sensors like Passive infrared (PIR), water level sensor, ultrasonic sensor, temperature sensor, pressure and altimeter sensors have been integrated on a single device to investigate the flash floods. The use of most suitable pair of measurement sensors can substantially enhance the advantage of more accuracy and reliability compared to a single sensor. In recent trends Particle swarm optimization is very popular for solving stochastic global optimization problems. The data was trained and processed by modified multi-layer feed forward neural network optimized by particle swarm optimization algorithm. Hybrid Modified Particle swarm optimization has been combined with feed forward neural network for the vigorous investigation of flash floods with less false alarm rate. Simulated results showed that the proposed research algorithm Modified multi-layer feed forward neural network optimized by Particle swarm optimization for multi-modal sensing performed very well in terms of evaluation parameters compared to other existing strategies with minimum false alarm ratio. Moreover, modified multi-layer feed forward neural network optimized by article swarm optimization algorithm results have been compared with the cuckoo search, modified cuckoo search, particle swarm optimization and Multi-layer perceptron neural network configurations for the validation purpose.
Description: This article is indexed by Scopus
URI: http://hdl.handle.net/123456789/25021
ISSN: 21693536
Appears in Collections:Journal Articles



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