IOT BASED EARLY FLOOD DETECTION USING MACHINE LEARNING
Author
Ramesh Byali, P Bindu Divya , Supraja V Maskikar , Chitrashree N , Sanjana H Bhonsle
Abstract
Flood
which is a complex phenomenon happening all over the world is the ultimate
result of climate change. Although there are some gauging stations which are
used to predict the occurrence of flood, but they are not really accurate.
Unexpected occurrence of flood is causing damage not just to the lives of
people but also to the valuable infrastructure. The purpose of our project is
to develop a real time and reliable flood monitoring and detection system using
deep learning. This paper proposes an wireless sensor networking technology as
the reliable, low power and wide area communication for flood detection. Beside
that we employee Convolutional Neural Network to detect the presence of living
beings who got struck in the flood
Keywords
machine learning, rain detection, flood
Full Text:
Download Paper PDF
References
[1]
S. K. Sood, R. Sandhu, K. Singla, and V. Chang, “IoT, big
data and HPC based smart flood management framework,” Sustainable Computing:
Informatics and Systems 20, pp.102–117, 2018.
[2]
P. Mitra et al., “Flood forecasting using Internet of things
and artificial neural networks,” 7th IEEE Annual Information Technology,
Electronics and Mobile Communication Conference, IEEE IEMCON 2016, pp. 1–5, 2016.
[3]
K. Mekki, E. Bajic, F. Chaxel, and F. Meyer, “A comparative
study of LPWAN technologies for large-scale IoT deployment,” ICT Express, vol.
5, no. 1, pp. 1–7, 2019.
[4]
G. Furquim, G. P. R. Filho, R. Jalali, G. Pessin, R. W. Pazzi,
and J. Ueyama, “How to improve fault tolerance in disaster predictions: A case
study about flash floods using IoT, ML and real data,” Sensors (Switzerland),
vol. 18, no. 3, pp. 1–20, 2018.
[5]
T. Perumal, M. N. Sulaiman, and C. Y. Leong, “Internet of
Things (IoT) enabled water monitoring system,” 2015 IEEE 4th Global Conference
on Consumer Electronics, GCCE 2015, pp. 86–87, 2016.
[6]
I. R. Widiasari, L. E. Nugroho, and Widyawan, “Deep learning
multilayer perceptron (MLP) for flood prediction model using wireless sensor
network based hydrology time series data mining,” Proceedings - 2017
International Conference on Innovative and Creative Information Technology:
Computational Intelligence and IoT, ICITech 2017, pp. 1–5, 2018.
[7]
M. Anbarasan et al., “Detection of flood disaster system based
on IoT, big data and convolutional deep neural network,” Computer
Communications, vol. 150, no. November, pp. 150–157, 2020.
[8]
Rodriguez, K. M., Reddy, R. S., Barreiros, A. Q., &
Zehtab, M. (2012, June). Optimizing Program Operations: Creating a Web-Based
Application to Assign and Monitor Patient Outcomes, Educator Productivity and
Service Reimbursement. In DIABETES (Vol. 61, pp. A631-A631). 1701 N BEAUREGARD
ST, ALEXANDRIA, VA 22311-1717 USA: AMER DIABETES ASSOC.
[9]
Reddy, R. R. S., Reis, I. M., & Kwon, D. (2020).
ABCMETAapp: R Shiny Application for Simulation-based Estimation of Mean and
Standard Deviation for Meta-analysis via Approximate Bayesian Computation
(ABC). arXiv preprint arXiv:2004.02065.
[10] Reddy, H. B. S.,
Reddy, R. R. S., Jonnalagadda, R., Singh, P., & Gogineni, A. (2022).
Usability Evaluation of an Unpopular Restaurant Recommender Web Application
Zomato. Asian Journal of Research in Computer Science, 13(4), 12-33.
[11] Reddy, H. B. S.,
Reddy, R. R. S., Jonnalagadda, R., Singh, P., & Gogineni, A. (2022).
Analysis of the Unexplored Security Issues Common to All Types of NoSQL
Databases. Asian Journal of Research in Computer Science, 14(1), 1-12.
[12] Singh, P.,
Williams, K., Jonnalagadda, R., Gogineni, A., & Reddy, R. R. (2022).
International students: What’s missing and what matters. Open Journal of Social
Sciences, 10(02), Jonnalagadda, R., Singh, P., Gogineni, A., Reddy, R. R.,
& Reddy, H. B. (2022). Developing, implementing and evaluating training for
online graduate teaching assistants based on Addie Model. Asian Journal of
Education and Social Studies, 1-10.
[13] Sarmiento, J. M.,
Gogineni, A., Bernstein, J. N., Lee, C., Lineen, E. B., Pust, G. D., &
Byers, P. M. (2020).Alcohol/illicit substance use in fatal motorcycle crashes.
Journal of surgical research, 256, 243-250.
[14] Brown, M. E.,
Rizzuto, T., & Singh, P. (2019). Strategic compatibility, collaboration
and Collective Impact for Community Change. Leadership & Organization
Development Journal, 40(4), 421-434.
[15] Sprague-Jones, J.,
Singh, P., Rousseau, M., Counts, J., & Firman, C. (2020). The
Protective Factors Survey, 2nd edition: Establishing validity and reliability
of a self-report measure of protective factors against child maltreatment.
Children and Youth Services Review, 111, 104868.
[16] Kwon, D., Reddy,
R., & Reis, I. M. (2021). ABCMETAapp: R shiny application for
simulation-based estimation of mean and standard deviation for meta-analysis
via approximate Bayesian computation. Research synthesis methods, 12(6),
842–848. https://doi.org/10.1002/jrsm.1505
Share your valuable work from Social Media Buttons