IoT-based flood disaster early detection system using hybrid
fuzzy logic and neural networks
Dublin Core
Title
IoT-based flood disaster early detection system using hybrid
fuzzy logic and neural networks
fuzzy logic and neural networks
Subject
Flood detection
Fuzzy model
Neural networks
Social media
Wireless sensor network
Fuzzy model
Neural networks
Social media
Wireless sensor network
Description
A flood stands as one of the most common natural occurrences, often resulting
in substantial financial losses to property and possessions, as well as affecting
human lives adversely. Implementing measures to prevent such floods becomes
crucial, offering inhabitants ample time to evacuate vulnerable areas before flood
events occur. In addressing the flood issue, numerous scholars have put forth
various solutions, such as the development of fuzzy system models and the establishment
of suitable infrastructure. However, when applying a fuzzy system,
it often results in a loss of interpretability of the fuzzy rules. To address this
issue effectively, we propose to reframe the optimization problem by incorporating
stage costs alongside the terminal cost. Results show the proposed model
called hybrid fuzzy logic and neural networks (NNs) can mitigate the loss of
interpretability. Results also show that the proposed method was employed in
a flood early detection system aligned with integrating into Twitter social media.
The proposed concepts are validated through case studies, showcasing their
effectiveness in tasks such as XOR-classification problems.
in substantial financial losses to property and possessions, as well as affecting
human lives adversely. Implementing measures to prevent such floods becomes
crucial, offering inhabitants ample time to evacuate vulnerable areas before flood
events occur. In addressing the flood issue, numerous scholars have put forth
various solutions, such as the development of fuzzy system models and the establishment
of suitable infrastructure. However, when applying a fuzzy system,
it often results in a loss of interpretability of the fuzzy rules. To address this
issue effectively, we propose to reframe the optimization problem by incorporating
stage costs alongside the terminal cost. Results show the proposed model
called hybrid fuzzy logic and neural networks (NNs) can mitigate the loss of
interpretability. Results also show that the proposed method was employed in
a flood early detection system aligned with integrating into Twitter social media.
The proposed concepts are validated through case studies, showcasing their
effectiveness in tasks such as XOR-classification problems.
Creator
Muhammad Adib Kamali1, Mochamad Nizar Palefi Ma’ady2
Source
Journal homepage: http://journal.uad.ac.id/index.php/TELKOMNIKA
Date
Mar 29, 2024
Contributor
PERI IRAWAN
Format
PDF
Language
ENGLISH
Type
TEXT
Files
Collection
Citation
Muhammad Adib Kamali1, Mochamad Nizar Palefi Ma’ady2, “IoT-based flood disaster early detection system using hybrid
fuzzy logic and neural networks,” Repository Horizon University Indonesia, accessed February 3, 2026, https://repository.horizon.ac.id/items/show/10225.
fuzzy logic and neural networks,” Repository Horizon University Indonesia, accessed February 3, 2026, https://repository.horizon.ac.id/items/show/10225.