Harnessing artificial neural networks for coastal erosion prediction: A systematic review
Created by W.Langdon from
gp-bibliography.bib Revision:1.8414
- @Article{Khan:2025:marpol,
-
author = "Abdul Rehman Khan and
Mohd Shahrizal Bin {Ab Razak} and Badronnisa Binti Yusuf and
Helmi Zulhaidi Bin {Mohd Shafri} and Noorasiah Binti Mohamad",
-
title = "Harnessing artificial neural networks for coastal
erosion prediction: A systematic review",
-
journal = "Marine Policy",
-
year = "2025",
-
volume = "178",
-
pages = "106704",
-
keywords = "genetic algorithms, genetic programming, Coastal
erosion, Coastal retreat, Machine learning, Artificial
neural network, ANN, Systematic review, PRISMA
protocol",
-
ISSN = "0308-597X",
-
URL = "
https://www.sciencedirect.com/science/article/pii/S0308597X25001198",
-
DOI = "
doi:10.1016/j.marpol.2025.106704",
-
abstract = "Artificial Neural Networks (ANNs) have proven highly
effective for predicting coastal erosion, surpassing
traditional models in capturing complex nonlinear
relationships. This systematic review, conducted using
the PRISMA protocol, evaluates 40 coastal related
studies to assess ANN architectures, input variables,
training techniques, and performance metrics. Findings
indicate that Multi-Layer Perceptron (MLP) remains the
most widely used ANN architecture, while hybrid
approaches, including genetic programming and two-step
networks, enhance prediction accuracy. Although Long
Short-Term Memory (LSTM) and Convolutional Neural
Networks (CNNs) have been explored, their applications
remain limited. Research is predominantly concentrated
in Asia and Europe, underscoring the need for expansion
to Africa and South America. Despite advancements,
challenges persist, including data scarcity, optimal
data combinations, and model interpretability. Most
studies focus on short-term predictions, often
neglecting long-term coastal changes driven by climate
change and sea-level rise. Additionally, ANN
performance in predicting storm-induced erosion remains
inconsistent, as extreme storm events introduce rapid,
nonlinear changes that are difficult to model. Key
research gaps include the integration of real-time data
sources (e.g., wave, sediment, shoreline profiles, and
storm data), improved model transparency, and better
consideration of long-term shoreline evolution.
Addressing these challenges will enhance ANN-based
coastal prediction models, supporting adaptive
management, early warning systems, and sustainable
erosion mitigation strategies",
- }
Genetic Programming entries for
Abdul Rehman Khan
Mohd Shahrizal Bin Ab Razak
Badronnisa Binti Yusuf
Helmi Zulhaidi Bin Mohd Shafri
Noorasiah Binti Mohamad
Citations