24 February 2024 Evaluating gradient descent variations for artificial neural network bathymetry modeling and sensitivity analysis
Chih-Hung Lee, Min-Kung Hsu, Yu-Min Wang, Jan-Mou Leu, Chung-Ling Chen, Liwei Liu
Author Affiliations +
Abstract

Artificial intelligence has been widely applied to water depth retrieval across various environments, deemed essential for habitat modeling, hydraulic structure design, and watershed management. However, most of these models have been developed for deep waters, with the critical impact of the gradient descent algorithm often not evaluated. To address this gap in current research, this study adopted the artificial neural network with seven gradient descent methods, including step, momentum, quick propagation, delta-bar-delta, conjugate gradient, Levenberg–Marquardt, and resilient backpropagation (RProp), for shallow water depth modeling. Shallow water depths in Taiwan’s mountainous rivers were then modeled using multispectral imagery taken by drone and vegetation indices. From our results, it was revealed that methods optimizing weight updates were outperformed by those based on gradient information, such as RProp. The selection of gradient descent algorithm was identified as pivotal; an inappropriate selection might even result in performance inferior to a traditional linear regression model. In the sensitivity analysis, near-infrared and normalized difference water index were classified as highly sensitive. By leveraging multispectral data and vegetation indices with ANN, the optimal gradient descent algorithm and the critical model input for shallow water modeling were successfully identified, offering invaluable insights for future studies.

© 2024 Society of Photo-Optical Instrumentation Engineers (SPIE)
Chih-Hung Lee, Min-Kung Hsu, Yu-Min Wang, Jan-Mou Leu, Chung-Ling Chen, and Liwei Liu "Evaluating gradient descent variations for artificial neural network bathymetry modeling and sensitivity analysis," Journal of Applied Remote Sensing 18(2), 022204 (24 February 2024). https://doi.org/10.1117/1.JRS.18.022204
Received: 2 September 2023; Accepted: 16 January 2024; Published: 24 February 2024
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KEYWORDS
Artificial neural networks

Evolutionary algorithms

Performance modeling

Modeling

Simulations

Data modeling

Near infrared

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