Machine Learning-Based Assessment of Watershed Morphometry in Makran

Publication date

2023-04

Authors

Derakhshani, RezaORCID 0000-0001-7499-4384ISNI 0000000512522591
Zaresefat, Mojtaba
Nikpeyman, VahidISNI 0000000512565292
GhasemiNejad, Amin
Shafieibafti, Shahram
Rashidi, Ahmad
Nemati, Majid
Raoof, AmirISNI 0000000393905724

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Document Type

Article
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cc_by

Abstract

This study proposes an artificial intelligence approach to assess watershed morphometry in the Makran subduction zones of South Iran and Pakistan. The approach integrates machine learning algorithms, including artificial neural networks (ANN), support vector regression (SVR), and multivariate linear regression (MLR), on a single platform. The study area was analyzed by extracting watersheds from a Digital Elevation Model (DEM) and calculating eight morphometric indices. The morphometric parameters were normalized using fuzzy membership functions to improve accuracy. The performance of the machine learning algorithms is evaluated by mean squared error (MSE), mean absolute error (MAE), and correlation coefficient (R2) between the output of the method and the actual dataset. The ANN model demonstrated high accuracy with an R2 value of 0.974, MSE of 4.14 × 10−6, and MAE of 0.0015. The results of the machine learning algorithms were compared to the tectonic characteristics of the area, indicating the potential for utilizing the ANN algorithm in similar investigations. This approach offers a novel way to assess watershed morphometry using ML techniques, which may have advantages over other approaches.

Keywords

Makran, artificial neural networks, fuzzy analytic hierarchy process, multivariate linear regression, support vector regression, tectonics, watershed morphometry, Nature and Landscape Conservation, Global and Planetary Change, Ecology

Citation

Derakhshani, R, Zaresefat, M, Nikpeyman, V, GhasemiNejad, A, Shafieibafti, S, Rashidi, A, Nemati, M & Raoof, A 2023, 'Machine Learning-Based Assessment of Watershed Morphometry in Makran', Land, vol. 12, no. 4, 776. https://doi.org/10.3390/land12040776