Regional analysis of specific suspended sediment loads in northern Iran using multivariate statistical techniques
Predicting suspended sediment loads in areas without detailed measurements, or with only short-term records, is crucial for the sustainable management of water resources. This study aimed to establish the relationships between specific suspended sediment loads and the characteristics of 23 sub-basins within the Haraz-Neka River basin, in Iran, to create regional models to estimate the sediment loads. To achieve this, several analytical methods were used, including cluster analysis, principal component analysis, principal component and classification analysis, and general linear modelling. Among these, the principal component analysis regression model was the most effective for estimating suspended sediment loads in the clusters. The principal component and classification analysis revealed that the best predictor was the first principal component, which strongly correlated with the minimum and mean elevation of the sub-basins. The general linear model regression showed the best overall performance for estimating regional suspended sediment loads in the study area.
| Item Type | Article |
|---|---|
| Open Access | Not Open Access |
| Additional information | This project was funded by a grant [grant number 600.871] from the research council of Shahid Beheshti University, Tehran, Iran. The contribution to this work by ALC was funded by UKRI-BBSRC (UK Research and Innovation Biotechnology and Biological Sciences Research Council) grant awards [BBS/E/C/000I0330 and BB/X010961/1] – specifically work package 2 – BBS/E/RH/230004B, Resilient Farming Futures: Detecting agroecosystem “resilience” using novel data science methods. |
| Keywords | Suspended sediment load, PCA, PCCA, GLM, Sub-basin characteristics |
| Project | Resilient Farming Futures (WP2): Detecting agroecosystem ‘resilience’ using novel data science methods, Resilient Farming Futures, S2N - Soil to Nutrition - Work package 3 (WP3) - Sustainable intensification - optimisation at multiple scales |
| Date Deposited | 05 Dec 2025 10:43 |
| Last Modified | 19 Dec 2025 14:57 |

