4.3 Article

Upgrading the Salinity Index Estimation and Mapping Quality of Soil Salinity Using Artificial Neural Networks in the Lower-Cheliff Plain of Algeria in North Africa Amelioration de l'estimation de l'indice de salinite et de la qualite de la cartographie de la salinite des sols en utilisant les reseaux de neurones artificiels dans la plaine du Bas Cheliff au Nord de l'Algerie

期刊

CANADIAN JOURNAL OF REMOTE SENSING
卷 48, 期 2, 页码 182-196

出版社

TAYLOR & FRANCIS INC
DOI: 10.1080/07038992.2021.2010523

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资金

  1. International Cooperation Project of National Natural Science Foundation of China [41761144079]
  2. Strategic Priority Research Program of the Chinese Academy of Sciences
  3. Pan-Third Pole Environment Study for a Green Silk Road [XDA20060303]
  4. CAS PIFI fellowship [2021PC0002]
  5. Xinjiang Tianchi Hundred Talents Program [Y848041]
  6. CAS Inter-disciplinary Innovation Team [JCTD-2019-20]
  7. project of the Research Center of Ecology and Environment in Central Asia [Y934031]
  8. Regional Collaborative Innovation Project of Xinjiang Uygur Autonomous Regions [2020E01010]

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This study aimed to estimate and map soil salinity using both Salinity Index (SI) and Artificial Neural Networks (ANN). Results showed that the ANN model could provide more accurate estimation of electrical conductivity compared to the SI method, with a higher determination coefficient.
Since decades ago, the Lower Cheliff plain is under the continuous influence of soil salinization induced by mismanagement of the groundwater resources. The main purpose of this study was to estimate and map soil salinity using both Salinity Index (SI) and Artificial Neural Networks (ANN). In doing so, a total of 796 soil samples of Electrical Conductivity (EC, dS.m(-1)) measured in laboratory combined to spectral parameters data of Landsat-8 OLI, by applying a Salinity Index (SI) and used also to training the ANN model (80% of total data), the rest of the dataset (20%) was retained for validation with both methods. The results of applying an ANN estimator based on the reflectance values of three bands: green (B3), red (B4) and near-infrared (B5) as learning input neurons, proved their interest in the estimation of EC given a high determination coefficient (R-2 = 0.80) between the values of simulated truth and ground, compared to the results obtained using only the SI method giving a moderate precision (R-2 = 0.42). Regarding the soil salinity mapping, the two methods generated contrasting results, the SI estimates that 68.5% of the total area is affected by salinity (underestimation) meanwhile the ANN gave an estimation of 78.8%. In a conclusion, the estimation and mapping of soil salinity using the SI method has been upgraded significantly when ANN was involved.

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