Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

A data‐mining‐based approach for aeolian desertification susceptibility assessment: A case‐study from Northern China

View through CrossRef
AbstractDesertification is a grave threat to the environment and livelihoods. Desertification susceptibility assessment (DSA) plays a critical role in reasonable desertification prevention planning by mapping the extent, intensity, and classification of desertification. Numerous desertification maps have been produced using various DSA methods. However, the method of rapid desertification mapping by objectively discovering valuable DSA knowledge from experienced experts stored in such maps has rarely been explored. We propose a data‐mining‐based approach to mapping aeolian desertification that applies the decision tree (DT) C5.0 (C5) algorithm as a knowledge discovery tool to the reference map and corresponding environmental variables. The results of our case‐study in Northern China show that the overall accuracy of aeolian desertification classification based on C5 is 86.69%, and the predicted map is highly consistent with the reference map. The DT algorithm outperforms the artificial neural network and naive Bayes approaches. Our results highlight the importance of selecting more representative training samples across where interleaved distributions of multiple aeolian desertification land exist when applying the DT algorithm. The findings of the present study are valuable for highlighting the significance of the data mining approach in DSA, with the growth of desertification maps. Given that aeolian desertification is a complex process coupling natural and human factors, and there are significant regional and scale differences in Northern China, further studies at a fine‐scale regarding human factors deserve more attention.
Title: A data‐mining‐based approach for aeolian desertification susceptibility assessment: A case‐study from Northern China
Description:
AbstractDesertification is a grave threat to the environment and livelihoods.
Desertification susceptibility assessment (DSA) plays a critical role in reasonable desertification prevention planning by mapping the extent, intensity, and classification of desertification.
Numerous desertification maps have been produced using various DSA methods.
However, the method of rapid desertification mapping by objectively discovering valuable DSA knowledge from experienced experts stored in such maps has rarely been explored.
We propose a data‐mining‐based approach to mapping aeolian desertification that applies the decision tree (DT) C5.
0 (C5) algorithm as a knowledge discovery tool to the reference map and corresponding environmental variables.
The results of our case‐study in Northern China show that the overall accuracy of aeolian desertification classification based on C5 is 86.
69%, and the predicted map is highly consistent with the reference map.
The DT algorithm outperforms the artificial neural network and naive Bayes approaches.
Our results highlight the importance of selecting more representative training samples across where interleaved distributions of multiple aeolian desertification land exist when applying the DT algorithm.
The findings of the present study are valuable for highlighting the significance of the data mining approach in DSA, with the growth of desertification maps.
Given that aeolian desertification is a complex process coupling natural and human factors, and there are significant regional and scale differences in Northern China, further studies at a fine‐scale regarding human factors deserve more attention.

Related Results

Comparison of aeolian desertification between the Moltsog dune field in Mongolia and Ujimqin dune field in China
Comparison of aeolian desertification between the Moltsog dune field in Mongolia and Ujimqin dune field in China
Aeolian desertification is a severe ecological and environmental problem in arid regions. Research on its temporal and spatial distribution, development model, and driving force is...
Hydatid Disease of The Brain Parenchyma: A Systematic Review
Hydatid Disease of The Brain Parenchyma: A Systematic Review
Abstarct Introduction Isolated brain hydatid disease (BHD) is an extremely rare form of echinococcosis. A prompt and timely diagnosis is a crucial step in disease management. This ...
Spatial-temporal pattern of desertification in the Selenge River Basin of Mongolia from 1990 to 2020
Spatial-temporal pattern of desertification in the Selenge River Basin of Mongolia from 1990 to 2020
Land degradation is the most serious environmental challenge in the Mongolian Plateau, an important arid and semiarid region east of the Eurasian continent. The Selenge River Basin...
Breast Carcinoma within Fibroadenoma: A Systematic Review
Breast Carcinoma within Fibroadenoma: A Systematic Review
Abstract Introduction Fibroadenoma is the most common benign breast lesion; however, it carries a potential risk of malignant transformation. This systematic review provides an ove...
Research Progress of Desertification and Its Prevention in Mongolia
Research Progress of Desertification and Its Prevention in Mongolia
Mongolia is a globally crucial region that has been suffering from land desertification. However, current understanding on Mongolia’s desertification is limited, constraining the d...
Assessment of Land Desertification in the Brazilian East Atlantic Region using the Medalus Model and Google Earth Engine
Assessment of Land Desertification in the Brazilian East Atlantic Region using the Medalus Model and Google Earth Engine
Many factors drive land desertification, especially in arid and semi-arid regions. However, the numerous driving factors of desertification make analyses computer expensive. Cloud ...
Assessment of Land Desertification in the Brazilian East Atlantic Region Using the Medalus Model and Google Earth Engine
Assessment of Land Desertification in the Brazilian East Atlantic Region Using the Medalus Model and Google Earth Engine
Many factors drive land desertification, especially in arid and semi-arid regions. However, the numerous driving factors of desertification make analyses computer expensive. Cloud ...
Modelling and Decision Support for a Desertification Issue Using Cellular Automata Approach
Modelling and Decision Support for a Desertification Issue Using Cellular Automata Approach
Modélisation et Aide à la Décision de la Problématique de la Désertification à l'Aide des Automates Cellulaires La désertification, en tant que problématique majeur...

Back to Top