Comparison of Land Cover Change Prediction Models: A Case Study in Kedungkandang District, Malang City
Annisa Dira Hariyanto,
Adipandang Yudono,
Agus Dwi Wicaksono
Abstract:The infrastructure of Malang City is currently being directed towards the eastern and southeastern parts, Kedungkandang District. Infrastructure plays an important role in the aspect of land cover change, which raises the complexity of the emergence of urban forms and dynamics. This study compares three models, Artificial Neural Network (ANN), Logistic Regression (LR), and Multi-Criteria Evaluation (MCE), to predict changes in land cover in the Kedungkandang District using the Cellular Automata (CA) approach. … Show more
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