Monitoring land use changes and its future prospects using cellular automata simulation and artificial neural network for Ahmedabad city, India

Author(s):  
Saleem Ahmad Yatoo ◽  
Paulami Sahu ◽  
Manik H. Kalubarme ◽  
Bhagirath B. Kansara
2018 ◽  
Vol 10 (8) ◽  
pp. 2878 ◽  
Author(s):  
Xiaoli Hu ◽  
Xin Li ◽  
Ling Lu

Land use and land cover change (LUCC) is an important issue in global environmental change and sustainable development, yet spatial simulation of LUCC remains challenging due to the land use system complexity. The cellular automata (CA) model plays a crucial role in simulating LUCC processes due to its powerful spatial computing power; however, the majority of current LUCC CA models are binary-state models that cannot provide more general information about the overall spatial pattern of LUCC. Moreover, the current LUCC CA models rarely consider background artificial irrigation in arid regions. Here, a multiple logistic-regression-based Markov cellular automata (MLRMCA) model and a multiple artificial-neural-network-based Markov cellular automata (MANNMCA) model were developed and applied to simulate complex land use evolutionary processes in an arid region oasis (Zhangye Oasis), constrained by water resources and environmental policy change, during the period 2000–2011. Results indicated that the MANNMCA model was superior to the MLRMCA model in simulated accuracy. Furthermore, combining the artificial neural network with CA more effectively captured the complex relationships between LUCC and a set of spatial driving variables. Although the MLRMCA model also showed some advantages, the MANNMCA model was more appropriate for simulating complex land use dynamics. The two integrated models were reliable, and could reflect the spatial evolution of regional LUCC. These models also have potential implications for land use planning and sustainable development in arid regions.


2020 ◽  
Vol 6 (2) ◽  
Author(s):  
Trida Ridho Fariz ◽  
Ely Nurhidayati ◽  
Hidhayah Nur Damayanti ◽  
Elvita Safitri

Penelitian ini bertujuan untuk mengkomparasikan akurasi metode ANN dan LR dalam memprediksi perubahan lahan sawah di Kabupaten Purworejo. Adapun data masukan yang dibutuhkan adalah peta lahan sawah tahun 2008, 2015 dan 2019 hasil interpretasi visual citra satelit resolusi tinggi dan faktor pendorong perubahan lahan sawah. Hasil penelitian menunjukkan bahwa model prediksi lahan sawah yang dibangun dari ANN dan LR secara umum memiliki akurasi yang sama-sama baik. Tetapi jika dilihat dari total nilai false alarm dan misses, model CA yang dibangun dari ANN lebih baik dari LR. Hasil penelitian ini juga menunjukkan bahwa dalam rentang tahun 2008 sampai 2019, luasan lahan sawah di Kabupaten Purworejo berkurang sekitar 194.01 Ha.  Kata kunci: artificial neural network; cellular automata; logistic regression; perubahan penggunaan lahan; sawah.  This research aims to compare the accuracy of the ANN and LR methods in predicting changes in paddy fields in Purworejo Regency. The input data required is a map of paddy fields in 2008, 2015 and 2019 as a result of visual interpretation of high-resolution satellite imagery and the driving factors for changes in paddy fields. The results showed that the paddy field prediction model built from ANN and LR generally has the same accuracy. But if it is seen from the total value of false alarms and misses, the CA model from ANN is better than LR. This study shows that from 2008 to 2019, the area of paddy fields in Purworejo Regency decreased around 194.01 Ha. Keywords: artificial neural network; cellular automata; land-use changes; logistic regression; paddy field.


2012 ◽  
Vol 4 (2) ◽  
Author(s):  
Onuwa Okwuashi ◽  
Mfon Isong ◽  
Etim Eyo ◽  
Aniekan Eyoh ◽  
Okey Nwanekezie ◽  
...  

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