Geospatial modelling of changes in land use/land cover dynamics using Multi-layer Perceptron Markov chain model in Rajshahi City, Bangladesh

Environmental Challenges - Tập 4 - Trang 100148 - 2021
Nataraj Narayan Dey1, Abdullah Al Rakib1, Abdulla - Al Kafy1,2, Vinay Raikwar3
1Department of Urban & Regional Planning, Rajshahi University of Engineering & Technology (RUET), Rajshahi, 6204, Bangladesh
2ICLEI South Asia, Rajshahi City Corporation, Rajshahi-6200, Bangladesh
3Government Mahatama Gandhi Smrati PG College, Itarsi Hoshangabad, Madhya Pradesh, India

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