Spatial–temporal analysis of land-use/land-cover (LULC) change as well as the monitoring and modeling of urban expansion are essential for the planning and management of urban environments. Such environments reflect the economic conditions and quality of life of the individual country. Urbanization is generally influenced by national laws, plans and policies and by power, politics and poor governance in many less-developed countries. Remote sensing tools play a vital role in monitoring LULC change and measuring the rate of urbanization at both the local and global levels. The current study evaluated the LULC changes and urban expansion of Jhapa district of Nepal. The spatial–temporal dynamics of LULC were identified using six time-series at...
Urban expansion is considered as one of the most important problems in several developing countries....
Optical satellite imagery has been used for analyzing the spatial distribution, temporal changes and...
Globally, urbanization is increasing at an unprecedented rate at the cost of agricultural and forest...
This study explored the past and present land-use/land-cover (LULC) changes and urban expansion patt...
The present study utilized time-series Landsat images to explore the spatiotemporal dynamics of urba...
Understanding the spatiotemporal dynamics of urbanization and predicting future growth is now essent...
Spatial variabilities and drivers of land use and land cover (LULC) change over time and are crucial...
Recent rapid urbanization in developing countries presents challenges for sustainable environmental ...
The spatiotemporal variation of any landscape patterns is as a result of complex interactions of soc...
Cities are developing rapidly and subsequently influences the land use/land cover (LU/LC) changes. R...
Satellite images have been used extensively to identify the land use/land cover (LULC) changes in Ba...
Understanding changes in Land Use Land Cover (LULC) is essential for managing and monitoring natural...
This chapter looks at the use of a Markov chain–cellular automata method to model and then predict l...
Land use and land cover (LULC) change analysis is a critical instrument for studying urban growth ac...
This study integrated multi-temporal Landsat images, the Markov-Cellular Automation (CA) model, and ...
Urban expansion is considered as one of the most important problems in several developing countries....
Optical satellite imagery has been used for analyzing the spatial distribution, temporal changes and...
Globally, urbanization is increasing at an unprecedented rate at the cost of agricultural and forest...
This study explored the past and present land-use/land-cover (LULC) changes and urban expansion patt...
The present study utilized time-series Landsat images to explore the spatiotemporal dynamics of urba...
Understanding the spatiotemporal dynamics of urbanization and predicting future growth is now essent...
Spatial variabilities and drivers of land use and land cover (LULC) change over time and are crucial...
Recent rapid urbanization in developing countries presents challenges for sustainable environmental ...
The spatiotemporal variation of any landscape patterns is as a result of complex interactions of soc...
Cities are developing rapidly and subsequently influences the land use/land cover (LU/LC) changes. R...
Satellite images have been used extensively to identify the land use/land cover (LULC) changes in Ba...
Understanding changes in Land Use Land Cover (LULC) is essential for managing and monitoring natural...
This chapter looks at the use of a Markov chain–cellular automata method to model and then predict l...
Land use and land cover (LULC) change analysis is a critical instrument for studying urban growth ac...
This study integrated multi-temporal Landsat images, the Markov-Cellular Automation (CA) model, and ...
Urban expansion is considered as one of the most important problems in several developing countries....
Optical satellite imagery has been used for analyzing the spatial distribution, temporal changes and...
Globally, urbanization is increasing at an unprecedented rate at the cost of agricultural and forest...