application logistic regression and markov chain in land cover change prediction in east of mazandaran province
Authors
abstract
this study was performed with objective land cover change prediction (forest, agriculture, residential and orchard) using logistic regression and markov chain in the gis environment in east of mazandaran province. land cover change detected using satellite imageries belonging to the years 1987 and 2001. transition potential modeling was conducted using a logistic regression. seven variables (dem, distance from residential, distance from agriculture, distance from forest, distance from river, distance from road, and qualitative variable) and 7 sub-models (forest to agriculture, forest to residential, forest to orchard, agriculture to residential, agriculture to orchard, orchard to residential, orchard to agriculture) were employed. land cover change prediction conducted using markov chain and hard prediction for 2006. the accuracy assessment was determined using predicted map compared with actual map 2006. finally, landcover change prediction done for 2013. results showed that during the years 1987 to 2001, the large amount of forest and orchard have been reduced and, in contrast, agriculture and residential have been added. null successes, hits, misses and false alarms were 89.8%, 0.1%, 9.8% and 0.3% respectively. total error prediction model was 10.12% which is indicative of acceptable model. furthermore, the prediction results showed that forest and agriculture will be reduced and residential and orchard will be increased in 2013 compared with 2006.
similar resources
Prediction of Land Use Change and its Hydrological Effects Using Markov Chain Model and SWAT Model
Access to current and future water resources is one of the concerned problems for managers and policymakers around the world. Because of the communication between water resources and land use, these two topics had come together in different researches. Scenarios designed in regional land planning provide the basis for analyzing the existing opportunities and making the right decisions for manag...
full textSimulation and prediction of land use and land cover change using GIS, remote sensing and CA-Markov model
This study analyzes the characteristics of land use/land cover change in Jordan’s Irbid governorate, 1984–2018, and predicts future land use/land cover for 2030 and 2050 using a cellular automata-Markov model. The results inform planners and decision makers of past and current spatial dynamics of land use/land cover change and predicted urban expansion, for a better understanding and successful...
full textland use /cover change monitoring and prediction using markov chain (case study: the abbas plain)
remote sensing is a key technology for assessing expansion and rate of land cover changes that awareness of these changes as the basic information has a special importance for various programs. in this study, land use changes were examined over the past 24 years, and the feasibility of predicting it in the future was evaluated by using the markov chain model of the abbas plain. landsat tm, etm+...
full textMulti-period monitoring and prediction of forest cover loss using logistic regression model in Arasbaran catchments
Knowledge and understanding of changes in forest cover in relation to environmental factors (topography) can be valuable in terms of conservational and protective guidances. The purpose of this study was to identify, quantify and predict deforestation in relation to topographic variables using logistic regression model. The Arasbaran catchments (Naposhtehchay, Ilginehchay and Mardanqumchay) in ...
full textDetection and prediction of land use/ land cover changes using Markov chain model and Cellular Automata (CA-Markov), (Case study: Darab plain)
unprincipled changes in land use are major challenges for many countries and different regions of the world, which in turn have devastating effects on natural resources, Therefore, the study of land-use changes has a fundamental and important role for environmental studies. The purpose of this study is to detect and predicting of land use/ land cover (LULC) changes in Darab plain through the Ma...
full textApplication of DSmT for Land Cover Change Prediction
This chapter presents an environmental application of DSmT for the land cover prediction. The spatial prediction of land cover at the field scale in winter is useful to reduce the bare soils in agricultural intensive regions. Fusion process with the Dempster-Shafer theory (DST) proved to have limitations with the increase of conflict between the sources of evidence that support land cover hypot...
full textMy Resources
Save resource for easier access later
Journal title:
محیط زیست طبیعیجلد ۶۶، شماره ۴، صفحات ۳۵۱-۳۶۳
Keywords
Hosted on Doprax cloud platform doprax.com
copyright © 2015-2023