Investigating the transmission potential of land use and land cover using Similarity Weighted Instance based Learning, Logistic regression and Geomod methods (Case study: Bastam basin, Selseleh city)
Subject Areas : natural resorcessoheila naseri rad 1 , Hamed Naghavi 2 , Javad Soosani 3 , seyed ahmadreza nouredini 4 , sasan vafaei 5
1 - M.Sc in Forestry Engineering, Faculty of Agriculture and Natural Resources, Lorestan University, Khorramabad, Iran.
2 - Assistant Professor in Forestry Engineering, Faculty of Agriculture and Natural Resources, Lorestan University, Khorramabad, Iran. *( Corresponding author)
3 - Associate Professor in Forestry Engineering, Faculty of Agriculture and Natural Resources, Lorestan University, Khorramabad, Iran.
4 - Ph.D. in Forestry Engineering, Faculty of Agriculture and Natural Resources, University of Guilan, Rasht, Iran.
5 - Ph.D. in Forestry Engineering, Faculty of Agriculture and Natural Resources, Lorestan University, Khorramabad, Iran.
Keywords: land cover, Markov chain, Remote sensing, land use, Modeling,
Abstract :
Background and Objective: Assessing and estimating the high-accuracy transmission potential is an important step in the process of land use and land cover changes modeling and predicting. The aim of this study is to investigate the transmission potential of land use and land cover changes using Similarity Weighted Instance based Learning, Logistic regression and Geomod methods. Method: The land use and land cover maps for a 30-year period (1985-2015) were prepared using Landsat 5 and 8 satellite imagery. Land use and land cover transmission potential modeling was done using Similarity Weighted Instance based Learning, Logistic regression and Geomod methods and effective variables in the process of change. The accuracy of the results obtained from the models was determined by comparing with ground reality map for mentioned year. Findings: The Kappa coefficient of Similarity Weighted Instance based Learning, Logistic regression and Geomod were 0.84, 0.76 and 0.67, respectively. The investigating predicted maps for 2030 prepared by Similarity Weighted Instance based Learning and Markov chain showed that the area of residential areas, gardens and agricultural lands is increasing and the area of bare land, forests, pastures and water resources will have a decrease trend. Discussion and Conclusion: Finally, the results indicate a relatively high accuracy of three methods in estimating the transmission potential for land use and land cover changes, but according to the kappa coefficients, the accuracy of Similarity Weighted Instance based Learning method more than the other two methods.
- Mas, J.F., Kolb, M., Paegelow, M., Camacho Olmedo, M. T., Houet, T., 2014, Inductive pattern-based land use/cover change models: A comparison of four software packages. Environmental Modelling & Software, 51, pp 94-111.
- Parsamehr, K. Gholamalifard, M., 2016, Comparing Empirical Transition Potential Modeling Procedures and Their Implication as Baseline of REDD Projects in Mazandaran Province, The 1st National Conference on Geospatial Information Technology, pp 1-17. (In Persian)
- Kamyab, H., Salman Mahiny, A., Hossini, S., Gholamalifard, M. A., 2010, Knowledge-Based Approach to Urban Growth Modeling in Gorgan City Using Logistic Regression. Journal of Environmental Studies, 36(54), pp 89-96 (In Persian).
- Sangermano, F., Eastman, J.R., Zhu, H., 2010, Similarity weighted instance‐based learning for the generation of transition potentials in land use change modeling, Journal of Transactions in GIS, 14, pp 569-580.
- Mahiny, A. S., Turner, B. J., 2011, Modeling past change in vegetation through remote sensing and GIS: A comparison of neural network and logistic regression methods. Geocomputation, pp 1-24.
- Azizi Ghalati, S., Rangzan, K., Taghizadeh, A., Ahmadi, S., 2014, LCM Logistic regression modelling of land-use changes in Kouhmare Sorkhi, Fars province. Iranian Journal of Forest and Poplar Research, 22(4), pp 585-596. (In Persian)
- Moradi, Z., Mikaeili Tabrizi, A., Gholamalifard, M., 2015, Modeling and prediction of agricultural development using artificial neural network algorithms, Logistic regression and Similarity Weighted Instance based Learning, Case study: Gorganroud watershed, Golestan province. The national conference on horizon scanning of the earth with an emphasis on climate, agriculture and the environment, Shiraz, pp 1-8. (In Persian)
- Aliyo Bununu, Y., 2017, Integration of Markov chain analysis and similarity-weighted instance-based machine learning algorithm (Simweight) to simulate urban expansion: international journal of sciences, pp 1-21.
- Adhikari, S., Fik, T., Dwivedi, P., 2017, Proximate causes of land use and land cover change in Bannerghatta national park: a spatial statistical model, pp 1-23.
- Yaghoub Zadeh, B., 2014, Climate analysis of Aleshtar region, Selseleh division, Lorestan. Proceedings of the Meteorological Services of Lorestan Province, pp 1-17. (In Persian)
- Naseri, S., Naghavi, H., Soosani, J., Nouredini, A., 2019. Modeling the spatial changes of Zagros forests using satellite imagery and LCM model (Case study: Bastam, Selseleh). Geography and Development Iranian Journal, 17(54), pp 107-120.
- Pijanowski, B. C., Brown, D. G., Shellito, B. A., Manik, G. A., 2014, Using neural networks and GIS to forecast land use changes: a land transformation model Computers environment and urban systems. 26 (6), pp 553-575.
- Echeverria, C., Coomes, D. A., Hall, M., Newton, A. C., 2012, Spatially explicit model to analyze forest loss and fragmentation between 1976 and 2020 in southern Chile: 212 (3-4), pp 439-449.
- Cabral, P., Zamyatin, A., 2006, Three land change models for urban dynamics analysis in Sintra-Cascais area: Proceedings of First Workshop of the EARSEL SIG on Urban Remote Sensing, p 38.
- Kavyan, A., Zargosh, Z., Jaffaryan Jolodar, Z., Darabi, H., 2017, Land use Changes Modelling Using Logistic Regression and Markov Chain in the Haraz Watershed. Journal of Natural Environment, 70(2), pp 397-411. (In Persian)
- Griselda‚ V. Q.‚ Solis-Moreno‚ R.‚ Pompa-Garcia͵M.‚ Villarreal-Guerrero‚ F.‚ Pinedo-Alvarez‚ C.‚ Pinedo-Alvarez‚ A., 2016, Detection and Projection of Forest changes by Using the Markov Chain Model and Cellular Automata: Vincenzo Torretta. 8(236), pp 1-13.
- Laura, C., Schneider, R., Gil Pontius, J. R., 2014, Modeling land use change in the Ipswich watershed Massachusetts USA: Agriculture ecosystem and environment. (85), PP 83-94.
- Schulz, J. J., Cayuela, L., Rey, J. M., Schroder, B., 2011, Factors influencing vegetation cover nchange in mediterranean central chile: Applied vegegation science. 14 (4), pp 571-582.
- Mohammami, M., Amiri, M., Dastoorani, J., 2016, Modeling land use changes of Ramin city in the Golestan province, The Journal of Spatial Planning, 19(4), pp 141-158. (In Persian)
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- Mas, J.F., Kolb, M., Paegelow, M., Camacho Olmedo, M. T., Houet, T., 2014, Inductive pattern-based land use/cover change models: A comparison of four software packages. Environmental Modelling & Software, 51, pp 94-111.
- Parsamehr, K. Gholamalifard, M., 2016, Comparing Empirical Transition Potential Modeling Procedures and Their Implication as Baseline of REDD Projects in Mazandaran Province, The 1st National Conference on Geospatial Information Technology, pp 1-17. (In Persian)
- Kamyab, H., Salman Mahiny, A., Hossini, S., Gholamalifard, M. A., 2010, Knowledge-Based Approach to Urban Growth Modeling in Gorgan City Using Logistic Regression. Journal of Environmental Studies, 36(54), pp 89-96 (In Persian).
- Sangermano, F., Eastman, J.R., Zhu, H., 2010, Similarity weighted instance‐based learning for the generation of transition potentials in land use change modeling, Journal of Transactions in GIS, 14, pp 569-580.
- Mahiny, A. S., Turner, B. J., 2011, Modeling past change in vegetation through remote sensing and GIS: A comparison of neural network and logistic regression methods. Geocomputation, pp 1-24.
- Azizi Ghalati, S., Rangzan, K., Taghizadeh, A., Ahmadi, S., 2014, LCM Logistic regression modelling of land-use changes in Kouhmare Sorkhi, Fars province. Iranian Journal of Forest and Poplar Research, 22(4), pp 585-596. (In Persian)
- Moradi, Z., Mikaeili Tabrizi, A., Gholamalifard, M., 2015, Modeling and prediction of agricultural development using artificial neural network algorithms, Logistic regression and Similarity Weighted Instance based Learning, Case study: Gorganroud watershed, Golestan province. The national conference on horizon scanning of the earth with an emphasis on climate, agriculture and the environment, Shiraz, pp 1-8. (In Persian)
- Aliyo Bununu, Y., 2017, Integration of Markov chain analysis and similarity-weighted instance-based machine learning algorithm (Simweight) to simulate urban expansion: international journal of sciences, pp 1-21.
- Adhikari, S., Fik, T., Dwivedi, P., 2017, Proximate causes of land use and land cover change in Bannerghatta national park: a spatial statistical model, pp 1-23.
- Yaghoub Zadeh, B., 2014, Climate analysis of Aleshtar region, Selseleh division, Lorestan. Proceedings of the Meteorological Services of Lorestan Province, pp 1-17. (In Persian)
- Naseri, S., Naghavi, H., Soosani, J., Nouredini, A., 2019. Modeling the spatial changes of Zagros forests using satellite imagery and LCM model (Case study: Bastam, Selseleh). Geography and Development Iranian Journal, 17(54), pp 107-120.
- Pijanowski, B. C., Brown, D. G., Shellito, B. A., Manik, G. A., 2014, Using neural networks and GIS to forecast land use changes: a land transformation model Computers environment and urban systems. 26 (6), pp 553-575.
- Echeverria, C., Coomes, D. A., Hall, M., Newton, A. C., 2012, Spatially explicit model to analyze forest loss and fragmentation between 1976 and 2020 in southern Chile: 212 (3-4), pp 439-449.
- Cabral, P., Zamyatin, A., 2006, Three land change models for urban dynamics analysis in Sintra-Cascais area: Proceedings of First Workshop of the EARSEL SIG on Urban Remote Sensing, p 38.
- Kavyan, A., Zargosh, Z., Jaffaryan Jolodar, Z., Darabi, H., 2017, Land use Changes Modelling Using Logistic Regression and Markov Chain in the Haraz Watershed. Journal of Natural Environment, 70(2), pp 397-411. (In Persian)
- Griselda‚ V. Q.‚ Solis-Moreno‚ R.‚ Pompa-Garcia͵M.‚ Villarreal-Guerrero‚ F.‚ Pinedo-Alvarez‚ C.‚ Pinedo-Alvarez‚ A., 2016, Detection and Projection of Forest changes by Using the Markov Chain Model and Cellular Automata: Vincenzo Torretta. 8(236), pp 1-13.
- Laura, C., Schneider, R., Gil Pontius, J. R., 2014, Modeling land use change in the Ipswich watershed Massachusetts USA: Agriculture ecosystem and environment. (85), PP 83-94.
- Schulz, J. J., Cayuela, L., Rey, J. M., Schroder, B., 2011, Factors influencing vegetation cover nchange in mediterranean central chile: Applied vegegation science. 14 (4), pp 571-582.
- Mohammami, M., Amiri, M., Dastoorani, J., 2016, Modeling land use changes of Ramin city in the Golestan province, The Journal of Spatial Planning, 19(4), pp 141-158. (In Persian)