Research Article
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Year 2023, , 146 - 152, 19.03.2023
https://doi.org/10.30897/ijegeo.1162153

Abstract

References

  • Aitkenhead, M., & Aalders, I. (2009). Predicting land cover using GIS, Bayesian and evolutionary algorithm methods. Journal of environmental management, 90(1), 236-250.
  • Allbed, A., Kumar, L., & Sinha, P. (2014). Mapping and modelling spatial variation in soil salinity in the Al Hassa Oasis based on remote sensing indicators and regression techniques. Remote Sensing, 6(2), 1137-1157.
  • Başaran, N., MATCI, D. K., & Avdan, U. (2022). Using multiple linear regression to analyze changes in forest area: the case study of Akdeniz Region. International Journal of Engineering and Geosciences, 7(3), 247-263.
  • Bui, D. T., Panahi, M., Shahabi, H., Singh, V. P., Shirzadi, A., Chapi, K., . . . Li, S. (2018). Novel hybrid evolutionary algorithms for spatial prediction of floods. Scientific reports, 8(1), 1-14.
  • Butt, A., Shabbir, R., Ahmad, S. S., & Aziz, N. (2015). Land use change mapping and analysis using Remote Sensing and GIS: A case study of Simly watershed, Islamabad, Pakistan. The Egyptian Journal of Remote Sensing and Space Science, 18(2), 251-259.
  • Castillo, J. A. A., Apan, A. A., Maraseni, T. N., & Salmo III, S. G. (2017). Estimation and mapping of above-ground biomass of mangrove forests and their replacement land uses in the Philippines using Sentinel imagery. Isprs Journal of Photogrammetry and Remote Sensing, 134, 70-85.
  • Chen, J., Zhang, H., Fan, M., Chen, F., & Gao, C. (2021). Machine-learning-based prediction and key factor identification of the organic carbon in riverine floodplain soils with intensive agricultural practices. Journal of Soils and Sediments, 21(8), 2896-2907.
  • Çömert, R., Matcı, D. K., & Avdan, U. (2018). Detection of collapsed building from unmanned aerial vehicle data with object based image classification. Eskişehir Teknik Üniversitesi Bilim ve Teknoloji Dergisi B-Teorik Bilimler, 6, 109-116.
  • Dudu, H., & Çakmak, E. H. (2018). Climate change and agriculture: an integrated approach to evaluate economy-wide effects for Turkey. Climate and Development, 10(3), 275-288.
  • Fan, F., Weng, Q., & Wang, Y. (2007). Land use and land cover change in Guangzhou, China, from 1998 to 2003, based on Landsat TM/ETM+ imagery. Sensors, 7(7), 1323-1342.
  • Feranec, J., Hazeu, G., Christensen, S., & Jaffrain, G. (2007). Corine land cover change detection in Europe (case studies of the Netherlands and Slovakia). Land use policy, 24(1), 234-247.
  • Girma, R., Fürst, C., & Moges, A. (2021). Land Use Land Cover Change Modeling by Integrating Artificial-Neural-Network with Cellular Automata-Markov Chain Model in Gidabo River Basin, Main Ethiopian Rift. Environmental Challenges, 100419.
  • Gunst, R. F., & Mason, R. L. (1977). Biased estimation in regression: an evaluation using mean squared error. Journal of the American Statistical Association, 72(359), 616-628.
  • Jaiswal, R. K., Saxena, R., & Mukherjee, S. (1999). Application of remote sensing technology for land use/land cover change analysis. Journal of the Indian Society of Remote Sensing, 27(2), 123-128.
  • Kafy, A.-A., Naim, M. N. H., Subramanyam, G., Ahmed, N. U., Al Rakib, A., Kona, M. A., & Sattar, G. S. (2021). Cellular Automata approach in dynamic modelling of land cover changes using RapidEye images in Dhaka, Bangladesh. Environmental Challenges, 4, 100084.
  • Khosravi, K., Mao, L., Kisi, O., Yaseen, Z. M., & Shahid, S. (2018). Quantifying hourly suspended sediment load using data mining models: case study of a glacierized Andean catchment in Chile. Journal of Hydrology, 567, 165-179.
  • Koutras, A., Panagopoulos, A., & Nikas, I. A. (2017). Forecasting tourism demand using linear and nonlinear prediction models. Academica Turistica-Tourism and Innovation Journal, 9(1).
  • Küçük Matcı, D., Çömert, R., & Avdan, U. (2022). Analyzing and Predicting Spatiotemporal Urban Sprawl in Eskişehir Using Remote Sensing Data. Journal of the Indian Society of Remote Sensing, 1-14.
  • Li, C., & Jiang, L. (2006). Using locally weighted learning to improve SMOreg for regression. Pacific Rim International Conference on Artificial Intelligence,
  • Matcı, D. K., & Avdan, U. (2020). Comparative analysis of unsupervised classification methods for mapping burned forest areas. Arabian Journal of Geosciences, 13(15), 1-13.
  • Matcı, D. K., & Avdan, U. (2022). Data-driven automatic labelling of land cover classes from remotely sensed images. Earth Science Informatics, 1-13.
  • Mubea, K., Ngigi, T., & Mundia, C. (2011). Assessing application of Markov chain analysis in predicting land cover change: a case study of Nakuru municipality. Journal of Agriculture, Science and Technology, 12(2).
  • Ocer, N. E., Kaplan, G., Erdem, F., Kucuk Matci, D., & Avdan, U. (2020). Tree extraction from multi-scale UAV images using Mask R-CNN with FPN. Remote sensing letters, 11(9), 847-856.
  • Overmars, K. d., De Koning, G., & Veldkamp, A. (2003). Spatial autocorrelation in multi-scale land use models. Ecological modelling, 164(2-3), 257-270.
  • Pham, B. T., Ly, H.-B., Al-Ansari, N., & Ho, L. S. (2021). A Comparison of Gaussian Process and M5P for Prediction of Soil Permeability Coefficient. Scientific Programming, 2021.
  • Popovici, E. A., Bălteanu, D., & Kucsicsa, G. (2013). Assessment of changes in land-use and land-cover pattern in Romania using Corine Land Cover Database. Carpathian Journal of Earth and Environmental Sciences, 8(4), 195-208.
  • Potts, D. A., Marais, E. A., Boesch, H., Pope, R. J., Lee, J., Drysdale, W., . . . Moore, D. P. (2021). Diagnosing air quality changes in the UK during the COVID-19 lockdown using TROPOMI and GEOS-Chem. Environmental Research Letters, 16(5), 054031.
  • Seto, K. C., & Kaufmann, R. K. (2003). Modeling the drivers of urban land use change in the Pearl River Delta, China: integrating remote sensing with socioeconomic data. Land Economics, 79(1), 106-121.
  • Stathopoulou, M., & Cartalis, C. (2007). Daytime urban heat islands from Landsat ETM+ and Corine land cover data: An application to major cities in Greece. Solar Energy, 81(3), 358-368.
  • Url-1, 2015. TC. Tarım ve Orman Bakanlığı. "Corine Projesi." https://corine.tarimorman.gov.tr/ corineportal/ turkiyecalismalar .HTML.
  • Url-2, 2020. DSİ. "İşletmedeki Baraj ve Göletler." https:/ /bolge03. dsi.gov.tr/ Sayfa/Detay/898.
  • Url-3, 2022. Eskişehir Buyuksehir Belediyesi. 2020. "Coğrafya." http:// www. eskisehir. bel.tr/ sayfalar.php?
  • Wang, S. W., Gebru, B. M., Lamchin, M., Kayastha, R. B., & Lee, W.-K. (2020). Land use and land cover change detection and prediction in the Kathmandu District of Nepal using remote sensing and GIS. Sustainability, 12(9), 3925.
  • Wang, Y., & Witten, I. H. (1996). Induction of model trees for predicting continuous classes.
  • Willmott, C. J., & Matsuura, K. (2005). Advantages of the mean absolute error (MAE) over the root mean square error (RMSE) in assessing average model performance. Climate Research, 30(1), 79-82.
  • Yildiz, N. D., Avdan, U., Aytatlı, B., Kuzulugil, A., & Enes, A. (2021). Determination of Field Use Changes by Using Landscape Metrics:“Erzurum City Example”. Journal of the Institute of Science and Technology, 11(1), 661-671.
  • Zadbagher, E., Becek, K., & Berberoglu, S. (2018). Modeling land use/land cover change using remote sensing and geographic information systems: case study of the Seyhan Basin, Turkey. Environmental monitoring and assessment, 190(8), 1-15.

Estimation of Urban Area Change in Eskişehir Province Using Remote Sensing Data and Machine Learning Algorithms

Year 2023, , 146 - 152, 19.03.2023
https://doi.org/10.30897/ijegeo.1162153

Abstract

Rapid population growth, natural events, and increasing industrialization are among the factors affecting land use. To keep this change under control and to make sound plans, it is necessary to control the changes. In this study, the spatial use change in the Eskişehir region between the years 1990-2018 was examined with CORINE data. Based on this determined change, an urban change model was created with the multivariate regression method. As a result of the evaluations, while an increase was observed in urban areas and pastures between 1990-2018, a decrease was determined in agricultural and forest areas. This change is defined as 43.74% in urban areas, 3.28% in agricultural areas, 7.78% in forest areas, and 60.10% in pasture areas. SMOReg, MLP Regressor, and M5P Model Tree methods were used for the estimation study to be carried out with the obtained spatial change data. Urban values for 2018 were estimated to find the best method. Finally, the areas of 2030 were estimated with the method that gave the best results. The results demonstrated the usability of modeling using CORINE data.

References

  • Aitkenhead, M., & Aalders, I. (2009). Predicting land cover using GIS, Bayesian and evolutionary algorithm methods. Journal of environmental management, 90(1), 236-250.
  • Allbed, A., Kumar, L., & Sinha, P. (2014). Mapping and modelling spatial variation in soil salinity in the Al Hassa Oasis based on remote sensing indicators and regression techniques. Remote Sensing, 6(2), 1137-1157.
  • Başaran, N., MATCI, D. K., & Avdan, U. (2022). Using multiple linear regression to analyze changes in forest area: the case study of Akdeniz Region. International Journal of Engineering and Geosciences, 7(3), 247-263.
  • Bui, D. T., Panahi, M., Shahabi, H., Singh, V. P., Shirzadi, A., Chapi, K., . . . Li, S. (2018). Novel hybrid evolutionary algorithms for spatial prediction of floods. Scientific reports, 8(1), 1-14.
  • Butt, A., Shabbir, R., Ahmad, S. S., & Aziz, N. (2015). Land use change mapping and analysis using Remote Sensing and GIS: A case study of Simly watershed, Islamabad, Pakistan. The Egyptian Journal of Remote Sensing and Space Science, 18(2), 251-259.
  • Castillo, J. A. A., Apan, A. A., Maraseni, T. N., & Salmo III, S. G. (2017). Estimation and mapping of above-ground biomass of mangrove forests and their replacement land uses in the Philippines using Sentinel imagery. Isprs Journal of Photogrammetry and Remote Sensing, 134, 70-85.
  • Chen, J., Zhang, H., Fan, M., Chen, F., & Gao, C. (2021). Machine-learning-based prediction and key factor identification of the organic carbon in riverine floodplain soils with intensive agricultural practices. Journal of Soils and Sediments, 21(8), 2896-2907.
  • Çömert, R., Matcı, D. K., & Avdan, U. (2018). Detection of collapsed building from unmanned aerial vehicle data with object based image classification. Eskişehir Teknik Üniversitesi Bilim ve Teknoloji Dergisi B-Teorik Bilimler, 6, 109-116.
  • Dudu, H., & Çakmak, E. H. (2018). Climate change and agriculture: an integrated approach to evaluate economy-wide effects for Turkey. Climate and Development, 10(3), 275-288.
  • Fan, F., Weng, Q., & Wang, Y. (2007). Land use and land cover change in Guangzhou, China, from 1998 to 2003, based on Landsat TM/ETM+ imagery. Sensors, 7(7), 1323-1342.
  • Feranec, J., Hazeu, G., Christensen, S., & Jaffrain, G. (2007). Corine land cover change detection in Europe (case studies of the Netherlands and Slovakia). Land use policy, 24(1), 234-247.
  • Girma, R., Fürst, C., & Moges, A. (2021). Land Use Land Cover Change Modeling by Integrating Artificial-Neural-Network with Cellular Automata-Markov Chain Model in Gidabo River Basin, Main Ethiopian Rift. Environmental Challenges, 100419.
  • Gunst, R. F., & Mason, R. L. (1977). Biased estimation in regression: an evaluation using mean squared error. Journal of the American Statistical Association, 72(359), 616-628.
  • Jaiswal, R. K., Saxena, R., & Mukherjee, S. (1999). Application of remote sensing technology for land use/land cover change analysis. Journal of the Indian Society of Remote Sensing, 27(2), 123-128.
  • Kafy, A.-A., Naim, M. N. H., Subramanyam, G., Ahmed, N. U., Al Rakib, A., Kona, M. A., & Sattar, G. S. (2021). Cellular Automata approach in dynamic modelling of land cover changes using RapidEye images in Dhaka, Bangladesh. Environmental Challenges, 4, 100084.
  • Khosravi, K., Mao, L., Kisi, O., Yaseen, Z. M., & Shahid, S. (2018). Quantifying hourly suspended sediment load using data mining models: case study of a glacierized Andean catchment in Chile. Journal of Hydrology, 567, 165-179.
  • Koutras, A., Panagopoulos, A., & Nikas, I. A. (2017). Forecasting tourism demand using linear and nonlinear prediction models. Academica Turistica-Tourism and Innovation Journal, 9(1).
  • Küçük Matcı, D., Çömert, R., & Avdan, U. (2022). Analyzing and Predicting Spatiotemporal Urban Sprawl in Eskişehir Using Remote Sensing Data. Journal of the Indian Society of Remote Sensing, 1-14.
  • Li, C., & Jiang, L. (2006). Using locally weighted learning to improve SMOreg for regression. Pacific Rim International Conference on Artificial Intelligence,
  • Matcı, D. K., & Avdan, U. (2020). Comparative analysis of unsupervised classification methods for mapping burned forest areas. Arabian Journal of Geosciences, 13(15), 1-13.
  • Matcı, D. K., & Avdan, U. (2022). Data-driven automatic labelling of land cover classes from remotely sensed images. Earth Science Informatics, 1-13.
  • Mubea, K., Ngigi, T., & Mundia, C. (2011). Assessing application of Markov chain analysis in predicting land cover change: a case study of Nakuru municipality. Journal of Agriculture, Science and Technology, 12(2).
  • Ocer, N. E., Kaplan, G., Erdem, F., Kucuk Matci, D., & Avdan, U. (2020). Tree extraction from multi-scale UAV images using Mask R-CNN with FPN. Remote sensing letters, 11(9), 847-856.
  • Overmars, K. d., De Koning, G., & Veldkamp, A. (2003). Spatial autocorrelation in multi-scale land use models. Ecological modelling, 164(2-3), 257-270.
  • Pham, B. T., Ly, H.-B., Al-Ansari, N., & Ho, L. S. (2021). A Comparison of Gaussian Process and M5P for Prediction of Soil Permeability Coefficient. Scientific Programming, 2021.
  • Popovici, E. A., Bălteanu, D., & Kucsicsa, G. (2013). Assessment of changes in land-use and land-cover pattern in Romania using Corine Land Cover Database. Carpathian Journal of Earth and Environmental Sciences, 8(4), 195-208.
  • Potts, D. A., Marais, E. A., Boesch, H., Pope, R. J., Lee, J., Drysdale, W., . . . Moore, D. P. (2021). Diagnosing air quality changes in the UK during the COVID-19 lockdown using TROPOMI and GEOS-Chem. Environmental Research Letters, 16(5), 054031.
  • Seto, K. C., & Kaufmann, R. K. (2003). Modeling the drivers of urban land use change in the Pearl River Delta, China: integrating remote sensing with socioeconomic data. Land Economics, 79(1), 106-121.
  • Stathopoulou, M., & Cartalis, C. (2007). Daytime urban heat islands from Landsat ETM+ and Corine land cover data: An application to major cities in Greece. Solar Energy, 81(3), 358-368.
  • Url-1, 2015. TC. Tarım ve Orman Bakanlığı. "Corine Projesi." https://corine.tarimorman.gov.tr/ corineportal/ turkiyecalismalar .HTML.
  • Url-2, 2020. DSİ. "İşletmedeki Baraj ve Göletler." https:/ /bolge03. dsi.gov.tr/ Sayfa/Detay/898.
  • Url-3, 2022. Eskişehir Buyuksehir Belediyesi. 2020. "Coğrafya." http:// www. eskisehir. bel.tr/ sayfalar.php?
  • Wang, S. W., Gebru, B. M., Lamchin, M., Kayastha, R. B., & Lee, W.-K. (2020). Land use and land cover change detection and prediction in the Kathmandu District of Nepal using remote sensing and GIS. Sustainability, 12(9), 3925.
  • Wang, Y., & Witten, I. H. (1996). Induction of model trees for predicting continuous classes.
  • Willmott, C. J., & Matsuura, K. (2005). Advantages of the mean absolute error (MAE) over the root mean square error (RMSE) in assessing average model performance. Climate Research, 30(1), 79-82.
  • Yildiz, N. D., Avdan, U., Aytatlı, B., Kuzulugil, A., & Enes, A. (2021). Determination of Field Use Changes by Using Landscape Metrics:“Erzurum City Example”. Journal of the Institute of Science and Technology, 11(1), 661-671.
  • Zadbagher, E., Becek, K., & Berberoglu, S. (2018). Modeling land use/land cover change using remote sensing and geographic information systems: case study of the Seyhan Basin, Turkey. Environmental monitoring and assessment, 190(8), 1-15.
There are 37 citations in total.

Details

Primary Language English
Subjects Photogrammetry and Remote Sensing
Journal Section Research Articles
Authors

Dilek Küçük Matcı 0000-0002-4078-8782

Publication Date March 19, 2023
Published in Issue Year 2023

Cite

APA Küçük Matcı, D. (2023). Estimation of Urban Area Change in Eskişehir Province Using Remote Sensing Data and Machine Learning Algorithms. International Journal of Environment and Geoinformatics, 10(1), 146-152. https://doi.org/10.30897/ijegeo.1162153