Anselin, L (2013). Spatial Econometrics: Methods and Models; Springer Science & Business Media: Berlin, Germany.
Bahri A, Khosravi Y, Tavakoli A. Comparison of the Performance of Geographically Weighted Regression and Ordinary Least Squares for modeling of Sea surface temperature in Oman Sea. jgit 2019; 7 (3) :159-172.
Bala , Ruchi., Prasad, Rajendra.,& Pratap Yadav, Vijay (2022). A comparative analysis of day and night land surface temperature in two semi-arid cities using satellite images sampled in different seasons, Adv. Space Res. 66(2) (2022) 412e.425.
Bala, Ruchi., Prasad, Rajendra., Yadav, Vijay Pratap (2021). Quantification of urban heat intensity with land use/land cover changes using Landsat satellite data over urban landscapes, Theor. Appl. Climatol.145 (2021) 1e.12.
Diksha,
Kumari, & Kumari, Rina (2023). Spatiotemporal Characterization of Land Surface Temperature in Relation Landuse/Cover: a Spatial Autocorrelation Approach, Journal of Landscape Ecology (2023), Vol: 16 / No. 1.
Emami, Sedighe & emami, Esmail (2018). Investigation of Urban Biophysical Compounds in the Formation of Thermal Islands Using RS and GIS (Case Study: Yazd 2018،.“Journal of Radar and Optic Remote Sensing” (JRORS), 2018. Vol 1(lssue 1.2).15-35.
Foody, G.M (2004). Spatial non stationarity and scale dependency in the relationship between species richness and environmental determinants for the sub-Saharan endemic avifauna. Global Ecology and Biogeography, 13:315-320.
Fotheringham, A.S, Brunsdon., C. and Charlton., M (2002). Geographically Weighted Regression: the analysis of spatially varying relationships, Chichester: Wiley.
https://www.researchgate.net/publication/27246972
Gupta, Neha., Mathew, Aneesh.,& Khandelwal, Sumit (2020). Spatio-temporal impact assessment of land use/land cover (LU-LC) change on land surface temperatures over Jaipur city in India, Int. J. Urban Sustain. Dev.12(3) (2020)283 e.299.
Hashemi-Dareh Badami, S., Nouraey-Sefat, I., Karimi, S., & Nazari, S. (2015). Analysis of urban heat island development in relation to land use/cover changes using Landsat time series imagery. Remote Sensing and Geographic Information Systems in Natural Resources, 6(3), 15–28.
Ibrahim , Siti Halipah., Ibrahim , Nurul Izzati Ahmat., Wahid, Julaihi., Goh, Nurakmal Abdullah., Koesmeri , Dona Rose Amer.,& Nawi , Mohd Nasrun Mohd (2018). The impact of road pavement on urban heat island (UHI) phenomenon, Civ. Eng. 9.2018(8).
Jiang, Peikun.,Fu, Weijun. J., Zhou, Guomo., and Zhao, Keli (2014). Using Moran's I and GIS to study the spatial pattern of forest litter carbon density in a subtropical region of southeastern China, Biogeosciences, 11, 2401–2409.
Jung, H.-S.; Park, S.-W (2014). Multi-Sensor Fusion of Landsat 8 Thermal Infrared (TIR) and Panchromatic (PAN) Images. Sensors. 2014, 14, 24425-24440.
https://doi.org/10.3390/s141224425
Khosravi, Y., Heydari, M. A., Tavakoli, A., & Zamani, A. (2017). Temporal analysis of land surface changes and spatial pattern of land use changes (Case study: Zanjan city). Spatial Planning (Modares Human Sciences), 21(3), 119–144. [In Persian]
Kumari, Maya ., Sarma, Kiranmay ., & Sharma, Richa (2019). Using Moran’s I and GIS to study the spatial pattern of land surface temperature in relation to land use/cover around a thermal power plant in Singrauli district, Madhya Pradesh, India. Remote Sensing Applications: Society and Environment, 15, 100239.
Levermore, GJ.,& Cheung, HKW (2012). A low-order canyon model to estimate the influence of canyon shape on the maximum urban heat island effect, Build. Serv. Eng. Technol. 33 (4) (2012) 371e 385.
Li, Shuangcheng ., Zhao, Zhiqiang ., Miaomiao, Xie .,& Wang, Yanglin (2010). Investigating spatial non-stationary and scale-dependent relationships between urban surface temperature and environmental factors using geographically weighted regression. Environ. Model. Softw. 2010, 25, 1789–1800.
Lillesand, Thomas., Kiefer, Ralph W., & Chipman, Jonathan (2015). Remote sensing and image nterpretation. John Wiley & Sons.
Liu, Xue., Ming, Yujia., Liu, Yong., Yue, Wenze and Han, Guifeng (2022). Influences of landform and urban form factors on urban heat island: comparative case study between Chengdu and Chongqing, Sci. Total Environ. 820 (2022), 153395.
Mahmoudzadeh, H., Nasiri, S., & Ghasemi, T. (2019). Urban heat islands. In Proceedings of the 5th International Conference on Environmental Engineering and Natural Resources (Tehran, Iran).
Mann, Henry. B (1945). Nonparametric Tests Against Trend. Econometrica 1945,13,245. [CrossRef] 40.
Maroufnejad, A. (2011). The impact of urban land uses on the formation of urban heat islands (Case study: Ahvaz city). Environmental Planning, 4(14), 65–90.
Mostafazadeh, R., Moradzadeh, V., Alaei, N., & Hezbavi, Z. (2021). Application of the Hurst exponent in determining long-term memory of precipitation and discharge time series in selected stations of Ardabil Province. Water and Soil Resources Conservation, 11(2).
Nakata-Osaki, Camila Mayumi ., Souza, Léa Cristina Lucas .,& Rodrigues, Daniel Souto (2018). THIS-Tool for Heat Island Simulation: a GIS extension model to calculate urban heat island intensity based on urban geometry, Comput. Environ. Urban Syst. 67(2018)157 e.168.
Peng, Jian., Jia, Jinglei., Liu, Yanxu., Li, Huilei., & Wu, Jiansheng (2018). Seasonal contrast of the dominant factors for spatial distribution of land surface temperature in urban areas, Remote Sens. Environ.215(2018), 255-267.
Rangzan, K., Maleki, S., Taghizadeh, A., & Heydarian, P. (2013). Modeling urban spatial development using Geographic Information System (GIS) technology and Geographically Weighted Regression (GWR): A case study of Tehran metropolis (Master's thesis, Faculty of Earth Sciences, Remote Sensing and GIS). [In Persian]
Ren, Jiayi., Yang, Jun., Zhang ,Yuqing., Xiao, Xiangming., Xia Jianhong Cecilia,. Li, Xueming., Wang, Shaohua (2022). Exploring thermal comfort of urban buildings based on local climate zones, J. Clean. Prod. 340 (2022), 130744.
Saeedi, S, Montazerolhodjah M & Sharifnejad M. (2020). An Analysis of the Relationship between Quantitative Factors of Canyon with the Temperature Differences in Historical Passages, Case Study: Meybod City. Urban Ecological Research, 14(1), 43-64.
Santamouris, M (2015). Regulating the damaged thermostat of citiesdstatus, impacts and mitigation challenges, Energy Build. 91 (2015) 43e.56.
Santamouris, Mattheos., Ding, Lan., & Osmond, Paul (2018). Urban heat island mitigation, in: Decarbonising the Built Environment, Palgrave Macmillan, Singapore, 2018, 337 e.335.
Sen, P.K., 1968. Estimates of the regression coefficient based on Kendall’s tau. Journal of American Statistical Association, 63 (324), 1379-1389.
doi:10.1080/01621459.1968.10480934.
Sen, Pranab Kumar (1968). Asymptotically efficient tests by the method of n rankings. J. Roy. Statist. Soc. Ser. B. 30 .
https://www. jstor.org/stable/2240259.
Sharma, Richa., Pradhan, Lolita., Kumari, Maya and
Bhattacharya, Prodyut (2021). Bhattacharya, Assessing urban heat islands and thermal comfort in Noida City using geospatial technology, Urban Clim. (2021), 100751.
Simmons, Mark T.., Gardiner, Brian., Windhager, Steve., Tinsley, Jeannine (2008). Green roofs are not created equal: the hydrologic and thermal performance of six different extensive green roofs and reflective and non-reflective roofs in a sub-tropical climate, Urban Ecosyst. 11(4) (2008) 339e.348.
Siqi, PanelJia., Yuhong, Wang., Ling, Chen., Xiaowen, Bi (2023). A novel approach to estimating urban land surface temperature by the combination of geographically weighted regression and deep neural network models,
Urban Climate,
Volume 47, January 2023, 101390.
Tran, Duy X., Pla ,Filiberto., Pedro, Latorre-Carmona., Myint ,Soe W., Mario Caetano, Kieu., Kieu, Hoan V (2017). Characterizing the relationship between land use land cover change and land surface temperature,
ISPRS Journal of Photogrammetry and Remote Sensing,
Volume 124, February 2017, 119-132.
Voogt, J.A. and Oke, T.R (2003). Thermal Remote Sensing of Urban Climates. Remote Sensing of Environment, 86, 370-384.
https://doi.org/10.1016/S0034-4257(03)00079-8.
Yao, Rui., Wang, Lunche., Huang, Xin., Zhang, Wenwen., Li, Junli., &Niu, Zigeng (2018). Interannual variations in surface urban heat island intensity and associated drivers in China, J. Environ. Manag. 222 (2018) 86e.94.
Yin, Shusheng., Liu, Jiatong., & Han, Zenglin (2022). Relationship between urban morphology and land surface temperature—a case study of Nanjing City, PLoS One 17 (2) (2022), e0260205.
Yuan, Fei., & Bauer, Marvin E (2007). Comparison of impervious surface area and normalized difference vegetation index as indicators of surface urban heat island effects in landsat imagery. Remote Sens. Environ. 2007, 106, 375-386.
Zandi, R., Soleimani Moghaddam, M., & Rouki, Z. (2022). Assessment of the spatial autocorrelation of land surface temperature with land use (Case study: Isfahan city). Geography and Environmental Planning, 34(1), 61–76.
Zandi, R., Zaheri-Abdovand, Z., & Emami, S. (2024). Assessment of land surface temperature and its relationship with spectral indices (Case study: Khuzestan Province). Geography and Development, 22(...), ...–...
Zhao, Chunhong, Jennifer Jensen, Qihao Weng, and Russell Weaver (2018). "A Geographically Weighted Regression Analysis of the Underlying Factors Related to the Surface Urban Heat Island Phenomenon" Remote Sensing 10, No. 9: 1428.