Ismaila Abdur-Rahman Belel, Muhammed Ibrahim, Adamu Bashir
Department of Urban and Regional Planning, Faculty of Environmental Sciences, Modibbo Adama University, Yola, P.M.B. 2076, Yola, Adamawa State, Nigeria.
Department of Surveying and Geoinformatics, Faculty of Environmental Sciences, Modibbo Adama University, Yola, P.M.B. 2076, Yola, Adamawa State, Nigeria.
MethodsX. 2023 Jan 19;10:102022. doi: 10.1016/j.mex.2023.102022. eCollection 2023.
Land surface temperature (LST) is the instantaneous radiative skin temperature of land obtained from satellite sensors. Measured by visible, infrared or microwave sensors, the LST is useful in determining thermal comfort for urban planning. It also serves as a precursor to many underlying impacts such as health, climate change and the likelihood of rainfall. Due to the paucity of observed data because of cloud cover or rain-bearing clouds in the case of microwave sensors, it is necessary to model LST for the purpose of forecasting. Two spatial regression models were employed: the spatial lag model and the spatial error model. Using Landsat 8 and Shuttle Radar Topography Mission (SRTM), these models can be studied and compared in terms of their robustness in reproducing LST. Whereas LST is to be the independent variable, built-up area, water surface, albedo, elevation, and vegetation are to be considered as dependent variables and their relative contributions to LST examined.•Modeling LST based on spatial regression models with calculated LST as independent variable.•Dependent variables to be considered are normalised difference Built-up index (NDBI), normalised difference vegetation index (NDVI), modified normalised difference water index (MNDWI), albedo and elevation.•The models were validated using k-fold cross validation method, mean square error and standard deviation.
陆地表面温度(LST)是通过卫星传感器获取的陆地瞬时辐射皮肤温度。LST由可见光、红外线或微波传感器测量,在确定城市规划的热舒适度方面很有用。它也是许多潜在影响的先兆,如健康、气候变化和降雨可能性。由于在微波传感器的情况下,由于云层覆盖或降雨云导致观测数据匮乏,因此有必要为预测目的对LST进行建模。采用了两种空间回归模型:空间滞后模型和空间误差模型。利用陆地卫星8号和航天飞机雷达地形测绘任务(SRTM),可以在再现LST的稳健性方面对这些模型进行研究和比较。其中LST作为自变量,建成区、水面、反照率、海拔和植被作为因变量,并检验它们对LST的相对贡献。
•基于以计算出的LST为自变量的空间回归模型对LST进行建模。
•要考虑的因变量是归一化差异建成指数(NDBI)、归一化差异植被指数(NDVI)、改进的归一化差异水指数(MNDWI)、反照率和海拔。
•使用k折交叉验证法、均方误差和标准差对模型进行验证。