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Predicting changes in land use/land cover and seasonal land surface temperature using multi-temporal landsat images in the northwest region of Bangladesh

机译:孟加拉国西北地区多颞土地覆盖和季节性地表温度的预测

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摘要

Land use/land cover (LULC) variations are accelerated by rapid urbanization and significantly impacted global Land Surface Temperature (LST). The dynamic increase in LST results in the Urban Heat Island (UHI) effect. In this study, future LULC change scenarios, seasonal (summer & winter) LST variations, and LST distribution over different LULC classes were predicted using Landsat satellite images for 1999, 2009, and 2019 in Rajshahi District, Bangladesh. Cellular Automata (CA) and Artificial Neural Network (ANN) procedures were used to predict the LULC changes and seasonal LST variations for 2029 and 2039. In addition, Focus Group Discussions (FGDs) and Key Informants Interviews (KIIs) were conducted to identify the possible impacts of LULC change, LST shifts, and climate change on agricultural productivity and developed a sustainable land use management plan for the study area. Validation of the CA model demonstrated an excellent accuracy with a kappa value of 0.82. Similarly, the ANN model's validation using Mean Square Error (0.523 and 0.796 for summer) and Correlation coefficient (0.6023 and 0.831 for winter) values demonstrated a good prediction accuracy. The LULC prediction result indicated that the built-up area will be expanded by 58.03 km2 and 79.90 km2, respectively, from 2019 to 2029 and 2039. The predicted seasonal LST indicated that in 2029 and 2039, more than 23.30 % and 50.46 % of the summer and 3.02 % and 13.02 % of the winter seasons will likely be experienced LSTs greater than 35 °C. The results of public participation exposed that changes in LULC classes, variations in LST, and climate change significantly impact the regional biodiversity (loss of farmland and water bodies), reduce agricultural productivity, and increase extreme weather events (flood, heavy rainfall, and cold/warm temperature). This study provides the useful guidelines for agricultural officers, urban planners, and environmental engineers to understand the spatial configurations of built-up area enlargement and provide effective policy measures to conserve farming lands to ensure environmental sustainability.
机译:利用土地使用/陆地覆盖(LULC)变化通过快速城市化加速,并显着影响全球陆地温度(LST)。城市热岛(UHI)效应的LST的动态增加。在这项研究中,未来LULC变化情景,季节(夏季和冬季)LST变化和LST分布在不同的LULC班拉杰沙希县,孟加拉国陆地卫星使用卫星图片对1999年,2009年,2019年进行了预测。蜂窝自动机(CA)和人工神经网络(ANN)程序用于预测2029年和2039年的LULC变化和季节性LST变化。此外,对焦点小组讨论(FGDS)和关键信息人员访谈(KIIS)进行了识别LULC变化,LST转变和气候变化对农业生产力的可能影响,并为研究区开发了可持续的土地利用管理计划。 CA型号的验证表明,具有0.82的κ值的优异精度。类似地,ANN模型使用均方误差(夏季0.523和0.796的验证)和相关系数(冬季0.6023和0.831)的值证明了良好的预测精度。 LULC预测结果表明,建筑面积分别从2019年到2029年和2039年分别扩大58.03平方公里和79.90平方公里。预测的季节性LST表示,在2029年和2039年,超过23.30%和50.46%夏季和3.02%和13.02%的冬季季节可能会经历大于35°C的LST。公众参与的结果暴露在Lulc课程中,LST的变化以及气候变化的变化显着影响区域生物多样性(田地和水机构的丧失),降低农业生产力,增加极端天气事件(洪水,大雨和冷/暖温)。本研究为农民,城市规划师和环境工程师提供了有用的准则,以了解建筑面积扩大的空间配置,并提供有效的政策措施,以保护农业土地以确保环境可持续性。

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