Center of Technology and Natural Resources, Federal University of Campina Grande, Campina Grande, Paraíba, Brazil.
Center for Water Systems, University of Exeter, Exeter, EX4 4QF, UK.
Environ Monit Assess. 2021 May 4;193(6):323. doi: 10.1007/s10661-021-09108-9.
The current study implements a cellular automata-based model for the development of land use/land cover (LULC) future scenarios using a Remote Sensing (RS) Imagery series (1985 to 2018) as data input and focusing on human activities drivers in a 6700-km watershed vital for the water security of Paraiba state, Brazil. The methodology has three stages: the first stage is the pre-processing of images and preparing them as data input for the cellular automata land use model built in the R software environment (SIMLANDER); the stage of calibration establishes the variables and verifies the influence of each one on the LULC of the region; the last step corresponds to the validation procedures. After model calibration, land use maps for future scenarios (2019 to 2045) were simulated. The results estimate a reduction of 737 km of natural land cover between the years 2019 and 2045. The spatial distribution of anthropogenic interference predicted a more significant degradation in the central region of the basin. This fact can be potentially attributed by the water availability increasing from the São Francisco River diversion. It is possible to identify an ascending trend of anthropogenic actions in the semi-arid region, which host the exclusively Brazilian biome-Caatinga-and contains biodiversity that cannot be found anywhere else on the Earth. The model helps large-scale LULC modelling based on RS products and expands the possibilities of hydrological, urban and social modelling in the Brazilian context.
本研究采用基于元胞自动机的模型,利用遥感(RS)影像序列(1985 年至 2018 年)作为数据输入,聚焦于对巴西帕拉伊巴州重要水源地流域内人类活动驱动因素的研究,对土地利用/土地覆盖(LULC)未来情景进行了开发。该方法分为三个阶段:第一阶段是对影像进行预处理,并将其准备为在 R 软件环境中构建的元胞自动机土地利用模型的输入数据(SIMLANDER);校准阶段确定了变量,并验证了每个变量对该地区土地利用的影响;最后一步对应于验证程序。在模型校准后,模拟了未来情景(2019 年至 2045 年)的土地利用图。结果预计在 2019 年至 2045 年期间,自然土地覆盖将减少 737 公里。人为干扰的空间分布预测流域中心区域的退化更为严重。这一事实可能归因于圣弗朗西斯科河改道导致的水资源可用性增加。在半干旱地区,人为活动呈现上升趋势,该地区拥有巴西特有的生物群落——卡廷加(Caatinga),并拥有地球上其他任何地方都找不到的生物多样性。该模型有助于基于 RS 产品进行大规模土地利用建模,并扩大了巴西水文、城市和社会建模的可能性。