Gabriel Alves Veloso, M. E. Ferreira, B. B. Silva, Lucas Augusto Pereira Silva
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引用次数: 0
Abstract
Climate change, induced by human activities, is already a reality in the most diverse environments on Earth. Modelling forage capacity for herds has become an important management strategy, aiming to reduce environmental impacts and increase efficiency in meat production. This work aimed to estimate the Gross Primary Productivity (GPP) in pasture areas in savanna environments (locally known as Cerrado) of the state of Goiás, Brazil, with specific parameterization data for Brachiaria species. The experiment was carried out in pasture areas in the Rio Vermelho hydrographic basin (BHRV), in the western portion of Goiás, using Landsat 8 OLI / TIRS sensor satellite images, in which the variation in the GPP was recorded in 22 images in the period from October 2014 to May 2018. This parameter was estimated by coupling the SEBAL algorithms to estimate evapotranspiration, combined with the CASA model, which, together with surface data, calculates the GPP. Furthermore, for this same area, an adaptation of the GPP product methodology obtained by MOD17A2H was also carried out for Landsat 8 images to understand better the variation in GPP in medium spatial resolution images (30 m). Among the results, the SEBAL / CASA method proved to be more efficient among the methods applied in this research, following the climatic seasonality of the region and its influences on the pasture areas, with a variation of 0.10 to 5 g C m-2. Therefore, the estimate of the GPP aiming at a reading of the pasture and local climatic data presented better results with the calibration of the models with specific data.
由人类活动引起的气候变化,已经在地球上最多样化的环境中成为现实。模拟畜群的饲料容量已成为一项重要的管理策略,旨在减少对环境的影响并提高肉类生产的效率。本研究旨在估算巴西Goiás州草原环境(当地称为Cerrado)牧区的总初级生产力(GPP),并使用特定的Brachiaria物种参数化数据。实验在Goiás西部里约热内卢Vermelho水文盆地(BHRV)的牧区进行,使用Landsat 8 OLI / TIRS传感器卫星图像,记录了2014年10月至2018年5月期间22幅图像的GPP变化。该参数是通过将SEBAL算法与CASA模型相结合来估计蒸散发的,CASA模型与地表数据一起计算GPP。此外,同一地区,GPP产品的适应方法得到MOD17A2H也进行了地球资源观测卫星8图像更好地理解GPP的变化之间的中等空间分辨率图像(30米)。结果,SEBAL / CASA方法被证明是更有效的方法应用于本研究中,在该地区的气候季节性及其影响牧场区域,变化为0.10到5克C m - 2。因此,对特定数据的模型进行校准后,以牧场和当地气候数据为目标的GPP估算结果更好。