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Optimization of a remote sensing energy balance method over different canopy applied at global scale

机译:全球范围应用遥感能量平衡方法优化

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Parameterization methods which calculate turbulent heat and water fluxes with thermal remote sensing data were evaluated in the revised remote sensing surface energy balance system (SEBS) model (Chen et al., 2013). The model calculates sensible heat (H) based on the Monin-Obukhov similarity theory (MOST) and determines latent heat (LE) as the residual of energy balance. We examined the uncertainties of H and LE in the SEBS model due to five key parameters at the local station point scale. Observations at 27 flux towers located in seven land cover types (needle-leaf forest, broadleaf forest, shrub, savanna, grassland, cropland, and sparsely vegetated land) and an artificial intelligence particle swarm optimization (PSO) algorithm was combined to calibrate the five parameters (leaf drag coefficient, leaf heat transfer coefficients, roughness length for soil, and two parameters for ground heat calculation) in the SEBS model. The root-mean-square error at the site scale was reduced by 9Wm(-2) for H, and 92Wm(-2) for LE, and their correlation coefficients were increased by 0.07 (H) and 0.11 (LE) after using the calibrated parameters. The updated model validation was further conducted globally for the remotely sensed evapotranspiration (ET) calculations. Overestimation of SEBS global ET was significantly improved by using the optimized values of the parameters. The results suggested PSO was able to consistently locate the global optimum of the SEBS model, and appears to be capable of solving the ET model optimization problem.
机译:在修订的遥感表面能平衡系统(SEBBS)模型中评估了使用热遥感数据计算湍流热量和水通量的参数化方法(Chen等,2013)。该模型基于Monin-Obukhov相似性理论(大多数)来计算合理的热(H),并确定潜热(LE)作为能量平衡的残余。由于本地站点尺度的五个关键参数,我们检查了SEBS模型中H和LE的不确定性。在七种土地覆盖类型(针叶林,阔叶林,灌木,大草原,草地,农田和稀疏植被土地)和人工智能粒子群(PSO)算法的27张磁带塔的观测结果组合以校准五种参数(叶片拖曳系数,叶片传热系数,SEBS模型中的土壤粗糙度和地面热量计算的两个参数)。在使用时,位点刻度的根平均方误差为9WM(-2),为92WM(-2),并且在使用后,它们的相关系数增加了0.07(h)和0.11(Le)。校准参数。更新的模型验证进一步在全球范围内进行,用于远程感测的蒸散(ET)计算。通过使用参数的优化值,显着改善了SEBS Global et的高估。结果表明PSO能够一致地定位SEBS模型的全局最优,并且似乎能够解决ET模型优化问题。

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