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Adjoint model enhanced plume reconstruction from tomographic remote sensing measurements

机译:伴随模型增强了基于层析成像遥感测量的羽流重建

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摘要

A new mathematical optimization method is presented for reconstructing pollution plume concentrations from tomographic remote sensing measurements on neighborhood scales (about 1 km × 1 km) using Differential Optical Absorption Spectroscopy (DOAS). The new method, called CAT-4Dvar, combines Computer Aided Tomography (CAT) and 4D variational (4Dvar) data assimilation. The objective of the method is to produce accurate reconstructions compared to the Algebraic Reconstruction Technique (ART) and other non-variational methods with only a small number of DOAS telescopes. A forward and adjoint 3D grid dispersion model was developed based on advection and diffusion solvers commonly used in air quality modeling. The adjoint model optimizes the model emissions and horizontal diffusion coefficient based on the difference between tomographic DOAS observations and ray path-integrated concentrations predicted by the forward model. It also updates the corresponding error covariances based on the Hessian of the cost function. An enhanced reconstruction is obtained from the forward model with optimized parameter values. In a synthetic experiment involving two hypothetical DOAS instruments, the CAT-4Dvar method yielded excellent results compared to ART, reducing the overall nearness index from 57% to 11%.
机译:提出了一种新的数学优化方法,该方法利用差分光吸收光谱法(DOAS)从邻域尺度(约1 km×1 km)的层析成像遥感测量中重建污染羽流浓度。这种称为CAT-4Dvar的新方法结合了计算机辅助层析成像(CAT)和4D变异(4Dvar)数据同化功能。与仅使用少量DOAS望远镜的代数重建技术(ART)和其他非变异方法相比,该方法的目的是产生准确的重建结果。基于空气质量建模中常用的对流和扩散求解器,开发了前向和伴随的3D网格扩散模型。伴随模型基于断层DOAS观测值与前向模型预测的射线路径积分浓度之间的差异,优化了模型发射和水平扩散系数。它还根据成本函数的Hessian更新相应的误差协方差。从前向模型获得具有优化参数值的增强重建。在涉及两个假设的DOAS仪器的合成实验中,与ART相比,CAT-4Dvar方法产生了出色的结果,将总体接近度指数从57%降低到11%。

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