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A multiphase CMAQ version 5.0 adjoint

机译:多相CMAQ版本5.0伴随

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We present the development of a multiphase adjoint for the Community Multiscale Air Quality (CMAQ) model, a widely used chemical transport model. The adjoint model provides location- and time-specific gradients that can be used in various applications such as backward sensitivity analysis, source attribution, optimal pollution control, data assimilation, and inverse modeling. The science processes of the CMAQ model include gas-phase chemistry, aerosol dynamics and thermodynamics, cloud chemistry and dynamics, diffusion, and advection. Discrete adjoints are implemented for all the science processes, with an additional continuous adjoint for advection. The development of discrete adjoints is assisted with algorithmic differentiation (AD) tools. Particularly, the Kinetic PreProcessor (KPP) is implemented for gas-phase and aqueous chemistry, and two different automatic differentiation tools are used for other processes such as clouds, aerosols, diffusion, and advection. The continuous adjoint of advection is developed manually. For adjoint validation, the brute-force or finite-difference method (FDM) is implemented process by process with box- or column-model simulations. Due to the inherent limitations of the FDM caused by numerical round-off errors, the complex variable method (CVM) is adopted where necessary. The adjoint model often shows better agreement with the CVM than with the FDM. The adjoints of all science processes compare favorably with the FDM and CVM. In an example application of the full multiphase adjoint model, we provide the first estimates of how emissions of particulate matter (PM2.5) affect public health across the?US.
机译:我们展示了社区多尺度空气质量(CMAQ)模型的多相伴随的开发,广泛使用的化学传输模型。伴随模型提供了可以在各种应用中使用的位置和时间特定梯度,例如向后敏感性分析,源归因,最佳污染控制,数据同化和反向建模。 CMAQ模型的科学过程包括气相化学,气溶胶动力学和热力学,云化学和动力学,扩散和平流。为所有科学过程实施离散伴侣,并持续持续伴随平流。离散伴随的开发是辅助算法分化(AD)工具的辅助。特别地,动力学预处理器(KPP)用于气相和含水化学,两种不同的自动分化工具用于其他方法,例如云,气溶胶,扩散和平流。平流的持续伴随是手动开发的。为了伴进验证,通过框或列模拟的进程实现了蛮力或有限差分方法(FDM)。由于FDM的固定局限性由数值圆偏差误差引起的FDM,在必要时采用复杂的变量方法(CVM)。伴随模型通常与CVM展示比FDM更好。所有科学过程的伴随对FDM和CVM的比较有利。在全多相伴随模型的示例应用中,我们提供了颗粒物质排放量(PM2.5)对其对方影响公共卫生的第一次估计。
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