Abstract

Abstract A multi‐layer, 1D solar radiative transfer algorithm that accounts for subgrid‐scale cloud variability is presented. This algorithm is efficient and suitable for use in large‐scale models such as global climate and weather prediction models. While it is built on the same principles as standard multi‐layer 1D codes, there are two major differences. First, it is assumed that for all cloudy layers all the time, frequency distributions of optical depth τ are described by gamma probability density functions pr (τ) and characterized by mean optical depth τ and a variance‐related parameter v. Albedos and transmittances for individual layers are estimated by integrals over all τ of the plane‐parallel, homogeneous two‐stream approximation equations weighted by pr (τ). Thus, the model is referred to as the gamma‐weighted two‐stream approximation. Second, in an attempt to counteract the use of horizontally homogeneous fluxes, a method was devised that often reduces layer values of τ. The gamma‐weighted two‐stream approximation was implemented in a well known broadband column model and the parametrizations upon which it is built were tested using 2D and 3D inhomogeneous cloud fields generated by a bounded cascade model and cloud‐resolving models. All fields resolved the lowest 20 km of the atmosphere into at least 30 layers. Reference calculations were obtained by: (i) applying the 1D‐plane‐parallel, homogeneous model to each column and averaging (the independent column approximation); and (ii) a 3D Monte Carlo algorithm. the gamma‐weighted two‐stream approximation, the regular plane‐parallel, homogeneous, and two other 1D models operated on horizontally‐averaged versions of the fields (i.e. 1D vectors of cloud fraction, τ, and v ). For several demanding cases, the gamma‐weighted two‐stream approximation reduced plane‐parallel, homogeneous‐biases for TOA albedo and surface irradiance by typically more than 85%. Moreover, its estimates of atmospheric heating rates usually differed from the independent column approximation and Monte Carlo values by less than 10%. This translates into heating rate errors that are four to eight times smaller than those associated with conventional 1D plane‐parallel, homogeneous algorithms. In a large‐scale model, a multi‐layer solar code with the gamma‐weighted two‐stream approximation should require about twice as much CPU time as its plane‐parallel, homogeneous counterpart.

Keywords

Radiative transferAlgorithmScale (ratio)Monte Carlo methodComputational physicsPhysicsMeteorologyMathematicsOpticsStatistics

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Publication Info

Year
1999
Type
article
Volume
125
Issue
553
Pages
301-330
Citations
142
Access
Closed

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Cite This

Lazaros Oreopoulos, Howard W. Barker (1999). Accounting for subgrid‐scale cloud variability in a multi‐layer 1d solar radiative transfer algorithm. Quarterly Journal of the Royal Meteorological Society , 125 (553) , 301-330. https://doi.org/10.1002/qj.49712555316

Identifiers

DOI
10.1002/qj.49712555316

Data Quality

Data completeness: 77%