Abstract

Abstract. Handling complexity to the smallest detail in atmospheric radiative transfer models is unfeasible in practice. On the one hand, the properties of the interacting medium, i.e., the atmosphere and the surface, are only available at a limited spatial resolution. On the other hand, the computational cost of accurate radiation models accounting for three-dimensional heterogeneous media are prohibitive for some applications, especially for climate modelling and operational remote-sensing algorithms. Hence, it is still common practice to use simplified models for atmospheric radiation applications. Three-dimensional radiation models can deal with complex scenarios providing an accurate solution to the radiative transfer. In contrast, one-dimensional models are computationally more efficient, but introduce biases to the radiation results. With the help of stochastic models that consider the multi-fractal nature of clouds, it is possible to scale cloud properties given at a coarse spatial resolution down to a higher resolution. Performing the radiative transfer within the cloud fields at higher spatial resolution noticeably helps to improve the radiation results. We present a new Monte Carlo model, MoCaRT, that computes the radiative transfer in three-dimensional inhomogeneous atmospheres. The MoCaRT model is validated by comparison with the consensus results of the Intercomparison of Three-Dimensional Radiation Codes (I3RC) project. In the framework of this paper, we aim at characterising cloud heterogeneity effects on radiances and broadband fluxes, namely: the errors due to unresolved variability (the so-called plane parallel homogeneous, PPH, bias) and the errors due to the neglect of transversal photon displacements (independent pixel approximation, IPA, bias). First, we study the effect of the missing cloud variability on reflectivities. We will show that the generation of subscale variability by means of stochastic methods greatly reduce or nearly eliminate the reflectivity biases. Secondly, three-dimensional broadband fluxes in the presence of realistic inhomogeneous cloud fields sampled at high spatial resolutions are calculated and compared to their one-dimensional counterparts at coarser resolutions. We found that one-dimensional calculations at coarsely resolved cloudy atmospheres systematically overestimate broadband reflected and absorbed fluxes and underestimate transmitted ones.

Highlights

  • Clouds are the most complex objects of the Earth’s atmosphere

  • We present a new Monte Carlo model, Monte Carlo Radiative Transfer (MoCaRT), that computes the radiative transfer in three-dimensional inhomogeneous atmospheres

  • We found that one-dimensional calculations at coarsely resolved cloudy atmospheres systematically overestimate broadband reflected and absorbed fluxes and underestimate transmitted ones

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Summary

Introduction

Clouds are the most complex objects of the Earth’s atmosphere. their shape, extension and degree of inhomogeneity greatly depend on the cloud type. Some authors have proposed parameterisations in order to take into account 3-D RT effects in 1-D RT models by defining effective properties of the medium (e.g., Cahalan, 1994; Cairns et al, 2000) Another approach for dealing with cloud variability, but still using the efficient 1-D RT models, is the so-called Independent Pixel/Column Approximation (IPA/ICA). The ICA/IPA technique greatly improves the calculation of the radiative transfer by explicitly dealing with cloud variability, it does not account for horizontal radiation transport between atmospheric columns. This horizontal transport is known to be behind some important radiative processes, such as photon channelling, cloud side illumination or cloud side leakage.

MoCaRT – Monte Carlo Radiative Transfer model
Study – impact of missing variability
Findings
Effect of missing variability on radiances
Full Text
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