Functional data analysis applied to the multi-spectral correlated– <ce:italic>k</ce:italic> distribution model
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Functional data analysis applied to the multi-spectral correlated– k distribution model

机译:应用于多光谱相关的功能数据分析 - k 分配模型

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AbstractThe Ck(Correlated-k) approach is among the most used method for the approximate modelling of the radiative properties of gases both in uniform and non-uniform media. One of its main defects is that the treatment of non-uniform gas paths is founded on the assumption of correlation - in fact co-monotonicity - of gas absorption coefficients in distinct states which is not rigorously verified for actual spectra. This correlation assumption fails as soon as large temperature gradients are encountered along the radiative path lengths. In order to circumvent this problem, a method based on functional data analysis (FDA) - referred to as the MSCkmodel in this work - was proposed in Refs. [1,2]. The principle of the method is to group together wavenumbers with respect to the spectral scaling functions - defined as the ratio between spectral absorption coefficients in distinct states - so that the correlation/co-monotonicity assumption can be considered as exact over the corresponding intervals of wavenumbers. Very few details were provided up to now about the application of FDA within the frame of the MSCkmodel. Indeed, most of our previous works were dedicated to the derivation of the methods itself. Accordingly, in the present paper, we mostly focus our attention on the mathematical definition of clusters of scaling function, quantities which are used to build spectral intervals over which gas spectra in distinct states are assumed to be scaled. The comparison of different clustering methods together with the criterion to select an appropriate number of clusters are described and discussed and the application of this approach for several test cases, including 3D geometries, are presented.]]>
机译:<![CDATA [ 抽象 c k (相关 - k )方法是最常用的方法,用于均匀和非均匀介质的气体辐射性能的近似建模。其主要缺陷之一是对非均匀气体路径的处理是基于相关性的相关性的假设 - 实际上是对实际光谱不严格验证的不同状态的气体吸收系数的共同单调性。只要沿着辐射路径长度遇到大的温度梯度,这种相关假设就会失败。为了规避这个问题,在参考文献中提出了一种基于功能数据分析(FDA)的方法 - 参考,提出了这项工作中的MSC k 模型 - 是在refs中提出的。 [1,2]。该方法的原理是将波浪分组相对于光谱缩放函数组合在一起 - 定义为不同状态中的频谱吸收系数之间的比率 - 从而可以认为相关/共同调音性假设可以被认为是相应的波数的相应间隔。 。很少有详细信息,现在提供了关于MSC帧内的FDA在MSC k 模型中的应用。事实上,我们以前的大多数作品都致力于派生方法本身的推导。因此,在本文中,我们主要将注意力集中在缩放函数集群的数学定义中,用于构建在不同状态下的频谱间隔的频谱间隔的数量被缩放。将不同聚类方法与选择适当数量的集群的标准的比较,并讨论了这种方法,用于多个测试用例,包括3D几何形状。 ]]>

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