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首页> 外文期刊>Journal of Quantitative Spectroscopy & Radiative Transfer >Causal correlation functions and Fourier transforms: Application in calculating pressure induced shifts
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Causal correlation functions and Fourier transforms: Application in calculating pressure induced shifts

机译:因果关系函数和傅立叶变换:在计算压力诱导偏移时的应用

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By adopting a concept from signal processing, instead of starting from the correlation functions which are even, one considers the causal correlation functions whose Fourier transforms become complex. Their real and imaginary parts multiplied by 2 are the Fourier transforms of the original correlations and the subsequent Hilbert transforms, respectively. Thus, by taking this step one can complete the two previously needed transforms. However, to obviate performing the Cauchy principal integrations required in the Hilbert transforms is the greatest advantage. Meanwhile, because the causal correlations are well-bounded within the time domain and band limited in the frequency domain, one can replace their Fourier transforms by the discrete Fourier transforms and the latter can be carried out with the FFT algorithm. This replacement is justified by sampling theory because the Fourier transforms can be derived from the discrete Fourier transforms with the Nyquis rate without any distortions. We apply this method in calculating pressure induced shifts of H _2O lines and obtain more reliable values. By comparing the calculated shifts with those in HITRAN 2008 and by screening both of them with the pair identity and the smooth variation rules, one can conclude many of shift values in HITRAN are not correct.
机译:通过从信号处理中采用概念,而不是从甚至从相关函数开始,甚至是偶数的相关函数,其考虑其傅立叶变换变得复杂的因果相关函数。它们的实部和虚部乘以2是原始相关性的傅里叶变换和随后的希尔伯特变换。因此,通过采取这一步骤,可以完成先前所需的两个所需的变换。但是,为了避免执行Hilbert变换所需的Cauchy主要集成是最大的优势。同时,由于因果关系在频域中的时域和带限制的时域和频段中,因此可以通过离散的傅里叶变换替换其傅立叶变换,并且后者可以用FFT算法执行。这种替换是通过抽样理论的合理性,因为傅里叶变换可以从具有奈奎斯速率的离散傅里叶变换导出而没有任何失真。我们在计算H _2O线路的压力诱导偏移并获得更可靠的值时应用该方法。通过将计算的变化与Hitran 2008中的计算结果进行比较,并且通过对对身份和平滑的变化规则进行筛选,可以在HITRAN中得出许多换档值不正确。

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