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引用次数: 0
摘要
本文采用变量分离法研究克莱因-克拉默斯(KK)方程。通过选择不同的特征值和噪声函数,我们可以得到 KK 方程的不同概率密度函数(PDF)。这些 PDF 不仅包含正态分布,还包含与异常扩散现象相对应的其他分布。例如,幂律分布、截断考奇-洛伦兹分布、威布尔分布、对数-逻辑分布、伽马分布。我们还展示了这些分布的三维和二维剖面,以分析相应的动态特性,并说明这些结果可能的实际应用。此外,我们还发现了一些非 PDF 的精确解。为了确保结果的完整性,并说明这些精确解的潜在应用,我们也列出了这些精确解。
Study of several probability distribution functions for the Klein–Kramers equation
In this paper, we take variable separation method to study Klein–Kramers (KK) equation. By choosing different eigenvalues and noise functions, we can get different probability density functions (PDFs) of KK equation. These PDFs contain not only normal distributions but also other distributions that correspond to anomalous diffusion phenomena. For example, power-law distribution, truncated Cauchy–Lorentz distribution, Weibull distribution, log-logistic distribution, Gamma distribution. We also show the 3D and 2D profiles of these PDFs to analyze the corresponding dynamic properties and illustrate the possible practical applications of these results. In addition, we also find some exact solutions that are not PDFs. They are also listed to ensure the completeness of the results and to illustrate the potential applications of these exact solutions.