A New Series Representation and the Laplace Transform for the Lognormal Distribution
Abstract
:1. Introduction
- 1.
- Let It corresponds to a simple variable change For simplicity, we set , and ;
- 2.
- We use the bilateral Laplace transform (BLT):
2. Attempts to Compute the Laplace Transform
2.1. First Attempt
- that gives, by application of the LT,
- and
- which leads to
- Then,
2.2. Second Attempt
3. A Different Approach
3.1. A New Series Representation for the Gaussian of the Logarithm
3.2. The Laplace Transform of the Bilinear Function
3.3. A New Series for the Lognormal Distribution
3.4. The LT of the Lognormal Distribution
4. Conclusions
- With (25) we can approximate with a finite number of terms.
- The series in (45) has simpler terms that have LT. Thus, the series can be transformed term by term.
- It is very curious, since it expresses the LT of the LGN as the difference of two functions: one is analytic in the right half complex plane, while the other is holomorphic.
- The LT initial value theorem tells us that the two terms must tend mutually asymptotically on the real axis, since they have polynomial behavior and the initial value is zero.
- Although interesting from a theoretical point of view, it is not very useful for numerical implementations due to the presence of the factorial function that causes the appearance of numerical overflows.
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
LGN | lognormal |
LT | bilateral Laplace transform |
FT | Fourier transform |
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Ortigueira, M.D. A New Series Representation and the Laplace Transform for the Lognormal Distribution. Mathematics 2022, 10, 3474. https://doi.org/10.3390/math10193474
Ortigueira MD. A New Series Representation and the Laplace Transform for the Lognormal Distribution. Mathematics. 2022; 10(19):3474. https://doi.org/10.3390/math10193474
Chicago/Turabian StyleOrtigueira, Manuel D. 2022. "A New Series Representation and the Laplace Transform for the Lognormal Distribution" Mathematics 10, no. 19: 3474. https://doi.org/10.3390/math10193474
APA StyleOrtigueira, M. D. (2022). A New Series Representation and the Laplace Transform for the Lognormal Distribution. Mathematics, 10(19), 3474. https://doi.org/10.3390/math10193474