Nakagami distribution

The Nakagami distribution or the Nakagami-m distribution is a probability distribution related to the gamma distribution. The family of Nakagami distributions has two parameters: a shape parameter and a second parameter controlling spread .

Nakagami
Probability density function
Cumulative distribution function
Parameters shape (real)
spread (real)
Support
PDF
CDF
Mean
Median No simple closed form
Mode
Variance

Characterization

Its probability density function (pdf) is[1]

where

Its cumulative distribution function is[1]

where P is the regularized (lower) incomplete gamma function.

Parametrization

The parameters and are[2]

and

Parameter estimation

An alternative way of fitting the distribution is to re-parametrize and m as σ = Ω/m and m.[3]

Given independent observations from the Nakagami distribution, the likelihood function is

Its logarithm is

Therefore

These derivatives vanish only when

and the value of m for which the derivative with respect to m vanishes is found by numerical methods including the Newton–Raphson method.

It can be shown that at the critical point a global maximum is attained, so the critical point is the maximum-likelihood estimate of (m,σ). Because of the equivariance of maximum-likelihood estimation, one then obtains the MLE for Ω as well.

Generation

The Nakagami distribution is related to the gamma distribution. In particular, given a random variable , it is possible to obtain a random variable , by setting , , and taking the square root of :

Alternatively, the Nakagami distribution can be generated from the chi distribution with parameter set to and then following it by a scaling transformation of random variables. That is, a Nakagami random variable is generated by a simple scaling transformation on a Chi-distributed random variable as below.

For a Chi-distribution, the degrees of freedom must be an integer, but for Nakagami the can be any real number greater than 1/2. This is the critical difference and accordingly, Nakagami-m is viewed as a generalization of Chi-distribution, similar to a gamma distribution being considered as a generalization of Chi-squared distributions.

History and applications

The Nakagami distribution is relatively new, being first proposed in 1960.[4] It has been used to model attenuation of wireless signals traversing multiple paths[5] and to study the impact of fading channels on wireless communications.[6]

See also

References

  1. Laurenson, Dave (1994). "Nakagami Distribution". Indoor Radio Channel Propagation Modelling by Ray Tracing Techniques. Retrieved 2007-08-04.
  2. R. Kolar, R. Jirik, J. Jan (2004) "Estimator Comparison of the Nakagami-m Parameter and Its Application in Echocardiography", Radioengineering, 13 (1), 812
  3. Mitra, Rangeet; Mishra, Amit Kumar; Choubisa, Tarun (2012). "Maximum Likelihood Estimate of Parameters of Nakagami-m Distribution". International Conference on Communications, Devices and Intelligent Systems (CODIS), 2012: 9–12.
  4. Nakagami, M. (1960) "The m-Distribution, a general formula of intensity of rapid fading". In William C. Hoffman, editor, Statistical Methods in Radio Wave Propagation: Proceedings of a Symposium held June 18–20, 1958, pp. 3–36. Pergamon Press., doi:10.1016/B978-0-08-009306-2.50005-4
  5. Parsons, J. D. (1992) The Mobile Radio Propagation Channel. New York: Wiley.
  6. Ramon Sanchez-Iborra; Maria-Dolores Cano; Joan Garcia-Haro (2013). "Performance evaluation of QoE in VoIP traffic under fading channels". 2013 World Congress on Computer and Information Technology (WCCIT). pp. 1–6. doi:10.1109/WCCIT.2013.6618721. ISBN 978-1-4799-0462-4. S2CID 16810288. {{cite book}}: |journal= ignored (help)
  7. Paris, J.F. (2009). "Nakagami-q (Hoyt) distribution function with applications". Electronics Letters. 45 (4): 210. Bibcode:2009ElL....45..210P. doi:10.1049/el:20093427.
  8. "HoytDistribution".
  9. "NakagamiDistribution".
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