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Nakagami distribution

The Nakagami distribution or the Nakagami-m distribution is a probability distribution related to the gamma distribution. It is used to model physical phenomena, such as those found in medical ultrasound imaging, communications engineering, meteorology, hydrology, multimedia, and seismology.

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

The family of Nakagami distributions has two parameters: a shape parameter and a second parameter controlling spread .

Characterization edit

Its probability density function (pdf) is[1]

 

where   and  .

Its cumulative distribution function (CDF) is[1]

 

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

Parameterization edit

The parameters   and   are[2]

 

and

 

No closed form solution exists for the median of this distribution, although special cases do exist, such as   when m=1. For practical purposes the median would have to be calculated as the 50th-percentile of the observations.

Parameter estimation edit

An alternative way of fitting the distribution is to re-parametrize   as σ = Ω/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, a maximum likelihood estimate for Ω is obtained as well.

Random variate generation edit

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 edit

The Nakagami distribution is relatively new, being first proposed in 1960 by Minoru Nakagami as a mathematical model for small-scale fading in long-distance high-frequency radio wave propagation.[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]

Related distributions edit

  • Restricting m to the unit interval (q = m; 0 < q < 1)[dubious ] defines the Nakagami-q distribution, also known as Hoyt distribution, first studied by R.S. Hoyt in the 1940s.[7][8][9] In particular, the radius around the true mean in a bivariate normal random variable, re-written in polar coordinates (radius and angle), follows a Hoyt distribution. Equivalently, the modulus of a complex normal random variable also does.
  • With 2m = k, the Nakagami distribution gives a scaled chi distribution.
  • With  , the Nakagami distribution gives a scaled half-normal distribution.
  • A Nakagami distribution is a particular form of generalized gamma distribution, with p = 2 and d = 2m.

See also edit

References edit

  1. ^ a b 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), 8–12
  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.
  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".

nakagami, distribution, this, article, multiple, issues, please, help, improve, discuss, these, issues, talk, page, learn, when, remove, these, template, messages, this, article, needs, additional, citations, verification, please, help, improve, this, article,. This article has multiple issues Please help improve it or discuss these issues on the talk page Learn how and when to remove these template messages This article needs additional citations for verification Please help improve this article by adding citations to reliable sources Unsourced material may be challenged and removed Find sources Nakagami distribution news newspapers books scholar JSTOR April 2013 Learn how and when to remove this template message This article includes a list of general references but it lacks sufficient corresponding inline citations Please help to improve this article by introducing more precise citations April 2013 Learn how and when to remove this template message Learn how and when to remove this template message The Nakagami distribution or the Nakagami m distribution is a probability distribution related to the gamma distribution It is used to model physical phenomena such as those found in medical ultrasound imaging communications engineering meteorology hydrology multimedia and seismology NakagamiProbability density functionCumulative distribution functionParametersm or m 0 5 displaystyle m text or mu geq 0 5 shape real W or w gt 0 displaystyle Omega text or omega gt 0 spread real Supportx gt 0 displaystyle x gt 0 PDF2 m m G m W m x 2 m 1 exp m W x 2 displaystyle frac 2m m Gamma m Omega m x 2m 1 exp left frac m Omega x 2 right CDFg m m W x 2 G m displaystyle frac gamma left m frac m Omega x 2 right Gamma m MeanG m 1 2 G m W m 1 2 displaystyle frac Gamma m frac 1 2 Gamma m left frac Omega m right 1 2 MedianNo simple closed formMode 2 m 1 W 2 m 1 2 displaystyle left frac 2m 1 Omega 2m right 1 2 VarianceW 1 1 m G m 1 2 G m 2 displaystyle Omega left 1 frac 1 m left frac Gamma m frac 1 2 Gamma m right 2 right The family of Nakagami distributions has two parameters a shape parameter m 1 2 displaystyle m geq 1 2 and a second parameter controlling spread W gt 0 displaystyle Omega gt 0 Contents 1 Characterization 2 Parameterization 3 Parameter estimation 4 Random variate generation 5 History and applications 6 Related distributions 7 See also 8 ReferencesCharacterization editIts probability density function pdf is 1 f x m W 2 m m G m W m x 2 m 1 exp m W x 2 x 0 displaystyle f x m Omega frac 2m m Gamma m Omega m x 2m 1 exp left frac m Omega x 2 right forall x geq 0 nbsp where m 1 2 displaystyle m geq 1 2 nbsp and W gt 0 displaystyle Omega gt 0 nbsp Its cumulative distribution function CDF is 1 F x m W g m m W x 2 G m P m m W x 2 displaystyle F x m Omega frac gamma left m frac m Omega x 2 right Gamma m P left m frac m Omega x 2 right nbsp where P is the regularized lower incomplete gamma function Parameterization editThe parameters m displaystyle m nbsp and W displaystyle Omega nbsp are 2 m E X 2 2 Var X 2 displaystyle m frac left operatorname E left X 2 right right 2 operatorname Var left X 2 right nbsp and W E X 2 displaystyle Omega operatorname E left X 2 right nbsp No closed form solution exists for the median of this distribution although special cases do exist such as W l n 2 displaystyle sqrt Omega ln 2 nbsp when m 1 For practical purposes the median would have to be calculated as the 50th percentile of the observations Parameter estimation editAn alternative way of fitting the distribution is to re parametrize W displaystyle Omega nbsp as s W m 3 Given independent observations X 1 x 1 X n x n textstyle X 1 x 1 ldots X n x n nbsp from the Nakagami distribution the likelihood function is L s m 2 G m s m n i 1 n x i 2 m 1 exp i 1 n x i 2 s displaystyle L sigma m left frac 2 Gamma m sigma m right n left prod i 1 n x i right 2m 1 exp left frac sum i 1 n x i 2 sigma right nbsp Its logarithm is ℓ s m log L s m n log G m n m log s 2 m 1 i 1 n log x i i 1 n x i 2 s displaystyle ell sigma m log L sigma m n log Gamma m nm log sigma 2m 1 sum i 1 n log x i frac sum i 1 n x i 2 sigma nbsp Therefore ℓ s n m s i 1 n x i 2 s 2 and ℓ m n G m G m n log s 2 i 1 n log x i displaystyle begin aligned frac partial ell partial sigma frac nm sigma sum i 1 n x i 2 sigma 2 quad text and quad frac partial ell partial m n frac Gamma m Gamma m n log sigma 2 sum i 1 n log x i end aligned nbsp These derivatives vanish only when s i 1 n x i 2 n m displaystyle sigma frac sum i 1 n x i 2 nm nbsp 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 s Because of the equivariance of maximum likelihood estimation a maximum likelihood estimate for W is obtained as well Random variate generation editThe Nakagami distribution is related to the gamma distribution In particular given a random variable Y Gamma k 8 displaystyle Y sim textrm Gamma k theta nbsp it is possible to obtain a random variable X Nakagami m W displaystyle X sim textrm Nakagami m Omega nbsp by setting k m displaystyle k m nbsp 8 W m displaystyle theta Omega m nbsp and taking the square root of Y displaystyle Y nbsp X Y displaystyle X sqrt Y nbsp Alternatively the Nakagami distribution f y m W displaystyle f y m Omega nbsp can be generated from the chi distribution with parameter k displaystyle k nbsp set to 2 m displaystyle 2m nbsp and then following it by a scaling transformation of random variables That is a Nakagami random variable X displaystyle X nbsp is generated by a simple scaling transformation on a Chi distributed random variable Y x 2 m displaystyle Y sim chi 2m nbsp as below X W 2 m Y displaystyle X sqrt Omega 2m Y nbsp For a Chi distribution the degrees of freedom 2 m displaystyle 2m nbsp must be an integer but for Nakagami the m displaystyle m nbsp 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 editThe Nakagami distribution is relatively new being first proposed in 1960 by Minoru Nakagami as a mathematical model for small scale fading in long distance high frequency radio wave propagation 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 Related distributions editRestricting m to the unit interval q m 0 lt q lt 1 dubious discuss defines the Nakagami q distribution also known as Hoyt distribution first studied by R S Hoyt in the 1940s 7 8 9 In particular the radius around the true mean in a bivariate normal random variable re written in polar coordinates radius and angle follows a Hoyt distribution Equivalently the modulus of a complex normal random variable also does With 2m k the Nakagami distribution gives a scaled chi distribution With m 1 2 displaystyle m tfrac 1 2 nbsp the Nakagami distribution gives a scaled half normal distribution A Nakagami distribution is a particular form of generalized gamma distribution with p 2 and d 2m See also edit nbsp Mathematics portalGamma distribution Modified half normal distribution Sub Gaussian distributionReferences edit a b Laurenson Dave 1994 Nakagami Distribution Indoor Radio Channel Propagation Modelling by Ray Tracing Techniques Retrieved 2007 08 04 R Kolar R Jirik J Jan 2004 Estimator Comparison of the Nakagami m Parameter and Its Application in Echocardiography Radioengineering 13 1 8 12 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 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 Parsons J D 1992 The Mobile Radio Propagation Channel New York Wiley 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 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 HoytDistribution NakagamiDistribution Retrieved from https en wikipedia org w index php title Nakagami distribution amp oldid 1210084731, wikipedia, wiki, book, books, library,

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