Distribution of the Ratio of Normal and Rice Random Variables

Similar documents
On the Ratio of Rice Random Variables

On the Ratio of Inverted Gamma Variates

Products and Ratios of Two Gaussian Class Correlated Weibull Random Variables

Weibull-Gamma composite distribution: An alternative multipath/shadowing fading model

On general error distributions

On the Multivariate Nakagami-m Distribution With Exponential Correlation

SUPPLEMENTARY MATERIAL. Authors: Alan A. Stocker (1) and Eero P. Simoncelli (2)

Comparison of Three Calculation Methods for a Bayesian Inference of Two Poisson Parameters

Optimal Joint Detection and Estimation in Linear Models

Introductions to ExpIntegralEi

Comparison of DPSK and MSK bit error rates for K and Rayleigh-lognormal fading distributions

ARNOLD AND STRAUSS S BIVARIATE EXPONENTIAL DISTRIBUTION PRODUCTS AND RATIOS. Saralees Nadarajah and Dongseok Choi (Received February 2005)

Random Variables. Random variables. A numerically valued map X of an outcome ω from a sample space Ω to the real line R

Residual migration in VTI media using anisotropy continuation

On the Average Crossing Rates in Selection Diversity

Online Companion to Pricing Services Subject to Congestion: Charge Per-Use Fees or Sell Subscriptions?

arxiv: v1 [math.ca] 3 Aug 2008

New Results on Turbulence Modeling for Free-Space Optical Systems

APPENDIX 1 NEYMAN PEARSON CRITERIA

Some Expectations of a Non-Central Chi-Square Distribution With an Even Number of Degrees of Freedom

JMASM25: Computing Percentiles of Skew- Normal Distributions

The Application of Legendre Multiwavelet Functions in Image Compression

An Extended Weighted Exponential Distribution

The κ-µ Shadowed Fading Model with Integer Fading Parameters

Multivariate Distribution Models

Notes on Linear Minimum Mean Square Error Estimators

On the estimation of the K parameter for the Rice fading distribution

arxiv: v1 [physics.comp-ph] 17 Jan 2014

Towards Green Distributed Storage Systems

An Elastic Contact Problem with Normal Compliance and Memory Term

Performance Analysis of Wireless Single Input Multiple Output Systems (SIMO) in Correlated Weibull Fading Channels

Chapter 2. Some Basic Probability Concepts. 2.1 Experiments, Outcomes and Random Variables

Assignment 4 (Solutions) NPTEL MOOC (Bayesian/ MMSE Estimation for MIMO/OFDM Wireless Communications)

6.1.1 Angle between Two Lines Intersection of Two lines Shortest Distance from a Point to a Line

Section 6: PRISMATIC BEAMS. Beam Theory

Probabilistic Engineering Design

A GENERALIZED LOGISTIC DISTRIBUTION

Chapter 2: Random Variables

Physics 116C The Distribution of the Sum of Random Variables

n! (k 1)!(n k)! = F (X) U(0, 1). (x, y) = n(n 1) ( F (y) F (x) ) n 2

LQ-Moments for Statistical Analysis of Extreme Events

The Distributions of Sums, Products and Ratios of Inverted Bivariate Beta Distribution 1

New Family of the t Distributions for Modeling Semicircular Data

EVALUATION OF ERROR PROBABILITIES FOR GENERAL SIGNAL CONSTELLATIONS

Continuous Random Variables

Introduction to Statistical Inference Self-study

Boundary Element Method Calculation of Moment Transfer Parameters in Slab-Column Connections

ON THE C-LAGUERRE FUNCTIONS

Introduction...2 Chapter Review on probability and random variables Random experiment, sample space and events

Physics 240: Worksheet 24 Name:

Complex Gaussian Ratio Distribution with Applications for Error Rate Calculation in Fading Channels with Imperfect CSI

A014 Uncertainty Analysis of Velocity to Resistivity Transforms for Near Field Exploration

arxiv: v1 [math.ca] 17 Feb 2017

Algebraic Derivation of the Oscillation Condition of High Q Quartz Crystal Oscillators

Theoretical Properties of Weighted Generalized. Rayleigh and Related Distributions

ERAD THE SEVENTH EUROPEAN CONFERENCE ON RADAR IN METEOROLOGY AND HYDROLOGY

CHARACTERIZATIONS OF THE PARETO DISTRIBUTION BY THE INDEPENDENCE OF RECORD VALUES. Se-Kyung Chang* 1. Introduction

Astrometric Errors Correlated Strongly Across Multiple SIRTF Images

II. The Normal Distribution

DS-GA 1002 Lecture notes 2 Fall Random variables

NEW FRONTIERS IN APPLIED PROBABILITY

Sample Average Approximation for Stochastic Empty Container Repositioning

MA/ST 810 Mathematical-Statistical Modeling and Analysis of Complex Systems

Properties of Continuous Probability Distributions The graph of a continuous probability distribution is a curve. Probability is represented by area

Chernoff-Type Bounds for the Gaussian Error Function

A nonparametric confidence interval for At-Risk-of-Poverty-Rate: an example of application

Received Signal, Interference and Noise

UNIVERSITY OF TRENTO ITERATIVE MULTI SCALING-ENHANCED INEXACT NEWTON- METHOD FOR MICROWAVE IMAGING. G. Oliveri, G. Bozza, A. Massa, and M.

Chapter 2 Signal Processing at Receivers: Detection Theory

Trefftz type method for 2D problems of electromagnetic scattering from inhomogeneous bodies.

Available online Journal of Scientific and Engineering Research, 2016, 3(6): Research Article

5.6 The Normal Distributions

RETRACTED On construction of a complex finite Jacobi matrix from two spectra

672 IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL. 57, NO. 2, FEBRUARY We only include here some relevant references that focus on the complex

FUZZY FINITE ELEMENT METHOD AND ITS APPLICATION

On non-coherent Rician fading channels with average and peak power limited input

A spectral Turán theorem

Least Absolute Value vs. Least Squares Estimation and Inference Procedures in Regression Models with Asymmetric Error Distributions

Chapter 2. Random Variable. Define single random variables in terms of their PDF and CDF, and calculate moments such as the mean and variance.

ECE531: Principles of Detection and Estimation Course Introduction

MATHEMATICAL TOOLS FOR DIGITAL TRANSMISSION ANALYSIS

MGF Approach to the Analysis of Generalized Two-Ray Fading Models

[ ( )] + ρ VIII. NONLINEAR OPTICS -- QUANTUM PICTURE: 45 THE INTERACTION OF RADIATION AND MATTER: QUANTUM THEORY PAGE 88

3. Probability and Statistics

Chapter 2 Continuous Distributions

Chapter 5 continued. Chapter 5 sections

Bell-shaped curves, variance

Estimation of Efficiency with the Stochastic Frontier Cost. Function and Heteroscedasticity: A Monte Carlo Study

For a stochastic process {Y t : t = 0, ±1, ±2, ±3, }, the mean function is defined by (2.2.1) ± 2..., γ t,

Ridge Regression and Ill-Conditioning

A New Extended Uniform Distribution

VISUAL PHYSICS ONLINE RECTLINEAR MOTION: UNIFORM ACCELERATION

EXPLICIT EXPRESSIONS FOR MOMENTS OF χ 2 ORDER STATISTICS

An Efficient Approach to Multivariate Nakagami-m Distribution Using Green s Matrix Approximation

Cases of integrability corresponding to the motion of a pendulum on the two-dimensional plane

Chapter 4. Chapter 4 sections

PRODUCTS IN CONDITIONAL EXTREME VALUE MODEL

Alpha-Skew-Logistic Distribution

Probability and Distributions

Transformation formulas for the generalized hypergeometric function with integral parameter differences

Transcription:

Journal of Modern Applied Statistical Methods Volume 1 Issue Article 7 11-1-013 Distribution of the Ratio of Normal and Rice Random Variables Nayereh B. Khoolenjani Uniersity of Isfahan, Isfahan, Iran, n.b.hoolenjani@gmail.com Kaoos Khorshidian Shiraz Uniersity, Shiraz, Iran Follow this and additional wors at: http://digitalcommons.wayne.edu/jmasm Part of the Applied Statistics Commons, Social and Behaioral Sciences Commons, and the Statistical Theory Commons Recommended Citation Khoolenjani, Nayereh B. and Khorshidian, Kaoos (013) "Distribution of the Ratio of Normal and Rice Random Variables," Journal of Modern Applied Statistical Methods: Vol. 1 : Iss., Article 7. DOI: 10.37/jmasm/138379960 Aailable at: http://digitalcommons.wayne.edu/jmasm/ol1/iss/7 This Emerging Scholar is brought to you for free and open access by the Open Access Journals at DigitalCommons@WayneState. It has been accepted for inclusion in Journal of Modern Applied Statistical Methods by an authorized editor of DigitalCommons@WayneState.

Journal of Modern Applied Statistical Methods Noember 013, Vol. 1, No., 436-449. Copyright 013 JMASM, Inc. ISSN 1538 947 Emerging Scholars: Distribution of the Ratio of Normal and Rice Random Variables Nayereh B. Khoolenjani Uniersity of Isfahan Isfahan, Iran Kaoos Khorshidian Shiraz Uniersity Shiraz, Iran The ratio of independent random ariables arises in many applied problems. The distribution of the ratio X is studied when X and are independent Normal and Rice random ariables, respectiely. Ratios of such random ariables hae extensie applications in the analysis of noises in communication systems. The exact forms of probability density function (PDF), cumulatie distribution function (CDF) and the existing moments are deried in terms of seeral special functions. As a special case, the PDF and CDF of the ratio of independent standard Normal and Rayleigh random ariables hae been obtained. Tabulations of associated percentage points and a computer program for generating tabulations are also gien. Keywords: functions. Normal distribution, Rice distribution, ratio random ariable, special Introduction For gien random ariables X and, the distribution of the ratio X arises in a wide range of natural phenomena of interest, such as in engineering, hydrology, medicine, number theory, psychology, etc. More specifically, Mendelian inheritance ratios in genetics, mass to energy ratios in nuclear physics, target to control precipitation in meteorology, inentory ratios in economics are exactly of this type. The distribution of the ratio random ariables (RRV) has been extensiely inestigated by many authors especially when X and are independent and belong to the same family. Various methods hae been compared and reiewed by authors including Pearson (1910), Greay (1930), Marsaglia (1965, 006) and Nadarajah (006). Nayereh B. Khoolenjani is a Ph.D. student in the Department of Statistics. Email at: n.b.hoolenjani@gmail.com. Kaoos Khorshidian is in the Department of Statistics. 436

KHOOLENJANI & KHORSHIDIAN The exact distribution of X is deried when X and are independent random ariables (RVs) haing Normal and Rice distributions with parameters ( µσ, ) and ( λ, ), respectiely. The Normal and Rice distributions are well nown and of common use in engineering, especially in signal processing and communication theory. In engineering, there are many real situations where measurements could be modeled by Normal and Rice distributions. Some typical situations in which the ratio of Normal and Rice random ariables appear are as follows. In the case that X and represent the random noises corresponding to two signals, studying the distribution of the quotient X is of interest. For example in communication theory it may represent the relatie strength of two different signals and in MRI, it may represent the quality of images. Moreoer, because of the important concept of moments of RVs as magnitude of power and energy in physical and engineering sciences, the possible moments of the ratio of Normal and Rice random ariables hae been also obtained. Applications of Normal and Rice distributions and the ratio RVs may be found in Rice (1974), Helstrom (1997), Karagiannidis and Kotsopoulos (001), Salo, et al. (006), Withers and Nadarajah (008) and references therein. The probability density function (PDF) of a two-parameter Normal random ariable X can be written as: 1 1 fx ( x) = exp{ ( x µ ) }, x πσ σ < < (1) where < µ < is the location parameter and σ > 0 is the scale parameter. For µ = 0 and σ = 1, (1) becomes the distribution of standard Normal random ariable. A well nown representation for CDF of X is as 1 x µ FX ( x) = 1 + erf ( ) σ () where erf () denotes the error function that is gien by x u = (3) erf ( x) e du π 0 437

DISTRIBUTION RATIO OF NORMAL AND RICE RANDOM VARIABLES Also, = µ 1 σ j= 0 ( j)! j! µ j EX ( )! ( ). (4) If has a Rice distribution with parameters ( λ, ), then the PDF of is as follows: y ( y + ) y 0 f ( y) = exp{ } Ι ( ), y > 0, 0, λ > 0 (5) λ λ λ where y is the signal amplitude, Ι (.) 0 is the modified Bessel function of the first ind of order 0, λ is the aerage fading-scatter component and is the lineof-sight (LOS) power component. The Local Mean Power is defined as Ω= λ + which equals EX ( ), and the Rice factor K of the enelope is defined as the ratio of the signal power to the scattered power, i.e., K = λ. When K goes to zero, the channel statistic follows Rayleigh distribution, whereas if K goes to infinity, the channel becomes a non-fading channel. For = 0, the expression (5) reduces to a Rayleigh distribution. Notations and Preliminaries Recall some special mathematical functions, these will be used repeatedly throughout this study. The modified Bessel function of first ind of order, is 1 ( x ) 1 I ( ) ( ) 4 x = x (6) (!) Γ ( + + 1) = 0 The generalized hypergeometric function is denoted by F ( a, a,..., a ; b, b,..., b ; z) p q 1 p 1 q ( a ) ( a )...( a ) z ( b) ( b )...( b )! 1 p = (7) = 0 1 q 438

KHOOLENJANI & KHORSHIDIAN The Gauss hypergeometric function and the Kummer confluent hypergeometric function are gien, respectiely, by ()() a b z F( abcz, ; ; ) = (8) () c! 1 = 0 and ( a) z F( abz ; ; ) = (9) ( b)! 1 1 = 0 where ( a ), ( b ) represent Pochhammer s symbol gien by Γ ( α + ) ( a) = aa ( + 1) ( a+ 1) =. Γ ( α) The parabolic cylinder function is z 1 1 1 4 ( ) (, ; ) D z = e Ψ z (10) where Ψ ( acz, ; ) represents the confluent hypergeometric function gien by 1 c c 1 1 c Ψ ( acz, ; ) =Γ 1F1( acz ; ; ) +Γ 1F1(1 + a c; cz ; ) 1+ a c a, in which Γ( ai ) a1,..., am i= 1 Γ n b1,..., b =. n Γ( b ) m j= 1 j The complementary error function is denoted by 439

DISTRIBUTION RATIO OF NORMAL AND RICE RANDOM VARIABLES u = (11) erfc( x) e du π x The following lemmas are of frequent use. Lemma 1 (Equation (.15.5.4), Prudnio, et al., 1986). For Re p > 0, Re( α + ) > 0; arg c < π 0 α 1 px x e I ( cx) dx ( α + ) ( α + ). 1 α + c = cp Γ 1F1( ; + 1; ) 4p + 1 Lemma (Equation (.8.9.), Prudnio, et al., 1986). For Re p > 0 ; arg c π < 4 0 n+ 1 px erf ( cx + b) 0 n! ( 1) x e dx = ± n+ 1 erfc( cx + b 1 p n 1 c pb bc erf ( b) + exp( ) erfc( ). n P p c p p c + p + c + p n Lemma 3 (Equation (3.46.1), Gradshteyn & Ryzhi, 000). For Re β > 0, Re > 0 0 1 γ γ x exp( { βx γx} dx = ( β) Γ( )exp( ) D ( ). 8β β 440

KHOOLENJANI & KHORSHIDIAN The Ratio of Normal and Rice Random Variables The explicit expressions for the PDF and CDF of X are deried in terms of the Gauss hypergeometric function. The ratio of standard Normal and Rayleigh RVs is also considered as a special case. Theorem 1: Suppose that X and are independent Normal and Rice random ariables with parameters ( µσ, ) and ( λν, ), respectiely. The PDF of the ratio random ariable T = X can be expressed as f() t = gt () + g( t), where e gt () = µ µ t λ { + } λ σ 4 σ ( λ t + σ ) σ λ = 0 3 π( λ t + σ ) ( ) Γ + (!) 4 λ µλ t ( 3) D ( + 3) ( ). σ λ t + σ (1) Theorem 1 Proof: f(t) = yf (ty)f (y)dy+ yf ( ty)f (y)dy X X 0 0 1 1 y ( y + ) y = y exp ( ty µ ) exp I 0( )dy 0 πσ σ λ λ λ 1 1 y ( y + ) y + y exp ( ty µ ) exp I 0( )dy 0 πσ σ λ λ λ (13) The two integrals in (13) can be calculated by direct application of Lemma 3. Thus the result follows. Remar : By using expression (10), elementary forms for () gt in Theorem 1 can be deried as follows: 441

DISTRIBUTION RATIO OF NORMAL AND RICE RANDOM VARIABLES 1 ( σ + µ λ ) σ λ ( ) Γ ( + 3) e λσ 4 31 t gt () λ + µ λ = (, ; ) 3 Ψ (14) + 3 = 0 σ ( t λ + σ ) π( t λ + σ ) (!) Corollary 3 Assume that X and are independent standard Normal and Rayleigh random ariables, respectiely. The PDF of the ratio random ariable T = X can be expressed as λ ft () t =, t > 0 3 ( t λ + 1) (15) Theorem 4: Suppose that X and are independent Normal and Rice random ariables with parameters ( µσ, ) and ( λν, ), respectiely. The CDF of the ratio random ariable T = X can be expressed as Ft () = Gt () G( t) where λ ( ) 4 e n! ( 1) G( t ) 4λ µ = { [ λ erf ( ) λ 1 0 1 1 = (!) + ( ) ( ) σ λ λ 3 tλ µ µλ t exp( )erfc( )]}. ( t ) t λ + σ λ + σ σ ( t λ + σ ) (16) Theorem 4 Proof: The CDF Ft ( ) = Pr( X t) can be written as ty µ ty µ F() t = Φ( ) Φ( ) f ( y) dy, σ σ (17) 0 where Φ (.) is the cdf of the standard Normal distribution. Using the relationship Eq. (17) can be rewritten as 1 x Φ ( x) = erfc( ), (18) 44

KHOOLENJANI & KHORSHIDIAN 1 µ ty µ + ty F() t = erfc( ) erfc( ) f ( y) dy σ σ 0 1 µ ty y ( y + ) y = ( ) exp 0( ) erfc I dy 0 σ λ λ λ 1 µ + ty y ( y + ) y erfc( ) exp I 0( ) dy. 0 σ λ λ λ (19) The result follows by using Lemma. Corollary 5: Assume that X and are independent Normal and Rice random ariables with parameters (0, σ ) and ( λ,0), respectiely. The CDF of the ratio random ariable T = X is tλ Ft ( ) =, t> 0. t λ + σ (0) Figures (1) and () illustrate possible shapes of the pdf corresponding to (0) for different alues of σ and λ. Note that the shape of the distribution is mainly controlled by the alues of σ and λ. Figure 1 Plots of the pdf corresponding to (0) for λ = 0.5,1,3,5 and σ = 1. 443

DISTRIBUTION RATIO OF NORMAL AND RICE RANDOM VARIABLES Figure Plots of the pdf corresponding to (0) for σ = 0.,0.5,1, and λ = 1. K th Moments of the Ratio Random Variable In the sequel, the independence of X and are used seeral times for computing the moments of the ratio random ariable. The results obtained are expressed in terms of confluent hypergeometric functions. Theorem 6: Suppose that X and are independent Normal and Rice random ariables with parameters ( µσ, ) and ( λν, ), respectiely. A representation for the th moment of the ratio random ariable T= X, for <, is: λ [ ] µ + + 1 σ j ET [ ] =! e Γ( ) 1F1( ;1; ) ( ) (1) λ λ j= 0 ( j)! j! µ Theorem 6 Proof: Using the independency of X and the expected ratio can be written as X 1 ET ( ) = E E( X ) E( ), = () in which 444

KHOOLENJANI & KHORSHIDIAN 1 1 y ( y + ) y E( ) = exp I 0( ) dy y λ λ λ (3) 0 By using lemma.1, the integral (3) reduces to λ 1 e + + E( ) = Γ ( ) 1F1( ;1; ) (4) λ ( λ ) The desired result now follows by multiplying (4) and (4). Remar 7: Formula (1), displays the exact forms for calculating ET ( ), which hae been expressed in terms of confluent hypergeometric functions. The deltamethod can be used to approximate the first and second moments of the ratio T= X. In detail, by taing µ X = EX ( ), µ = E ( ) and using the Deltamethod (Casella & Berger, 00) results in: ν λ µ X µ e µ π 3 ν λ 1F1 λ ET ( ) =. (,1; ) For approximating Var( T ) E ( ) = λ + ν. Thus,, first recall that EX ( ) = µ + σ and X µ X Var( X ) Var( ) Var( ), + µ µ X µ which inoles confluent hypergeometric functions, but in simpler forms. Remar 8: The numerical computation of the obtained results in this article entails calculation of special functions, their sums and integrals, which hae been tabulated and aailable in determinds boos and computer algebra pacages (see Greay, 1930; Helstrom, 1997; and Salo, et al. 006 for more details. 445

DISTRIBUTION RATIO OF NORMAL AND RICE RANDOM VARIABLES Percentiles Table 1. Percentage points of T = X for λ = 0.1.5. λ p = 0.01 p = 0.05 p = 0.1 p = 0.9 p = 0.95 p = 0.99 0.1 0.100005 0.50066 1.00503 0.64741 30.443 70.179 0. 0.05000 0.50313 0.50518 10.3370 15.11 35.0896 0.3 0.033335 0.166875 0.33501 6.88471 10.1414 3.3930 0.4 0.05001 0.15156 0.5159 5.16185 7.6060 17.5448 0.5 0.00001 0.10015 0.01007 4.1948 6.0848 14.0358 0.6 0.016667 0.083437 0.167506 3.4413 5.0707 11.6965 0.7 0.01486 0.071518 0.143576.94963 4.3463 10.056 0.8 0.01503 0.06578 0.1569.5809 3.8030 8.774 0.9 0.011111 0.05565 0.111670.9415 3.3804 7.7976 1 0.01000 0.05006 0.100503.06474 3.044 7.0179 1.1 0.009091 0.045511 0.091367 1.87703.7658 6.3799 1. 0.008333 0.041718 0.083753 1.7061.5353 5.848 1.3 0.007696 0.038509 0.077310 1.5886.3403 5.3984 1.4 0.007143 0.035759 0.071788 1.47481.1731 5.018 1.5 0.0066670 0.033375 0.06700 1.37649.08 4.6786 1.6 0.006503 0.03189 0.06814 1.9046 1.9015 4.386 1.7 0.005886 0.09448 0.059119 1.1455 1.7896 4.181 1.8 0.0055558 0.0781 0.055835 1.14707 1.690 3.8988 1.9 0.005634 0.06348 0.05896 1.08670 1.601 3.6936 0.005000 0.05031 0.05051 1.0337 1.51 3.5089.1 0.004761 0.03839 0.047858 0.9831 1.4487 3.3418. 0.0045456 0.0755 0.045683 0.93851 1.389 3.1899.3 0.0043480 0.01766 0.043697 0.89771 1.37 3.051.4 0.0041668 0.00859 0.041876 0.86030 1.676.941.5 0.004000 0.0005 0.04001 0.8589 1.169.8071 446

KHOOLENJANI & KHORSHIDIAN Table. Percentage points of T = X for λ =.6 5. λ p = 0.01 p = 0.05 p = 0.1 p = 0.9 p = 0.95 p = 0.99.6 0.0038463 0.01954 0.038655 0.79413 1.1701.699.7 0.0037038 0.018541 0.0373 0.76471 1.168.599.8 0.0035716 0.017879 0.035894 0.73740 1.0865.5064.9 0.0034484 0.0176 0.034656 0.71197 1.0491.4199 3 0.0033335 0.016687 0.033501 0.6884 1.0141.3393 3.1 0.00359 0.016149 0.0340 0.66604 0.9814.638 3. 0.003151 0.015644 0.031407 0.6453 0.9507.1931 3.3 0.0030304 0.015170 0.030455 0.6567 0.919.166 3.4 0.009413 0.01474 0.09559 0.6077 0.8948.0640 3.5 0.00857 0.014303 0.08715 0.5899 0.869.0051 3.6 0.007779 0.013906 0.07917 0.57353 0.8451 1.9494 3.7 0.00708 0.013530 0.07163 0.55803 0.8 1.8967 3.8 0.006317 0.013174 0.06448 0.54335 0.8006 1.8468 3.9 0.00564 0.01836 0.05770 0.594 0.7801 1.7994 4 0.005001 0.01515 0.0515 0.51618 0.7606 1.7544 4.1 0.004391 0.0110 0.04513 0.50359 0.740 1.7116 4. 0.003810 0.011919 0.0399 0.4916 0.743 1.6709 4.3 0.00356 0.01164 0.0337 0.48017 0.7075 1.630 4.4 0.0078 0.011377 0.0841 0.4695 0.6914 1.5949 4.5 0.003 0.01115 0.0334 0.45883 0.6760 1.5595 4.6 0.001740 0.010883 0.01848 0.44885 0.6613 1.556 4.7 0.00177 0.010651 0.01383 0.43930 0.6473 1.4931 4.8 0.001145 0.01053 0.0067 0.4654 0.6311 1.475 4.9 0.001073 0.010380 0.01983 0.41839 0.677 1.4613 5 0.000094 0.010157 0.01878 0.4107 0.610 1.4479 Tabulations of percentage points t p associated with the cdf (0) of proided. These alues are obtained by numerically soling: T = X are t λ p p λ + σ = t p (5) 447

DISTRIBUTION RATIO OF NORMAL AND RICE RANDOM VARIABLES Tables 1 and proide the numerical alues of t p for λ = 0.1,0.,...,5 and σ = 1. It is hoped that these numbers will be of use to practitioners as mentioned in the introduction. Similar tabulations could be easily deried for other alues of λσ, and p by using the sample program proided in Appendix A. References Casella, G., & Berger, L. B. (00), Statistical Inference. Duxbury Press. Gradshteyn, I. S., & Ryzhi, I. M. (000).Table of Integrals, Series, and Products. San Diego, CA: Academic Press. Greay R. C. (1930). The frequency distribution of the quotient of two normal ariates. Journal of the Royal Statistical Society. 93, 44-446. Helstrom, C. (1997). Computing the distribution of sums of random sine waes and the Rayleigh-distributed random ariables by saddle-point integration. IEEE Trans. Commun. 45(11), 1487-1494. Karagiannidis, G. K., & Kotsopoulos, S. A. (001). On the distribution of the weighted sum of L independent Rician and Naagami Enelopes in the presence of AWGN. Journal of Communication and Networs. 3(), 11-119. Marsaglia, G. (1965). Ratios of Normal Variables and Ratios of Sums of Uniform. JASA. 60, 193, 04. Marsaglia, G. (006). Ratios of Normal Variables. Journal of Statistical Software. 16(4), 1-10. Nadarajah, S. (006). Quotient of Laplace and Gumbel random ariables. Mathematical Problems in Engineering. ol. 006. Article ID 90598, 7 pages. Pearson, K. (1910). On the constants of Index-Distributions as Deduced from the Lie Constants for the Components of the Ratio with Special Reference to the Opsonic Index. Biometria. 7(4), 531-541. Prudnio, A. P., Brycho.A., Mariche O.I. (1986). Integrals and Series,. New or: Gordon and Breach. Rice, S. (1974). Probability distributions for noise plus seeral sin waes the problem of computation. IEEE Trans. Commun. 851-853. Salo, J., EI-Sallabi, H. M., & Vainiainen, P. (006). The distribution of the product of independent Rayleigh random ariables. IEEE Transactions on Antennas and Propagation. 54(), 639-943. 448

KHOOLENJANI & KHORSHIDIAN Withers, C. S. & Nadarajah, S. (008). MGFs for Rayleigh Random Variables. Wireless Personal Communications. 46(4), 463-468. Appendix A The following program in R can be used to generate tables similar to that presented in the section headed 'Percentiles.' p=c(0.01,.05,0.1,0.9,0.95,0.99) sig=1 lambda=seq(0.1,5,0.1) ll=length(lambda) mt=matrix(0,nc=length(p),nr=ll) for(i in 1:ll) { lambda=lambda[i] t=p*sig*sqrt(1/(1-p^))/lambda mt[i,]=t } print(mt) 449