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Weibull distribution

In probability theory and statistics, the Weibull distribution /ˈwbʊl/ is a continuous probability distribution. It models a broad range of random variables, largely in the nature of a time to failure or time between events. Examples are maximum one-day rainfalls and the time a user spends on a web page.

Weibull (2-parameter)
Probability density function
Cumulative distribution function
Parameters scale
shape
Support
PDF
CDF
Quantile
Mean
Median
Mode
Variance
Skewness
Excess kurtosis (see text)
Entropy
MGF
CF
Kullback–Leibler divergence see below

The distribution is named after Swedish mathematician Waloddi Weibull, who described it in detail in 1939,[1] although it was first identified by René Maurice Fréchet and first applied by Rosin & Rammler (1933) to describe a particle size distribution.

Definition edit

Standard parameterization edit

The probability density function of a Weibull random variable is[2][3]

 

where k > 0 is the shape parameter and λ > 0 is the scale parameter of the distribution. Its complementary cumulative distribution function is a stretched exponential function. The Weibull distribution is related to a number of other probability distributions; in particular, it interpolates between the exponential distribution (k = 1) and the Rayleigh distribution (k = 2 and  [4]).

If the quantity X is a "time-to-failure", the Weibull distribution gives a distribution for which the failure rate is proportional to a power of time. The shape parameter, k, is that power plus one, and so this parameter can be interpreted directly as follows:[5]

  • A value of   indicates that the failure rate decreases over time (like in case of the Lindy effect, which however corresponds to Pareto distributions[6] rather than Weibull distributions). This happens if there is significant "infant mortality", or defective items failing early and the failure rate decreasing over time as the defective items are weeded out of the population. In the context of the diffusion of innovations, this means negative word of mouth: the hazard function is a monotonically decreasing function of the proportion of adopters;
  • A value of   indicates that the failure rate is constant over time. This might suggest random external events are causing mortality, or failure. The Weibull distribution reduces to an exponential distribution;
  • A value of   indicates that the failure rate increases with time. This happens if there is an "aging" process, or parts that are more likely to fail as time goes on. In the context of the diffusion of innovations, this means positive word of mouth: the hazard function is a monotonically increasing function of the proportion of adopters. The function is first convex, then concave with an inflection point at  .

In the field of materials science, the shape parameter k of a distribution of strengths is known as the Weibull modulus. In the context of diffusion of innovations, the Weibull distribution is a "pure" imitation/rejection model.

Alternative parameterizations edit

First alternative edit

Applications in medical statistics and econometrics often adopt a different parameterization.[7][8] The shape parameter k is the same as above, while the scale parameter is  . In this case, for x ≥ 0, the probability density function is

 

the cumulative distribution function is

 

the hazard function is

 

and the mean is

 

Second alternative edit

A second alternative parameterization can also be found.[9][10] The shape parameter k is the same as in the standard case, while the scale parameter λ is replaced with a rate parameter β = 1/λ. Then, for x ≥ 0, the probability density function is

 

the cumulative distribution function is

 

and the hazard function is

 

In all three parameterizations, the hazard is decreasing for k < 1, increasing for k > 1 and constant for k = 1, in which case the Weibull distribution reduces to an exponential distribution.

Properties edit

Density function edit

The form of the density function of the Weibull distribution changes drastically with the value of k. For 0 < k < 1, the density function tends to ∞ as x approaches zero from above and is strictly decreasing. For k = 1, the density function tends to 1/λ as x approaches zero from above and is strictly decreasing. For k > 1, the density function tends to zero as x approaches zero from above, increases until its mode and decreases after it. The density function has infinite negative slope at x = 0 if 0 < k < 1, infinite positive slope at x = 0 if 1 < k < 2 and null slope at x = 0 if k > 2. For k = 1 the density has a finite negative slope at x = 0. For k = 2 the density has a finite positive slope at x = 0. As k goes to infinity, the Weibull distribution converges to a Dirac delta distribution centered at x = λ. Moreover, the skewness and coefficient of variation depend only on the shape parameter. A generalization of the Weibull distribution is the hyperbolastic distribution of type III.

Cumulative distribution function edit

The cumulative distribution function for the Weibull distribution is

 

for x ≥ 0, and F(x; k; λ) = 0 for x < 0.

If x = λ then F(x; k; λ) = 1 − e−1 ≈ 0.632 for all values of k. Vice versa: at F(x; k; λ) = 0.632 the value of x ≈ λ.

The quantile (inverse cumulative distribution) function for the Weibull distribution is

 

for 0 ≤ p < 1.

The failure rate h (or hazard function) is given by

 

The Mean time between failures MTBF is

 

Moments edit

The moment generating function of the logarithm of a Weibull distributed random variable is given by[11]

 

where Γ is the gamma function. Similarly, the characteristic function of log X is given by

 

In particular, the nth raw moment of X is given by

 

The mean and variance of a Weibull random variable can be expressed as

 

and

 

The skewness is given by

 

where  , which may also be written as

 

where the mean is denoted by μ and the standard deviation is denoted by σ.

The excess kurtosis is given by

 

where  . The kurtosis excess may also be written as:

 

Moment generating function edit

A variety of expressions are available for the moment generating function of X itself. As a power series, since the raw moments are already known, one has

 

Alternatively, one can attempt to deal directly with the integral

 

If the parameter k is assumed to be a rational number, expressed as k = p/q where p and q are integers, then this integral can be evaluated analytically.[12] With t replaced by −t, one finds

 

where G is the Meijer G-function.

The characteristic function has also been obtained by Muraleedharan et al. (2007). The characteristic function and moment generating function of 3-parameter Weibull distribution have also been derived by Muraleedharan & Soares (2014) by a direct approach.

Minima edit

Let   be independent and identically distributed Weibull random variables with scale parameter   and shape parameter  . If the minimum of these   random variables is  , then the cumulative probability distribution of   given by

 

That is,   will also be Weibull distributed with scale parameter   and with shape parameter  .

Reparametrization tricks edit

Fix some  . Let   be nonnegative, and not all zero, and let   be independent samples of  , then[13]

  •  
  •  .

Shannon entropy edit

The information entropy is given by

 

where   is the Euler–Mascheroni constant. The Weibull distribution is the maximum entropy distribution for a non-negative real random variate with a fixed expected value of xk equal to λk and a fixed expected value of ln(xk) equal to ln(λk) −  .

Kullback–Leibler divergence edit

The Kullback–Leibler divergence between two Weibulll distributions is given by[14]

 

Parameter estimation edit

Ordinary least square using Weibull plot edit

 
Weibull plot

The fit of a Weibull distribution to data can be visually assessed using a Weibull plot.[15] The Weibull plot is a plot of the empirical cumulative distribution function   of data on special axes in a type of Q–Q plot. The axes are   versus  . The reason for this change of variables is the cumulative distribution function can be linearized:

 

which can be seen to be in the standard form of a straight line. Therefore, if the data came from a Weibull distribution then a straight line is expected on a Weibull plot.

There are various approaches to obtaining the empirical distribution function from data: one method is to obtain the vertical coordinate for each point using   where   is the rank of the data point and   is the number of data points.[16]

Linear regression can also be used to numerically assess goodness of fit and estimate the parameters of the Weibull distribution. The gradient informs one directly about the shape parameter   and the scale parameter   can also be inferred.

Method of moments edit

The coefficient of variation of Weibull distribution depends only on the shape parameter:[17]

 

Equating the sample quantities   to  , the moment estimate of the shape parameter   can be read off either from a look up table or a graph of   versus  . A more accurate estimate of   can be found using a root finding algorithm to solve

 

The moment estimate of the scale parameter can then be found using the first moment equation as

 

Maximum likelihood edit

The maximum likelihood estimator for the   parameter given   is[17]

 

The maximum likelihood estimator for   is the solution for k of the following equation[18]

 

This equation defines   only implicitly, one must generally solve for   by numerical means.

When   are the   largest observed samples from a dataset of more than   samples, then the maximum likelihood estimator for the   parameter given   is[18]

 

Also given that condition, the maximum likelihood estimator for   is[citation needed]

 

Again, this being an implicit function, one must generally solve for   by numerical means.

Applications edit

The Weibull distribution is used[citation needed]

 
Fitted cumulative Weibull distribution to maximum one-day rainfalls using CumFreq, see also distribution fitting[19]
 
Fitted curves for oil production time series data [20]
  • In survival analysis
  • In reliability engineering and failure analysis
  • In electrical engineering to represent overvoltage occurring in an electrical system
  • In industrial engineering to represent manufacturing and delivery times
  • In extreme value theory
  • In weather forecasting and the wind power industry to describe wind speed distributions, as the natural distribution often matches the Weibull shape[21]
  • In communications systems engineering
    • In radar systems to model the dispersion of the received signals level produced by some types of clutters
    • To model fading channels in wireless communications, as the Weibull fading model seems to exhibit good fit to experimental fading channel measurements
  • In information retrieval to model dwell times on web pages.[22]
  • In general insurance to model the size of reinsurance claims, and the cumulative development of asbestosis losses
  • In forecasting technological change (also known as the Sharif-Islam model)[23]
  • In hydrology the Weibull distribution is applied to extreme events such as annual maximum one-day rainfalls and river discharges.
  • In decline curve analysis to model oil production rate curve of shale oil wells.[20]
  • In describing the size of particles generated by grinding, milling and crushing operations, the 2-Parameter Weibull distribution is used, and in these applications it is sometimes known as the Rosin–Rammler distribution.[24] In this context it predicts fewer fine particles than the log-normal distribution and it is generally most accurate for narrow particle size distributions.[25] The interpretation of the cumulative distribution function is that   is the mass fraction of particles with diameter smaller than  , where   is the mean particle size and   is a measure of the spread of particle sizes.
  • In describing random point clouds (such as the positions of particles in an ideal gas): the probability to find the nearest-neighbor particle at a distance   from a given particle is given by a Weibull distribution with   and   equal to the density of the particles.[26]
  • In calculating the rate of radiation-induced single event effects onboard spacecraft, a four-parameter Weibull distribution is used to fit experimentally measured device cross section probability data to a particle linear energy transfer spectrum.[27] The Weibull fit was originally used because of a belief that particle energy levels align to a statistical distribution, but this belief was later proven false[citation needed] and the Weibull fit continues to be used because of its many adjustable parameters, rather than a demonstrated physical basis.[28]

Related distributions edit

  • If  , then the variable   is Gumbel (minimum) distributed with location parameter   and scale parameter  . That is,  .
  • A Weibull distribution is a generalized gamma distribution with both shape parameters equal to k.
  • The translated Weibull distribution (or 3-parameter Weibull) contains an additional parameter.[11] It has the probability density function

     

    for   and   for  , where   is the shape parameter,   is the scale parameter and   is the location parameter of the distribution.   value sets an initial failure-free time before the regular Weibull process begins. When  , this reduces to the 2-parameter distribution.
  • The Weibull distribution can be characterized as the distribution of a random variable   such that the random variable

     

    is the standard exponential distribution with intensity 1.[11]
  • This implies that the Weibull distribution can also be characterized in terms of a uniform distribution: if   is uniformly distributed on  , then the random variable   is Weibull distributed with parameters   and  . Note that   here is equivalent to   just above. This leads to an easily implemented numerical scheme for simulating a Weibull distribution.
  • The Weibull distribution interpolates between the exponential distribution with intensity   when   and a Rayleigh distribution of mode   when  .
  • The Weibull distribution (usually sufficient in reliability engineering) is a special case of the three parameter exponentiated Weibull distribution where the additional exponent equals 1. The exponentiated Weibull distribution accommodates unimodal, bathtub shaped[29] and monotone failure rates.
  • The Weibull distribution is a special case of the generalized extreme value distribution. It was in this connection that the distribution was first identified by Maurice Fréchet in 1927.[30] The closely related Fréchet distribution, named for this work, has the probability density function

     

  • The distribution of a random variable that is defined as the minimum of several random variables, each having a different Weibull distribution, is a poly-Weibull distribution.
  • The Weibull distribution was first applied by Rosin & Rammler (1933) to describe particle size distributions. It is widely used in mineral processing to describe particle size distributions in comminution processes. In this context the cumulative distribution is given by

     

    where
    •   is the particle size
    •   is the 80th percentile of the particle size distribution
    •   is a parameter describing the spread of the distribution
  • Because of its availability in spreadsheets, it is also used where the underlying behavior is actually better modeled by an Erlang distribution.[31]
  • If   then   (Exponential distribution)
  • For the same values of k, the Gamma distribution takes on similar shapes, but the Weibull distribution is more platykurtic.
  • From the viewpoint of the Stable count distribution,   can be regarded as Lévy's stability parameter. A Weibull distribution can be decomposed to an integral of kernel density where the kernel is either a Laplace distribution   or a Rayleigh distribution  :

     

    where   is the Stable count distribution and   is the Stable vol distribution.

See also edit

References edit

  1. ^ Bowers, et. al. (1997) Actuarial Mathematics, 2nd ed. Society of Actuaries.
  2. ^ Papoulis, Athanasios Papoulis; Pillai, S. Unnikrishna (2002). Probability, Random Variables, and Stochastic Processes (4th ed.). Boston: McGraw-Hill. ISBN 0-07-366011-6.
  3. ^ Kizilersu, Ayse; Kreer, Markus; Thomas, Anthony W. (2018). "The Weibull distribution". Significance. 15 (2): 10–11. doi:10.1111/j.1740-9713.2018.01123.x.
  4. ^ "Rayleigh Distribution – MATLAB & Simulink – MathWorks Australia". www.mathworks.com.au.
  5. ^ Jiang, R.; Murthy, D.N.P. (2011). "A study of Weibull shape parameter: Properties and significance". Reliability Engineering & System Safety. 96 (12): 1619–26. doi:10.1016/j.ress.2011.09.003.
  6. ^ Eliazar, Iddo (November 2017). "Lindy's Law". Physica A: Statistical Mechanics and Its Applications. 486: 797–805. Bibcode:2017PhyA..486..797E. doi:10.1016/j.physa.2017.05.077. S2CID 125349686.
  7. ^ Collett, David (2015). Modelling survival data in medical research (3rd ed.). Boca Raton: Chapman and Hall / CRC. ISBN 978-1439856789.
  8. ^ Cameron, A. C.; Trivedi, P. K. (2005). Microeconometrics : methods and applications. p. 584. ISBN 978-0-521-84805-3.
  9. ^ Kalbfleisch, J. D.; Prentice, R. L. (2002). The statistical analysis of failure time data (2nd ed.). Hoboken, N.J.: J. Wiley. ISBN 978-0-471-36357-6. OCLC 50124320.
  10. ^ Therneau, T. (2020). "A Package for Survival Analysis in R." R package version 3.1.
  11. ^ a b c Johnson, Kotz & Balakrishnan 1994
  12. ^ See (Cheng, Tellambura & Beaulieu 2004) for the case when k is an integer, and (Sagias & Karagiannidis 2005) for the rational case.
  13. ^ Balog, Matej; Tripuraneni, Nilesh; Ghahramani, Zoubin; Weller, Adrian (2017-07-17). "Lost Relatives of the Gumbel Trick". International Conference on Machine Learning. PMLR: 371–379.
  14. ^ Bauckhage, Christian (2013). "Computing the Kullback-Leibler Divergence between two Weibull Distributions". arXiv:1310.3713 [cs.IT].
  15. ^ "1.3.3.30. Weibull Plot". www.itl.nist.gov.
  16. ^ Wayne Nelson (2004) Applied Life Data Analysis. Wiley-Blackwell ISBN 0-471-64462-5
  17. ^ a b Cohen, A. Clifford (Nov 1965). "Maximum Likelihood Estimation in the Weibull Distribution Based on Complete and on Censored Samples" (PDF). Technometrics. 7 (4): 579–588.
  18. ^ a b Sornette, D. (2004). Critical Phenomena in Natural Science: Chaos, Fractals, Self-organization, and Disorder..
  19. ^ "CumFreq, Distribution fitting of probability, free software, cumulative frequency".
  20. ^ a b Lee, Se Yoon; Mallick, Bani (2021). "Bayesian Hierarchical Modeling: Application Towards Production Results in the Eagle Ford Shale of South Texas". Sankhya B. 84: 1–43. doi:10.1007/s13571-020-00245-8.
  21. ^ "Wind Speed Distribution Weibull – REUK.co.uk". www.reuk.co.uk.
  22. ^ Liu, Chao; White, Ryen W.; Dumais, Susan (2010-07-19). Understanding web browsing behaviors through Weibull analysis of dwell time. ACM. pp. 379–386. doi:10.1145/1835449.1835513. ISBN 9781450301534. S2CID 12186028.
  23. ^ Sharif, M.Nawaz; Islam, M.Nazrul (1980). "The Weibull distribution as a general model for forecasting technological change". Technological Forecasting and Social Change. 18 (3): 247–56. doi:10.1016/0040-1625(80)90026-8.
  24. ^ Computational Optimization of Internal Combustion Engine page 49
  25. ^ Austin, L. G.; Klimpel, R. R.; Luckie, P. T. (1984). Process Engineering of Size Reduction. Hoboken, NJ: Guinn Printing Inc. ISBN 0-89520-421-5.
  26. ^ Chandrashekar, S. (1943). "Stochastic Problems in Physics and Astronomy". Reviews of Modern Physics. 15 (1): 86.
  27. ^ ECSS-E-ST-10-12C – Methods for the calculation of radiation received and its effects, and a policy for design margins (Report). European Cooperation for Space Standardization. November 15, 2008.
  28. ^ L. D. Edmonds; C. E. Barnes; L. Z. Scheick (May 2000). "8.3 Curve Fitting". An Introduction to Space Radiation Effects on Microelectronics (PDF) (Report). NASA Jet Propulsion Laboratory, California Institute of Technology. pp. 75–76.
  29. ^ "System evolution and reliability of systems". Sysev (Belgium). 2010-01-01.
  30. ^ Montgomery, Douglas (2012-06-19). Introduction to statistical quality control. [S.l.]: John Wiley. p. 95. ISBN 9781118146811.
  31. ^ Chatfield, C.; Goodhardt, G.J. (1973). "A Consumer Purchasing Model with Erlang Interpurchase Times". Journal of the American Statistical Association. 68 (344): 828–835. doi:10.1080/01621459.1973.10481432.

Bibliography edit

  • Fréchet, Maurice (1927), "Sur la loi de probabilité de l'écart maximum", Annales de la Société Polonaise de Mathématique, Cracovie, 6: 93–116.
  • Johnson, Norman L.; Kotz, Samuel; Balakrishnan, N. (1994), Continuous univariate distributions. Vol. 1, Wiley Series in Probability and Mathematical Statistics: Applied Probability and Statistics (2nd ed.), New York: John Wiley & Sons, ISBN 978-0-471-58495-7, MR 1299979
  • Mann, Nancy R.; Schafer, Ray E.; Singpurwalla, Nozer D. (1974), Methods for Statistical Analysis of Reliability and Life Data, Wiley Series in Probability and Mathematical Statistics: Applied Probability and Statistics (1st ed.), New York: John Wiley & Sons, ISBN 978-0-471-56737-0
  • Muraleedharan, G.; Rao, A.D.; Kurup, P.G.; Nair, N. Unnikrishnan; Sinha, Mourani (2007), "Modified Weibull Distribution for Maximum and Significant Wave Height Simulation and Prediction", Coastal Engineering, 54 (8): 630–638, doi:10.1016/j.coastaleng.2007.05.001
  • Rosin, P.; Rammler, E. (1933), "The Laws Governing the Fineness of Powdered Coal", Journal of the Institute of Fuel, 7: 29–36.
  • Sagias, N.C.; Karagiannidis, G.K. (2005). "Gaussian Class Multivariate Weibull Distributions: Theory and Applications in Fading Channels". IEEE Transactions on Information Theory. 51 (10): 3608–19. doi:10.1109/TIT.2005.855598. MR 2237527. S2CID 14654176.
  • Weibull, W. (1951), "A statistical distribution function of wide applicability" (PDF), Journal of Applied Mechanics, 18 (3): 293–297, Bibcode:1951JAM....18..293W, doi:10.1115/1.4010337.
  • "Weibull Distribution". Engineering statistics handbook. National Institute of Standards and Technology. 2008.
  • Nelson Jr, Ralph (2008-02-05). "Dispersing Powders in Liquids, Part 1, Chap 6: Particle Volume Distribution". Retrieved 2008-02-05.

External links edit

  • "Weibull distribution", Encyclopedia of Mathematics, EMS Press, 2001 [1994]
  • Mathpages – Weibull analysis
  • The Weibull Distribution
  • Reliability Analysis with Weibull
  • Interactive graphic: Univariate Distribution Relationships
  • Online Weibull Probability Plotting

weibull, distribution, probability, theory, statistics, continuous, probability, distribution, models, broad, range, random, variables, largely, nature, time, failure, time, between, events, examples, maximum, rainfalls, time, user, spends, page, weibull, para. In probability theory and statistics the Weibull distribution ˈ w aɪ b ʊ l is a continuous probability distribution It models a broad range of random variables largely in the nature of a time to failure or time between events Examples are maximum one day rainfalls and the time a user spends on a web page Weibull 2 parameter Probability density functionCumulative distribution functionParametersl 0 displaystyle lambda in 0 infty scale k 0 displaystyle k in 0 infty shapeSupportx 0 displaystyle x in 0 infty PDFf x k l x l k 1 e x l k x 0 0 x lt 0 displaystyle f x begin cases frac k lambda left frac x lambda right k 1 e x lambda k amp x geq 0 0 amp x lt 0 end cases CDFF x 1 e x l k x 0 0 x lt 0 displaystyle F x begin cases 1 e x lambda k amp x geq 0 0 amp x lt 0 end cases QuantileQ p l ln 1 p 1 k displaystyle Q p lambda ln 1 p frac 1 k Meanl G 1 1 k displaystyle lambda Gamma 1 1 k Medianl ln 2 1 k displaystyle lambda ln 2 1 k Mode l k 1 k 1 k k gt 1 0 k 1 displaystyle begin cases lambda left frac k 1 k right 1 k amp k gt 1 0 amp k leq 1 end cases Variancel 2 G 1 2 k G 1 1 k 2 displaystyle lambda 2 left Gamma left 1 frac 2 k right left Gamma left 1 frac 1 k right right 2 right SkewnessG 1 3 k l 3 3 m s 2 m 3 s 3 displaystyle frac Gamma 1 3 k lambda 3 3 mu sigma 2 mu 3 sigma 3 Excess kurtosis see text Entropyg 1 1 k ln l k 1 displaystyle gamma 1 1 k ln lambda k 1 MGF n 0 t n l n n G 1 n k k 1 displaystyle sum n 0 infty frac t n lambda n n Gamma 1 n k k geq 1 CF n 0 i t n l n n G 1 n k displaystyle sum n 0 infty frac it n lambda n n Gamma 1 n k Kullback Leibler divergencesee below The distribution is named after Swedish mathematician Waloddi Weibull who described it in detail in 1939 1 although it was first identified by Rene Maurice Frechet and first applied by Rosin amp Rammler 1933 to describe a particle size distribution Contents 1 Definition 1 1 Standard parameterization 1 2 Alternative parameterizations 1 2 1 First alternative 1 2 2 Second alternative 2 Properties 2 1 Density function 2 2 Cumulative distribution function 2 3 Moments 2 4 Moment generating function 2 5 Minima 2 6 Reparametrization tricks 2 7 Shannon entropy 2 8 Kullback Leibler divergence 3 Parameter estimation 3 1 Ordinary least square using Weibull plot 3 2 Method of moments 3 3 Maximum likelihood 4 Applications 5 Related distributions 6 See also 7 References 8 Bibliography 9 External linksDefinition editStandard parameterization edit The probability density function of a Weibull random variable is 2 3 f x l k k l x l k 1 e x l k x 0 0 x lt 0 displaystyle f x lambda k begin cases frac k lambda left frac x lambda right k 1 e x lambda k amp x geq 0 0 amp x lt 0 end cases nbsp where k gt 0 is the shape parameter and l gt 0 is the scale parameter of the distribution Its complementary cumulative distribution function is a stretched exponential function The Weibull distribution is related to a number of other probability distributions in particular it interpolates between the exponential distribution k 1 and the Rayleigh distribution k 2 and l 2 s displaystyle lambda sqrt 2 sigma nbsp 4 If the quantity X is a time to failure the Weibull distribution gives a distribution for which the failure rate is proportional to a power of time The shape parameter k is that power plus one and so this parameter can be interpreted directly as follows 5 A value of k lt 1 displaystyle k lt 1 nbsp indicates that the failure rate decreases over time like in case of the Lindy effect which however corresponds to Pareto distributions 6 rather than Weibull distributions This happens if there is significant infant mortality or defective items failing early and the failure rate decreasing over time as the defective items are weeded out of the population In the context of the diffusion of innovations this means negative word of mouth the hazard function is a monotonically decreasing function of the proportion of adopters A value of k 1 displaystyle k 1 nbsp indicates that the failure rate is constant over time This might suggest random external events are causing mortality or failure The Weibull distribution reduces to an exponential distribution A value of k gt 1 displaystyle k gt 1 nbsp indicates that the failure rate increases with time This happens if there is an aging process or parts that are more likely to fail as time goes on In the context of the diffusion of innovations this means positive word of mouth the hazard function is a monotonically increasing function of the proportion of adopters The function is first convex then concave with an inflection point at e 1 k 1 e 1 k k gt 1 displaystyle e 1 k 1 e 1 k k gt 1 nbsp In the field of materials science the shape parameter k of a distribution of strengths is known as the Weibull modulus In the context of diffusion of innovations the Weibull distribution is a pure imitation rejection model Alternative parameterizations edit First alternative edit Applications in medical statistics and econometrics often adopt a different parameterization 7 8 The shape parameter k is the same as above while the scale parameter is b l k displaystyle b lambda k nbsp In this case for x 0 the probability density function is f x k b b k x k 1 e b x k displaystyle f x k b bkx k 1 e bx k nbsp the cumulative distribution function is F x k b 1 e b x k displaystyle F x k b 1 e bx k nbsp the hazard function is h x k b b k x k 1 displaystyle h x k b bkx k 1 nbsp and the mean is b 1 k G 1 1 k displaystyle b 1 k Gamma 1 1 k nbsp Second alternative edit A second alternative parameterization can also be found 9 10 The shape parameter k is the same as in the standard case while the scale parameter l is replaced with a rate parameter b 1 l Then for x 0 the probability density function is f x k b b k b x k 1 e b x k displaystyle f x k beta beta k beta x k 1 e beta x k nbsp the cumulative distribution function is F x k b 1 e b x k displaystyle F x k beta 1 e beta x k nbsp and the hazard function is h x k b b k b x k 1 displaystyle h x k beta beta k beta x k 1 nbsp In all three parameterizations the hazard is decreasing for k lt 1 increasing for k gt 1 and constant for k 1 in which case the Weibull distribution reduces to an exponential distribution Properties editDensity function edit The form of the density function of the Weibull distribution changes drastically with the value of k For 0 lt k lt 1 the density function tends to as x approaches zero from above and is strictly decreasing For k 1 the density function tends to 1 l as x approaches zero from above and is strictly decreasing For k gt 1 the density function tends to zero as x approaches zero from above increases until its mode and decreases after it The density function has infinite negative slope at x 0 if 0 lt k lt 1 infinite positive slope at x 0 if 1 lt k lt 2 and null slope at x 0 if k gt 2 For k 1 the density has a finite negative slope at x 0 For k 2 the density has a finite positive slope at x 0 As k goes to infinity the Weibull distribution converges to a Dirac delta distribution centered at x l Moreover the skewness and coefficient of variation depend only on the shape parameter A generalization of the Weibull distribution is the hyperbolastic distribution of type III Cumulative distribution function edit The cumulative distribution function for the Weibull distribution is F x k l 1 e x l k displaystyle F x k lambda 1 e x lambda k nbsp for x 0 and F x k l 0 for x lt 0 If x l then F x k l 1 e 1 0 632 for all values of k Vice versa at F x k l 0 632 the value of x l The quantile inverse cumulative distribution function for the Weibull distribution is Q p k l l ln 1 p 1 k displaystyle Q p k lambda lambda ln 1 p 1 k nbsp for 0 p lt 1 The failure rate h or hazard function is given by h x k l k l x l k 1 displaystyle h x k lambda k over lambda left x over lambda right k 1 nbsp The Mean time between failures MTBF is MTBF k l l G 1 1 k displaystyle text MTBF k lambda lambda Gamma 1 1 k nbsp Moments edit The moment generating function of the logarithm of a Weibull distributed random variable is given by 11 E e t log X l t G t k 1 displaystyle operatorname E left e t log X right lambda t Gamma left frac t k 1 right nbsp where G is the gamma function Similarly the characteristic function of log X is given by E e i t log X l i t G i t k 1 displaystyle operatorname E left e it log X right lambda it Gamma left frac it k 1 right nbsp In particular the nth raw moment of X is given by m n l n G 1 n k displaystyle m n lambda n Gamma left 1 frac n k right nbsp The mean and variance of a Weibull random variable can be expressed as E X l G 1 1 k displaystyle operatorname E X lambda Gamma left 1 frac 1 k right nbsp and var X l 2 G 1 2 k G 1 1 k 2 displaystyle operatorname var X lambda 2 left Gamma left 1 frac 2 k right left Gamma left 1 frac 1 k right right 2 right nbsp The skewness is given by g 1 2 G 1 3 3 G 1 G 2 G 3 G 2 G 1 2 3 2 displaystyle gamma 1 frac 2 Gamma 1 3 3 Gamma 1 Gamma 2 Gamma 3 Gamma 2 Gamma 1 2 3 2 nbsp where G i G 1 i k displaystyle Gamma i Gamma 1 i k nbsp which may also be written as g 1 G 1 3 k l 3 3 m s 2 m 3 s 3 displaystyle gamma 1 frac Gamma left 1 frac 3 k right lambda 3 3 mu sigma 2 mu 3 sigma 3 nbsp where the mean is denoted by m and the standard deviation is denoted by s The excess kurtosis is given by g 2 6 G 1 4 12 G 1 2 G 2 3 G 2 2 4 G 1 G 3 G 4 G 2 G 1 2 2 displaystyle gamma 2 frac 6 Gamma 1 4 12 Gamma 1 2 Gamma 2 3 Gamma 2 2 4 Gamma 1 Gamma 3 Gamma 4 Gamma 2 Gamma 1 2 2 nbsp where G i G 1 i k displaystyle Gamma i Gamma 1 i k nbsp The kurtosis excess may also be written as g 2 l 4 G 1 4 k 4 g 1 s 3 m 6 m 2 s 2 m 4 s 4 3 displaystyle gamma 2 frac lambda 4 Gamma 1 frac 4 k 4 gamma 1 sigma 3 mu 6 mu 2 sigma 2 mu 4 sigma 4 3 nbsp Moment generating function edit A variety of expressions are available for the moment generating function of X itself As a power series since the raw moments are already known one has E e t X n 0 t n l n n G 1 n k displaystyle operatorname E left e tX right sum n 0 infty frac t n lambda n n Gamma left 1 frac n k right nbsp Alternatively one can attempt to deal directly with the integral E e t X 0 e t x k l x l k 1 e x l k d x displaystyle operatorname E left e tX right int 0 infty e tx frac k lambda left frac x lambda right k 1 e x lambda k dx nbsp If the parameter k is assumed to be a rational number expressed as k p q where p and q are integers then this integral can be evaluated analytically 12 With t replaced by t one finds E e t X 1 l k t k p k q p 2 p q p 2 G p q q p 1 k p 2 k p p k p 0 q 1 q q 1 q p p q l k t k q displaystyle operatorname E left e tX right frac 1 lambda k t k frac p k sqrt q p sqrt 2 pi q p 2 G p q q p left left begin matrix frac 1 k p frac 2 k p dots frac p k p frac 0 q frac 1 q dots frac q 1 q end matrix right frac p p left q lambda k t k right q right nbsp where G is the Meijer G function The characteristic function has also been obtained by Muraleedharan et al 2007 The characteristic function and moment generating function of 3 parameter Weibull distribution have also been derived by Muraleedharan amp Soares 2014 harvtxt error no target CITEREFMuraleedharanSoares2014 help by a direct approach Minima edit Let X 1 X 2 X n displaystyle X 1 X 2 ldots X n nbsp be independent and identically distributed Weibull random variables with scale parameter l displaystyle lambda nbsp and shape parameter k displaystyle k nbsp If the minimum of these n displaystyle n nbsp random variables is Z min X 1 X 2 X n displaystyle Z min X 1 X 2 ldots X n nbsp then the cumulative probability distribution of Z displaystyle Z nbsp given by F z 1 e n z l k displaystyle F z 1 e n z lambda k nbsp That is Z displaystyle Z nbsp will also be Weibull distributed with scale parameter n 1 k l displaystyle n 1 k lambda nbsp and with shape parameter k displaystyle k nbsp Reparametrization tricks edit Fix some a gt 0 displaystyle alpha gt 0 nbsp Let p 1 p n displaystyle pi 1 pi n nbsp be nonnegative and not all zero and let g 1 g n displaystyle g 1 g n nbsp be independent samples of Weibull 1 a 1 displaystyle text Weibull 1 alpha 1 nbsp then 13 arg min i g i p i a Categorical p j i p i j displaystyle arg min i g i pi i alpha sim text Categorical left frac pi j sum i pi i right j nbsp min i g i p i a Weibull i p i a a 1 displaystyle min i g i pi i alpha sim text Weibull left left sum i pi i right alpha alpha 1 right nbsp Shannon entropy edit The information entropy is given by H l k g 1 1 k ln l k 1 displaystyle H lambda k gamma left 1 frac 1 k right ln left frac lambda k right 1 nbsp where g displaystyle gamma nbsp is the Euler Mascheroni constant The Weibull distribution is the maximum entropy distribution for a non negative real random variate with a fixed expected value of xk equal to lk and a fixed expected value of ln xk equal to ln lk g displaystyle gamma nbsp Kullback Leibler divergence edit The Kullback Leibler divergence between two Weibulll distributions is given by 14 D KL W e i b 1 W e i b 2 log k 1 l 1 k 1 log k 2 l 2 k 2 k 1 k 2 log l 1 g k 1 l 1 l 2 k 2 G k 2 k 1 1 1 displaystyle D text KL mathrm Weib 1 parallel mathrm Weib 2 log frac k 1 lambda 1 k 1 log frac k 2 lambda 2 k 2 k 1 k 2 left log lambda 1 frac gamma k 1 right left frac lambda 1 lambda 2 right k 2 Gamma left frac k 2 k 1 1 right 1 nbsp Parameter estimation editOrdinary least square using Weibull plot edit nbsp Weibull plot The fit of a Weibull distribution to data can be visually assessed using a Weibull plot 15 The Weibull plot is a plot of the empirical cumulative distribution function F x displaystyle widehat F x nbsp of data on special axes in a type of Q Q plot The axes are ln ln 1 F x displaystyle ln ln 1 widehat F x nbsp versus ln x displaystyle ln x nbsp The reason for this change of variables is the cumulative distribution function can be linearized F x 1 e x l k ln 1 F x x l k ln ln 1 F x y k ln x mx k ln l c displaystyle begin aligned F x amp 1 e x lambda k 4pt ln 1 F x amp x lambda k 4pt underbrace ln ln 1 F x textrm y amp underbrace k ln x textrm mx underbrace k ln lambda textrm c end aligned nbsp which can be seen to be in the standard form of a straight line Therefore if the data came from a Weibull distribution then a straight line is expected on a Weibull plot There are various approaches to obtaining the empirical distribution function from data one method is to obtain the vertical coordinate for each point using F i 0 3 n 0 4 displaystyle widehat F frac i 0 3 n 0 4 nbsp where i displaystyle i nbsp is the rank of the data point and n displaystyle n nbsp is the number of data points 16 Linear regression can also be used to numerically assess goodness of fit and estimate the parameters of the Weibull distribution The gradient informs one directly about the shape parameter k displaystyle k nbsp and the scale parameter l displaystyle lambda nbsp can also be inferred Method of moments edit The coefficient of variation of Weibull distribution depends only on the shape parameter 17 C V 2 s 2 m 2 G 1 2 k G 1 1 k 2 G 1 1 k 2 displaystyle CV 2 frac sigma 2 mu 2 frac Gamma left 1 frac 2 k right left Gamma left 1 frac 1 k right right 2 left Gamma left 1 frac 1 k right right 2 nbsp Equating the sample quantities s 2 x 2 displaystyle s 2 bar x 2 nbsp to s 2 m 2 displaystyle sigma 2 mu 2 nbsp the moment estimate of the shape parameter k displaystyle k nbsp can be read off either from a look up table or a graph of C V 2 displaystyle CV 2 nbsp versus k displaystyle k nbsp A more accurate estimate of k displaystyle hat k nbsp can be found using a root finding algorithm to solve G 1 2 k G 1 1 k 2 G 1 1 k 2 s 2 x 2 displaystyle frac Gamma left 1 frac 2 k right left Gamma left 1 frac 1 k right right 2 left Gamma left 1 frac 1 k right right 2 frac s 2 bar x 2 nbsp The moment estimate of the scale parameter can then be found using the first moment equation as l x G 1 1 k displaystyle hat lambda frac bar x Gamma left 1 frac 1 hat k right nbsp Maximum likelihood edit The maximum likelihood estimator for the l displaystyle lambda nbsp parameter given k displaystyle k nbsp is 17 l 1 n i 1 n x i k 1 k displaystyle widehat lambda left frac 1 n sum i 1 n x i k right frac 1 k nbsp The maximum likelihood estimator for k displaystyle k nbsp is the solution for k of the following equation 18 0 i 1 n x i k ln x i i 1 n x i k 1 k 1 n i 1 n ln x i displaystyle 0 frac sum i 1 n x i k ln x i sum i 1 n x i k frac 1 k frac 1 n sum i 1 n ln x i nbsp This equation defines k displaystyle widehat k nbsp only implicitly one must generally solve for k displaystyle k nbsp by numerical means When x 1 gt x 2 gt gt x N displaystyle x 1 gt x 2 gt cdots gt x N nbsp are the N displaystyle N nbsp largest observed samples from a dataset of more than N displaystyle N nbsp samples then the maximum likelihood estimator for the l displaystyle lambda nbsp parameter given k displaystyle k nbsp is 18 l k 1 N i 1 N x i k x N k displaystyle widehat lambda k frac 1 N sum i 1 N x i k x N k nbsp Also given that condition the maximum likelihood estimator for k displaystyle k nbsp is citation needed 0 i 1 N x i k ln x i x N k ln x N i 1 N x i k x N k 1 N i 1 N ln x i displaystyle 0 frac sum i 1 N x i k ln x i x N k ln x N sum i 1 N x i k x N k frac 1 N sum i 1 N ln x i nbsp Again this being an implicit function one must generally solve for k displaystyle k nbsp by numerical means Applications editThe Weibull distribution is used citation needed nbsp Fitted cumulative Weibull distribution to maximum one day rainfalls using CumFreq see also distribution fitting 19 nbsp Fitted curves for oil production time series data 20 In survival analysis In reliability engineering and failure analysis In electrical engineering to represent overvoltage occurring in an electrical system In industrial engineering to represent manufacturing and delivery times In extreme value theory In weather forecasting and the wind power industry to describe wind speed distributions as the natural distribution often matches the Weibull shape 21 In communications systems engineering In radar systems to model the dispersion of the received signals level produced by some types of clutters To model fading channels in wireless communications as the Weibull fading model seems to exhibit good fit to experimental fading channel measurements In information retrieval to model dwell times on web pages 22 In general insurance to model the size of reinsurance claims and the cumulative development of asbestosis losses In forecasting technological change also known as the Sharif Islam model 23 In hydrology the Weibull distribution is applied to extreme events such as annual maximum one day rainfalls and river discharges In decline curve analysis to model oil production rate curve of shale oil wells 20 In describing the size of particles generated by grinding milling and crushing operations the 2 Parameter Weibull distribution is used and in these applications it is sometimes known as the Rosin Rammler distribution 24 In this context it predicts fewer fine particles than the log normal distribution and it is generally most accurate for narrow particle size distributions 25 The interpretation of the cumulative distribution function is that F x k l displaystyle F x k lambda nbsp is the mass fraction of particles with diameter smaller than x displaystyle x nbsp where l displaystyle lambda nbsp is the mean particle size and k displaystyle k nbsp is a measure of the spread of particle sizes In describing random point clouds such as the positions of particles in an ideal gas the probability to find the nearest neighbor particle at a distance x displaystyle x nbsp from a given particle is given by a Weibull distribution with k 3 displaystyle k 3 nbsp and r 1 l 3 displaystyle rho 1 lambda 3 nbsp equal to the density of the particles 26 In calculating the rate of radiation induced single event effects onboard spacecraft a four parameter Weibull distribution is used to fit experimentally measured device cross section probability data to a particle linear energy transfer spectrum 27 The Weibull fit was originally used because of a belief that particle energy levels align to a statistical distribution but this belief was later proven false citation needed and the Weibull fit continues to be used because of its many adjustable parameters rather than a demonstrated physical basis 28 Related distributions editIf W W e i b u l l l k displaystyle W sim mathrm Weibull lambda k nbsp then the variable G log W displaystyle G log W nbsp is Gumbel minimum distributed with location parameter m log l displaystyle mu log lambda nbsp and scale parameter b 1 k displaystyle beta 1 k nbsp That is G G u m b e l min log l 1 k displaystyle G sim mathrm Gumbel min log lambda 1 k nbsp A Weibull distribution is a generalized gamma distribution with both shape parameters equal to k The translated Weibull distribution or 3 parameter Weibull contains an additional parameter 11 It has the probability density function f x k l 8 k l x 8 l k 1 e x 8 l k displaystyle f x k lambda theta k over lambda left x theta over lambda right k 1 e left x theta over lambda right k nbsp for x 8 displaystyle x geq theta nbsp and f x k l 8 0 displaystyle f x k lambda theta 0 nbsp for x lt 8 displaystyle x lt theta nbsp where k gt 0 displaystyle k gt 0 nbsp is the shape parameter l gt 0 displaystyle lambda gt 0 nbsp is the scale parameter and 8 displaystyle theta nbsp is the location parameter of the distribution 8 displaystyle theta nbsp value sets an initial failure free time before the regular Weibull process begins When 8 0 displaystyle theta 0 nbsp this reduces to the 2 parameter distribution The Weibull distribution can be characterized as the distribution of a random variable W displaystyle W nbsp such that the random variable X W l k displaystyle X left frac W lambda right k nbsp is the standard exponential distribution with intensity 1 11 This implies that the Weibull distribution can also be characterized in terms of a uniform distribution if U displaystyle U nbsp is uniformly distributed on 0 1 displaystyle 0 1 nbsp then the random variable W l ln U 1 k displaystyle W lambda ln U 1 k nbsp is Weibull distributed with parameters k displaystyle k nbsp and l displaystyle lambda nbsp Note that ln U displaystyle ln U nbsp here is equivalent to X displaystyle X nbsp just above This leads to an easily implemented numerical scheme for simulating a Weibull distribution The Weibull distribution interpolates between the exponential distribution with intensity 1 l displaystyle 1 lambda nbsp when k 1 displaystyle k 1 nbsp and a Rayleigh distribution of mode s l 2 displaystyle sigma lambda sqrt 2 nbsp when k 2 displaystyle k 2 nbsp The Weibull distribution usually sufficient in reliability engineering is a special case of the three parameter exponentiated Weibull distribution where the additional exponent equals 1 The exponentiated Weibull distribution accommodates unimodal bathtub shaped 29 and monotone failure rates The Weibull distribution is a special case of the generalized extreme value distribution It was in this connection that the distribution was first identified by Maurice Frechet in 1927 30 The closely related Frechet distribution named for this work has the probability density function f F r e c h e t x k l k l x l 1 k e x l k f W e i b u l l x k l displaystyle f rm Frechet x k lambda frac k lambda left frac x lambda right 1 k e x lambda k f rm Weibull x k lambda nbsp The distribution of a random variable that is defined as the minimum of several random variables each having a different Weibull distribution is a poly Weibull distribution The Weibull distribution was first applied by Rosin amp Rammler 1933 to describe particle size distributions It is widely used in mineral processing to describe particle size distributions in comminution processes In this context the cumulative distribution is given by f x P 80 m 1 e ln 0 2 x P 80 m x 0 0 x lt 0 displaystyle f x P rm 80 m begin cases 1 e ln left 0 2 right left frac x P rm 80 right m amp x geq 0 0 amp x lt 0 end cases nbsp where x displaystyle x nbsp is the particle size P 80 displaystyle P rm 80 nbsp is the 80th percentile of the particle size distribution m displaystyle m nbsp is a parameter describing the spread of the distribution Because of its availability in spreadsheets it is also used where the underlying behavior is actually better modeled by an Erlang distribution 31 If X W e i b u l l l 1 2 displaystyle X sim mathrm Weibull lambda frac 1 2 nbsp then X E x p o n e n t i a l 1 l displaystyle sqrt X sim mathrm Exponential frac 1 sqrt lambda nbsp Exponential distribution For the same values of k the Gamma distribution takes on similar shapes but the Weibull distribution is more platykurtic From the viewpoint of the Stable count distribution k displaystyle k nbsp can be regarded as Levy s stability parameter A Weibull distribution can be decomposed to an integral of kernel density where the kernel is either a Laplace distribution F x 1 l displaystyle F x 1 lambda nbsp or a Rayleigh distribution F x 2 l displaystyle F x 2 lambda nbsp F x k l 0 1 n F x 1 l n G 1 k 1 N k n d n 1 k gt 0 or 0 1 s F x 2 2 l s 2 p G 1 k 1 V k s d s 2 k gt 0 displaystyle F x k lambda begin cases displaystyle int 0 infty frac 1 nu F x 1 lambda nu left Gamma left frac 1 k 1 right mathfrak N k nu right d nu amp 1 geq k gt 0 text or displaystyle int 0 infty frac 1 s F x 2 sqrt 2 lambda s left sqrt frac 2 pi Gamma left frac 1 k 1 right V k s right ds amp 2 geq k gt 0 end cases nbsp where N k n displaystyle mathfrak N k nu nbsp is the Stable count distribution and V k s displaystyle V k s nbsp is the Stable vol distribution See also editDiscrete Weibull distribution Fisher Tippett Gnedenko theorem Logistic distribution Rosin Rammler distribution for particle size analysis Rayleigh distribution Stable count distributionReferences edit Bowers et al 1997 Actuarial Mathematics 2nd ed Society of Actuaries Papoulis Athanasios Papoulis Pillai S Unnikrishna 2002 Probability Random Variables and Stochastic Processes 4th ed Boston McGraw Hill ISBN 0 07 366011 6 Kizilersu Ayse Kreer Markus Thomas Anthony W 2018 The Weibull distribution Significance 15 2 10 11 doi 10 1111 j 1740 9713 2018 01123 x Rayleigh Distribution MATLAB amp Simulink MathWorks Australia www mathworks com au Jiang R Murthy D N P 2011 A study of Weibull shape parameter Properties and significance Reliability Engineering amp System Safety 96 12 1619 26 doi 10 1016 j ress 2011 09 003 Eliazar Iddo November 2017 Lindy s Law Physica A Statistical Mechanics and Its Applications 486 797 805 Bibcode 2017PhyA 486 797E doi 10 1016 j physa 2017 05 077 S2CID 125349686 Collett David 2015 Modelling survival data in medical research 3rd ed Boca Raton Chapman and Hall CRC ISBN 978 1439856789 Cameron A C Trivedi P K 2005 Microeconometrics methods and applications p 584 ISBN 978 0 521 84805 3 Kalbfleisch J D Prentice R L 2002 The statistical analysis of failure time data 2nd ed Hoboken N J J Wiley ISBN 978 0 471 36357 6 OCLC 50124320 Therneau T 2020 A Package for Survival Analysis in R R package version 3 1 a b c Johnson Kotz amp Balakrishnan 1994 See Cheng Tellambura amp Beaulieu 2004 harv error no target CITEREFChengTellamburaBeaulieu2004 help for the case when k is an integer and Sagias amp Karagiannidis 2005 for the rational case Balog Matej Tripuraneni Nilesh Ghahramani Zoubin Weller Adrian 2017 07 17 Lost Relatives of the Gumbel Trick International Conference on Machine Learning PMLR 371 379 Bauckhage Christian 2013 Computing the Kullback Leibler Divergence between two Weibull Distributions arXiv 1310 3713 cs IT 1 3 3 30 Weibull Plot www itl nist gov Wayne Nelson 2004 Applied Life Data Analysis Wiley Blackwell ISBN 0 471 64462 5 a b Cohen A Clifford Nov 1965 Maximum Likelihood Estimation in the Weibull Distribution Based on Complete and on Censored Samples PDF Technometrics 7 4 579 588 a b Sornette D 2004 Critical Phenomena in Natural Science Chaos Fractals Self organization and Disorder CumFreq Distribution fitting of probability free software cumulative frequency a b Lee Se Yoon Mallick Bani 2021 Bayesian Hierarchical Modeling Application Towards Production Results in the Eagle Ford Shale of South Texas Sankhya B 84 1 43 doi 10 1007 s13571 020 00245 8 Wind Speed Distribution Weibull REUK co uk www reuk co uk Liu Chao White Ryen W Dumais Susan 2010 07 19 Understanding web browsing behaviors through Weibull analysis of dwell time ACM pp 379 386 doi 10 1145 1835449 1835513 ISBN 9781450301534 S2CID 12186028 Sharif M Nawaz Islam M Nazrul 1980 The Weibull distribution as a general model for forecasting technological change Technological Forecasting and Social Change 18 3 247 56 doi 10 1016 0040 1625 80 90026 8 Computational Optimization of Internal Combustion Engine page 49 Austin L G Klimpel R R Luckie P T 1984 Process Engineering of Size Reduction Hoboken NJ Guinn Printing Inc ISBN 0 89520 421 5 Chandrashekar S 1943 Stochastic Problems in Physics and Astronomy Reviews of Modern Physics 15 1 86 ECSS E ST 10 12C Methods for the calculation of radiation received and its effects and a policy for design margins Report European Cooperation for Space Standardization November 15 2008 L D Edmonds C E Barnes L Z Scheick May 2000 8 3 Curve Fitting An Introduction to Space Radiation Effects on Microelectronics PDF Report NASA Jet Propulsion Laboratory California Institute of Technology pp 75 76 System evolution and reliability of systems Sysev Belgium 2010 01 01 Montgomery Douglas 2012 06 19 Introduction to statistical quality control S l John Wiley p 95 ISBN 9781118146811 Chatfield C Goodhardt G J 1973 A Consumer Purchasing Model with Erlang Interpurchase Times Journal of the American Statistical Association 68 344 828 835 doi 10 1080 01621459 1973 10481432 Bibliography editFrechet Maurice 1927 Sur la loi de probabilite de l ecart maximum Annales de la Societe Polonaise de Mathematique Cracovie 6 93 116 Johnson Norman L Kotz Samuel Balakrishnan N 1994 Continuous univariate distributions Vol 1 Wiley Series in Probability and Mathematical Statistics Applied Probability and Statistics 2nd ed New York John Wiley amp Sons ISBN 978 0 471 58495 7 MR 1299979 Mann Nancy R Schafer Ray E Singpurwalla Nozer D 1974 Methods for Statistical Analysis of Reliability and Life Data Wiley Series in Probability and Mathematical Statistics Applied Probability and Statistics 1st ed New York John Wiley amp Sons ISBN 978 0 471 56737 0 Muraleedharan G Rao A D Kurup P G Nair N Unnikrishnan Sinha Mourani 2007 Modified Weibull Distribution for Maximum and Significant Wave Height Simulation and Prediction Coastal Engineering 54 8 630 638 doi 10 1016 j coastaleng 2007 05 001 Rosin P Rammler E 1933 The Laws Governing the Fineness of Powdered Coal Journal of the Institute of Fuel 7 29 36 Sagias N C Karagiannidis G K 2005 Gaussian Class Multivariate Weibull Distributions Theory and Applications in Fading Channels IEEE Transactions on Information Theory 51 10 3608 19 doi 10 1109 TIT 2005 855598 MR 2237527 S2CID 14654176 Weibull W 1951 A statistical distribution function of wide applicability PDF Journal of Applied Mechanics 18 3 293 297 Bibcode 1951JAM 18 293W doi 10 1115 1 4010337 Weibull Distribution Engineering statistics handbook National Institute of Standards and Technology 2008 Nelson Jr Ralph 2008 02 05 Dispersing Powders in Liquids Part 1 Chap 6 Particle Volume Distribution Retrieved 2008 02 05 External links edit Weibull distribution Encyclopedia of Mathematics EMS Press 2001 1994 Mathpages Weibull analysis The Weibull Distribution Reliability Analysis with Weibull Interactive graphic Univariate Distribution Relationships Online Weibull Probability Plotting Retrieved from https en wikipedia org w index php title Weibull distribution amp oldid 1220013691, wikipedia, wiki, 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