Colebrook equation
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fluid dynamics In physics and engineering, fluid dynamics is a subdiscipline of fluid mechanics that describes the flow of fluids— liquids and gases. It has several subdisciplines, including ''aerodynamics'' (the study of air and other gases in motion) a ...
, the Darcy friction factor formulae are equations that allow the calculation of the Darcy friction factor, a
dimensionless quantity A dimensionless quantity (also known as a bare quantity, pure quantity, or scalar quantity as well as quantity of dimension one) is a quantity to which no physical dimension is assigned, with a corresponding SI unit of measurement of one (or 1 ...
used in the Darcy–Weisbach equation, for the description of friction losses in pipe flow as well as open-channel flow. The Darcy friction factor is also known as the ''Darcy–Weisbach friction factor'', ''resistance coefficient'' or simply ''friction factor''; by definition it is four times larger than the
Fanning friction factor The Fanning friction factor, named after John Thomas Fanning, is a dimensionless number used as a local parameter in continuum mechanics calculations. It is defined as the ratio between the local shear stress and the local flow kinetic energy d ...
.


Notation

In this article, the following conventions and definitions are to be understood: * The
Reynolds number In fluid mechanics, the Reynolds number () is a dimensionless quantity that helps predict fluid flow patterns in different situations by measuring the ratio between inertial and viscous forces. At low Reynolds numbers, flows tend to be dom ...
Re is taken to be Re = ''V'' ''D'' / ν, where ''V'' is the mean velocity of fluid flow, ''D'' is the pipe diameter, and where ν is the
kinematic viscosity The viscosity of a fluid is a measure of its resistance to deformation at a given rate. For liquids, it corresponds to the informal concept of "thickness": for example, syrup has a higher viscosity than water. Viscosity quantifies the int ...
μ / ρ, with μ the fluid's Dynamic viscosity, and ρ the fluid's density. * The pipe's relative roughness ε / ''D'', where ε is the pipe's effective roughness height and ''D'' the pipe (inside) diameter. * ''f'' stands for the Darcy friction factor. Its value depends on the flow's Reynolds number Re and on the pipe's relative roughness ε / ''D''. * The log function is understood to be base-10 (as is customary in engineering fields): if ''x'' = log(''y''), then ''y'' = 10''x''. * The ln function is understood to be base-e: if ''x'' = ln(''y''), then ''y'' = e''x''.


Flow regime

Which friction factor formula may be applicable depends upon the type of flow that exists: *Laminar flow *Transition between laminar and turbulent flow *Fully turbulent flow in smooth conduits *Fully turbulent flow in rough conduits *Free surface flow.


Transition flow

Transition (neither fully laminar nor fully turbulent) flow occurs in the range of Reynolds numbers between 2300 and 4000. The value of the Darcy friction factor is subject to large uncertainties in this flow regime.


Turbulent flow in smooth conduits

The Blasius correlation is the simplest equation for computing the Darcy friction factor. Because the Blasius correlation has no term for pipe roughness, it is valid only to smooth pipes. However, the Blasius correlation is sometimes used in rough pipes because of its simplicity. The Blasius correlation is valid up to the Reynolds number 100000.


Turbulent flow in rough conduits

The Darcy friction factor for fully turbulent flow (Reynolds number greater than 4000) in rough conduits can be modeled by the Colebrook–White equation.


Free surface flow

The last formula in the ''Colebrook equation'' section of this article is for free surface flow. The approximations elsewhere in this article are not applicable for this type of flow.


Choosing a formula

Before choosing a formula it is worth knowing that in the paper on the
Moody chart In engineering, the Moody chart or Moody diagram (also Stanton diagram) is a graph in non-dimensional form that relates the Darcy–Weisbach friction factor ''f'D'', Reynolds number Re, and surface roughness for fully developed flow in a circul ...
, Moody stated the accuracy is about ±5% for smooth pipes and ±10% for rough pipes. If more than one formula is applicable in the flow regime under consideration, the choice of formula may be influenced by one or more of the following: *Required accuracy *Speed of computation required *Available computational technology: **calculator (minimize keystrokes) **spreadsheet (single-cell formula) **programming/scripting language (subroutine).


Colebrook–White equation

The phenomenological Colebrook–White equation (or Colebrook equation) expresses the Darcy friction factor ''f'' as a function of Reynolds number Re and pipe relative roughness ε / ''D''h, fitting the data of experimental studies of
turbulent In fluid dynamics, turbulence or turbulent flow is fluid motion characterized by chaotic changes in pressure and flow velocity. It is in contrast to a laminar flow, which occurs when a fluid flows in parallel layers, with no disruption between ...
flow in smooth and rough
pipes Pipe(s), PIPE(S) or piping may refer to: Objects * Pipe (fluid conveyance), a hollow cylinder following certain dimension rules ** Piping, the use of pipes in industry * Smoking pipe ** Tobacco pipe * Half-pipe and quarter pipe, semi-circula ...
. The equation can be used to (iteratively) solve for the Darcy–Weisbach friction factor ''f''. For a conduit flowing completely full of fluid at Reynolds numbers greater than 4000, it is expressed as: : \frac= -2 \log \left( \frac + \frac \right) or : \frac= -2 \log \left( \frac + \frac \right) where: * Hydraulic diameter, D_\mathrm (m, ft) – For fluid-filled, circular conduits, D_\mathrm = D = inside diameter * Hydraulic radius, R_\mathrm (m, ft) – For fluid-filled, circular conduits, R_\mathrm = D/4 = (inside diameter)/4 Note: Some sources use a constant of 3.71 in the denominator for the roughness term in the first equation above.


Solving

The Colebrook equation is usually solved numerically due to its implicit nature. Recently, the
Lambert W function In mathematics, the Lambert function, also called the omega function or product logarithm, is a multivalued function, namely the branches of the converse relation of the function , where is any complex number and is the exponential function ...
has been employed to obtain explicit reformulation of the Colebrook equation. x=\frac, b=\frac, a= \frac x=-2\log(ax+b) or 10^= ax+b p=10^ will get: : p^x = ax + b : x = -\frac - \frac then: : f = \frac


Expanded forms

Additional, mathematically equivalent forms of the Colebrook equation are: : \frac= 1.7384\ldots -2 \log \left( \frac + \frac \right) ::where: :::1.7384... = 2 log (2 × 3.7) = 2 log (7.4) :::18.574 = 2.51 × 3.7 × 2 and : \frac= 1.1364\ldots + 2 \log\left (D_\mathrm / \varepsilon\right) -2 \log \left( 1 + \frac \right) :or : \frac= 1.1364\ldots -2 \log \left( \frac + \frac \right) ::where: :::1.1364... = 1.7384... − 2 log (2) = 2 log (7.4) − 2 log (2) = 2 log (3.7) :::9.287 = 18.574 / 2 = 2.51 × 3.7. The additional equivalent forms above assume that the constants 3.7 and 2.51 in the formula at the top of this section are exact. The constants are probably values which were rounded by Colebrook during his
curve fitting Curve fitting is the process of constructing a curve, or mathematical function, that has the best fit to a series of data points, possibly subject to constraints. Curve fitting can involve either interpolation, where an exact fit to the data i ...
; but they are effectively treated as exact when comparing (to several decimal places) results from explicit formulae (such as those found elsewhere in this article) to the friction factor computed via Colebrook's implicit equation. Equations similar to the additional forms above (with the constants rounded to fewer decimal places, or perhaps shifted slightly to minimize overall rounding errors) may be found in various references. It may be helpful to note that they are essentially the same equation.


Free surface flow

Another form of the Colebrook-White equation exists for free surfaces. Such a condition may exist in a pipe that is flowing partially full of fluid. For free surface flow: :\frac = -2 \log \left(\frac + \frac\right). The above equation is valid only for turbulent flow. Another approach for estimating ''f'' in free surface flows, which is valid under all the flow regimes (laminar, transition and turbulent) is the following: f=\left ( \frac \right ) \left \frac \right \left \^ where ''a'' is: a= \frac and ''b'' is: b=\frac where ''Reh'' is Reynolds number where ''h'' is the characteristic hydraulic length (hydraulic radius for 1D flows or water depth for 2D flows) and ''Rh'' is the hydraulic radius (for 1D flows) or the water depth (for 2D flows). The Lambert W function can be calculated as follows: W(1.35Re_h)=\ln-\ln+\left ( \frac \right )+ \left ( \frac \right )


Approximations of the Colebrook equation


Haaland equation

The ''Haaland equation'' was proposed in 1983 by Professor S.E. Haaland of the
Norwegian Institute of Technology The Norwegian Institute of Technology ( Norwegian: ''Norges tekniske høgskole'', NTH) was a science institute in Trondheim, Norway. It was established in 1910, and existed as an independent technical university for 58 years, after which it was ...
. It is used to solve directly for the Darcy–Weisbach friction factor ''f'' for a full-flowing circular pipe. It is an approximation of the implicit Colebrook–White equation, but the discrepancy from experimental data is well within the accuracy of the data. The Haaland equation is expressed: : \frac = -1.8 \log \left \left( \frac \right)^ + \frac \right


Swamee–Jain equation

The Swamee–Jain equation is used to solve directly for the Darcy–Weisbach friction factor ''f'' for a full-flowing circular pipe. It is an approximation of the implicit Colebrook–White equation. : f = \frac


Serghides's solution

Serghides's solution is used to solve directly for the Darcy–Weisbach friction factor ''f'' for a full-flowing circular pipe. It is an approximation of the implicit Colebrook–White equation. It was derived using
Steffensen's method In numerical analysis, Steffensen's method is a root-finding technique named after Johan Frederik Steffensen which is similar to Newton's method. Steffensen's method also achieves quadratic convergence, but without using derivatives as Newton ...
. The solution involves calculating three intermediate values and then substituting those values into a final equation. : A = -2\log\left( \frac + \right) : B = -2\log \left(\frac + \right) : C = -2\log \left(\frac + \right) : \frac = A - \frac The equation was found to match the Colebrook–White equation within 0.0023% for a test set with a 70-point matrix consisting of ten relative roughness values (in the range 0.00004 to 0.05) by seven Reynolds numbers (2500 to 108).


Goudar–Sonnad equation

Goudar equation is the most accurate approximation to solve directly for the Darcy–Weisbach friction factor ''f'' for a full-flowing circular pipe. It is an approximation of the implicit Colebrook–White equation. Equation has the following form : a = : b = \frac : d = : s = : q = : g = : z = : D_ = z : D_ = D_ \left(1 + \frac\right) : \frac =


Brkić solution

Brkić shows one approximation of the Colebrook equation based on the Lambert W-function : S = \ln\frac : \frac = -2\log \left(\frac + \right) The equation was found to match the Colebrook–White equation within 3.15%.


Brkić-Praks solution

Brkić and Praks show one approximation of the Colebrook equation based on the Wright \omega-function, a cognate of the Lambert W-function :\displaystyle\frac\approx 0.8686\cdot \left B-C+\displaystyle\frac\right\, :A\approx \displaystyle \frac, B\approx \mathrm\,\left( Re\right) -0.7794, C=\mathrm\,\left( x\right), and x=A+B The equation was found to match the Colebrook–White equation within 0.0497%.


Praks-Brkić solution

Praks and Brkić show one approximation of the Colebrook equation based on the Wright \omega-function, a cognate of the Lambert W-function :\displaystyle\frac\approx 0.8685972\cdot \left B-C+\displaystyle\frac\, \right/math> :A\approx \displaystyle \frac, B\approx \mathrm\,\left( Re\right) -0.779626, C=\mathrm\,\left( x\right), and x=A+B The equation was found to match the Colebrook–White equation within 0.0012%.


Niazkar's solution

Since Serghides's solution was found to be one of the most accurate approximation of the implicit Colebrook–White equation, Niazkar modified the Serghides's solution to solve directly for the Darcy–Weisbach friction factor ''f'' for a full-flowing circular pipe. Niazkar's solution is shown in the following: : A = -2\log\left( \frac + \right) : B = -2\log \left(\frac + \right) : C = -2\log \left(\frac + \right) : \frac = A - \frac Niazkar's solution was found to be the most accurate correlation based on a comparative analysis conducted in the literature among 42 different explicit equations for estimating Colebrook friction factor.


Blasius correlations

Early approximations for smooth pipes by
Paul Richard Heinrich Blasius Paul Richard Heinrich Blasius (9 August 1883 – 24 April 1970) was a German fluid dynamics physicist. He was one of the first students of Prandtl. Blasius provided a mathematical basis for boundary-layer drag but also showed as early as 1911 ...
in terms of the Darcy–Weisbach friction factor are given in one article of 1913: :f = 0.3164 \mathrm^.
Johann Nikuradse Johann Nikuradse ( ka, ივანე ნიკურაძე, ''Ivane Nikuradze'') (November 20, 1894 – July 18, 1979) was a Georgia-born German engineer and physicist. His brother, Alexander Nikuradse, was also a Germany-based physicist and ...
in 1932 proposed that this corresponds to a
power law In statistics, a power law is a functional relationship between two quantities, where a relative change in one quantity results in a proportional relative change in the other quantity, independent of the initial size of those quantities: one q ...
correlation for the fluid velocity profile. Mishra and Gupta in 1979 proposed a correction for curved or helically coiled tubes, taking into account the equivalent curve radius, Rc: :f = 0.316 \mathrm^ + 0.0075\sqrt, with, :R_c = R\left + \left(\frac \right)^2\right/math> where ''f'' is a function of: * Pipe diameter, ''D'' (m, ft) * Curve radius, ''R'' (m, ft) * Helicoidal pitch, ''H'' (m, ft) *
Reynolds number In fluid mechanics, the Reynolds number () is a dimensionless quantity that helps predict fluid flow patterns in different situations by measuring the ratio between inertial and viscous forces. At low Reynolds numbers, flows tend to be dom ...
, ''Re'' (dimensionless) valid for: * ''Retr'' < ''Re'' < 105 * 6.7 < ''2Rc/D'' < 346.0 * 0 < ''H/D'' < 25.4


Table of Approximations

The following table lists historical approximations to the Colebrook–White relation for pressure-driven flow. Churchill equation (1977) is the only equation that can be evaluated for very slow flow (Reynolds number < 1), but the Cheng (2008), and Bellos et al. (2018) equations also return an approximately correct value for friction factor in the laminar flow region (Reynolds number < 2300). All of the others are for transitional and turbulent flow only. {, class="wikitable sortable" border="1" , + Table of Colebrook equation approximations , - ! scope="col" class="unsortable", Equation ! scope="col" , Author ! scope="col" , Year ! scope="col" class="unsortable", Range ! scope="col" class="unsortable", Ref , - , f = 0.0055 \left + \left(2 \times10^4 \cdot\frac{\varepsilon}{D} + \frac{10^6}{\mathrm{Re \right)^\frac{1}{3}\right , Moody , 1947 , 4000 \le \mathrm{Re} \le 5 \times 10^{8} 0 \le \varepsilon/D \le 0.01 , , - , f = 0.094 \left(\frac{\varepsilon}{D}\right)^{0.225} + 0.53 \left(\frac{\varepsilon}{D}\right) + 88 \left(\frac{\varepsilon}{D}\right)^{0.44} \cdot {\mathrm{Re^{-{\Psi :where :\Psi = 1.62\left(\frac{\varepsilon}{D}\right)^{0.134} , Wood , 1966 , 4000 \le \mathrm{Re} \le 5 \times 10^{7} 0.00001 \le \varepsilon/D \le 0.04 , , - , \frac{1}{\sqrt{f = -2 \log\left (\frac{\varepsilon/D}{3.715} + \frac{15}{\mathrm{Re\right) , Eck , 1973 , , , - , f = \frac{0.25}{\left log\left (\frac{\varepsilon/D}{3.7} + \frac{5.74}{\mathrm{Re}^{0.9\right)\right2} , Swamee and Jain , 1976 , 5000 \le \mathrm{Re} \le 10^{8} 0.000001 \le \varepsilon/D \le 0.05 , , - , \frac{1}{\sqrt{f = -2 \log\left ( \frac{\varepsilon/D}{3.71} + \left(\frac{7}{\mathrm{Re\right)^{0.9}\right) , Churchill , 1973 , , , - , \frac{1}{\sqrt{f = -2 \log\left ( \frac{\varepsilon/D}{3.715} + \left(\frac{6.943}{\mathrm{Re\right)^{0.9}\right) , Jain , 1976 , , , - , f/8 = \left left(\frac{8}{\mathrm{Re\right)^{12} + \frac{1}{(\Theta_1 + \Theta_2)^{1.5\right{\frac{1}{12 :where :\Theta_1 = \left 2.457 \ln\left( \left(\frac{7}{\mathrm{Re\right)^{0.9} + 0.27\frac{\varepsilon}{D}\right)\right{16} :\Theta_2 = \left(\frac{37530}{\mathrm{Re\right)^{16} , Churchill , 1977 , , , - , \frac{1}{\sqrt{f = -2 \log\left frac{\varepsilon/D}{3.7065} - \frac{5.0452}{\mathrm{Re \log\left(\frac{1}{2.8257} \left( \frac{\varepsilon}{D} \right)^{1.1098} + \frac{5.8506}{\mathrm{Re}^{0.8981 \right) \right , Chen , 1979 , 4000 \le \mathrm{Re} \le 4 \times 10^{8} , , - , \frac{1}{\sqrt{f = 1.8\log\left \frac{\mathrm{Re{0.135\mathrm{Re}( \varepsilon / D ) +6.5}\right , Round , 1980 , , , - , \frac{1}{\sqrt{f = -2 \log \left(\frac{\varepsilon/D}{3.7} + \frac{4.518\log\left(\frac{\mathrm{Re{7}\right)} {\mathrm{Re} \left(1 + \frac{\mathrm{Re}^{0.52{29} ( \varepsilon / D )^{0.7} \right)} \right) , Barr , 1981 , , , - , \frac{1}{\sqrt{f = -2 \log \left frac{\varepsilon/D}{3.7} - \frac{5.02}{\mathrm{Re \log\left(\frac{\varepsilon/D}{3.7} - \frac{5.02}{\mathrm{Re \log\left(\frac{\varepsilon/D}{3.7} + \frac{13}{\mathrm{Re\right)\right)\right :or \frac{1}{\sqrt{f = -2 \log\left frac{\varepsilon/D}{3.7} - \frac{5.02}{\mathrm{Re \log\left(\frac{\varepsilon/D}{3.7} + \frac{13}{\mathrm{Re\right)\right , Zigrang and Sylvester , 1982 , , , - , \frac{1}{\sqrt{f = -1.8 \log \left left(\frac{\varepsilon/D}{3.7}\right)^{1.11} + \frac{6.9}{\mathrm{Re\right , Haaland , 1983 , , , - , \frac{1}{\sqrt{f = \Psi_1 - \frac{(\Psi_2-\Psi_1)^{2{\Psi_3-2\Psi_2+\Psi_1} :or \frac{1}{\sqrt{f = 4.781 - \frac{(\Psi_1-4.781)^{2{\Psi_2-2\Psi_1+4.781} :where :\Psi_1 = -2\log\left(\frac{\varepsilon/D}{3.7} + \frac{12}{\mathrm{Re\right) :\Psi_2 = -2\log\left(\frac{\varepsilon/D}{3.7} + \frac{2.51\Psi_1}{\mathrm{Re\right) :\Psi_3 = -2\log\left(\frac{\varepsilon/D}{3.7} + \frac{2.51\Psi_2}{\mathrm{Re\right) , Serghides , 1984 , , , - , :A=0.11\left ( \frac{68}{Re}+ \frac \varepsilon {D} \right )^{0.25} if A\geq 0.018 then f=A and if A<0.018 then f=0.0028+0.85A , Tsal , 1989 , , , - , \frac{1}{\sqrt{f = -2 \log\left(\frac{\varepsilon/D}{3.7} + \frac{95}{\mathrm{Re}^{0.983 - \frac{96.82}{\mathrm{Re\right) , Manadilli , 1997 , 4000 \le \mathrm{Re} \le 10^{8} 0 \le \varepsilon/D \le 0.05 , , - , \frac{1}{\sqrt{f = -2 \log\left \lbrace \frac{\varepsilon/D}{3.7065} - \frac{5.0272}{\mathrm{Re \log\left \frac{\varepsilon/D}{3.827} - \frac{4.657}{\mathrm{Re \log\left( \left(\frac{\varepsilon/D}{7.7918}\right)^{0.9924} + \left(\frac{5.3326}{208.815 + \mathrm{Re \right)^{0.9345} \right) \right\right\rbrace , Romeo, Royo, Monzon , 2002 , , , - , \frac{1}{\sqrt{f = 0.8686 \ln\left \frac{0.4587\mathrm{Re{(S-0.31)^{\frac{S}{(S+1)} \right :where: :S = 0.124\mathrm{Re} \frac{\varepsilon}{D} + \ln (0.4587\mathrm{Re}) , Goudar, Sonnad , 2006 , , , - , \frac{1}{\sqrt{f = 0.8686 \ln\left \frac{0.4587\mathrm{Re{(S-0.31)^{\frac{S}{(S+0.9633)} \right :where: :S = 0.124\mathrm{Re} \frac{\varepsilon}{D} + \ln (0.4587\mathrm{Re}) , Vatankhah, Kouchakzadeh , 2008 , , , - , \frac{1}{\sqrt{f = \alpha - \frac {\alpha + 2\log\left(\frac{\Beta}{\mathrm{Re\right)}{1 + \frac{2.18}{\Beta :where :\alpha = \frac{ 0.744\ln(\mathrm{Re}) - 1.41 } { 1+ 1.32\sqrt{ \varepsilon / D } } :\Beta = \frac{\varepsilon/D}{3.7}\mathrm{Re} + 2.51\alpha , Buzzelli , 2008 , , , - , \frac {1} {f}=\left ( \frac{Re}{64} \right )^a \left ( 1.8\log \frac {Re} {6.8} \right )^{2(1-a)b} \left ( 2.0\log \frac {3.7D} {\epsilon} \right )^{2(1-a)(1-b)} where a= \frac{1}{1+\left ( \frac{Re}{2720} \right )^{9 b= \frac{1}{1+\left ( \frac{Re}{160 \frac {D} {\epsilon \right )^{2
, Cheng , 2008 , All flow regimes , , - , f = \frac{6.4}{(\ln(\mathrm{Re}) -\ln(1+.01\mathrm{Re}\frac{\varepsilon}{D}(1+10\sqrt{\frac{\varepsilon}{D)))^{2.4 , Avci, Kargoz , 2009 , , , - , f = \frac{0.2479 - 0.0000947(7-\log \mathrm{Re})^{4{(\log\left(\frac{\varepsilon/D}{3.615} + \frac{7.366}{\mathrm{Re}^{0.9142\right))^{2 , Evangelides, Papaevangelou, Tzimopoulos , 2010 , , , - , f=1.613\left \ln \left ( 0.234 \left(\frac{\varepsilon}{D}\right)^{1.1007} -\frac{60.525}{\mathrm{Re}^{1.1105+\frac{56.291}{\mathrm{Re}^{1.0712\right ) \right {-2} , Fang , 2011 , , , - , f=\left -2\log \left ( \frac{2.18\beta}{\mathrm{Re + \frac{\varepsilon / D }{3.71}\right ) \right {-2} , \beta =\ln \frac{\mathrm{Re{1.816\ln \left ( \frac{1.1Re}{\ln \left ( 1+1.1\mathrm{Re} \right )} \right )} , Brkić , 2011 , , , - , f=1.325474505\log_{e}\left ( A-0.8686068432B\log_{e}\left ( A-0.8784893582B\log_{e}\left ( A+(1.665368035B)^{0.8373492157} \right ) \right ) \right )^{-2} :where : A= \frac{\varepsilon/D}{3.7065} :B= \frac{2.5226}{\mathrm{Re , S.Alashkar , 2012 , , , - , f=\left ( \frac {64} {\mathrm{Re \right )^a \left 0.75 \ln \frac {\mathrm{Re {5.37} \right {2(a-1)b} \left 0.88 \ln 3.41\frac {D} {\epsilon} \right {2(a-1)(1-b)} where a= \frac{1}{1+\left ( \frac{\mathrm{Re{2712} \right )^{8.4 b= \frac{1}{1+\left ( \frac{\mathrm{Re{150 \frac {D} {\epsilon \right )^{1.8 , Bellos, Nalbantis, Tsakiris , 2018 , All flow regimes , , - , \frac{1}{\sqrt{f = A - \frac{(B - A)^2}{C - 2B + A} where A = -2\log\left( \frac{\varepsilon/D}{3.7} + {4.5547\over \mathrm{Re}^{0.8784\right) B = -2\log \left(\frac{\varepsilon/D}{3.7} + {2.51 A \over \mathrm{Re\right) C = -2\log \left(\frac{\varepsilon/D}{3.7} + {2.51 B \over \mathrm{Re\right) , Niazkar , 2019 , , , - , f = {\frac{1}{\left(0.8284 \log \left({\dfrac{\varepsilon/D}{4.913+{\dfrac{10.31}{\mathrm{Re}\right)\right)^2 , Tkachenko, Mileikovskyi , 2020 , Deviation 5.36 %, 2320 \le {\mathrm{Re \le 10^9 0 \le {\varepsilon/D} \le 0.65 , , - , f = \left({\frac{8.128943+A_1}{8.128943 A_0 - 0.86859209 A_1 \log \left(\dfrac{A_1}{3.7099535 \mathrm{Re \right)\right)^2 where A_0 = -0.79638 \log \left({\frac{\varepsilon/D}{8.208+{\frac{7.3357}{\mathrm{Re}\right) A_1 = \mathrm{Re}\left(\varepsilon/D \right) + 9.3120665 A_0 , Tkachenko, Mileikovskyi , 2020 , Deviation 0.00072 %, 2320 \le {\mathrm{Re \le 10^9 0 \le {\varepsilon/D} \le 0.65 ,


References


Further reading

* * * * *Brkić, Dejan; Praks, Pavel (2019). "Accurate and efficient explicit approximations of the Colebrook flow friction equation based on the Wright ω-function". Mathematics 7 (1): article 34. https://doi.org/10.3390/math7010034. ISSN 2227-7390 *Praks, Pavel; Brkić, Dejan (2020). "Review of new flow friction equations: Constructing Colebrook’s explicit correlations accurately". Revista Internacional de Métodos Numéricos para Cálculo y Diseño en Ingeniería 36 (3): article 41. https://doi.org/10.23967/j.rimni.2020.09.001. ISSN 1886-158X (online version) - ISSN 0213-1315 (printed version) *


External links


Web-based calculator of Darcy friction factors by Serghides' solution.Open source pipe friction calculator.
{{DEFAULTSORT:Darcy Friction Factor Formulae Equations of fluid dynamics Piping Fluid mechanics fr:Équation de Darcy-Weisbach it:Equazione di Colebrook pt:Equações explícitas para o fator de atrito de Darcy-Weisbach