fbpx
Wikipedia

Hubbert linearization

The Hubbert linearization is a way to plot production data to estimate two important parameters of a Hubbert curve, the approximated production rate of a nonrenewable resource following a logistic distribution:

  • the logistic growth rate and
  • the quantity of the resource that will be ultimately recovered.

The linearization technique was introduced by Marion King Hubbert in his 1982 review paper.[1] The Hubbert curve[2] is the first derivative of a logistic function, which has been used for modeling the depletion of crude oil in particular, the depletion of finite mineral resources in general[3] and also population growth patterns.[4]

Example of a Hubbert Linearization on the US Lower-48 crude oil production.

Principle edit

The first step of the Hubbert linearization consists of plotting the yearly production data (P in bbl/y) as a fraction of the cumulative production (Q in bbl) on the vertical axis and the cumulative production on the horizontal axis. This representation exploits the linear property of the logistic differential equation:

 

 

 

 

 

(1)

with

  • k as logistic growth rate and
  • URR as the ultimately recoverable resource.

We can rewrite (1) as the following:

 

 

 

 

 

(2)

The above relation is a line equation in the P/Q versus Q plane. Consequently, a linear regression on the data points gives us an estimate of the line slope calculated by -k/URR and intercept from which we can derive the Hubbert curve parameters:

  • The k parameter is the intercept of the vertical axis.
  • The URR value is the intercept of the horizontal axis.

Examples edit

Global oil production edit

The geologist Kenneth S. Deffeyes applied this technique in 2005 to make a prediction about the peak of overall oil production at the end of the same year, which has since been found to be premature.[5] He did not make a distinction between "conventional" and "non-conventional" oil produced by fracturing, aka tight oil, which has continued further growth in oil production. However, since 2005 conventional oil production has not grown anymore.[6]

US oil production edit

The charts below gives an example of the application of the Hubbert Linearization technique in the case of the US Lower-48 oil production. The fit of a line using the data points from 1956 to 2005 (in green) gives a URR of 199 Gb and a logistic growth rate of 6%.

Norway oil production edit

The Norwegian Hubbert linearization estimates an URR = 30 Gb and a logistic growth rate of k = 17%.

Alternative techniques edit

Second Hubbert linearization edit

The Hubbert linearization principle can be extended to the first derivatives of the production rate[7] by computing the derivative of (2):

 

 

 

 

 

(3)

The left term, the rate of change of production per current production, is often called the decline rate. The decline curve is a line that starts at +k, crosses zero at URR/2 and ends at −k. Thus, we can derive the Hubbert curve parameters:

  • The growth parameter k is the intercept of the vertical axis.
  • The URR value is twice the intercept of the horizontal axis.

Hubbert parabola edit

This representation was proposed by Roberto Canogar[8] and applied to the oil depletion problem. It is equation (2) multiplied by Q.

 

 

 

 

 

(4)

The parabola starts from the origin (0,0) and passes through (URR,0). Data points until t are used by the least squares fitting method to find an estimate for URR.

Logit transform edit

David Rutledge applied the logit transform for the analysis of coal production data,[9] which often has a worse signal-to-noise ratio than the production data for hydrocarbons. The integrative nature of cumulation serves as a low pass, filtering noise effects. The production data is fitted to the logistic curve after transformation using e(t) as normalized exhaustion parameter going from 0 to 1.

 

 

 

 

 

(5)

 

 

 

 

 

(6)

The value of URR is varied so that the linearized logit gives a best fit with a maximal coefficient of determination  .


External links edit

  • Robert Rapier: Does the Hubbert Linearization Ever Work?, The Oil Drum, 2007-03-22
  • David Rutledge: Energy Supplies and Climate, Caltech, 2019 - on curve fits to the production history (including excel data on historic coal production and logit fits)

References edit

  1. ^ Hubbert, M. King (1982). "Techniques of Prediction as Applied to the Production of Oil and Gas". In Gass, Saul I. (ed.). Oil and Gas Supply Modeling (PDF) (proceedings of a symposium held at the Department of Commerce, Washington, DC, June 18–20, 1980). NBS Special Publication 631. Washington (DC): National Bureau of Standards. pp. 16–141.
  2. ^ Claerbout, Jon; Muir, Francis (2008). "Hubbert math" (PDF). Retrieved 2020-06-08.
  3. ^ Roper, David. (PDF). Archived from the original (PDF) on 2007-09-28.
  4. ^ Roper, David. . Archived from the original on 2007-02-18.
  5. ^ Deffeyes, Kenneth (February 24, 2005). Beyond Oil - The view from Hubbert's peak. Hill and Wang. ISBN 978-0-8090-2956-3.
  6. ^ Andruleit; Franke; Ladage; Lutz; Pein; Rebscher; Schauer; Schmidt; von Goerne (August 2019). BGR Energy Study 2018 (PDF). Data and Developments Concerning German and Global Energy Supplies. Vol. 22. Hannover: Federal Institute for Geosciences and Natural Resources (BGR). p. 43. Although global conventional crude oil production has stagnated since 2005, it still retains a share of around 79 % of total production, and will therefore continue to play a most significant role in the long term in supplying liquid hydrocarbons (Fig. 3-4).
  7. ^ Sam Foucher (2006-08-18). "A Different Way to Perform the Hubbert Linearization". The Oil Drum. Retrieved 2020-06-08.
  8. ^ Canogar, Roberto (2006-09-06). "The Hubbert Parabola". GraphOilogy.
  9. ^ Rutledge, David (2011-01-01). "Estimating long-term world coal production with logit and probit transforms". International Journal of Coal Geology. 85 (1). Elsevier: 23–33. Bibcode:2011IJCG...85...23R. doi:10.1016/j.coal.2010.10.012.

hubbert, linearization, plot, production, data, estimate, important, parameters, hubbert, curve, approximated, production, rate, nonrenewable, resource, following, logistic, distribution, logistic, growth, rate, quantity, resource, that, will, ultimately, reco. The Hubbert linearization is a way to plot production data to estimate two important parameters of a Hubbert curve the approximated production rate of a nonrenewable resource following a logistic distribution the logistic growth rate and the quantity of the resource that will be ultimately recovered The linearization technique was introduced by Marion King Hubbert in his 1982 review paper 1 The Hubbert curve 2 is the first derivative of a logistic function which has been used for modeling the depletion of crude oil in particular the depletion of finite mineral resources in general 3 and also population growth patterns 4 Example of a Hubbert Linearization on the US Lower 48 crude oil production Contents 1 Principle 2 Examples 2 1 Global oil production 2 2 US oil production 2 3 Norway oil production 3 Alternative techniques 3 1 Second Hubbert linearization 3 2 Hubbert parabola 3 3 Logit transform 4 External links 5 ReferencesPrinciple editThe first step of the Hubbert linearization consists of plotting the yearly production data P in bbl y as a fraction of the cumulative production Q in bbl on the vertical axis and the cumulative production on the horizontal axis This representation exploits the linear property of the logistic differential equation dQ t dt P t k Q t 1 Q t URR displaystyle frac dQ t dt P t k cdot Q t cdot left 1 frac Q t URR right nbsp 1 with k as logistic growth rate and URR as the ultimately recoverable resource We can rewrite 1 as the following P t Q t k 1 Q t URR displaystyle frac P t Q t k cdot left 1 frac Q t URR right nbsp 2 The above relation is a line equation in the P Q versus Q plane Consequently a linear regression on the data points gives us an estimate of the line slope calculated by k URR and intercept from which we can derive the Hubbert curve parameters The k parameter is the intercept of the vertical axis The URR value is the intercept of the horizontal axis Examples editGlobal oil production edit The geologist Kenneth S Deffeyes applied this technique in 2005 to make a prediction about the peak of overall oil production at the end of the same year which has since been found to be premature 5 He did not make a distinction between conventional and non conventional oil produced by fracturing aka tight oil which has continued further growth in oil production However since 2005 conventional oil production has not grown anymore 6 US oil production edit The charts below gives an example of the application of the Hubbert Linearization technique in the case of the US Lower 48 oil production The fit of a line using the data points from 1956 to 2005 in green gives a URR of 199 Gb and a logistic growth rate of 6 nbsp Hubbert Linearization on US s oil production nbsp Hubbert curve on US s oil productionNorway oil production edit The Norwegian Hubbert linearization estimates an URR 30 Gb and a logistic growth rate of k 17 nbsp Hubbert Linearization on Norway s oil production nbsp Hubbert curve on Norway s oil productionAlternative techniques editSecond Hubbert linearization edit The Hubbert linearization principle can be extended to the first derivatives of the production rate 7 by computing the derivative of 2 dP t dtP t k 1 2Q t URR displaystyle frac dP t dt P t k cdot left 1 2 frac Q t URR right nbsp 3 The left term the rate of change of production per current production is often called the decline rate The decline curve is a line that starts at k crosses zero at URR 2 and ends at k Thus we can derive the Hubbert curve parameters The growth parameter k is the intercept of the vertical axis The URR value is twice the intercept of the horizontal axis Hubbert parabola edit This representation was proposed by Roberto Canogar 8 and applied to the oil depletion problem It is equation 2 multiplied by Q P t kQ t kURRQ t 2 displaystyle P t kQ t frac k URR Q t 2 nbsp 4 The parabola starts from the origin 0 0 and passes through URR 0 Data points until t are used by the least squares fitting method to find an estimate for URR Logit transform edit David Rutledge applied the logit transform for the analysis of coal production data 9 which often has a worse signal to noise ratio than the production data for hydrocarbons The integrative nature of cumulation serves as a low pass filtering noise effects The production data is fitted to the logistic curve after transformation using e t as normalized exhaustion parameter going from 0 to 1 e t Q t URR displaystyle e t Q t URR nbsp 5 logit e t ln 1e t 1 ln URRQ t 1 displaystyle operatorname logit e t ln left frac 1 e t 1 right ln left frac URR Q t 1 right nbsp 6 The value of URR is varied so that the linearized logit gives a best fit with a maximal coefficient of determination R2 displaystyle R 2 nbsp External links editRobert Rapier Does the Hubbert Linearization Ever Work The Oil Drum 2007 03 22 David Rutledge Energy Supplies and Climate Caltech 2019 on curve fits to the production history including excel data on historic coal production and logit fits References edit Hubbert M King 1982 Techniques of Prediction as Applied to the Production of Oil and Gas In Gass Saul I ed Oil and Gas Supply Modeling PDF proceedings of a symposium held at the Department of Commerce Washington DC June 18 20 1980 NBS Special Publication 631 Washington DC National Bureau of Standards pp 16 141 Claerbout Jon Muir Francis 2008 Hubbert math PDF Retrieved 2020 06 08 Roper David Where Have All the Metals Gone PDF Archived from the original PDF on 2007 09 28 Roper David Projection of World Population Archived from the original on 2007 02 18 Deffeyes Kenneth February 24 2005 Beyond Oil The view from Hubbert s peak Hill and Wang ISBN 978 0 8090 2956 3 Andruleit Franke Ladage Lutz Pein Rebscher Schauer Schmidt von Goerne August 2019 BGR Energy Study 2018 PDF Data and Developments Concerning German and Global Energy Supplies Vol 22 Hannover Federal Institute for Geosciences and Natural Resources BGR p 43 Although global conventional crude oil production has stagnated since 2005 it still retains a share of around 79 of total production and will therefore continue to play a most significant role in the long term in supplying liquid hydrocarbons Fig 3 4 Sam Foucher 2006 08 18 A Different Way to Perform the Hubbert Linearization The Oil Drum Retrieved 2020 06 08 Canogar Roberto 2006 09 06 The Hubbert Parabola GraphOilogy Rutledge David 2011 01 01 Estimating long term world coal production with logit and probit transforms International Journal of Coal Geology 85 1 Elsevier 23 33 Bibcode 2011IJCG 85 23R doi 10 1016 j coal 2010 10 012 Retrieved from https en wikipedia org w index php title Hubbert linearization amp oldid 1213030693, wikipedia, wiki, book, books, library,

article

, read, download, free, free download, mp3, video, mp4, 3gp, jpg, jpeg, gif, png, picture, music, song, movie, book, game, games.