CA2262386C - Methode de caracterisation de la coherence de mesures de caracteristiques d'un milieu - Google Patents

Methode de caracterisation de la coherence de mesures de caracteristiques d'un milieu Download PDF

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Publication number
CA2262386C
CA2262386C CA002262386A CA2262386A CA2262386C CA 2262386 C CA2262386 C CA 2262386C CA 002262386 A CA002262386 A CA 002262386A CA 2262386 A CA2262386 A CA 2262386A CA 2262386 C CA2262386 C CA 2262386C
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application
observation
class
measurements
observations
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Expired - Fee Related
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CA002262386A
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CA2262386A1 (fr
Inventor
Hugues Thevoux-Chabuel
Philippe Rabiller
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Elf Exploration Production SAS
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Elf Exploration Production SAS
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Priority claimed from FR9707329A external-priority patent/FR2764700B1/fr
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Publication of CA2262386A1 publication Critical patent/CA2262386A1/fr
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Abstract

La méthode de caractérisation de la cohérence de mesures de caractéristiques d'un milieu est du type consistant à: prélever N types de mesures de référence en chaque observation (Xi) d'un ensemble de référence; constituer au moins un ensemble d'apprentissage à N dimensions renfermant toutes lesdites observations (Xi); prélever au moins N mesures d'application en chaque observation (Qi) d'un ensemble d'application; comparer chaque observation d'application (x) avec toutes les observations (Xi), et elle est caractérisée en ce qu'elle consiste en outre à: construire pour chaque observation (Xi) un domaine de voisinage (Di), lesdits domaines de voisinage constituant ledit ensemble d'apprentissage et une classe d'acceptation (Ca); et définir un degré d'appartenance des observations d'application (x) à ladite classe d'acceptation (Ca). Application notamment à la reconnaissance de faciès lithologique dans un champ pétrolier.
CA002262386A 1997-06-13 1998-06-11 Methode de caracterisation de la coherence de mesures de caracteristiques d'un milieu Expired - Fee Related CA2262386C (fr)

Applications Claiming Priority (3)

Application Number Priority Date Filing Date Title
FR97/07329 1997-06-13
FR9707329A FR2764700B1 (fr) 1997-06-13 1997-06-13 Methode de caracterisation de la coherence de mesures de caracteristiques d'un milieu
PCT/FR1998/001209 WO1998057198A1 (fr) 1997-06-13 1998-06-11 Methode de caracterisation de la coherence de mesures de caracteristiques d'un milieu

Publications (2)

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CA2262386A1 CA2262386A1 (fr) 1998-12-17
CA2262386C true CA2262386C (fr) 2005-12-20

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CA002262386A Expired - Fee Related CA2262386C (fr) 1997-06-13 1998-06-11 Methode de caracterisation de la coherence de mesures de caracteristiques d'un milieu

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Cited By (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
WO2014130340A3 (fr) * 2013-02-21 2015-01-08 Saudi Arabian Oil Company Procédés, code de programme, support lisible par ordinateur et appareil pour prédire la perméabilité de matrice par optimisation et correction de variance des k plus proches voisins

Cited By (2)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
WO2014130340A3 (fr) * 2013-02-21 2015-01-08 Saudi Arabian Oil Company Procédés, code de programme, support lisible par ordinateur et appareil pour prédire la perméabilité de matrice par optimisation et correction de variance des k plus proches voisins
US9229127B2 (en) 2013-02-21 2016-01-05 Saudi Arabian Oil Company Methods program code, computer readable media, and apparatus for predicting matrix permeability by optimization and variance correction of K-nearest neighbors

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Publication number Publication date
CA2262386A1 (fr) 1998-12-17

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