MULTIPLE REGRESSION METHOD IN DETAIL DERIVATION OF POROSITY AND PERMEABILITY FOR TELISA FORMATION EVALUATION IN KOTABATAK FIELD, CENTRAL SUMATRA BASIN
The study is located in Kotabatak field, Central Sumatra Basin which is structurally as a northwest – southeast trending asymmetrical anticline. The Kotabatak field is bounded in northeast side by trust fault which has same trending with anticline. The study is in Telisa Formation which is occupi...
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id-itb.:707062023-01-19T11:23:19ZMULTIPLE REGRESSION METHOD IN DETAIL DERIVATION OF POROSITY AND PERMEABILITY FOR TELISA FORMATION EVALUATION IN KOTABATAK FIELD, CENTRAL SUMATRA BASIN Mastoadji, Erry Geologi, hidrologi & meteorologi Indonesia Theses porosity, permeability, foraminifera contained, multiple regression. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/70706 The study is located in Kotabatak field, Central Sumatra Basin which is structurally as a northwest – southeast trending asymmetrical anticline. The Kotabatak field is bounded in northeast side by trust fault which has same trending with anticline. The study is in Telisa Formation which is occupied 15% of total Kotabatak’s Original Oil In Place (OOIP). The Telisa Formation is a nearshore shallow marine clastic deposit, composed mainly of quartz, foraminiferal shells, glauconite, and siderite. Due to the hollow foram shells, the Telisa Formation is generally high porosity but low permeability. This because of the pore system in Telisa Formation has low connectivity. The challenge for petrophysicist in the study of Telisa Formation is determining accurate porosity and permeability in order to predict production performance, which can be used as a guide for further Kotabatak field development. A variety of techniques were used to address these uncommon problems, but the result still cannot close to the actual data. With this study the more accurate result is expected can be determine. The technique that used in this study is multiple regression method to derived porosity and permeability from core data and their correlation with more than one log data. More detail zonation such as facies and shale volume bin are also carried out to get more accurate result. 26 multiple regression equations have been succesfully obtained to derived porosity; while to derived permeability have been obtained 32 equations. The result of this study show the improvement of the accuracy on the porosity and permeability prediction. text |
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Geologi, hidrologi & meteorologi Mastoadji, Erry MULTIPLE REGRESSION METHOD IN DETAIL DERIVATION OF POROSITY AND PERMEABILITY FOR TELISA FORMATION EVALUATION IN KOTABATAK FIELD, CENTRAL SUMATRA BASIN |
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The study is located in Kotabatak field, Central Sumatra Basin which is
structurally as a northwest – southeast trending asymmetrical anticline. The
Kotabatak field is bounded in northeast side by trust fault which has same
trending with anticline. The study is in Telisa Formation which is occupied 15%
of total Kotabatak’s Original Oil In Place (OOIP). The Telisa Formation is a nearshore
shallow marine clastic deposit, composed mainly of quartz, foraminiferal
shells, glauconite, and siderite. Due to the hollow foram shells, the Telisa
Formation is generally high porosity but low permeability. This because of the
pore system in Telisa Formation has low connectivity.
The challenge for petrophysicist in the study of Telisa Formation is determining
accurate porosity and permeability in order to predict production performance,
which can be used as a guide for further Kotabatak field development.
A variety of techniques were used to address these uncommon problems, but the
result still cannot close to the actual data. With this study the more accurate result
is expected can be determine.
The technique that used in this study is multiple regression method to derived
porosity and permeability from core data and their correlation with more than one
log data. More detail zonation such as facies and shale volume bin are also carried
out to get more accurate result. 26 multiple regression equations have been
succesfully obtained to derived porosity; while to derived permeability have been
obtained 32 equations. The result of this study show the improvement of the
accuracy on the porosity and permeability prediction. |
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Theses |
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Mastoadji, Erry |
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Mastoadji, Erry |
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Mastoadji, Erry |
title |
MULTIPLE REGRESSION METHOD IN DETAIL DERIVATION OF POROSITY AND PERMEABILITY FOR TELISA FORMATION EVALUATION IN KOTABATAK FIELD, CENTRAL SUMATRA BASIN |
title_short |
MULTIPLE REGRESSION METHOD IN DETAIL DERIVATION OF POROSITY AND PERMEABILITY FOR TELISA FORMATION EVALUATION IN KOTABATAK FIELD, CENTRAL SUMATRA BASIN |
title_full |
MULTIPLE REGRESSION METHOD IN DETAIL DERIVATION OF POROSITY AND PERMEABILITY FOR TELISA FORMATION EVALUATION IN KOTABATAK FIELD, CENTRAL SUMATRA BASIN |
title_fullStr |
MULTIPLE REGRESSION METHOD IN DETAIL DERIVATION OF POROSITY AND PERMEABILITY FOR TELISA FORMATION EVALUATION IN KOTABATAK FIELD, CENTRAL SUMATRA BASIN |
title_full_unstemmed |
MULTIPLE REGRESSION METHOD IN DETAIL DERIVATION OF POROSITY AND PERMEABILITY FOR TELISA FORMATION EVALUATION IN KOTABATAK FIELD, CENTRAL SUMATRA BASIN |
title_sort |
multiple regression method in detail derivation of porosity and permeability for telisa formation evaluation in kotabatak field, central sumatra basin |
url |
https://digilib.itb.ac.id/gdl/view/70706 |
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1822991695705276416 |