SPE/IATMI Asia Pacific Oil &Amp; Gas Conference and Exhibition 2017
DOI: 10.2118/186876-ms
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Real Time Optimisation in Gas Constrained System Results in Production Gain

Abstract: Brunei Shell Petroleum (BSP) encompasses multiple offshore and onshore oil and gas field. The study asset produces more than 50% of company's hydrocarbon production. Currently, gas production from the asset is at maximum system limit governed by downstream gas demand and surface-facility constraints. Producing the wells at right configuration can help in maximising condensate production while honouring gas demand thereby maximising revenue for the asset. The analysis of data from past few months… Show more

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Cited by 3 publications
(1 citation statement)
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“…Figure 4 illustrates the tools applied in the ten research studies excluded after the screening step. It included real time optimization tool (Choudhary et al, 2017), fuzzy logic tools (IFIP, 2014; Ratnayake and Antosz, 2017a), supply chain responsiveness (Gilal et al, 2017), Interpretive Structural Modeling (Azevedo and Nunes, 2017), data mining (Kolich et al, 2016), Multiple-Criteria Decision-Making (MCDM) (Zavadskas et al, 2016) and other (Hallam and Contreras, 2016;White, 2017;Schramm, 2017) applications.…”
Section: Selected Papersmentioning
confidence: 99%
“…Figure 4 illustrates the tools applied in the ten research studies excluded after the screening step. It included real time optimization tool (Choudhary et al, 2017), fuzzy logic tools (IFIP, 2014; Ratnayake and Antosz, 2017a), supply chain responsiveness (Gilal et al, 2017), Interpretive Structural Modeling (Azevedo and Nunes, 2017), data mining (Kolich et al, 2016), Multiple-Criteria Decision-Making (MCDM) (Zavadskas et al, 2016) and other (Hallam and Contreras, 2016;White, 2017;Schramm, 2017) applications.…”
Section: Selected Papersmentioning
confidence: 99%