Performance analysis of artificial lift systems deployed in natural gas wells: A time-series analytics approach

Author:

Saghir FahdORCID,Gonzalez Perdomo Maria ElenaORCID,Behrenbruch Peter

Publisher

Elsevier BV

Reference35 articles.

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