Litcius/Paper detail

A Survey on Distributed Fibre Optic Sensor Data Modelling Techniques and Machine Learning Algorithms for Multiphase Fluid Flow Estimation

Hasan Asyari Arief, Tomasz Wiktorski, Peter J. Thomas

2021Sensors51 citationsDOIOpen Access PDF

Abstract

Real-time monitoring of multiphase fluid flows with distributed fibre optic sensing has the potential to play a major role in industrial flow measurement applications. One such application is the optimization of hydrocarbon production to maximize short-term income, and prolong the operational lifetime of production wells and the reservoir. While the measurement technology itself is well understood and developed, a key remaining challenge is the establishment of robust data analysis tools that are capable of providing real-time conversion of enormous data quantities into actionable process indicators. This paper provides a comprehensive technical review of the data analysis techniques for distributed fibre optic technologies, with a particular focus on characterizing fluid flow in pipes. The review encompasses classical methods, such as the speed of sound estimation and Joule-Thomson coefficient, as well as their data-driven machine learning counterparts, such as Convolutional Neural Network (CNN), Support Vector Machine (SVM), and Ensemble Kalman Filter (EnKF) algorithms. The study aims to help end-users establish reliable, robust, and accurate solutions that can be deployed in a timely and effective way, and pave the wave for future developments in the field.

Topics & Concepts

Computer scienceKalman filterAlgorithmMachine learningConvolutional neural networkSupport vector machineEnsemble Kalman filterField (mathematics)Artificial intelligenceData miningExtended Kalman filterPure mathematicsMathematicsAdvanced Fiber Optic SensorsFlow Measurement and AnalysisWater Quality Monitoring Technologies