A Survey on Distributed Fibre Optic Sensor Data Modelling Techniques and Machine Learning Algorithms for Multiphase Fluid Flow Estimation
Abstract
:1. Introduction
2. Multiphase Fluid Flow
2.1. Hardware-Based Flow Meter
2.2. Virtual Flow Meter (VFM)
3. Distributed Sensor Technologies
3.1. Distributed Sensor Working Mechanism
3.2. Applications for Distributed Sensors
4. Physical Flow Modelling
4.1. Data Acquisition
4.2. Physical Flow Data Extraction
4.2.1. Speed of Sound
4.2.2. Flow Velocity
4.2.3. Joule-Thomson Effect
4.3. Multiphase Estimation
5. Machine Learning
5.1. Data Preprocessing
5.2. Feature Engineering
5.3. Learning Algorithms
5.4. Inference and Uncertainty Estimation
6. Discussion and Comparison
6.1. Physical Flow Modelling and Machine Learning Algorithms
6.2. Challenges
6.3. Relevant Work from Other Industries
6.4. Future Research Directions
7. Summary
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
ANN | Artificial Neural Network |
BPI | Biomedical Photoacoustic Imaging |
CNN | Convolutional Neural Network |
CRF | Conditional Random Field |
DAS | Distributed Acoustic Sensor |
DS | Distributed Sensor |
DTS | Distributed Temperature Sensor |
EIT | Electrical Impedance Tomography |
EKF | Extended Kalman Filter |
EnKF | Ensemble Kalman Filter |
F-K | Frequency and Wavenumber |
FBE | Frequency Band Extracted |
FFT | Fast Fourier Transform |
GAN | Generative Adversarial Network |
GMM | Gaussian Mixture Model |
GPU | Graphical Processing Unit |
GVF | Gas Volume Fraction |
HMM | Hidden Mixture Model |
HPHT | High Pressure High Temperature |
ICD | Inflow Control Device |
ICV | Inflow Control Valve |
ISPRS | International Society for Photogrammetry and Remote Sensing |
IU | Interrogation Unit |
J-T | Joule Thomson |
KF | Kalman Filter |
KITTI | Karlsruhe Institute of Technology and Toyota Technological Institute |
kNN | k-Nearest Neighbor |
LFDAS | Low-Frequency Distributed Acoustic Sensor |
LSTM | Long Short-Term Memory |
MLP | Multi Layer Perceptron |
MPFM | Multiphase Flow Meter |
MSEEL | Marcellus Shale Energy and Environment Laboratory |
NCS | Norwegian Continental Shelf |
NIST | National Institute of Standards and Technology |
NN | Neural Network |
OTDR | Optical Time-Domain Reflectometer |
PC | Personal Computer |
PCA | Principle Component Analysis |
RF | Random Forest |
RMT | Random Matrix Theory |
RNN | Recurrent Neural Network |
SA | Sensitivity Analysis |
SADG | Steam Assisted Gravity Drainage |
SoS | Speed of Sound |
SNR | Signal to Noise Ratio |
SVM | Support Vector Machine |
VDU | Venous Doppler Ultrasound |
VFM | Virtual Flow Meter |
VOC2012 | Visual Object Classes Challenge 2012 |
VSP | Vertical Seismic Profiling |
WLR | Water in Liquid Ratio |
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Modelling Technique | Year | Data Sources | Note |
---|---|---|---|
Doppler effect [85] | 2012 | Field surveys with DAS | Early work on DAS for well and reservoir monitoring. |
Doppler effect and Root Mean Square (RMS) of acoustic energy [48] | 2014 | Field trial with DAS | Early implementation of DAS on real oil field. |
SoS and eddy velocity estimation [86] | 2015 | Flow-loop experiment with DAS | Ability to visualize the generation and convection of eddies using waterfall plot of distance versus time. |
SoS and J-T coefficient value matching [8,34] | 2016 | Production oilfield with DAS and synthetic DTS | Integral image algorithm for estimating SoS of multiphase fluids and Ability to accurately measure two-phase flows. |
Forward model [87] | 2017 | Simulated DAS | Simulating DAS data taking into account formation wellbore properties, flow characteristic, noise processes and optical fibre parameters. |
Thermal-and-hydraullic modelling [88] | 2018 | DAS and DTS | Thorough analysis on combining DAS and DTS data for identifying gas flow. |
Multiphysics analysis and clustering optimization [89] | 2019 | Flow-loop experiment | Applied on steam flow profiling experiment with high resolution DTS and DAS data. |
Statistical analysis and SAGD modelling [90] | 2019 | Flow-loop experiment and simulation model | Designing and commissioning an advanced multi-phase flow injection experiment. |
SoS analysis [91] | 2019 | DAS and DTS | Applicable for HPHT horizontal gas producer. |
Modelling Technique | Year | Data Sources | Note |
---|---|---|---|
ANN [36] | 2014 | Flow loop experiment with DAS | Early report and experiment for using DAS data and ANN for flow regime classification and flow rate estimation. |
ANN [87] | 2017 | Simulated DAS | The wavelet coefficients are the input and flow pattern are the output. |
Robust regression and band switching algorithm [110] | 2018 | DAS | Frequency Band Extracted (FBE) bands analysis is used to improve the prediction accuracy. |
MLP [104] | 2018 | Gas producing well with DAS and DTS | Mainly focus on using DTS for forecasting gas production while DAS data was only recorded during hydraulic fracturing of the well. |
Decision Tree, Adaptive Boosting, and Random Forest (RF) [111] | 2019 | Real field DAS | Training was conducted under limited amount of data. |
ANN, SVM, and RF [112] | 2019 | Gas production well with DAS and DTS | A well defined data-driven machine learning experiment, including the use of sensitivity analysis for analyzing feature importance. |
ANN [96] | 2019 | DAS | Autoencoder ANN is used for modelling acoustic and flow rate data. |
CNN, ANN [37] | 2019 | Real well underwater DAS | Resulting on high accuracy flow regime classification from F-K images of DAS data. |
Cross-correlation, K-means, and Radial integration [40] | 2020 | Real well underwater DAS | Providing fast flow velocity estimation from a large volume of DAS data. |
Algorithms | Year | Objectives | Note |
---|---|---|---|
Gaussian Mixture Model (GMM) and Hidden Markov Model (HMM) [131] | 2019 | Pipeline integrity threat detection | The contextual information at the feature level was incorporated in a Gaussian Mixture Model and Hidden Markov Model (GMM-HMM)-based pattern classification system for acoustic trace decision strategy. |
k-Nearest Neighbor (kNN) and SVM [132] | 2019 | Event identification | The disturbance events, such as knocking, pressing, watering, climbing, and false disturbance event, are identified for 25.05 km long OTDR system using combination of kNN and SVM. |
HMM [133] | 2019 | Pipeline safety monitoring | The HMMs were trained to identify sequential state process of events and extract the temporal information of the data, and provided an average accuracy of 98.2%. |
Dual Path Network [134] | 2019 | Railway safety monitoring | The proposal provides proof-of-concept on using distributed sensor and machine learning algorithm for actual railway safety monitoring. The F1-scores for all classes reached up to 97% in the test data. |
CNN [135] | 2019 | Microseismic event detection | The synthetic microseismic events injected into recorded ambient noise and was trained using CNN to detect seismic events in the test DAS data. |
NN [29] | 2019 | Fracture-hit detection | The NN was trained on Low-frequency distributed acoustic sensing (LFDAS) to detect fracture hits to monitor wells during hydraulic fracturing operations. |
DNN [136] | 2019 | Human movement identification | The DAS signal was enhanced using ultrafast laser; the data was trained using supervised and unsupervised machine learning algorithms to detect human movement and pipeline monitoring. |
SVM [137] | 2020 | Train tracking | The vibrations of moving objects are used to identify and track trains in real-time; the algorithm runs on GPU to speed up the calculations. |
CNN, LSTM, K-means [138] | 2020 | Human locomotion identification | High spatial resolution and bandwidth data was shown to be effective on increasing the machine learning accuracy. |
LSTM [139] | 2020 | Railway intrusion detection | A real field experiment with noise background sound was conducted in this study, resulting on shortening the average detection response time to 8.25 s. |
Random Matrix Theory (RMT) [140] | 2020 | Event activity detection | Events were detected along with their location on the fibre, then they were extracted from the random noise using Spiked RMT models. |
CNN [141] | 2020 | Earthquake detection | The CNN shows a promising results for providing a reliable earthquake detection despite low signal-to-noise ratio of the fibre telecom infrastructure. |
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Arief, H.A.; Wiktorski, T.; Thomas, P.J. A Survey on Distributed Fibre Optic Sensor Data Modelling Techniques and Machine Learning Algorithms for Multiphase Fluid Flow Estimation. Sensors 2021, 21, 2801. https://doi.org/10.3390/s21082801
Arief HA, Wiktorski T, Thomas PJ. A Survey on Distributed Fibre Optic Sensor Data Modelling Techniques and Machine Learning Algorithms for Multiphase Fluid Flow Estimation. Sensors. 2021; 21(8):2801. https://doi.org/10.3390/s21082801
Chicago/Turabian StyleArief, Hasan Asy’ari, Tomasz Wiktorski, and Peter James Thomas. 2021. "A Survey on Distributed Fibre Optic Sensor Data Modelling Techniques and Machine Learning Algorithms for Multiphase Fluid Flow Estimation" Sensors 21, no. 8: 2801. https://doi.org/10.3390/s21082801
APA StyleArief, H. A., Wiktorski, T., & Thomas, P. J. (2021). A Survey on Distributed Fibre Optic Sensor Data Modelling Techniques and Machine Learning Algorithms for Multiphase Fluid Flow Estimation. Sensors, 21(8), 2801. https://doi.org/10.3390/s21082801