Signal processing and machine learning for effective integration of distributed fiber optic sensing data in production petrophysics

This paper demonstrates the advantages and replicability of utilizing Distributed Fiber Optic Sensing (DFOS) combined with LYTT’s customary machine learning, signal processing and interpretation tools in downhole oil and gas operations.

Paper Number: SPWLA-2022-0016

Addressing the limitations of oil and gas 4.0 surrounding distributed fiber optic data streams

This paper describes a Middle East case study in which the challenge of big data generated by distributed fiber optic well monitoring systems was addressed through the use of LYTT’s sensing and analytics platform. The platform conducted intelligent feature extraction and enabled data to be streamed, processed, stored and visualized in real-time.

Paper Number: SPE-207848-MS

Production optimization using a 24/7 distributed fiber optic DFO sensing based multiphase inflow profiling capability

This paper summarizes the main findings from the first successful deployment of a continuous multiphase inflow profiling application that uses innovative signal processing techniques and machine learning that leverage distributed fiber optic data to identify the phase and rate of the inflow along the wellbore during production

Paper Number: SPE-201543-MS