INGU
Michael Byington is an experienced data scientist and consultant with a robust background in data analytics, process control, and software development. Currently serving as a Data Scientist at INGU and a Creator & Blog Author at Domestic-Engineering.com, Michael has contributed significantly through technical articles focused on personal finance. Previous roles include independent consulting on data analytics and predictive modeling for healthcare and industrial applications, as well as developing software for data analysis at Texas A&M University and the University of Houston. Michael holds a Ph.D. in Chemical and Biomolecular Engineering from the University of Houston and a Bachelor's Degree in Chemical Engineering from UC Santa Barbara.
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INGU
Currently, inline inspection in the oil and gas sector is a series of staged engineering events, designed to assess the condition of pipeline assets. It is costly, infrequent, and only addresses those lines that are within reach. In fact, it is estimated that 40% of the world’s pipelines are unpiggable. The vulnerabilities between inspections,which are typically years apart, or the inability to conduct inspections at all, puts the world’s aging pipeline infrastructure at risk. In order to address these issues, we have focused on changing the economics, the technology, and the workflow associated with inline inspection. We have introduced the industry’s first self-serve inspection model that eliminates significant engineering and downtime costs. We have developed miniature, multi sensor Pipers® technology that freely flows within any and all active pipelines, regardless of location, condition, material or configuration. This technology is capable of inspecting pipelines as small as 2 inches in diameter, and surveying for leaks, geometric defects, magnetic anomalies, and deposits in a single run. Further, we have reduced the cost of inline inspection by a factor of 10, making it possible for integrity programs to be more present, more often, across all of their assets. Finally, such accessible technology has given us the opportunity to work with a complete range of clients – large and small, private and public – resulting in rich datasets libraries that offer unprecedented contextual analysis and continuous advancement of our data analytics capabilities. Our approach provides clients with uninterrupted access to up-to-date condition-critical data, allowing them to optimize planning, decision-making, and actions.