CASE STUDIES » PROGNOSTIC CAPABILITIES

Case Studies

Explore how Turbine Logic helps companies like yours optimize the performance of your assets through advanced analytics, diagnostics, and engineering expertise.

Filtered by: PROGNOSTIC CAPABILITIES × Clear all

Other Studies

Firing Temperature Assessment for Heavy-Duty Gas Turbines

A power generation client needed to understand whether maintenance activities had impacted the firing temperature of their heavy-duty gas turbine fleet. Changes in firing temperature can significantly affect both performance and component life, making accurate assessment critical for operational decision-making and long-term asset management.

Cycle Model Development for Gas Turbine Fault Diagnostics

A client sought to improve their ability to detect and diagnose equipment faults in their gas turbine fleet before they led to costly unplanned outages. Traditional monitoring approaches were reactive, often identifying problems only after performance had already degraded significantly.

Software Review and Technical Support for Power Industry Analytics

A client in the power generation sector needed specialized support for an internal software tool used to analyze and benchmark operational data. Over time, the tool had grown in complexity and adoption, creating a need for expert review of its underlying architecture and hands-on assistance with applied use cases.

Hydrogen Fuel Capability Assessment for Legacy Gas Turbine Fleet

A power generation operator sought to understand the feasibility of transitioning their existing gas turbine fleet to operate on hydrogen-blended fuels as part of a broader decarbonization strategy. The fleet included multiple turbine models from different manufacturers, and the operator needed clarity on technical limitations, operational impacts, and facility modifications that would be required to support alternative fuel blending.

Digital Twin Framework Development for the Power Generation Industry

A client in the power generation sector recognized that digital twin technologies were being developed inconsistently across their organization, leading to duplicated efforts and challenges in deploying these tools effectively. Without a standardized approach, teams struggled to leverage real-world operational data, create adaptable models, and integrate emerging technologies like AI and machine learning into their workflows.

See something relevant?

Let's discuss how we can deliver similar results for your organization.

Talk to an Expert