CASE STUDIES » PERFORMANCE MODELS

Case Studies

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

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Other Studies

Digital Twin Model Development for Industrial Gas Turbines

A client needed to expand their gas turbine monitoring and diagnostic capabilities to cover additional equipment types within their fleet. Existing digital twin models were limited to certain turbine configurations, creating gaps in their ability to perform comprehensive performance analysis across all assets.

Gas Turbine Filtration Life Cycle Cost Analysis Tool Development

A client needed a way to evaluate the economic impact of different air filtration strategies for their gas turbine operations. The challenge involved balancing multiple competing factors: filter efficiency, pressure drop effects on turbine performance, maintenance costs, water wash scheduling, and long-term operational expenses.

Turbine Monitoring and Technical Support Services

A client in the power generation industry sought specialized expertise to enhance their turbine monitoring capabilities and ensure reliable operational support for their rotating equipment assets. The organization needed access to advanced diagnostic tools and experienced engineers who could provide ongoing technical guidance for complex turbine systems.

Hydrogen Fuel Blend Performance Analysis for Gas Turbines

As the energy industry increasingly explores low-carbon solutions, many organizations are evaluating the feasibility of combusting hydrogen or hydrogen-blended fuels in existing gas turbine assets. Understanding the performance implications of varying hydrogen content is essential for making informed decisions about fuel transitions, but these impacts are often non-obvious and require sophisticated analysis.

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.

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