This paper considers the method to estimate the technical condition of gas turbine power for natural gas transportation, using machine learning methods. Source data was used to archive gas-dynamic parameters from the automatic control system of the gas turbine. The method is based on changing the enthalpy of the natural gas before and after the centrifugal gas compressor is used for creating a dataset with measured parameters and power from the gas turbine. The actual power is determined from the line of modes for a certain period. The software is implemented using Python and the Scikit-learn library is used to create machine learning models. A mean average percentile error is chosen as the model quality criterion. In this paper, different ...
Gas turbines are expensive, revenue generating machines and, as such, there is a strong interest in ...
Gas turbines are expensive, revenue generating machines and, as such, there is a strong interest in ...
Gas turbines are expensive, revenue generating machines and, as such, there is a strong interest in ...
Condition monitoring, diagnostics, and prognostics are key factors in today’s competitive industrial...
Condition monitoring, diagnostics, and prognostics are key factors in today’s competitive industrial...
Condition monitoring, diagnostics, and prognostics are key factors in today’s competitive industrial...
A gas turbine trip is an unplanned shutdown, of which the consequences are business interruption and...
Machine learning algorithms and the increasing availability of data have radically changed the way h...
The paper describes an approach for determining the technical state of an axial compressor as part o...
Predicting the state of modern heavy-duty gas turbines for large-scale power generation allows for m...
Machine learning algorithms and the increasing availability of data have radically changed the way h...
Funding Information: The work presented here received funding from EPSRC (EP/W522089/1) and Siemens ...
Gas turbine maintenance is crucial due to high cost for the replacement of its components and associ...
Gas turbines are expensive, revenue generating machines and, as such, there is a strong interest in ...
Gas turbines are expensive, revenue generating machines and, as such, there is a strong interest in ...
Gas turbines are expensive, revenue generating machines and, as such, there is a strong interest in ...
Gas turbines are expensive, revenue generating machines and, as such, there is a strong interest in ...
Gas turbines are expensive, revenue generating machines and, as such, there is a strong interest in ...
Condition monitoring, diagnostics, and prognostics are key factors in today’s competitive industrial...
Condition monitoring, diagnostics, and prognostics are key factors in today’s competitive industrial...
Condition monitoring, diagnostics, and prognostics are key factors in today’s competitive industrial...
A gas turbine trip is an unplanned shutdown, of which the consequences are business interruption and...
Machine learning algorithms and the increasing availability of data have radically changed the way h...
The paper describes an approach for determining the technical state of an axial compressor as part o...
Predicting the state of modern heavy-duty gas turbines for large-scale power generation allows for m...
Machine learning algorithms and the increasing availability of data have radically changed the way h...
Funding Information: The work presented here received funding from EPSRC (EP/W522089/1) and Siemens ...
Gas turbine maintenance is crucial due to high cost for the replacement of its components and associ...
Gas turbines are expensive, revenue generating machines and, as such, there is a strong interest in ...
Gas turbines are expensive, revenue generating machines and, as such, there is a strong interest in ...
Gas turbines are expensive, revenue generating machines and, as such, there is a strong interest in ...
Gas turbines are expensive, revenue generating machines and, as such, there is a strong interest in ...
Gas turbines are expensive, revenue generating machines and, as such, there is a strong interest in ...