Abstract The application of machine learning to aerospace problems faces a particular challenge. For successful learning a large amount of good quality training data is required, typically tens of thousands of cases. However, due to the time and cost of experimental aerospace testing, this data is scarce. This paper shows that successful learning is possible with two novel techniques: The first technique is rapid testing. Over the last five years the Whittle Laboratory has developed a capability where rebuild and test times of a compressor stage now take 15 minutes instead of weeks. The second technique is to base machine learning on physical parameters, derived from engineering wisdom developed in industry over many decades....
Structural health monitoring spans many decades of research across multiple engineering fields. Howe...
Operating condition detection and fault diagnosis are very important for reliable operation of recip...
Machine learning, big data and deep learning are today's catchphrases for how to improve reliability...
The application of machine learning to aerospace problems faces a particular challenge. For successf...
In an increasingly competitive industrial world, the need to adapt to any change at any time has bec...
The machine learning revolution is starting to be implemented in machinery maintenance and has becom...
Methods and results are presented for applying supervised machine learning techniques to the task of...
The present paper proposes a predictive maintenance application to twin screw air compressors. An ex...
Machine learning algorithms and the increasing availability of data have radically changed the way h...
Compressors are important components in many industries. Proper monitoring technologies are very imp...
Throughout the world, thousands of passengers travel by air, their quality depends on that of the eq...
Few components within mechanical engineering possess the fatigue resistance as of high-pressure turb...
Aeroelastic instabilities such as flutter have a crucial role in limiting the operating range and re...
Condition monitoring, diagnostics, and prognostics are key factors in today’s competitive industrial...
Machine learning algorithms and the increasing availability of data have radically changed the way h...
Structural health monitoring spans many decades of research across multiple engineering fields. Howe...
Operating condition detection and fault diagnosis are very important for reliable operation of recip...
Machine learning, big data and deep learning are today's catchphrases for how to improve reliability...
The application of machine learning to aerospace problems faces a particular challenge. For successf...
In an increasingly competitive industrial world, the need to adapt to any change at any time has bec...
The machine learning revolution is starting to be implemented in machinery maintenance and has becom...
Methods and results are presented for applying supervised machine learning techniques to the task of...
The present paper proposes a predictive maintenance application to twin screw air compressors. An ex...
Machine learning algorithms and the increasing availability of data have radically changed the way h...
Compressors are important components in many industries. Proper monitoring technologies are very imp...
Throughout the world, thousands of passengers travel by air, their quality depends on that of the eq...
Few components within mechanical engineering possess the fatigue resistance as of high-pressure turb...
Aeroelastic instabilities such as flutter have a crucial role in limiting the operating range and re...
Condition monitoring, diagnostics, and prognostics are key factors in today’s competitive industrial...
Machine learning algorithms and the increasing availability of data have radically changed the way h...
Structural health monitoring spans many decades of research across multiple engineering fields. Howe...
Operating condition detection and fault diagnosis are very important for reliable operation of recip...
Machine learning, big data and deep learning are today's catchphrases for how to improve reliability...