The present paper proposes a predictive maintenance application to twin screw air compressors. An experimental setup was designed to acquire compressor operation data under different operating conditions. To detect the operating parameters of the compressor, the data acquisition system was realized exploiting Industry 4.0 concepts. An in-depth data analysis phase represented the initial point for the application and comparison of supervised machine learning techniques. The designed tool allows four operating conditions to be classified concerning the state of degradation of the oil used by the compressor, of the filters, of the separator, and of the power circuit. The results obtained from the experimental tests allowed to conclude that inn...
This paper addresses the problem of predictive maintenance in industry 4.0. Industry 4.0 revolutioni...
Digitalization has opened the opportunity for a fourth industrial revolution and the hydropower indu...
This research project evaluates the suitability of machine learning methods for early fault predicti...
In an increasingly competitive industrial world, the need to adapt to any change at any time has bec...
Methods and results are presented for applying supervised machine learning techniques to the task of...
The purpose of this study is to explore application of Machine Learning algorithm in the Predictive ...
Machine learning algorithms and the increasing availability of data have radically changed the way h...
Abstract The application of machine learning to aerospace problems faces a particular...
Compressors are important components in many industries. Proper monitoring technologies are very imp...
Operating condition detection and fault diagnosis are very important for reliable operation of recip...
Rotating machines, such as gas turbines and compressors, are widely used due to their high performan...
Machine learning algorithms and the increasing availability of data have radically changed the way h...
In multiple industries, including automotive one, predictive maintenance is becoming more and more i...
The efficiency of a production line is based on the reliability and correct functioning of the machi...
The machine learning revolution is starting to be implemented in machinery maintenance and has becom...
This paper addresses the problem of predictive maintenance in industry 4.0. Industry 4.0 revolutioni...
Digitalization has opened the opportunity for a fourth industrial revolution and the hydropower indu...
This research project evaluates the suitability of machine learning methods for early fault predicti...
In an increasingly competitive industrial world, the need to adapt to any change at any time has bec...
Methods and results are presented for applying supervised machine learning techniques to the task of...
The purpose of this study is to explore application of Machine Learning algorithm in the Predictive ...
Machine learning algorithms and the increasing availability of data have radically changed the way h...
Abstract The application of machine learning to aerospace problems faces a particular...
Compressors are important components in many industries. Proper monitoring technologies are very imp...
Operating condition detection and fault diagnosis are very important for reliable operation of recip...
Rotating machines, such as gas turbines and compressors, are widely used due to their high performan...
Machine learning algorithms and the increasing availability of data have radically changed the way h...
In multiple industries, including automotive one, predictive maintenance is becoming more and more i...
The efficiency of a production line is based on the reliability and correct functioning of the machi...
The machine learning revolution is starting to be implemented in machinery maintenance and has becom...
This paper addresses the problem of predictive maintenance in industry 4.0. Industry 4.0 revolutioni...
Digitalization has opened the opportunity for a fourth industrial revolution and the hydropower indu...
This research project evaluates the suitability of machine learning methods for early fault predicti...