Predicting future maintenance needs of equipment can be addressed in a variety of ways. Methods based on machine learning approaches provide an interesting platform for mining large data sets to find patterns that might correlate with a given fault. In this paper, we approach predictive maintenance as a classification problem and use Random Forest to separate data readouts within a particular time window into those corresponding to faulty and non-faulty component categories. We utilize diagnostic trouble codes (DTCs) as an example of event-based data, and propose four categories of features that can be derived from DTCs as a predictive maintenance framework. We test the approach using large-scale data from a fleet of heavy duty trucks, and ...
Predicting breakdowns is becoming one of the main goals for vehicle manufacturers so as to better al...
The Fourth Industrial Revolution has led to the adoption of novel technologies and methodologies in ...
Condition monitoring together with predictive maintenance of electric motors and other equipment use...
Predicting future maintenance needs of equipment can be addressed in a variety of ways. Methods base...
Predictive Maintenance is an important solution to the rising maintenance costs in the industries. W...
Predictive Maintenance is an important solution to the rising maintenance costs in the industries. W...
In multiple industries, including automotive one, predictive maintenance is becoming more and more i...
In many industries inclusive of automotive vehicle industry, predictive maintenance has become more ...
Predictive Maintenance (PM) has been increasingly adopted in the Automotive industry, in the recent ...
Vehicle uptime is getting increasingly important as the transport solutions become more complex and ...
Predictive maintenance, which has traditionally used anomaly detection methods on sensory data, is n...
The work presented in this thesis is part of a large research and development project on condition-b...
Predictive maintenance attempts to prevent unscheduled downtime by scheduling maintenance before exp...
The strive for cost reduction of services and repairs combined with a desire for increased vehicle r...
Methods and results are presented for applying supervised machine learning techniques to the task of...
Predicting breakdowns is becoming one of the main goals for vehicle manufacturers so as to better al...
The Fourth Industrial Revolution has led to the adoption of novel technologies and methodologies in ...
Condition monitoring together with predictive maintenance of electric motors and other equipment use...
Predicting future maintenance needs of equipment can be addressed in a variety of ways. Methods base...
Predictive Maintenance is an important solution to the rising maintenance costs in the industries. W...
Predictive Maintenance is an important solution to the rising maintenance costs in the industries. W...
In multiple industries, including automotive one, predictive maintenance is becoming more and more i...
In many industries inclusive of automotive vehicle industry, predictive maintenance has become more ...
Predictive Maintenance (PM) has been increasingly adopted in the Automotive industry, in the recent ...
Vehicle uptime is getting increasingly important as the transport solutions become more complex and ...
Predictive maintenance, which has traditionally used anomaly detection methods on sensory data, is n...
The work presented in this thesis is part of a large research and development project on condition-b...
Predictive maintenance attempts to prevent unscheduled downtime by scheduling maintenance before exp...
The strive for cost reduction of services and repairs combined with a desire for increased vehicle r...
Methods and results are presented for applying supervised machine learning techniques to the task of...
Predicting breakdowns is becoming one of the main goals for vehicle manufacturers so as to better al...
The Fourth Industrial Revolution has led to the adoption of novel technologies and methodologies in ...
Condition monitoring together with predictive maintenance of electric motors and other equipment use...