Advancing digitalization and high computing power are drivers for the progressive use of machine learning (ML) methods on manufacturing data. Using ML for predictive quality control of product characteristics contributes to preventing defects and streamlining future manufacturing processes. Challenging decisions must be made before implementing ML applications. Production environments are dynamic systems whose boundary conditions change continuously. Accordingly, it requires extensive feature engineering of the volatile database to guarantee high generalizability of the prediction model. Thus, all following sections of the ML pipeline can be optimized based on a cleaned database. Various ML methods such gradient boosting methods have achiev...
A hydraulic system, a drive technology where a fluid is used to create force, is used in all kinds o...
Digitalization has opened the opportunity for a fourth industrial revolution and the hydropower indu...
This research envisages an automated system to inform engineers when opportunities occur to use exis...
The increasing availability of manufacturing data and advanced analysis tools are forcing the demand...
In recent years, the optimization in the use of resources has a key role in achieving a bigger margi...
Due to the robustness and flexibility of hydraulic components, hydraulic control systems are used in...
Machine learning (ML) describes the ability of algorithms to structure and interpret data independen...
In this project, a condition monitoring of a hydraulic system has been developed. The research consi...
In a complex manufacturing system such as the multistage manufacturing system, maintaining the quali...
More and more industries are aspiring to achieve a successful production using the known artificial ...
Machine Learning (ML) requires a certain number of features (i.e., attributes) to train the model. O...
There is often a scarcity of training data for machine learning (ML) classification and regression m...
Due to the lack of sufficient results seen in literature, feature extraction and classification meth...
ABSTRACT: Using Machine Learning (ML) prediction to achieve a successful, cost-effective, Condition-...
Predictive maintenance models attempt to identify developing issues with industrial equipment before...
A hydraulic system, a drive technology where a fluid is used to create force, is used in all kinds o...
Digitalization has opened the opportunity for a fourth industrial revolution and the hydropower indu...
This research envisages an automated system to inform engineers when opportunities occur to use exis...
The increasing availability of manufacturing data and advanced analysis tools are forcing the demand...
In recent years, the optimization in the use of resources has a key role in achieving a bigger margi...
Due to the robustness and flexibility of hydraulic components, hydraulic control systems are used in...
Machine learning (ML) describes the ability of algorithms to structure and interpret data independen...
In this project, a condition monitoring of a hydraulic system has been developed. The research consi...
In a complex manufacturing system such as the multistage manufacturing system, maintaining the quali...
More and more industries are aspiring to achieve a successful production using the known artificial ...
Machine Learning (ML) requires a certain number of features (i.e., attributes) to train the model. O...
There is often a scarcity of training data for machine learning (ML) classification and regression m...
Due to the lack of sufficient results seen in literature, feature extraction and classification meth...
ABSTRACT: Using Machine Learning (ML) prediction to achieve a successful, cost-effective, Condition-...
Predictive maintenance models attempt to identify developing issues with industrial equipment before...
A hydraulic system, a drive technology where a fluid is used to create force, is used in all kinds o...
Digitalization has opened the opportunity for a fourth industrial revolution and the hydropower indu...
This research envisages an automated system to inform engineers when opportunities occur to use exis...