A multitude of high quality, high-resolution data is a cornerstone of the digital services associated with Industry 4.0. However, a great fraction of industrial machinery in use today features only a bare minimum of sensors and retrofitting new ones is expensive if possible at all. Instead, already existing sensors’ data streams could be utilized to virtually ‘measure’ new parameters. In this paper, a deep learning based virtual sensor for estimating a combustion parameter on a large gas engine using only the rotational speed as input is developed and evaluated. The evaluation focusses on the influence of data preprocessing compared to network type and structure regarding the estimation quality
With the automotive industry moving towards automated driving, sensing is increasingly important in ...
To meet current Diesel engine pollutant legislation, it is important to manage after-treatment devic...
As failures in rotating machines can have serious implications, the timely detection and diagnosis o...
Modern and advanced control systems for internal combustion engines require accurate feedback infor...
We propose two virtual sensors which estimate the location of the pressure peak and the air-fuel rat...
The main objective of this work is to design a virtual sensor capable of estimating variables that a...
Modern and advanced control systems for internal combustion engines require ac-curate feedback infor...
The automotive industry is becoming more dependent on sustainable and efficient systems within vehic...
In this work neural network models are used to reconstruct in-cylinder pressure from a vibration sig...
International audienceA Deep Learning protocol is developed for identification of typical faults occ...
The Nitrogen Oxides (NOx) from engines aggravate natural environment and human health. Institutional...
Cylinder pressure sensors provide detailed information on the diesel engine combustion process. This...
The In-cylinder pressure profile contains valuable information on the combustion process and its ava...
The objective of this thesis was to compare different machine learning models for predicting raw nit...
Recent advances in sensor technologies and data analysis techniques allow reliable and efficient sys...
With the automotive industry moving towards automated driving, sensing is increasingly important in ...
To meet current Diesel engine pollutant legislation, it is important to manage after-treatment devic...
As failures in rotating machines can have serious implications, the timely detection and diagnosis o...
Modern and advanced control systems for internal combustion engines require accurate feedback infor...
We propose two virtual sensors which estimate the location of the pressure peak and the air-fuel rat...
The main objective of this work is to design a virtual sensor capable of estimating variables that a...
Modern and advanced control systems for internal combustion engines require ac-curate feedback infor...
The automotive industry is becoming more dependent on sustainable and efficient systems within vehic...
In this work neural network models are used to reconstruct in-cylinder pressure from a vibration sig...
International audienceA Deep Learning protocol is developed for identification of typical faults occ...
The Nitrogen Oxides (NOx) from engines aggravate natural environment and human health. Institutional...
Cylinder pressure sensors provide detailed information on the diesel engine combustion process. This...
The In-cylinder pressure profile contains valuable information on the combustion process and its ava...
The objective of this thesis was to compare different machine learning models for predicting raw nit...
Recent advances in sensor technologies and data analysis techniques allow reliable and efficient sys...
With the automotive industry moving towards automated driving, sensing is increasingly important in ...
To meet current Diesel engine pollutant legislation, it is important to manage after-treatment devic...
As failures in rotating machines can have serious implications, the timely detection and diagnosis o...