In the aeronautical field, aircraft reliability is strictly dependent on propulsion systems. Indeed, a reliable propulsion system ensures the safety of pilots and passengers and the possibility of making comfortable flights. Typically, on aircraft equipped with spark ignition (SI) engines, one of the principal requirements to make them reliable is the correct balancing between the intake air mass and fuel flows. Advances in the implementation of sophisticated control and estimation strategies on SI engines allow realizing engines with improved features in terms of performance, reducing pollution emissions, and fuel consumption. Approaches based on sensor redundancy are applied to improve the reliability in measurements of the manifold air p...
In this work neural network models are used to reconstruct in-cylinder pressure from a vibration sig...
Abstract: Robustness assessment is important for every newly developed method. This paper presents r...
This paper presents the results of applying two different types of neural networks in two different ...
The correct measurement of the intake air mass flow is fundamental for the Spark Ignition (SI) Engin...
In order to maintain the air fuel ratio within the stoichiometric operating window, which is necessa...
Spark ignition (SI) engines have been developed for more than one century. In today's modern vehicl...
The paper deals with the identification of recurrent neural networks (RNNs) for simulating the air–f...
Increasing the application of machine learning algorithms in engine development has the potential to...
For a dual redundant-control system, which is typical for short-haul aircraft, if a failure is detec...
Emission legislation has become progressively tighter, making the development of new internal combus...
A set of models for the prediction of mechanical efficiency as function of the operating conditions ...
We propose two virtual sensors which estimate the location of the pressure peak and the air-fuel rat...
The In-cylinder pressure profile contains valuable information on the combustion process and its ava...
The paper focuses on the experimental identification and validation of recurrent neural networks (RN...
Sensor failure detection, isolation, and accommodation using a neural network approach is described....
In this work neural network models are used to reconstruct in-cylinder pressure from a vibration sig...
Abstract: Robustness assessment is important for every newly developed method. This paper presents r...
This paper presents the results of applying two different types of neural networks in two different ...
The correct measurement of the intake air mass flow is fundamental for the Spark Ignition (SI) Engin...
In order to maintain the air fuel ratio within the stoichiometric operating window, which is necessa...
Spark ignition (SI) engines have been developed for more than one century. In today's modern vehicl...
The paper deals with the identification of recurrent neural networks (RNNs) for simulating the air–f...
Increasing the application of machine learning algorithms in engine development has the potential to...
For a dual redundant-control system, which is typical for short-haul aircraft, if a failure is detec...
Emission legislation has become progressively tighter, making the development of new internal combus...
A set of models for the prediction of mechanical efficiency as function of the operating conditions ...
We propose two virtual sensors which estimate the location of the pressure peak and the air-fuel rat...
The In-cylinder pressure profile contains valuable information on the combustion process and its ava...
The paper focuses on the experimental identification and validation of recurrent neural networks (RN...
Sensor failure detection, isolation, and accommodation using a neural network approach is described....
In this work neural network models are used to reconstruct in-cylinder pressure from a vibration sig...
Abstract: Robustness assessment is important for every newly developed method. This paper presents r...
This paper presents the results of applying two different types of neural networks in two different ...