The paper describes suited methodologies for developing Recurrent Neural Networks (RNN) aimed at estimating NOx emissions at the exhaust of automotive Diesel engines. The proposed methodologies particularly aim at meeting the conflicting needs of feasible on-board implementation of advanced virtual sensors, such as neural network, and satisfactory prediction accuracy. Suited identification procedures and experimental tests were developed to improve RNN precision and generalization in predicting engine NOx emissions during transient operation. NOx measurements were accomplished by a fast response analyzer on a production automotive Diesel engine at the test bench. Proper postprocessing of available experiments was performed to provide...
Accurate measurement of diesel engine exhaust smoke emission is a primary phase in meeting the evers...
Emission regulations are becoming more and more stringent, especially on NOx pollutants, making dies...
This study describes the development of a semi-physical, real-time nitric oxide (NO) prediction mode...
The paper describes suited methodologies for developing Recurrent Neural Networks (RNN) aimed at es...
The paper describes suited methodologies for developing Recurrent Neural Networks (RNN) aimed at est...
To meet current Diesel engine pollutant legislation, it is important to manage after-treatment devic...
The paper focuses on the experimental identification and validation of different neural networks for...
This paper describes an experimental and computer simulation studies used to develop a suitable algo...
The Nitrogen Oxides (NOx) from engines aggravate natural environment and human health. Institutional...
The predictive ability of artificial neural networks where a large number of experimental data are a...
This article considers the application and refinement of artificial neural network methods for the p...
The objective of this study was to develop a method for fault detection of an engine-out oxides of n...
Several studies in literature have shown how real-world emissions strongly depend on driving conditi...
Heavy-duty vehicles are powered by diesel engines that emit significant amounts of NOx emissions whi...
In this paper, a methodology based on data-driven models is developed to predict the NOx emissions o...
Accurate measurement of diesel engine exhaust smoke emission is a primary phase in meeting the evers...
Emission regulations are becoming more and more stringent, especially on NOx pollutants, making dies...
This study describes the development of a semi-physical, real-time nitric oxide (NO) prediction mode...
The paper describes suited methodologies for developing Recurrent Neural Networks (RNN) aimed at es...
The paper describes suited methodologies for developing Recurrent Neural Networks (RNN) aimed at est...
To meet current Diesel engine pollutant legislation, it is important to manage after-treatment devic...
The paper focuses on the experimental identification and validation of different neural networks for...
This paper describes an experimental and computer simulation studies used to develop a suitable algo...
The Nitrogen Oxides (NOx) from engines aggravate natural environment and human health. Institutional...
The predictive ability of artificial neural networks where a large number of experimental data are a...
This article considers the application and refinement of artificial neural network methods for the p...
The objective of this study was to develop a method for fault detection of an engine-out oxides of n...
Several studies in literature have shown how real-world emissions strongly depend on driving conditi...
Heavy-duty vehicles are powered by diesel engines that emit significant amounts of NOx emissions whi...
In this paper, a methodology based on data-driven models is developed to predict the NOx emissions o...
Accurate measurement of diesel engine exhaust smoke emission is a primary phase in meeting the evers...
Emission regulations are becoming more and more stringent, especially on NOx pollutants, making dies...
This study describes the development of a semi-physical, real-time nitric oxide (NO) prediction mode...