Giuseppe Saitta
Machine Learning for Diesel After-Treatment Modeling.
Rel. Elena Maria Baralis, Marco Mellia, Danilo Giordano, Eliana Pastor. Politecnico di Torino, Master of science program in Computer Engineering, 2019
Abstract
The massive computerization of our society and the increasingly powerful data collection and storage technology lead to an explosive growth of available data. A big challenge is to extract useful information inside the collections of data and use it to support and improve business processes or to increase knowledge in different human activities. In this context, Data Mining represents an important and promising field. An important application domain is represented by the automotive industry. A current problem is the modelling of emission control component ageing. The after-treatment system is a very complex system, in which each component behaviour is influenced by the status of other components and by other external factors.
But also the ageing of one component could be influenced by an anomalous behaviour of another part of the AFT pipe or by external working conditions, such as the climate temperature as well as driving operational conditions
Relators
Academic year
Publication type
Number of Pages
Additional Information
Course of studies
Classe di laurea
URI
![]() |
Modify record (reserved for operators) |
