Development of a modular Knowledge-Discovery Framework based on Machine Learning
for the interdisciplinary analysis of complex phenomena in the context of GDI combustion processes
Language
EnglishAbstract
In this work, a novel knowledge discovery framework able to analyze data produced in the Gasoline Direct Injection (GDI) context through machine learning is presented and validated. This approach is able to explore and exploit the investigated design spaces based on a limited number of observations, discovering and visualizing connections and correlations in complex phenomena. The extracted knowledge is then validated with domain expertise, revealing potential and limitations of this method.
Keywords
Gasoline Direct Injection; Data-Driven Development; Machine Learning Application; Datengetriebene Entwicklung; Anwendung des Maschinellen Lernens; Knowledge Discovery; Benzin-DirekteinspritzungDOI
10.5445/KSP/1000158016ISBN
9783731512950Publisher
KIT Scientific PublishingPublisher website
https://www.ksp.kit.edu/index.php?link=shop&sort=allPublication date and place
2023Series
Reihe Informationsmanagement im Engineering Karlsruhe, 2Classification
Mechanical engineering and materials