Artificial Intelligence and Data Driven Optimization of Internal Combustion Engines

Artificial Intelligence and Data Driven Optimization of Internal Combustion Engines

von: Jihad Badra, Pinaki Pal, Yuanjiang Pei, Sibendu Som

Elsevier Reference Monographs, 2022

ISBN: 9780323884587 , 262 Seiten

Format: ePUB, PDF, Online Lesen

Kopierschutz: DRM

Mac OSX,Windows PC für alle DRM-fähigen eReader Apple iPad, Android Tablet PC's Apple iPod touch, iPhone und Android Smartphones Online-Lesen für: Mac OSX,Linux,Windows PC

Preis: 175,00 EUR

eBook anfordern eBook anfordern

Mehr zum Inhalt

Artificial Intelligence and Data Driven Optimization of Internal Combustion Engines


 

Artificial Intelligence and Data Driven Optimization of Internal Combustion Engines summarizes recent developments in Artificial Intelligence (AI)/Machine Learning (ML) and data driven optimization and calibration techniques for internal combustion engines. The book covers AI/ML and data driven methods to optimize fuel formulations and engine combustion systems, predict cycle to cycle variations, and optimize after-treatment systems and experimental engine calibration. It contains all the details of the latest optimization techniques along with their application to ICE, making it ideal for automotive engineers, mechanical engineers, OEMs and R&D centers involved in engine design.
  • Provides AI/ML and data driven optimization techniques in combination with Computational Fluid Dynamics (CFD) to optimize engine combustion systems
  • Features a comprehensive overview of how AI/ML techniques are used in conjunction with simulations and experiments
  • Discusses data driven optimization techniques for fuel formulations and vehicle control calibration