This book provides a thorough and fresh treatment of the control of innovative variable-geometry vehicle suspension systems. A deep survey on the topic, which covers the varying types of existing variable-geometry suspension solutions, introduces the study. The book discusses three important aspects of the subject:• robust control design;• nonlinear system analysis; and• integration of learning and control methods.The importance of variable-geometry suspensions and the effectiveness of design methods implemented in the autonomous functionalities of electric vehicles—functionalities like independent steering and torque vectoring—are illustrated. The authors detail the theoretical background of modeling, control design, and analysis for each functionality. The theoretical results achieved through simulation examples and hardware-in-the-loop scenarios are confirmed. The book highlights emerging ideas of applying machine-learning-based methods in the control system with guarantees on safety performance. The authors propose novel control methods, based on the theory of robust linear parameter-varying systems, with examples for various suspension systems.Academic researchers interested in automotive systems and their counterparts involved in industrial research and development will find much to interest them in the eleven chapters of Control of Variable-Geometry Vehicle Suspensions.
Les mer
This book provides a thorough and fresh treatment of the control of innovative variable-geometry vehicle suspension systems.
Chapter 1: Introduction.- Part I Variable Geometry Suspension for Wheel Tilting Control.- Chapter 2:  LPV-based modeling of variable geometry suspension.- Chapter 3: LPV-based control of variable geometry suspension.- Chapter 4: SOS-based modeling, analysis and control.- Part II Independent Steering with Variable Geometry Suspension.- Chapter 5: Modeling variable geometry suspension system.- Chapter 6: Hierarchical control design method for vehicle suspensions.- Chapter 7: Coordinated control strategy for variable geometry suspension.- Chapter 8: Control implementation on suspension testbed.- Part III Guaranteed Suspension Control with Learning Methods.- Chapter 9: Data-driven framework for variable geometry suspension control.- Chapter 10: Guaranteeing performance requirements for suspensions via robust LPV framework.- Chapter 11: Control design for Variable Geometry Suspension with learning methods.- Index.
Les mer
This book provides a thorough and fresh treatment of the control of innovative variable-geometry vehicle suspension systems. A deep survey on the topic, which covers the varying types of existing variable-geometry suspension solutions, introduces the study. The book discusses three important aspects of the subject:• robust control design;• nonlinear system analysis; and• integration of learning and control methods.The importance of variable-geometry suspensions and the effectiveness of design methods implemented in the autonomous functionalities of electric vehicles—functionalities like independent steering and torque vectoring—are illustrated. The authors detail the theoretical background of modeling, control design, and analysis for each functionality. The theoretical results achieved through simulation examples and hardware-in-the-loop scenarios are confirmed. The book highlights emerging ideas of applying machine-learning-based methods in the control system with guarantees on safety performance. The authors propose novel control methods, based on the theory of robust linear parameter-varying systems, with examples for various suspension systems.Academic researchers interested in automotive systems and their counterparts involved in industrial research and development will find much to interest them in the eleven chapters of Control of Variable-Geometry Vehicle Suspensions.
Les mer
Brings the reader up to speed with a survey of existing variable-geometry suspension solutions Provides theoretical background of control methods and mathematical formulation of suspension models Includes case studies on integrating machine learning and model-based control for vehicle suspensions
Les mer

Produktdetaljer

ISBN
9783031305399
Publisert
2024-07-27
Utgiver
Vendor
Springer International Publishing AG
Høyde
235 mm
Bredde
155 mm
Aldersnivå
Research, P, 06
Språk
Product language
Engelsk
Format
Product format
Heftet

Biographical note

Balázs Németh has been a senior research fellow of the Systems and Control Laboratory (SCL) in the Institute for Computer Science and Control (SZTAKI) since 2007. He received his Ph.D. degree in Transportation Sciences from Budapest University of Technology and Economics (BME) in 2013. He is an honorary associate professor of BME, and he lectures in B.Sc., M.Sc., and Ph.D. courses on control system theory and vehicle control. He has published 102 journal papers, 4 books, and 107 papers in conference proceedings. His main research areas are analysis and synthesis of autonomous vehicle control systems, energy-optimal control of road vehicles, integration of learning and control methods, and ethics of autonomous vehicle systems.


Péter Gáspár received both M.Sc. and Ph.D. degrees from the Faculty of Transportation Engineering and Vehicle Engineering, Budapest University of Technology and Economics (BME) in 1985 and 1997, respectively, and his D.Sc. degree in Control from the Hungarian Academy of Sciences (MTA) in 2007. Since 2022 he has been a full member of the MTA. He is head of the Systems and Control Laboratory (SCL) in the Institute for Computer Science and Control (SZTAKI) and is also a full professor at the Department of Control for Transportation and Vehicle Systems, BME. He is a member of IFAC Technical Committees on both Automotive Control and Transportation Systems. He is a co-author of 4 monographs on systems and control theory and vehicle control and the co-author of 7 university textbooks. He has published 226 journal papers, 5 book chapters, and 310 papers in conference proceedings with more than 2250 citations. His research interests include linear and nonlinear systems, robust control, system identification, and machine learning methods. His research and industrial works have involved mechanical systems, vehicle structures, and vehicle dynamics and control.