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Automotive Model Predictive Control [electronic resource] : Models, Methods and Applications / edited by Luigi Re, Frank Allgȵwer, Luigi Glielmo, Carlos Guardiola, Ilya Kolmanovsky.

Por: Colaborador(es): Tipo de material: TextoTextoSeries Lecture Notes in Control and Information Sciences ; 402 | Lecture Notes in Control and Information Sciences ; 402Editor: London : Springer London, 2010Descripción: XIV, 290 p. 152 illus. online resourceTipo de contenido:
  • text
Tipo de medio:
  • computer
Tipo de soporte:
  • online resource
ISBN:
  • 9781849960717
Trabajos contenidos:
  • SpringerLink (Online service)
Tema(s): Formatos físicos adicionales: Sin títuloClasificación CDD:
  • 629.8 23
Clasificación LoC:
  • TJ212-225
Recursos en línea:
Contenidos:
Springer eBooksResumen: Automotive control has developed over the decades from an auxiliary te- nology to a key element without which the actual performances, emission, safety and consumption targets could not be met. Accordingly, automotive control has been increasing its authority and responsibility at the price of complexity and di?cult tuning. The progressive evolution has been mainly ledby speci?capplicationsandshorttermtargets,withthe consequencethat automotive control is to a very large extent more heuristic than systematic. Product requirements are still increasing and new challenges are coming from potentially huge markets like India and China, and against this ba- ground there is wide consensus both in the industry and academia that the current state is not satisfactory. Model-based control could be an approach to improve performance while reducing development and tuning times and possibly costs. Model predictive control is a kind of model-based control design approach which has experienced a growing success since the middle of the 1980s for ǣslowǥ complex plants, in particular of the chemical and process industry. In the last decades, severaldevelopments haveallowedusing these methods also for ǣfastǥsystemsandthis hassupporteda growinginterestinitsusealsofor automotive applications, with several promising results reported. Still there is no consensus on whether model predictive control with its high requi- ments on model quality and on computational power is a sensible choice for automotive control.
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Chances and Challenges in Automotive Predictive Control -- Chances and Challenges in Automotive Predictive Control -- I: Models -- On Board NOx Prediction in Diesel Engines: A Physical Approach -- Mean Value Engine Models Applied to Control System Design and Validation -- Physical Modeling of Turbocharged Engines and Parameter Identification -- Dynamic Engine Emission Models -- Modeling and Model-based Control of Homogeneous Charge Compression Ignition (HCCI) Engine Dynamics -- II: Methods -- An Overview of Nonlinear Model Predictive Control -- Optimal Control Using Pontryagins Maximum Principle and Dynamic Programming -- On the Use of Parameterized NMPC in Real-time Automotive Control -- III: Applications -- An Application of MPC Starting Automotive Spark Ignition Engine in SICE Benchmark Problem -- Model Predictive Control of Partially Premixed Combustion -- Model Predictive Powertrain Control: An Application to Idle Speed Regulation -- On Low Complexity Predictive Approaches to Control of Autonomous Vehicles -- Toward a Systematic Design for Turbocharged Engine Control -- An Integrated LTV-MPC Lateral Vehicle Dynamics Control: Simulation Results -- MIMO Model Predictive Control for Integral Gas Engines -- A Model Predictive Control Approach to Design a Parameterized Adaptive Cruise Control.

Automotive control has developed over the decades from an auxiliary te- nology to a key element without which the actual performances, emission, safety and consumption targets could not be met. Accordingly, automotive control has been increasing its authority and responsibility at the price of complexity and di?cult tuning. The progressive evolution has been mainly ledby speci?capplicationsandshorttermtargets,withthe consequencethat automotive control is to a very large extent more heuristic than systematic. Product requirements are still increasing and new challenges are coming from potentially huge markets like India and China, and against this ba- ground there is wide consensus both in the industry and academia that the current state is not satisfactory. Model-based control could be an approach to improve performance while reducing development and tuning times and possibly costs. Model predictive control is a kind of model-based control design approach which has experienced a growing success since the middle of the 1980s for ǣslowǥ complex plants, in particular of the chemical and process industry. In the last decades, severaldevelopments haveallowedusing these methods also for ǣfastǥsystemsandthis hassupporteda growinginterestinitsusealsofor automotive applications, with several promising results reported. Still there is no consensus on whether model predictive control with its high requi- ments on model quality and on computational power is a sensible choice for automotive control.

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