Real-Time Distributed Economic Model Predictive Control for Complete Vehicle Energy Management

In this paper, a real-time distributed economic model predictive control approach for complete vehicle energy management (CVEM) is presented using a receding control horizon in combination with a dual decomposition. The dual decomposition allows the CVEM optimization problem to be solved by solving...

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Main Authors: Constantijn Romijn, Tijs Donkers, John Kessels, Siep Weiland
Format: Article
Language:English
Published: MDPI AG 2017-07-01
Series:Energies
Subjects:
Online Access:https://www.mdpi.com/1996-1073/10/8/1096
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spelling doaj-def91a7159c94d5a89aaf28d365de91b2020-11-24T21:27:50ZengMDPI AGEnergies1996-10732017-07-01108109610.3390/en10081096en10081096Real-Time Distributed Economic Model Predictive Control for Complete Vehicle Energy ManagementConstantijn Romijn0Tijs Donkers1John Kessels2Siep Weiland3Department of Electrical Engineering, Eindhoven University of Technology, 5612 AZ Eindhoven, The NetherlandsDepartment of Electrical Engineering, Eindhoven University of Technology, 5612 AZ Eindhoven, The NetherlandsDAF Trucks NV, Vehicle Control Group, 5643 TW Eindhoven, The NetherlandsDepartment of Electrical Engineering, Eindhoven University of Technology, 5612 AZ Eindhoven, The NetherlandsIn this paper, a real-time distributed economic model predictive control approach for complete vehicle energy management (CVEM) is presented using a receding control horizon in combination with a dual decomposition. The dual decomposition allows the CVEM optimization problem to be solved by solving several smaller optimization problems. The receding horizon control problem is formulated with variable sample intervals, allowing for large prediction horizons with only a limited number of decision variables and constraints in the optimization problem. Furthermore, a novel on/off control concept for the control of the refrigerated semi-trailer, the air supply system and the climate control system is introduced. Simulation results on a low-fidelity vehicle model show that close to optimal fuel reduction performance can be achieved. The fuel reduction for the on/off controlled subsystems strongly depends on the number of switches allowed. By allowing up to 15-times more switches, a fuel reduction of 1.3% can be achieved. The approach is also validated on a high-fidelity vehicle model, for which the road slope is predicted by an e-horizon sensor, leading to a prediction of the propulsion power and engine speed. The prediction algorithm is demonstrated with measured ADASIS information on a public road around Eindhoven, which shows that accurate prediction of the propulsion power and engine speed is feasible when the vehicle follows the most probable path. A fuel reduction of up to 0.63% is achieved for the high-fidelity vehicle model.https://www.mdpi.com/1996-1073/10/8/1096energy managementhybrid vehiclesdistributed model predictive controldual decompositionauxiliaries
collection DOAJ
language English
format Article
sources DOAJ
author Constantijn Romijn
Tijs Donkers
John Kessels
Siep Weiland
spellingShingle Constantijn Romijn
Tijs Donkers
John Kessels
Siep Weiland
Real-Time Distributed Economic Model Predictive Control for Complete Vehicle Energy Management
Energies
energy management
hybrid vehicles
distributed model predictive control
dual decomposition
auxiliaries
author_facet Constantijn Romijn
Tijs Donkers
John Kessels
Siep Weiland
author_sort Constantijn Romijn
title Real-Time Distributed Economic Model Predictive Control for Complete Vehicle Energy Management
title_short Real-Time Distributed Economic Model Predictive Control for Complete Vehicle Energy Management
title_full Real-Time Distributed Economic Model Predictive Control for Complete Vehicle Energy Management
title_fullStr Real-Time Distributed Economic Model Predictive Control for Complete Vehicle Energy Management
title_full_unstemmed Real-Time Distributed Economic Model Predictive Control for Complete Vehicle Energy Management
title_sort real-time distributed economic model predictive control for complete vehicle energy management
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2017-07-01
description In this paper, a real-time distributed economic model predictive control approach for complete vehicle energy management (CVEM) is presented using a receding control horizon in combination with a dual decomposition. The dual decomposition allows the CVEM optimization problem to be solved by solving several smaller optimization problems. The receding horizon control problem is formulated with variable sample intervals, allowing for large prediction horizons with only a limited number of decision variables and constraints in the optimization problem. Furthermore, a novel on/off control concept for the control of the refrigerated semi-trailer, the air supply system and the climate control system is introduced. Simulation results on a low-fidelity vehicle model show that close to optimal fuel reduction performance can be achieved. The fuel reduction for the on/off controlled subsystems strongly depends on the number of switches allowed. By allowing up to 15-times more switches, a fuel reduction of 1.3% can be achieved. The approach is also validated on a high-fidelity vehicle model, for which the road slope is predicted by an e-horizon sensor, leading to a prediction of the propulsion power and engine speed. The prediction algorithm is demonstrated with measured ADASIS information on a public road around Eindhoven, which shows that accurate prediction of the propulsion power and engine speed is feasible when the vehicle follows the most probable path. A fuel reduction of up to 0.63% is achieved for the high-fidelity vehicle model.
topic energy management
hybrid vehicles
distributed model predictive control
dual decomposition
auxiliaries
url https://www.mdpi.com/1996-1073/10/8/1096
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AT tijsdonkers realtimedistributedeconomicmodelpredictivecontrolforcompletevehicleenergymanagement
AT johnkessels realtimedistributedeconomicmodelpredictivecontrolforcompletevehicleenergymanagement
AT siepweiland realtimedistributedeconomicmodelpredictivecontrolforcompletevehicleenergymanagement
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