DOI: 10.33915/etd.3828
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Intelligent Transportation Systems, Hybrid Electric Vehicles, Powertrain Control, Cooperative Adaptive Cruise Control, Model Predictive Control

Abstract: Information obtainable from Intelligent Transportation Systems (ITS) provides the possibility of improving the safety and efficiency of vehicles at different levels. In particular, such information has the potential to be utilized for prediction of driving conditions and traffic flow, which allows us to improve the performance of the control systems in different vehicular applications, such as Hybrid Electric Vehicles (HEVs) powertrain control and Cooperative Adaptive Cruise Control (CACC). In the first part o… Show more

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“…method in which a future time horizon was modelled to redefine the equivalence factor of traditional ECMS. The prediction horizon was a function of three parameters: estimated energy required in the prediction horizon, amount of energy recaptured through regenerative braking, and a charge and discharge cost factor [14], [15].…”
Section: Drive Cycle Predictionmentioning
confidence: 99%
“…method in which a future time horizon was modelled to redefine the equivalence factor of traditional ECMS. The prediction horizon was a function of three parameters: estimated energy required in the prediction horizon, amount of energy recaptured through regenerative braking, and a charge and discharge cost factor [14], [15].…”
Section: Drive Cycle Predictionmentioning
confidence: 99%