To successfully implement platooning of connected autonomous electric vehicles (CAEVs), it is necessary to actually cope with model uncertainties and unavoidable external disturbances. Indeed, in real-world driving scenarios, model mismatches and uncertainties due to variable conditions can severely impair the robustness of desired formation trajectory tracking, impacting the safety level, and also deteriorating the energy management. To tackle and solve this issue, we propose a framework where Long Short-Term Memory (LSTM) networks along with the Comprehensive Power-based Electric Vehicle Consumption Model (CPEM) are embedded into a Distributed Nonlinear Model Predictive Control (DNMPC) algorithm, in order to achieve the optimal ecological trajectory tracking. The accuracy of LSTM nets has been evaluated by leveraging the high-fidelity Mixed Traffic Simulator (MiTraS) co-simulation platform, where the performance of the CAEVs are analyzed in different realistic traffic scenarios and operative conditions. The performance of the proposed deep learning-based DNMPC controller, as well as its advantages w.r.t. model-based predictive approaches, are evaluated via numerical simulations. The results show that the proposed distributed control framework is effective in driving platoon formation towards the leader reference behaviour while ensuring an ecological and safe policy, even in the presence of modelling errors and unknown/unmodeled dynamics.
LSTM-Based Predictive Control for Connected Autonomous Electric Vehicles Platoons / Basile, Giacomo; Lui, Dario Giuseppe; Napoletano, Elena; Petrillo, Alberto; Santini, Stefania. - (2024), pp. 1-6. ( 2024 IEEE International Conference on Electrical Systems for Aircraft, Railway, Ship Propulsion and Road Vehicles and International Transportation Electrification Conference, ESARS-ITEC 2024 ita 2024) [10.1109/esars-itec60450.2024.10819932].
LSTM-Based Predictive Control for Connected Autonomous Electric Vehicles Platoons
Basile, Giacomo;Lui, Dario Giuseppe;Napoletano, Elena;Petrillo, Alberto
;Santini, Stefania
2024
Abstract
To successfully implement platooning of connected autonomous electric vehicles (CAEVs), it is necessary to actually cope with model uncertainties and unavoidable external disturbances. Indeed, in real-world driving scenarios, model mismatches and uncertainties due to variable conditions can severely impair the robustness of desired formation trajectory tracking, impacting the safety level, and also deteriorating the energy management. To tackle and solve this issue, we propose a framework where Long Short-Term Memory (LSTM) networks along with the Comprehensive Power-based Electric Vehicle Consumption Model (CPEM) are embedded into a Distributed Nonlinear Model Predictive Control (DNMPC) algorithm, in order to achieve the optimal ecological trajectory tracking. The accuracy of LSTM nets has been evaluated by leveraging the high-fidelity Mixed Traffic Simulator (MiTraS) co-simulation platform, where the performance of the CAEVs are analyzed in different realistic traffic scenarios and operative conditions. The performance of the proposed deep learning-based DNMPC controller, as well as its advantages w.r.t. model-based predictive approaches, are evaluated via numerical simulations. The results show that the proposed distributed control framework is effective in driving platoon formation towards the leader reference behaviour while ensuring an ecological and safe policy, even in the presence of modelling errors and unknown/unmodeled dynamics.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


