Litcius/Paper detail

A Data-Driven Spatio-Temporal Speed Prediction Framework for Energy Management of Connected Vehicles

Mohammad Reza Amini, Qiuhao Hu, Ashley Wiese, Ilya Kolmanovsky, Julia Buckland Seeds, Jing Sun

2022IEEE Transactions on Intelligent Transportation Systems30 citationsDOI

Abstract

We present an integrated spatio-temporal framework for multi-range traction power and speed prediction for connected vehicles (CVs). It combines data-driven and model-based strategies to enable CVs energy efficiency optimization. The proposed framework focuses on urban arterial corridors with signalized intersections, and leverages the historical and real-time data collected from CVs and infrastructure to predict location-specific traction loads (e.g. acceleration at intersections), and augment them with time-specific speed profiles (e.g., stop duration at intersections). A Bayesian network is developed to provide a long-term load prediction informed by probabilistic analysis of historical traffic data at intersections and between intersections. Moreover, a shockwave profile model is adopted for modeling the queuing process at intersections by leveraging vehicle-to-infrastructure (V2I) communications, providing a short-range prediction of the vehicle speed with an enhanced accuracy. The benefits of the proposed load prediction framework are demonstrated for energy management of connected hybrid electric vehicles (C-HEVs). By incorporating the predicted loads into a multi-horizon model predictive controller (MPC), integrated power and thermal management of light-duty C-HEVs is enabled over real-world driving cycles, demonstrating a near globally-optimal fuel consumption over the entire trip with a < 1% deviation from dynamic programming (DP) results.

Topics & Concepts

Computer scienceRange (aeronautics)Energy consumptionEnergy managementReal-time computingProbabilistic logicModel predictive controlEfficient energy useAccelerationFuel efficiencyEngineeringSimulationAutomotive engineeringEnergy (signal processing)Artificial intelligenceControl (management)MathematicsPhysicsElectrical engineeringClassical mechanicsAerospace engineeringStatisticsVehicle emissions and performanceTraffic Prediction and Management TechniquesTransportation Planning and Optimization