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Please use this identifier to cite or link to this item: http://hdl.handle.net/11375/24847
Title: ASEMS: Autonomous Specific Energy Management Strategy
Authors: Amirfarhangi Bonab, Saeed
Advisor: Emadi, Ali
Department: Mechanical Engineering
Keywords: Autonomous Vehicle;Hybrid Electric Vehicle;Autonomous Driving;Energy Management Strategy;Self-driving car;Optimization;Convex Optimization;Electrification;Sustainability;Optimal Control;Model Predictive Control;Receding Horizon;Fuel Economy;Path Planning;Trajectory Planning;Powertrain
Publication Date: 2019
Abstract: This thesis addresses the problem of energy management of a hybrid electric power unit for an autonomous vehicle. We introduce, evaluate, and discuss the idea of autonomous-specific energy management strategy. This method is an optimization-based strategy which improves the powertrain fuel economy by exploiting motion planning data. First, to build a firm base for further evaluations, we will develop a high-fidelity system-level model for our case study using MATLAB/Simulink. This model mostly concerns about energy-related aspects of the powertrain and the vehicle. We will derive and implement the equations for each of the model subsystems. We derive model parameters using available data in the literature or online. Evaluation of the developed model shows acceptable conformity with the actual dynamometer data. We will use this model to replace the built-in rule-based logic with the proposed strategy and assess the performance.\par Second, since we are considering an optimization-based approach, we will develop a novel convex representation of the vehicle and powertrain model. This translates to reformulating the model equations using convex functions. Consequently, we will express the fuel-efficient energy management problem as the convex optimization problem. We will solve the optimization problem using dedicated numerical solvers. Extracting the control inputs using this approach and applying them on the high-fidelity model provides similar results to dynamic programming in terms of fuel consumption but in substantially less amount of time. This will act as a pivot for the subsequent real-time analysis.\par Third, we will perform a proof-of-concept for the autonomous-specific energy management strategy. We implement an optimization-based path and trajectory planning for a vehicle in the simplified driving scenario of a racing track. Accordingly, we use motion planning data to obtain the energy management strategy by solving an optimization problem. We will let the vehicle to travel around the circuit with the ability to perceive and plan up to an observable horizon using the receding horizon approach. Developed approach for energy management strategy shows a substantial reduction in the fuel consumption of the high-fidelity model, compared to the rule-based controller.
URI: http://hdl.handle.net/11375/24847
Appears in Collections:Open Access Dissertations and Theses

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