Development of Eco-driving Control System for Connected and Automated Hybrid Electric Vehicles

Development of Eco-driving Control System for Connected and Automated Hybrid Electric Vehicles
Author: Siyang Wang
Publisher:
Total Pages: 0
Release: 2020
Genre:
ISBN:

Hybrid electric vehicles (HEVs) were designed as a potential solution to the ever-increasing global problems of the energy crisis and global warming through flexibly utilizing both fuel and electrical energy. Besides, the emerging technologies of connected and automated vehicles (CAVs) have provided huge possibilities to push the boundaries of HEVs even further and thus have been extensively studied. In this study, a bi-level MPC-based eco-driving strategy for CAHEVs is proposed and designed to improve fuel economy, reduce exhaust emissions while ensuring driving safety under the most common driving scenarios. First, the HEV powertrain is modelled, and the real-time data sources are in the intelligent transportation system (ITS) are introduced. Next, the multi-objective problem is formulated with three goals, namely, driving safety, fuel economy and emission reduction. The simulation is carried out on a map with realistic driving conditions. The results demonstrate the effectiveness and robustness of the proposed eco-driving strategy for CAHEVs.

Energy-Efficient Driving of Road Vehicles

Energy-Efficient Driving of Road Vehicles
Author: Antonio Sciarretta
Publisher: Springer
Total Pages: 294
Release: 2019-08-01
Genre: Technology & Engineering
ISBN: 3030241270

This book elaborates the science and engineering basis for energy-efficient driving in conventional and autonomous cars. After covering the physics of energy-efficient motion in conventional, hybrid, and electric powertrains, the book chiefly focuses on the energy-saving potential of connected and automated vehicles. It reveals how being connected to other vehicles and the infrastructure enables the anticipation of upcoming driving-relevant factors, e.g. hills, curves, slow traffic, state of traffic signals, and movements of nearby vehicles. In turn, automation allows vehicles to adjust their motion more precisely in anticipation of upcoming events, and to save energy. Lastly, the energy-efficient motion of connected and automated vehicles could have a harmonizing effect on mixed traffic, leading to additional energy savings for neighboring vehicles. Building on classical methods of powertrain modeling, optimization, and optimal control, the book further develops the theory of energy-efficient driving. In addition, it presents numerous theoretical and applied case studies that highlight the real-world implications of the theory developed. The book is chiefly intended for undergraduate and graduate engineering students and industry practitioners with a background in mechanical, electrical, or automotive engineering, computer science or robotics.

Reinforcement Learning in Eco-driving for Connected and Automated Vehicles

Reinforcement Learning in Eco-driving for Connected and Automated Vehicles
Author: Zhaoxuan Zhu
Publisher:
Total Pages: 0
Release: 2021
Genre: Automated vehicles
ISBN:

Connected and Automated Vehicles (CAVs) can significantly improve transportation efficiency by taking advantage of advanced connectivity technologies. Meanwhile, the combination of CAVs and powertrain electrification, such as Hybrid Electric Vehicles (HEVs) and Plug-in Hybrid Electric Vehicles (PHEVs), offers greater potential to improve fuel economy due to the extra control flexibility compared to vehicles with a single power source. In this context, the eco-driving control optimization problem seeks to design the optimal speed and powertrain components usage profiles based upon the information received by advanced mapping or Vehicle-to-Everything (V2X) communications to minimize the energy consumed by the vehicle over a given itinerary. To overcome the real-time computational complexity and embrace the stochastic nature of the driving task, the application and extension of state-of-the-art (SOTA) Deep Reinforcement Learning (Deep RL, DRL) algorithms to the eco-driving problem for a mild-HEV is studied in this dissertation. For better training and a more comprehensive evaluation, an RL environment, consisting of a mild HEV powertrain and vehicle dynamics model and a large-scale microscopic traffic simulator, is developed. To benchmark the performance of the developed strategies, two causal controllers, namely a baseline strategy representing human drivers and a deterministic optimal-control-based strategy, and the non-causal wait-and-see solution are implemented. In the first RL application, the eco-driving problem is formulated as a Partially Observable Markov Decision Process, and a SOTA model-free DRL (MFDRL) algorithm, Proximal Policy Optimization with Long Short-term Memory as function approximator, is used. Evaluated over 100 trips randomly generated in the city of Columbus, OH, the MFDRL agent shows a 17% fuel economy improvement against the baseline strategy while keeping the average travel time comparable. While showing performance comparable to the optimal-control-based strategy, the actor of the MFDRL agent offers an explicit control policy that significantly reduces the onboard computation. Subsequently, a model-based DRL (MBDRL) algorithm, Safe Model-based Off-policy Reinforcement Learning (SMORL) is proposed. The algorithm addresses the following issues emerged from the MFDRL development: a) the cumbersome process necessary to design the rewarding mechanism, b) the lack of the constraint satisfaction and feasibility guarantee and c) the low sample efficiency. Specifically, SMORL consists of three key components, a massively parallelizable dynamic programming trajectory optimizer, a value function learned in an off-policy fashion and a learned safe set as a generative model. Evaluated under the same conditions, the SMORL agent shows a 21% reduction on the fuel consumption over the baseline and the dominant performance over the MFDRL agent and the deterministic optimal-control-based controller.

Next Generation Intelligent Driver-vehicle-infrastructure Cooperative System for Energy Efficient Driving in Connected Vehicle Environment

Next Generation Intelligent Driver-vehicle-infrastructure Cooperative System for Energy Efficient Driving in Connected Vehicle Environment
Author: Xuewei Qi
Publisher:
Total Pages: 214
Release: 2016
Genre: Automatic control
ISBN: 9781369656701

Transportation-related fossil fuel consumption and greenhouse gas emissions have received increasing public concern in recent years. To reduce energy consumption and mitigate the environmental impact of transportation activities, this dissertation research work aims at providing technical solutions by taking advantage of recent technology development in vehicle automation, vehicle connectivity and vehicle electrification. More specifically, a driver-vehicle-infrastructure cooperative framework for energy efficient driving of plug-in electric vehicles (PEVs) is proposed in this dissertation. Within this framework, this research improves energy efficiency of PEVs in the following ways: vehicle dynamics optimization and powertrain optimization, as well as co-optimization between them. For vehicle dynamics optimization, a connected ecodriving system has been designed for PEVs to optimize their speed profiles when travelling through signalized intersections, by receiving real-time signal phase and timing information obtained through wireless communications. The calculated optimal speed trajectory (in terms of energy efficiency) is provided to the driver through an in-vehicle display in real-time. The performance of this connected ecodriving system is implemented and evaluated at different automation levels: human driving without considering the driver error, human driving considering the driver error, and partial automated (longitudinal) driving. Numerical analysis with real-world driving data shows that there is 12%,14% and 21% potential energy savings that can be achieved by these proposed strategies respectively. For powertrain operation optimization, an evolutionary algorithm based power-split control system for plug-in hybrid electric vehicle has been designed and evaluated with real-world traffic data. The designed model is used to optimally control the power-split between two different power sources (i.e., battery and gas tank) by considering various traffic conditions to achieve the minimum fuel consumption when satisfying total power-demand. In addition, a reinforcement-learning based autonomous learning strategy is also proposed for learning the optimal power-split decision based on historical driving data. Approximately 14% and 12% energy savings are identified by these two different powertrain operation strategies respectively. For co-optimization of the vehicle dynamics and powertrain optimization, a bi-level optimization strategy has been designed and tested with real-world driving data to achieve augmented energy benefits from the compound effect of vehicle dynamics and powertrain operations optimization. An average of 29% improvement of fuel efficiency for the tested PHEV is identified by combining the vehicle dynamics and powertrain operation optimization. The main contribution of this dissertation research is the design and validation of a driver-vehicle-infrastructure framework for PEV energy efficient driving. To the best of our knowledge, this is one of the first efforts to systematically investigate the potential energy benefits of both vehicle dynamics and powertrain operation optimization as well as its compound effect with real-world driving data for PEVs. The designed connected eco-driving system and power-split control model are quite promising in improving PEV energy efficiency.

Intelligent Control of Connected Plug-in Hybrid Electric Vehicles

Intelligent Control of Connected Plug-in Hybrid Electric Vehicles
Author: Amir Taghavipour
Publisher: Springer
Total Pages: 202
Release: 2018-09-26
Genre: Technology & Engineering
ISBN: 3030003140

Intelligent Control of Connected Plug-in Hybrid Electric Vehicles presents the development of real-time intelligent control systems for plug-in hybrid electric vehicles, which involves control-oriented modelling, controller design, and performance evaluation. The controllers outlined in the book take advantage of advances in vehicle communications technologies, such as global positioning systems, intelligent transportation systems, geographic information systems, and other on-board sensors, in order to provide look-ahead trip data. The book contains simple and efficient models and fast optimization algorithms for the devised controllers to address the challenge of real-time implementation in the design of complex control systems. Using the look-ahead trip information, the authors of the book propose intelligent optimal model-based control systems to minimize the total energy cost, for both grid-derived electricity and fuel. The multilayer intelligent control system proposed consists of trip planning, an ecological cruise controller, and a route-based energy management system. An algorithm that is designed to take advantage of previewed trip information to optimize battery depletion profiles is presented in the book. Different control strategies are compared and ways in which connecting vehicles via vehicle-to-vehicle communication can improve system performance are detailed. Intelligent Control of Connected Plug-in Hybrid Electric Vehicles is a useful source of information for postgraduate students and researchers in academic institutions participating in automotive research activities. Engineers and designers working in research and development for automotive companies will also find this book of interest. Advances in Industrial Control reports and encourages the transfer of technology in control engineering. The rapid development of control technology has an impact on all areas of the control discipline. The series offers an opportunity for researchers to present an extended exposition of new work in all aspects of industrial control.

Eco-driving of Connected and Automated Vehicles (CAVs)

Eco-driving of Connected and Automated Vehicles (CAVs)
Author: Ozgenur Kavas Torris
Publisher:
Total Pages: 0
Release: 2022
Genre: Automated vehicles
ISBN:

In recent years, the trend in the automotive industry has been favoring the reduction of fuel consumption in vehicles with the help of new and emerging technologies. This drive stemmed from the developments in communication technologies for Connected and Autonomous Vehicles (CAV), such as Vehicle to Infrastructure (V2I), Vehicle to Vehicle (V2V) and Vehicle to Everything (V2X) communication. Coupled with automated driving capabilities of CAVs, a new and exciting era has started in the world of transportation as each transportation agent is becoming more and more connected. To keep up with the times, research in the academia and the industry has focused on utilizing vehicle connectivity for various purposes, one of the most significant being fuel savings. Motivated by this goal of fuel saving applications of Connected Vehicle (CV) technologies, the main focus and contribution of this dissertation is developing and evaluating a complete Eco-Driving strategy for CAVs. Eco-Driving is a term used to describe the energy efficient use of vehicles. In this dissertation, a complete and comprehensive Eco-Driving strategy for CAVs is studied, where multiple driving modes calculate speed profiles ideal for their own set of constraints simultaneously to save fuel as much as possible while a High Level (HL) controller ensures smooth transitions between the driving modes for Eco-Driving. The first step in making a CAV achieve Eco-Driving is to develop a route-dependent speed profile called Eco-Cruise that is fuel optimal. The methods explored to achieve this optimally fuel economic speed profile are Dynamic Programming (DP) and Pontryagin’s Minimum Principle (PMP). Using a generalized Matlab function that minimizes the fuel rate for a vehicle travelling on a certain route with route gradient, acceleration and deceleration limits, speed limits and traffic sign (traffic lights and STOP signs) locations as constraints, a DP based fuel optimal velocity profile is found. The ego CAV that is controlled by the automated driving system follows this Eco-Cruise speed profile as long as there is no preceding vehicle impeding its motion or upcoming traffic light or STOP sign ahead. When the ego CAV approaches a traffic light, then a V2I algorithm called Pass-at-Green (PaG) calculates a fuel-economic and Signal Phase and Timing (SPaT) dependent speed profile. When the ego CAV approaches a STOP sign, the eHorizon electronic horizon unit is used to get STOP sign location while the Eco-Stop algorithm calculates a fuel optimal Eco-Approach speed trajectory for the ego CAV, so that the ego vehicle smoothly comes to a complete stop at the STOP sign. When the ego CAV departs from the traffic light or STOP sign, then the Eco-Departure algorithm calculates a fuel optimal speed trajectory to smoothly accelerate to a higher speed for the ego CAV. Other than the interaction of the CAV with road infrastructure, there could also be other vehicles around the ego vehicle. When there is a preceding vehicle in front of the ego CAV, typically, an Adaptive Cruise Control (ACC) is used to follow the lead vehicle keeping a constant time gap. Lead vehicle acceleration that was received by the ego CAV through V2V can be utilized in Cooperative Adaptive Cruise Control (CACC) to follow the preceding vehicle better than the ACC. If the ego CAV is found to be erratic, then the Ecological Cooperative Adaptive Cruise Control (Eco-CACC) takes over and calculates a fuel efficient speed trajectory for car following. If the preceding vehicle acts too erratically or slows down too much, and the ego CAV has a chance to change its lane, then the Lane Change mode takes control and changes the lane. The default driving mode in all these scenarios is the Eco-Cruise mode, which is the optimal fuel economic and route-dependent solution acquired using DP. Unmanned Aerial Vehicles (UAVs) are part of Intelligent Transportation Systems (ITS) and can communicate with CAVs and other transportation agents. Whenever there are UAVs with communication capabilities around the ego CAV, information can be transferred between the UAV and CAV. As part of this communication capability, when the ego CAV approaches a bottleneck or a queue, information regarding the queue can be broadcast either from a Roadside Unit (RSU) or a Connected UAV (C-UAV) acting like an RSU with Dedicated Short Range Communication (DSRC). The queue information can be received by the On-Board-Unit (OBU), which is the vehicle communication unit using DSRC protocol in the ego CAV. Using the queue information, the Dynamic Speed Harmonization (DSH) model can be activated to take the main driver role for generating a smooth deceleration profile while the ego CAV approaches the queue. Once the queue is passed, the ego CAV goes back to the default Eco-Cruise mode. The elements of the proposed Eco-Driving method outlined above are first treated individually and then integrated in a holistic manner in this dissertation. The organization of this dissertation is as follows. Firstly, a summary is given on the topic of CAVs and various ways that connectivity is utilized in CAV research in Chapter 1 Introduction and Literature Review. Then, in Chapter 2 Modelling, Simulation and Testing Environment, details about the state-of-the-art simulation environment used for this dissertation are presented. Chapter 3 Scenario Development and Selection focuses on test route development procedure and the types of roadways tested in this work. Chapter 4 Fuel Economic Driving for a Single CAV with V2I in No Traffic explains the different models developed for fuel optimal speed trajectory calculation using roadway infrastructure. Chapter 5 Fuel Economic Driving for a CAV with V2V in Traffic gives details about the models developed for an ego CAV travelling among other connected vehicles. The Model-in-the-Loop (MIL) simulation results for the Eco-Driving algorithms developed for Chapter 4 and Chapter 5 are presented in Chapter 6. The Hardware-in-the-Loop (HIL) simulation results for the Eco-Driving algorithms in Chapter 4 and Chapter 5 are presented in Chapter 7. Chapter 8 shows results about testing the complete Eco-Driving strategy in a traffic simulator with realistic traffic flow. Chapter 9 touches on CAV and UAV communication and presents Dynamic Speed Harmonization (DSH) as a use case scenario. Chapter 10 Conclusion presents the results of this dissertation and draws conclusions about this work.

Deep Learning-based Eco-driving System for Battery Electric Vehicles

Deep Learning-based Eco-driving System for Battery Electric Vehicles
Author: Guoyuan Wu
Publisher:
Total Pages: 28
Release: 2019
Genre: Driver assistance systems
ISBN:

Eco-driving strategies based on connected and automated vehicles (CAV) technology, such as Eco-Approach and Departure (EAD), have attracted significant worldwide interest due to their potential to save energy and reduce tail-pipe emissions. In this project, the research team developed and tested a deep learning–based trajectory-planning algorithm (DLTPA) for EAD. The DLTPA has two processes: offline (training) and online (implementation), and it is composed of two major modules: 1) a solution feasibility checker that identifies whether there is a feasible trajectory subject to all the system constraints, e.g., maximum acceleration or deceleration; and 2) a regressor to predict the speed of the next time-step. Preliminary simulation with microscopic traffic modeling software PTV VISSIM showed that the proposed DLTPA can achieve the optimal solution in terms of energy savings and a greater balance of energy savings vs. computational efforts when compared to the baseline scenarios where no EAD is implemented and the optimal solution (in terms of energy savings) is provided by a graph-based trajectory planning algorithm.

Real-time Autonomous Cruise Control of Connected Plug-in Hybrid Electric Vehicles Under Uncertainty

Real-time Autonomous Cruise Control of Connected Plug-in Hybrid Electric Vehicles Under Uncertainty
Author: Bijan Sakhdari
Publisher:
Total Pages: 129
Release: 2018
Genre: Adaptive control systems
ISBN:

Advances in embedded digital computing and communication networks have enabled the development of automated driving systems. Autonomous cruise control (ACC) and cooperative ACC (CACC) systems are two popular types of these technologies, which can be implemented to enhance safety, traffic flow, driving comfort and energy economy. This PhD thesis develops robust and adaptive controllers for plug-in hybrid electric vehicles (PHEVs), with the Toyota Plug-in Prius as the baseline vehicle, in order to enable them to perform safe and robust car-following and platooning with improved vehicle performance. Three controllers are designed here to achieve three main goals. The first goal of this thesis is the development of a real-time Ecological ACC (Eco-ACC) system for PHEVs, that is robust to uncertainties. A novel adaptive tube-based nonlinear model predictive control (AT-NMPC) approach to the design of Eco-ACC systems is proposed. Through utilizing two separate models to define the constrained optimal control problem, this method takes into account uncertainties, modeling errors and delayed data in the design of the controller and guaranties robust constraint handling for the assumed uncertainty bounds. {In addition, it adapts to changes in order to improve the control performance when possible.} Furthermore, a Newton/GMRES fast solver is employed to implement the designed AT-NMPC in real-time. The second goal is the development of a real-time Ecological CACC (Eco-CACC) system that can simultaneously satisfy the frequency-domain and time-domain platooning criteria. A novel distributed reference governor (RG) approach to the constraint handling of vehicle platoons equipped with CACC is presented. RG sits behind the controlled string stable system and keeps the output inside the defined constraints. Furthermore, to improve the platoon's energy economy, a controller is presented for the leader's control using NMPC method, assuming it is a PHEV. The third objective of this thesis is the control of heterogeneous platoons using an adaptive control approach. A direct model reference adaptive controller (MRAC) is designed that enforces a string stable behavior on the vehicle platoon despite different dynamical models of the platoon members and the external disturbances acting on the systems. The proposed method estimates the controller coefficients on-line to adapt to the disturbances such as wind, changing road grade and also to different vehicle dynamic behaviors. The main purpose of all three controllers is to maintain the driving safety of connected vehicles in car-following and platooning while being real-time implementable. In addition, when there is a possibility for performance enhancement without sacrificing safety, ecological improvement is also considered. For each designed controller, Model-in-the-Loop (MIL) simulations and Hardware-in-the-Loop (HIL) experiments are performed using high-fidelity vehicle models in order to validate controllers' performance and ensure their real-time implementation capability.

Three Revolutions

Three Revolutions
Author: Daniel Sperling
Publisher: Island Press
Total Pages: 253
Release: 2018-03
Genre: Architecture
ISBN: 161091905X

Front Cover -- About Island Press -- Subscribe -- Title Page -- Copyright Page -- Contents -- Preface -- Acknowledgments -- 1. Will the Transportation Revolutions Improve Our Lives-- or Make Them Worse? -- 2. Electric Vehicles: Approaching the Tipping Point -- 3. Shared Mobility: The Potential of Ridehailing and Pooling -- 4. Vehicle Automation: Our Best Shot at a Transportation Do-Over? -- 5. Upgrading Transit for the Twenty-First Century -- 6. Bridging the Gap between Mobility Haves and Have-Nots -- 7. Remaking the Auto Industry -- 8. The Dark Horse: Will China Win the Electric, Automated, Shared Mobility Race? -- Epilogue -- Notes -- About the Contributors -- Index -- IP Board of Directors