A Machine Learning Approach for the Smart Charging of Electric Vehicles

A Machine Learning Approach for the Smart Charging of Electric Vehicles PDF Author: Karol Lina Lopez
Publisher:
ISBN:
Category :
Languages : fr
Pages : 119

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Book Description
Avec l'adoption croissante des véhicules électriques, il y a un intérêt pour utiliser des tarifs dynamiques dont le prix dépend de la demande actuelle, pour encourager les utilisateurs à recharger leurs véhicules en période de faible demande évitant les pics d'électricité pouvant dépasser la capacité installée. Le problème que devaient affronter les utilisateurs de véhicules électriques est qu'ils doivent s'assurer que l'énergie électrique présente dans les batteries est suffisante pour les déplacements et que les périodes de recharge correspondent à des périodes où le prix de l'électricité est bas. La plupart des approches actuelles de planification de recharge supposent une connaissance parfaite des futurs prix de l'électricité et de l'utilisation du véhicule, ce qui nuit à leur applicabilité dans la pratique. Cette thèse considère la modélisation de la recharge intelligente des véhicules électriques pour déterminer, lors des sessions de connexion, les moments où le véhicule doit se recharger afin de minimiser le coût payé pour l'énergie de ses déplacements. La thèse comporte quatre principales contributions: 1) Modèle de recharge optimale des véhicules électriques pour générer une série de décisions en utilisant la connaissance a priori du prix de l'électricité et de l'énergie utilisée, en utilisant la programmation dynamique comme méthode d'optimisation. 2) Création d'un modèle de système d'information incluant des variables connexes au modèle de recharge des véhicules électriques dans un cadre guidé par des données. 3) Méthode de sélection des données pertinentes utilisant la stratification de données pouvant réduire significativement le temps requis pour entraîner les modèles de prévision avec des résultats proches de ceux obtenus en utilisant l'ensemble de données complet. 4) Modèle de classification en ligne qui permet de déterminer s'il faut charger ou non le véhicule à l'aide de modèles d'apprentissage automatique qui peuvent générer, en temps réel, une décision de recharge quasi-optimale sans tenir compte d'une connaissance de l'information future. Nous démontrons comment la combinaison d'une méthode d'optimisation hors ligne, telle que la programmation dynamique, avec des modèles d'apprentissage automatique et un système d'information adéquat peut fournir une solution très proche de l'optimum global, sans perte d'applicabilité dans le monde réel. De plus, la polyvalence de l'approche proposée permet d'envisager l'intégration d'un plus grand nombre de variables à l'entrée du modèle, ainsi que d'autres actions comme par exemple fournir d'énergie au réseau électrique pour aider à réduire les pics de demande ce qui pourrait être utile dans un contexte de vehicle-to-grid (V2G).

A Machine Learning Approach for the Smart Charging of Electric Vehicles

A Machine Learning Approach for the Smart Charging of Electric Vehicles PDF Author: Karol Lina Lopez
Publisher:
ISBN:
Category :
Languages : fr
Pages : 119

Get Book Here

Book Description
Avec l'adoption croissante des véhicules électriques, il y a un intérêt pour utiliser des tarifs dynamiques dont le prix dépend de la demande actuelle, pour encourager les utilisateurs à recharger leurs véhicules en période de faible demande évitant les pics d'électricité pouvant dépasser la capacité installée. Le problème que devaient affronter les utilisateurs de véhicules électriques est qu'ils doivent s'assurer que l'énergie électrique présente dans les batteries est suffisante pour les déplacements et que les périodes de recharge correspondent à des périodes où le prix de l'électricité est bas. La plupart des approches actuelles de planification de recharge supposent une connaissance parfaite des futurs prix de l'électricité et de l'utilisation du véhicule, ce qui nuit à leur applicabilité dans la pratique. Cette thèse considère la modélisation de la recharge intelligente des véhicules électriques pour déterminer, lors des sessions de connexion, les moments où le véhicule doit se recharger afin de minimiser le coût payé pour l'énergie de ses déplacements. La thèse comporte quatre principales contributions: 1) Modèle de recharge optimale des véhicules électriques pour générer une série de décisions en utilisant la connaissance a priori du prix de l'électricité et de l'énergie utilisée, en utilisant la programmation dynamique comme méthode d'optimisation. 2) Création d'un modèle de système d'information incluant des variables connexes au modèle de recharge des véhicules électriques dans un cadre guidé par des données. 3) Méthode de sélection des données pertinentes utilisant la stratification de données pouvant réduire significativement le temps requis pour entraîner les modèles de prévision avec des résultats proches de ceux obtenus en utilisant l'ensemble de données complet. 4) Modèle de classification en ligne qui permet de déterminer s'il faut charger ou non le véhicule à l'aide de modèles d'apprentissage automatique qui peuvent générer, en temps réel, une décision de recharge quasi-optimale sans tenir compte d'une connaissance de l'information future. Nous démontrons comment la combinaison d'une méthode d'optimisation hors ligne, telle que la programmation dynamique, avec des modèles d'apprentissage automatique et un système d'information adéquat peut fournir une solution très proche de l'optimum global, sans perte d'applicabilité dans le monde réel. De plus, la polyvalence de l'approche proposée permet d'envisager l'intégration d'un plus grand nombre de variables à l'entrée du modèle, ainsi que d'autres actions comme par exemple fournir d'énergie au réseau électrique pour aider à réduire les pics de demande ce qui pourrait être utile dans un contexte de vehicle-to-grid (V2G).

AI Techniques for Renewable Source Integration and Battery Charging Methods in Electric Vehicle Applications

AI Techniques for Renewable Source Integration and Battery Charging Methods in Electric Vehicle Applications PDF Author: Angalaeswari, S.
Publisher: IGI Global
ISBN: 1668488183
Category : Technology & Engineering
Languages : en
Pages : 308

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Book Description
Artificial intelligence techniques applied in the power system sector make the prediction of renewable power source generation and demand more efficient and effective. Additionally, since renewable sources are intermittent in nature, it is necessary to predict and analyze the data of input sources. Hence, further study on the prediction and data analysis of renewable energy sources for sustainable development is required. AI Techniques for Renewable Source Integration and Battery Charging Methods in Electric Vehicle Applications focuses on artificial intelligence techniques for the evolving power system field, electric vehicle market, energy storage elements, and renewable energy source integration as distributed generators. Covering key topics such as deep learning, artificial intelligence, and smart solar energy, this premier reference source is ideal for environmentalists, computer scientists, industry professionals, researchers, academicians, scholars, practitioners, instructors, and students.

Smart Electric and Hybrid Vehicles

Smart Electric and Hybrid Vehicles PDF Author: Ajay Kumar
Publisher: CRC Press
ISBN: 1040099440
Category : Technology & Engineering
Languages : en
Pages : 213

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Book Description
In this book, recent developments, the future outlook, and advanced and analytical modeling techniques of smart electric and hybrid vehicles are explained with examples backed by experimental and numerical data. It also discusses the integration of newer developments like digital twin, artificial intelligence, nature-inspired algorithms, Internet of Things, and the role of Industry 4.0 in advancements in vehicle engineering. It compiles overall aspects of advancements in smart electric and hybrid vehicles by bringing the latest research and development by comprehensive range of mathematical, numerical, and simulation modeling, and management techniques to strengthen the engineering science and technological developments for the future. Features: • This book focuses on contemporary aspects of smart electric and hybrid vehicles techniques for new means and models for green environment. • Discusses the role of artificial intelligence, machine learning, and machine vision tools in smart electric and hybrid vehicles. • Presents design and analysis of charging stations and their sustainability roadmap for smart electric vehicles. • Highlights the cyber and functional security of intelligent and hybrid vehicles. • Explains diagnostics, prognostics, reliability, and durability issues in smart electric and hybrid vehicles. • Covers the Internet of Things-based battery and charging management approach and effect of voltage drop in charging capacity of smart electric vehicles. It is primarily written for senior undergraduates, graduate students, and academic researchers in the fields of electrical engineering, electronics and communication engineering, computer engineering, and automotive engineering.

Artificial Intelligence Enabled Computational Methods for Smart Grid Forecast and Dispatch

Artificial Intelligence Enabled Computational Methods for Smart Grid Forecast and Dispatch PDF Author: Yuanzheng Li
Publisher: Springer Nature
ISBN: 9819907993
Category : Technology & Engineering
Languages : en
Pages : 271

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Book Description
With the increasing penetration of renewable energy and distributed energy resources, smart grid is facing great challenges, which could be divided into two categories. On the one hand, the endogenous uncertainties of renewable energy and electricity load lead to great difficulties in smart grid forecast. On the other hand, massive electric devices as well as their complex constraint relationships bring about significant difficulties in smart grid dispatch. Owe to the rapid development of artificial intelligence in recent years, several artificial intelligence enabled computational methods have been successfully applied in the smart grid and achieved good performances. Therefore, this book is concerned with the research on the key issues of artificial intelligence enabled computational methods for smart grid forecast and dispatch, which consist of three main parts. (1) Introduction for smart grid forecast and dispatch, in inclusion of reviewing previous contribution of various research methods as well as their drawbacks to analyze characteristics of smart grid forecast and dispatch. (2) Artificial intelligence enabled computational methods for smart grid forecast problems, which are devoted to present the recent approaches of deep learning and machine learning as well as their successful applications in smart grid forecast. (3) Artificial intelligence enabled computational methods for smart grid dispatch problems, consisting of edge-cutting intelligent decision-making approaches, which help determine the optimal solution of smart grid dispatch. The book is useful for university researchers, engineers, and graduate students in electrical engineering and computer science who wish to learn the core principles, methods, algorithms, and applications of artificial intelligence enabled computational methods.

Electric Vehicle Integration via Smart Charging

Electric Vehicle Integration via Smart Charging PDF Author: Vahid Vahidinasab
Publisher: Springer Nature
ISBN: 3031059093
Category : Technology & Engineering
Languages : en
Pages : 250

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Book Description
This book brings together important new contributions covering electric vehicle smart charging (EVSC) from a multidisciplinary group of global experts, providing a comprehensive look at EVSC and its role in meeting long-term goals for decarbonization of electricity generation and transportation. This multidisciplinary reference presents practical aspects and approaches to the technology, along with evidence from its applications to real-world energy systems. Electric Vehicle Integration via Smart Charging is suitable for practitioners and industry stakeholders working on EVSC, as well as researchers and developers from different branches of engineering, energy, transportation, economic, and operation research fields.

Reinforcement Learning-Enabled Intelligent Energy Management for Hybrid Electric Vehicles

Reinforcement Learning-Enabled Intelligent Energy Management for Hybrid Electric Vehicles PDF Author: Teng Liu
Publisher: Morgan & Claypool Publishers
ISBN: 1681736195
Category : Technology & Engineering
Languages : en
Pages : 99

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Book Description
Powertrain electrification, fuel decarburization, and energy diversification are techniques that are spreading all over the world, leading to cleaner and more efficient vehicles. Hybrid electric vehicles (HEVs) are considered a promising technology today to address growing air pollution and energy deprivation. To realize these gains and still maintain good performance, it is critical for HEVs to have sophisticated energy management systems. Supervised by such a system, HEVs could operate in different modes, such as full electric mode and power split mode. Hence, researching and constructing advanced energy management strategies (EMSs) is important for HEVs performance. There are a few books about rule- and optimization-based approaches for formulating energy management systems. Most of them concern traditional techniques and their efforts focus on searching for optimal control policies offline. There is still much room to introduce learning-enabled energy management systems founded in artificial intelligence and their real-time evaluation and application. In this book, a series hybrid electric vehicle was considered as the powertrain model, to describe and analyze a reinforcement learning (RL)-enabled intelligent energy management system. The proposed system can not only integrate predictive road information but also achieve online learning and updating. Detailed powertrain modeling, predictive algorithms, and online updating technology are involved, and evaluation and verification of the presented energy management system is conducted and executed.

Smart Charging Solutions for Hybrid and Electric Vehicles

Smart Charging Solutions for Hybrid and Electric Vehicles PDF Author: Sulabh Sachan
Publisher: John Wiley & Sons
ISBN: 1119768950
Category : Technology & Engineering
Languages : en
Pages : 468

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Book Description
SMART CHARGING SOLUTIONS The most comprehensive and up-to-date study of smart charging solutions for hybrid and electric vehicles for engineers, scientists, students, and other professionals. As our dependence on fossil fuels continues to wane all over the world, demand for dependable and economically feasible energy sources continues to grow. As environmental regulations become more stringent, energy production is relying more and more heavily on locally available renewable resources. Furthermore, fuel consumption and emissions are facilitating the transition to sustainable transportation. The market for electric vehicles (EVs) has been increasing steadily over the past few years throughout the world. With the increasing popularity of EVs, a competitive market between charging stations (CSS) to attract more EVs is expected. This outstanding new volume is a resource for engineers, researchers, and practitioners interested in getting acquainted with smart charging for electric vehicles technologies. It includes many chapters dealing with the state-of-the-art studies on EV smart charging along with charging infrastructure. Whether for the veteran engineer or student, this is a must-have volume for any library. Smart Charging Solutions for Hybrid and Electric Vehicles: Presents the state of the art of smart charging for hybrid and electric vehicles, from a technological point of view Focuses on optimization and prospective solutions for practical problems Covers the most important recent developmental technologies related to renewable energy, to keep the engineer up to date and well informed Includes economic considerations, such as business models and price structures Covers standards and regulatory frameworks for smart charging solutions

Proceedings of 2023 7th Chinese Conference on Swarm Intelligence and Cooperative Control

Proceedings of 2023 7th Chinese Conference on Swarm Intelligence and Cooperative Control PDF Author: Qing Wang
Publisher: Springer Nature
ISBN: 9819733286
Category :
Languages : en
Pages : 725

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Book Description


Artificial Intelligence-Empowered Modern Electric Vehicles in Smart Grid Systems

Artificial Intelligence-Empowered Modern Electric Vehicles in Smart Grid Systems PDF Author: Aparna Kumari
Publisher: Elsevier
ISBN: 0443238154
Category : Technology & Engineering
Languages : en
Pages : 552

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Book Description
Artificial Intelligence-Empowered Modern Electric Vehicles in Smart Grid Systems: Fundamentals, Technologies, and Solutions is an essential reference for energy researchers, graduate students and engineers who aim to understand the opportunities offered by artificial intelligence for the integration of electric vehicles into smart grids. This book begins by building foundational knowledge for the reader, covering the essentials of artificial intelligence and its applications for electric vehicles in a clear and holistic manner. Next, it breaks down two essential areas of application in more detail: energy management (from to energy harvesting to demand response and complex forecasting), and market strategies (including peer-to-peer, vehicle-to-vehicle, and vehicle-to-everything trading, plus the cyber-security implications). A final part provides detailed case studies and close consideration of challenges, including code and data sets for replication of techniques. Providing a clear pathway from fundamentals to practical implementation, Artificial Intelligence-Empowered Modern Electric Vehicles in Smart Grid Systems will provide multidisciplinary guidance for implementing this cutting-edge technology in the energy systems of the future. - Supports fundamental understanding of artificial intelligence and its opportunities for energy system specialists - Collects the real-world experiences of global experts - Enables practical implementation of artificial intelligence strategies that support renewable energy integration across energy systems, markets, and grids

The Home of the Future

The Home of the Future PDF Author: Sinan Küfeoğlu
Publisher: Springer Nature
ISBN: 3030750930
Category : Science
Languages : en
Pages : 258

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Book Description
This book presents an in-depth study to show that a sustainable future urban life is possible. To build a safer and more sustainable future, as humankind, we would like to use more renewable energy, increase energy efficiency, reduce our carbon and water footprints in all economic sectors. The increasing population and humans’ ever-increasing demand for consumption pose another question whether the world’s resources are sufficient for present and future generations. Fair access to water, energy, and food is the objective for all. In line with the United Nations Sustainable Development Goals, scientists, researchers, engineers, and policymakers worldwide are working hard to achieve these objectives. To answer all these challenges, we would like to introduce the core of Smart Cities of the future, the building block of the future’s urban life: Open Digital Innovation Hub (ODIH). ODIH will serve as the ‘Home of the Future’, a fully digitalised and smart, self-sustaining building that answers all the motivation we highlight here. In ODIH, we introduce a living space that produces its water, energy, and food by minimising carbon and water footprints thanks to the Internet of Things, Artificial Intelligence, and Blockchain technologies. It will also serve as an open innovation environment for start-ups and entrepreneurs who wish to integrate their solutions into the infrastructure of ODIH and test those in real-time. We believe this will be a true open innovation test-bed for new business models.