Reinforcement Learning Based Strategies for Adaptive Wireless Sensor Network Management

Reinforcement Learning Based Strategies for Adaptive Wireless Sensor Network Management PDF Author: Kunalbhai Shah
Publisher:
ISBN:
Category : Reinforcement learning
Languages : en
Pages :

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Book Description
In wireless sensor networks (WSN), resource-constrained nodes are expected to operate in highly dynamic and often unattended environments. WSN applications need to cope with such dynamicity and uncertainty intrinsic in sensor networks, while simultaneously trying to achieve efficient resource utilization. A middleware framework with support for autonomous, adaptive and distributed sensor management, can simplify development of such WSN applications. We present a reinforcement learning based WSN middleware framework to enable autonomous and adaptive applications with support for efficient resource management. The uniqueness of our framework lies in using a bottom-up approach where each sensor node is responsible for its resource allocation/task selection while ensuring optimization of system-wide parameters like total energy usage, network lifetime etc. The framework allows creation of a distributed and scalable system while meeting applications' goals. In this dissertation, a Q-learning based scheme called DIRL (Distributed Independent Reinforcement Learning) is presented first. DIRL learns the utility of performing various tasks over time with mostly local information at nodes. DIRL uses these utility values along with application constraints for task management subject to optimal energy usage. DIRL scheme is extended to create a two-tier reinforcement learning based framework consisting of micro-learning and macro-learning. Microlearning enables individual sensor nodes to self-schedule their tasks using local information allowing for a real-time adaptation as in DIRL. Macro-learning governs the micro-learners by setting their utility functions in order to steer the system towards applications' optimization goal (e.g. maximize network lifetime etc). The effectiveness of our framework is exemplified by designing a tracking/surveillance application on top of it. Finally, results of simulation studies are presented that compare performance of our scheme against other existing approaches. In general for applications requiring autonomous adaptation, our two-tier reinforcement learning based scheme on average is about 50% more efficient than micro-learning alone and many-fold more efficient than traditional resource management schemes like static scheduling, while maintaining necessary accuracy/performance. Efficient data collection in sparse WSNs by special nodes called Mobile Data Collectors (MDCs) that visit sensor nodes is investigated. As contact times are not known a priori and in order to minimize energy consumption, the discovery of an incoming MDC by the static sensor node is a critical task. Discovery is challenging as MDCs participating in various applications exhibit different mobility patterns and hence require unique design of a discovery strategy for each application. In this context, an adaptive discovery strategy is proposed that exploits the DIRL framework and can be effectively applied to various applications while minimizing energy consumption. The principal idea is to learn the MDC's arrival pattern and tune the sensor node's duty cycle accordingly. Through extensive simulation analysis, the energy efficiency and effectiveness of the proposed framework is demonstrated. Finally, design and evaluation of a complete and generalized middleware framework called DReL is presented with focus on distributed sensor management on top of our multi-layer reinforcement learning scheme. DReL incorporates mechanisms and communication paradigms for task, data and reward distributions. DReL provides an easy-to-use interface to application developers for creating customized applications with specific QoS and optimization requirements. Adequacy and efficiency of DReL is shown by developing few sample applications on top of it and evaluating those applications' performance.

Reinforcement Learning Based Strategies for Adaptive Wireless Sensor Network Management

Reinforcement Learning Based Strategies for Adaptive Wireless Sensor Network Management PDF Author: Kunalbhai Shah
Publisher:
ISBN:
Category : Reinforcement learning
Languages : en
Pages :

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Book Description
In wireless sensor networks (WSN), resource-constrained nodes are expected to operate in highly dynamic and often unattended environments. WSN applications need to cope with such dynamicity and uncertainty intrinsic in sensor networks, while simultaneously trying to achieve efficient resource utilization. A middleware framework with support for autonomous, adaptive and distributed sensor management, can simplify development of such WSN applications. We present a reinforcement learning based WSN middleware framework to enable autonomous and adaptive applications with support for efficient resource management. The uniqueness of our framework lies in using a bottom-up approach where each sensor node is responsible for its resource allocation/task selection while ensuring optimization of system-wide parameters like total energy usage, network lifetime etc. The framework allows creation of a distributed and scalable system while meeting applications' goals. In this dissertation, a Q-learning based scheme called DIRL (Distributed Independent Reinforcement Learning) is presented first. DIRL learns the utility of performing various tasks over time with mostly local information at nodes. DIRL uses these utility values along with application constraints for task management subject to optimal energy usage. DIRL scheme is extended to create a two-tier reinforcement learning based framework consisting of micro-learning and macro-learning. Microlearning enables individual sensor nodes to self-schedule their tasks using local information allowing for a real-time adaptation as in DIRL. Macro-learning governs the micro-learners by setting their utility functions in order to steer the system towards applications' optimization goal (e.g. maximize network lifetime etc). The effectiveness of our framework is exemplified by designing a tracking/surveillance application on top of it. Finally, results of simulation studies are presented that compare performance of our scheme against other existing approaches. In general for applications requiring autonomous adaptation, our two-tier reinforcement learning based scheme on average is about 50% more efficient than micro-learning alone and many-fold more efficient than traditional resource management schemes like static scheduling, while maintaining necessary accuracy/performance. Efficient data collection in sparse WSNs by special nodes called Mobile Data Collectors (MDCs) that visit sensor nodes is investigated. As contact times are not known a priori and in order to minimize energy consumption, the discovery of an incoming MDC by the static sensor node is a critical task. Discovery is challenging as MDCs participating in various applications exhibit different mobility patterns and hence require unique design of a discovery strategy for each application. In this context, an adaptive discovery strategy is proposed that exploits the DIRL framework and can be effectively applied to various applications while minimizing energy consumption. The principal idea is to learn the MDC's arrival pattern and tune the sensor node's duty cycle accordingly. Through extensive simulation analysis, the energy efficiency and effectiveness of the proposed framework is demonstrated. Finally, design and evaluation of a complete and generalized middleware framework called DReL is presented with focus on distributed sensor management on top of our multi-layer reinforcement learning scheme. DReL incorporates mechanisms and communication paradigms for task, data and reward distributions. DReL provides an easy-to-use interface to application developers for creating customized applications with specific QoS and optimization requirements. Adequacy and efficiency of DReL is shown by developing few sample applications on top of it and evaluating those applications' performance.

Deep Learning Strategies for Security Enhancement in Wireless Sensor Networks

Deep Learning Strategies for Security Enhancement in Wireless Sensor Networks PDF Author: Sagayam, K. Martin
Publisher: IGI Global
ISBN: 1799850692
Category : Computers
Languages : en
Pages : 405

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Book Description
Wireless sensor networks have gained significant attention industrially and academically due to their wide range of uses in various fields. Because of their vast amount of applications, wireless sensor networks are vulnerable to a variety of security attacks. The protection of wireless sensor networks remains a challenge due to their resource-constrained nature, which is why researchers have begun applying several branches of artificial intelligence to advance the security of these networks. Research is needed on the development of security practices in wireless sensor networks by using smart technologies. Deep Learning Strategies for Security Enhancement in Wireless Sensor Networks provides emerging research exploring the theoretical and practical advancements of security protocols in wireless sensor networks using artificial intelligence-based techniques. Featuring coverage on a broad range of topics such as clustering protocols, intrusion detection, and energy harvesting, this book is ideally designed for researchers, developers, IT professionals, educators, policymakers, practitioners, scientists, theorists, engineers, academicians, and students seeking current research on integrating intelligent techniques into sensor networks for more reliable security practices.

2020 7th International Conference on Information Science and Control Engineering (ICISCE)

2020 7th International Conference on Information Science and Control Engineering (ICISCE) PDF Author: IEEE Staff
Publisher:
ISBN: 9781728164076
Category :
Languages : en
Pages :

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Book Description
The scope of the conference includes, but not limited to Algorithms, AI, Cloud Computing & Big Data, Computer Vision, Control Theory and Control Engineering, Database Technology and Data Warehousing, Deep Learning, Distributed and Parallel Computing, Fuzzy System, Genetic Algorithms, Information Retrieval, Intelligent Control, Robotics, Machine Learning, Machine Translation, Neural Networks, Rough Set, System Engineering Theory and Practice, Video & Image Processing, etc

Algorithms and Protocols for Wireless Sensor Networks

Algorithms and Protocols for Wireless Sensor Networks PDF Author: Azzedine Boukerche
Publisher: John Wiley & Sons
ISBN: 0470396350
Category : Technology & Engineering
Languages : en
Pages : 566

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Book Description
A one-stop resource for the use of algorithms and protocols in wireless sensor networks From an established international researcher in the field, this edited volume provides readers with comprehensive coverage of the fundamental algorithms and protocols for wireless sensor networks. It identifies the research that needs to be conducted on a number of levels to design and assess the deployment of wireless sensor networks, and provides an in-depth analysis of the development of the next generation of heterogeneous wireless sensor networks. Divided into nineteen succinct chapters, the book covers: mobility management and resource allocation algorithms; communication models; energy and power consumption algorithms; performance modeling and simulation; authentication and reputation mechanisms; algorithms for wireless sensor and mesh networks; and algorithm methods for pervasive and ubiquitous computing; among other topics. Complete with a set of challenging exercises, this book is a valuable resource for electrical engineers, computer engineers, network engineers, and computer science specialists. Useful for instructors and students alike, Algorithms and Protocols for Wireless Sensor Networks is an ideal textbook for advanced undergraduate and graduate courses in computer science, electrical engineering,and network engineering.

Research Symposium on Data Analytics, Machine Learning and Artificial Intelligence (DAMLAI-2024)

Research Symposium on Data Analytics, Machine Learning and Artificial Intelligence (DAMLAI-2024) PDF Author: Prof. (Dr.) Shailesh
Publisher: Allied Publishers
ISBN: 9389934990
Category : Computers
Languages : en
Pages : 90

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Book Description
This proceedings of Symposium on DAMLAI–2024, jointly organized by GTU – Ahmedabad and ISI – Kolkata, includes extended abstracts of research problems under study, by the research scholars of GTU, along with the proposed solution and primary results. These problems encompass blood glucose estimation, state of human minds during the meditation, underwater wireless sensor networks, automatic analog circuit environment, image steganography, employability of the students, reward-based crowdfunding, flood hazard, prediction of lung cancer, cloud computing security and wireless networked control systems. The book also contains various use cases, new algorithms, novel solutions of real-time problems based on AI, ML and DA for supply chain management, quality management, manufacturing systems, healthcare, transportation developed by invited experts of Indian Statistical Institute, Kolkata and Indian Institute of Management, Ahmedabad. The book will be useful to the students of under graduate and post graduate who are willing to contribute in related cutting-edge technologies. It will also inspire them to explore opportunities in artificial intelligence and connected research domains.

Intelligent Wireless Sensor Networks and the Internet of Things

Intelligent Wireless Sensor Networks and the Internet of Things PDF Author: Bhanu Chander
Publisher: CRC Press
ISBN: 1040027121
Category : Technology & Engineering
Languages : en
Pages : 368

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Book Description
The edited book Intelligent Wireless Sensor Networks and Internet of Things: Algorithms, Methodologies and Applications is intended to discuss the progression of recent as well as future generation technologies for WSNs and IoTs applications through Artificial Intelligence (AI), Machine Learning (ML), and Deep Learning (DL). In general, computing time is obviously increased when the massive data is required from sensor nodes in WSN’s. the novel technologies such as 5G and 6G provides enough bandwidth for large data transmissions, however, unbalanced links faces the novel constraints on the geographical topology of the sensor networks. Above and beyond, data transmission congestion and data queue still happen in the WSNs. This book: Addresses the complete functional framework workflow in WSN and IoT domains using AI, ML, and DL models Explores basic and high-level concepts of WSN security, and routing protocols, thus serving as a manual for those in the research field as the beginners to understand both basic and advanced aspects sensors, IoT with ML & DL applications in real-world related technology Based on the latest technologies such as 5G, 6G and covering the major challenges, issues, and advances of protocols, and applications in wireless system Explores intelligent route discovering, identification of research problems and its implications to the real world Explains concepts of IoT communication protocols, intelligent sensors, statistics and exploratory data analytics, computational intelligence, machine learning, and Deep learning algorithms for betterment of the smarter humanity Explores intelligent data processing, deep learning frameworks, and multi-agent systems in IoT-enabled WSN system This book demonstrates and discovers the objectives, goals, challenges, and related solutions in advanced AI, ML, and DL approaches This book is for graduate students and academic researchers in the fields of electrical engineering, electronics and communication engineering, computer engineering, and information technology.

Technological Breakthroughs in Modern Wireless Sensor Applications

Technological Breakthroughs in Modern Wireless Sensor Applications PDF Author: Hamid Reza Sharif
Publisher: IGI Global
ISBN: 1466682523
Category : Technology & Engineering
Languages : en
Pages : 437

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Book Description
Collecting and processing data is a necessary aspect of living in a technologically advanced society. Whether it's monitoring events, controlling different variables, or using decision-making applications, it is important to have a system that is both inexpensive and capable of coping with high amounts of data. Technological Breakthroughs in Modern Wireless Sensor Applications brings together new ways to process and monitor data, and to put it to work in everything from intelligent transportation systems to healthcare to multimedia applications. This book is an essential reference source for research and development engineers, graduate students, academics, and researchers interested in intelligent engineering, internetworking, routing, and network planning algorithms.

Localization Algorithms and Strategies for Wireless Sensor Networks: Monitoring and Surveillance Techniques for Target Tracking

Localization Algorithms and Strategies for Wireless Sensor Networks: Monitoring and Surveillance Techniques for Target Tracking PDF Author: Mao, Guoqiang
Publisher: IGI Global
ISBN: 1605663972
Category : Computers
Languages : en
Pages : 526

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Book Description
Wireless localization techniques are an area that has attracted interest from both industry and academia, with self-localization capability providing a highly desirable characteristic of wireless sensor networks. Localization Algorithms and Strategies for Wireless Sensor Networks encompasses the significant and fast growing area of wireless localization techniques. This book provides comprehensive and up-to-date coverage of topics and fundamental theories underpinning measurement techniques and localization algorithms. A useful compilation for academicians, researchers, and practitioners, this Premier Reference Source contains relevant references and the latest studies emerging out of the wireless sensor network field.

Research in Intelligent and Computing in Engineering

Research in Intelligent and Computing in Engineering PDF Author: Raghvendra Kumar
Publisher: Springer Nature
ISBN: 9811575274
Category : Technology & Engineering
Languages : en
Pages : 975

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Book Description
This book comprises select peer-reviewed proceedings of the international conference on Research in Intelligent and Computing in Engineering (RICE 2020) held at Thu Dau Mot University, Vietnam. The volume primarily focuses on latest research and advances in various computing models such as centralized, distributed, cluster, grid, and cloud computing. Practical examples and real-life applications of wireless sensor networks, mobile ad hoc networks, and internet of things, data mining and machine learning are also covered in the book. The contents aim to enable researchers and professionals to tackle the rapidly growing needs of network applications and the various complexities associated with them.

Proceedings of Second International Conference on Computing, Communications, and Cyber-Security

Proceedings of Second International Conference on Computing, Communications, and Cyber-Security PDF Author: Pradeep Kumar Singh
Publisher: Springer Nature
ISBN: 9811607338
Category : Technology & Engineering
Languages : en
Pages : 1027

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Book Description
This book features selected research papers presented at the Second International Conference on Computing, Communications, and Cyber-Security (IC4S 2020), organized in Krishna Engineering College (KEC), Ghaziabad, India, along with Academic Associates; Southern Federal University, Russia; IAC Educational, India; and ITS Mohan Nagar, Ghaziabad, India during 3–4 October 2020. It includes innovative work from researchers, leading innovators, and professionals in the area of communication and network technologies, advanced computing technologies, data analytics and intelligent learning, the latest electrical and electronics trends, and security and privacy issues.