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Intelligent security management and control in the Iot / edited by Mohamed-Aymen Chalouf.

O'Reilly Online Learning: Academic/Public Library Edition Available online

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Format:
Book
Contributor:
Chalouf, Mohamed-Aymen, editor.
Series:
Sciences. Networks and communications. Network management and control
Language:
English
Subjects (All):
Internet of things--Security measures.
Internet of things.
Internet of things--Control.
Physical Description:
1 online resource (314 pages)
Place of Publication:
Hoboken, New Jersey : John Wiley & Sons, Incorporated, [2022]
Summary:
The Internet of Things (IoT) has contributed greatly to the growth of data traffic on the Internet. Access technologies and object constraints associated with the IoT can cause performance and security problems. This relates to important challenges such as the control of radio communications and network access, the management of service quality and energy consumption, and the implementation of security mechanisms dedicated to the IoT. In response to these issues, this book presents new solutions for the management and control of performance and security in the IoT. The originality of these proposals lies mainly in the use of intelligent techniques. This notion of intelligence allows, among other things, the support of object heterogeneity and limited capacities as well as the vast dynamics characterizing the IoT.
Contents:
Cover
Half-Title Page
Title Page
Copyright Page
Contents
1. Multicriteria Selection of Transmission Parameters in the IoT
1.2. Changing access network in the IoT
1.3. Spectrum handoff in the IoT
1.4. Multicriteria decision-making module for an effective spectrum handoff in the IoT
1.4.1. General architecture
1.4.2. Decision-making flowchart
1.4.3. Performances evaluation
1.5. Conclusion
1.6. References
2. Using Reinforcement Learning to Manage Massive Access in NB-IoT Networks
2.1. Introduction
2.2. Fundamentals of the NB-IoT standard
2.2.1. Deployment and instances of use
2.2.2. Transmission principles
2.2.3. Radio resource random access procedure
2.3. State of the art
2.4. Model for accessing IoT terminals
2.5. Access controller for IoT terminals based on reinforcement learning
2.5.1. Formulating the problem
2.5.2. Regulation system for arrivals
2.6. Performance evaluation
2.7. Conclusion
2.8. References
3. Optimizing Performances in the IoT: An Approach Based on Intelligent Radio
3.1. Introduction
3.2. Internet of Things (IoT)
3.2.1. Definition of the IoT
3.2.2. Applications of the IoT
3.2.3. IoT challenges
3.2.4. Enabling technologies in the IoT
3.3. Intelligent radio
3.3.1. Definition of intelligent radio
3.3.2. Motivations for using intelligent radio in the IoT
3.3.3. Challenges in using intelligent radio in the IoT
3.4. Conclusion
3.5. References
4. Optimizing the Energy Consumption of IoT Devices
4.1. Introduction
4.2. Energy optimization
4.2.1. Definitions
4.3. Optimization techniques for energy consumption
4.3.1. The A* algorithm
4.3.2. Fuzzy logic
4.4. Energy optimization in the IoT
4.4.1. Characteristics of the IoT
4.4.2. Challenges in energy optimization.
4.4.3. Research on energy optimization in the IoT
4.5. Autonomous energy optimization framework in the IoT
4.5.1. Autonomous computing
4.5.2. Framework specification
4.6. Proposition of a self-optimization method for energy consumption in the IoT
4.6.1. Fuzzy logic model
4.6.2. Decision-making algorithm
4.6.3. Evaluating energy self-optimization in the IoT
4.7. Conclusion
4.8. References
5. Toward Intelligent Management of Service Quality in the IoT: The Case of a Low Rate WPAN
5.1. Introduction
5.2. Quick overview of the IoT
5.2.2. Technologies for the IoT
5.2.3. IoT and quality of service
5.3. IEEE 802.15.4 TSCH approach
5.4. Transmission scheduling
5.4.1. General considerations
5.4.2. Scheduling in the literature
5.5. Routing and RPL
5.5.1. Routing
5.5.2. RPL
5.5.3. Multipath
5.6. Combined approach based on 802.15.4 TSCH and multipath RPL
5.6.1. Automatic Repeat reQuest
5.6.2. Replication and Elimination
5.6.3. Overhearing
5.7. Conclusion
5.8. References
6. Adapting Quality of Service of Energy-Harvesting IoT Devices
6.1. Toward the energy autonomy of sensor networks
6.1.1. Energy harvesting and management
6.1.2. State-of-the-art energy managers
6.2. Fuzzyman: use of fuzzy logic
6.2.1. Design of Fuzzyman
6.2.2. Evaluating Fuzzyman
6.2.3. Conclusion
6.3. RLMan: using reinforcement learning
6.3.1. Formulating the problem of managing the harvested energy
6.3.2. RLMan algorithm
6.3.3. Evaluation of RLMan
6.3.4. Conclusion
6.4. Toward energy autonomous LoRa nodes
6.4.1. Multisource energy-harvesting architecture
6.4.2. Applying energy management to LoRa nodes
6.5. Conclusion
6.6. References
7. Adapting Access Control for IoT Security
7.1. Introduction
7.2. Defining security services in the IoT.
7.2.1. Identification and authentication in the IoT
7.2.2. Access control in the IoT
7.2.3. Confidentiality in the IoT
7.2.4. Integrity in the IoT
7.2.5. Non-repudiation in the IoT
7.2.6. Availability in the IoT
7.3. Access control technologies
7.4. Access control in the IoT
7.4.1. Research on the extension of access control models for the IoT
7.4.2. Research on adapting access control systems and technologies for
7.5. Access control framework in the IoT
7.5.1. IoT architecture
7.5.2. IoT-MAAC access control specification
7.6. Conclusion
7.7. References
8. The Contributions of Biometrics and Artificial Intelligence in Securing the IoT
8.1. Introduction
8.2. Security and privacy in the IoT
8.3. Authentication based on biometrics
8.3.1. Biometrics
8.3.2. Biometric techniques
8.3.3. The different properties of biometrics
8.3.4. Operating a biometric system
8.3.5. System performances
8.4. Multifactor authentication techniques based on biometrics
8.4.1. Multifactor authentication
8.4.2. Examples of multifactor authentication approaches for securing
8.4.3. Presentation of the approach of Sammoud et al. (2020c)
8.5. Authentication techniques based on biometrics and machine learning
8.5.1. Machine learning algorithms
8.5.2. Examples of authentication approaches based on biometrics and
8.5.3. Authentication approaches based on ECG and machine learning
8.6. Challenges and limits
8.6.1. Quality of biometric data
8.6.2. Non-revocability of biometric data
8.6.3. Security of biometric systems
8.7. Conclusion
8.8. References
9. Dynamic Identity and Access Management in the IoT: Blockchain-based Approach
9.1. Introduction
9.2. Context
9.2.1. Intelligent identity and access management
9.2.2. Blockchain.
9.3. Blockchain for intelligent identity and access management
9.3.1. A new architecture integrating blockchain
9.3.2. The different benefits
9.4. Challenges
9.4.1. Scaling up
9.4.2. Blockchain security
9.4.3. Energy consumption
9.4.4. Definition of consensus algorithms based on artificial
9.5. Conclusion
9.6. References
10. Adapting the Security Level of IoT Applications
10.1. Introduction
10.2. Definitions and characteristics
10.2.1. Definitions
10.2.2. Characteristics
10.3. IoT applications
10.4. IoT architectures
10.5. Security, trust and privacy protection in IoT applications
10.5.1. General remarks
10.5.2. Security services
10.5.3. Communication security
10.5.4. Trust
10.5.5. Privacy
10.6. Adapting the security level in the IoT
10.6.1. Context-awareness
10.6.2. Context-aware security
10.6.3. Context-aware security architecture and privacy protection
10.7. Conclusion
10.8. References
11. Moving Target Defense Techniques for the IoT
11.1. Introduction
11.2. Background
11.2.1. Brief chronology of Moving Target Defense
11.2.2. Fundamental technical and taxonomic principles of MTD
11.3. Related works
11.3.1. Surveys on MTD techniques
11.3.2. Frameworks for IoT systems linked to the concept of MTD
11.4. LMTD for the IoT: a qualitative survey
11.4.1. Data: MTD mechanism against side-channel channel attacks
11.4.2. Software
11.4.3. Runtime environment
11.4.4. Platform: diversifying by reconfiguring the IoT node firmware
11.4.5. Networks
11.4.6. Section summary
11.5. Network components in the IoT: a vast domain for MTD
11.5.1. Physical layer
11.5.2. Link layer
11.5.3. OSI network layer
11.5.4. Transport layer
11.5.5. Application layer
11.5.6. Section summary
11.6. An MTD framework for the IoT.
11.6.1. Proposition: components
11.6.2. Instantiation: UDP port hopping
11.7. Discussion and avenues for future research
11.8. Conclusion
11.9. References
List of Authors
Index
EULA.
Notes:
Includes index.
Description based on print version record.
Other Format:
Print version: Chalouf, Mohamed-Aymen Intelligent Security Management and Control in the IoT
ISBN:
9781394156030
1394156030
9781394156016
1394156014
9781394156023
1394156022
OCLC:
1336861945

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