Artificial Intelligence-based Internet of Things Systems [E-Book] / edited by Souvik Pal, Debashis De, Rajkumar Buyya.
The book discusses the evolution of future generation technologies through Internet of Things (IoT) in the scope of Artificial Intelligence (AI). The main focus of this volume is to bring all the related technologies in a single platform, so that undergraduate and postgraduate students, researchers,...
Saved in:
Full text |
|
Personal Name(s): | Buyya, Rajkumar, editor |
De, Debashis, editor / Pal, Souvik, editor | |
Edition: |
1st edition 2022. |
Imprint: |
Cham :
Springer,
2022
|
Physical Description: |
XVII, 509 pages 167 illustrations, 119 illustrations in color (online resource) |
Note: |
englisch |
ISBN: |
9783030870591 |
DOI: |
10.1007/978-3-030-87059-1 |
Series Title: |
/* Depending on the record driver, $field may either be an array with
"name" and "number" keys or a flat string containing only the series
name. We should account for both cases to maximize compatibility. */?>
Internet of Things, Technology, Communications and Computing
|
Subject (LOC): |
- Part - I. Architecture, Systems, and Services
- Chapter1. Artificial Intelligence-based Internet of Things for Industry 5.0
- Chapter2. IoT Ecosystem: Functioning Framework, Hierarchy of Knowledge and Intelligence
- Chapter3. Artificial Neural Networks and Support Vector Machine for IoT
- Chapter4. The Role of Machine Learning Techniques in Internet of Things Based Cloud Applications
- Chapter5. Deep Learning Frameworks for Internet of Things
- Chapter6. Fog-Cloud enabled Internet of Things using Extended Classifier System (XCS)
- Chapter7. Convolutional Neural Network (CNN) - Based Signature Verification via Cloud-enabled Raspberry Pi System
- Chapter8. Machine to Machine (M2M), Radio Frequency Identification (RFID), Software-defined Networking (SDN): Facilitators of Internet of Things
- Chapter9. Architecture, Generative Model, Deep Reinforcement Learning for IoT Applications: Deep Learning Perspective
- Chapter10. Enabling Inference and Training of Deep Learning Models for AI Applications on IoT Edge Devices
- Chapter11. Non-volatile Memory based Internet of Things: A survey
- Chapter12. Integration of AI and IoT approaches for evaluating cyber Security risk on smart city
- Chapter13. Cognitive Internet of Things: Challenges and Solutions
- Part - II. Applications
- Chapter14. An AI Approach to Rebalance Bike Sharing Systems with Adaptive User Incentive
- Chapter15. IoT-driven Bayesian Learning: A Case Study of Reducing Road Accidents of Commercial Vehicles on Highways
- Chapter16. On the Integration of AI and IoT Systems: A Case Study of Airport Smart Parking
- Chapter17. Vision-based End-to-End Deep Learning for Autonomous Driving in Next-Generation IoT Systems
- Chapter18. A Study on the Application of Bayesian Learning and Decision Trees IoT-enabled system in Post-harvest Storage.