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Big data analytics for Internet of things / edited by Tausifa Jan Saleem, Mohammad Ahsan Chishti.

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Format:
Book
Contributor:
Saleem, Tausifa Jan, editor.
Chishti, Mohammad Ahsan, editor.
Language:
English
Subjects (All):
Big data.
Physical Description:
1 online resource (xx, 376 pages) : illustrations
Place of Publication:
Hoboken, New Jersey : Wiley, [2021]
Summary:
"Big Data Analytics is a briskly expanding research area spanning diverse fields. The efficacy of Big Data Analytics is found mainly in the domain of Internet of Things (IoT). The number of IoT devices is anticipated to amount to several billion in the next few years. This unpredictable growth in the number of devices connected to IoT and the exponential rise in data consumption manifest how the expansion of big data seamlessly coincides with that of IoT. The main objective of Big Data Analytics in IoT is to identify trends in the data, extract concealed information and to dig out valuable information from the raw data generated by IoT systems. This is crucial for dispensing elite services to IoT users. In this regard, investigating the recent technological advancements in the said area becomes indispensable."-- Provided by publisher.
Contents:
Cover
Title Page
Copyright Page
Contents
List of Contributors
List of Abbreviations
Chapter 1 Big Data Analytics for the Internet of Things: An Overview
Chapter 2 Data, Analytics and Interoperability Between Systems (IoT) is Incongruous with the Economics of Technology: Evolution of Porous Pareto Partition (P3)
2.1 Context
2.2 Models in the Background
2.3 Problem Space: Are We Asking the Correct Questions?
2.4 Solutions Approach: The Elusive Quest to Build Bridges Between Data and Decisions
2.5 Avoid This Space: The Deception Space
2.6 Explore the Solution Space: Necessary to Ask Questions That May Not Have Answers, Yet
2.7 Solution Economy: Will We Ever Get There?
2.8 Is This Faux Naïveté in Its Purest Distillate?
2.9 Reality Check: Data Fusion
2.10 "Double A" Perspective of Data and Tools vs. The Hypothetical Porous Pareto (80/20) Partition
2.11 Conundrums
2.12 Stigma of Partition vs. Astigmatism of Vision
2.13 The Illusion of Data, Delusion of Big Data, and the Absence of Intelligence in AI
2.14 In Service of Society
2.15 Data Science in Service of Society: Knowledge and Performance from PEAS
2.16 Temporary Conclusion
Acknowledgements
References
Chapter 3 Machine Learning Techniques for IoT Data Analytics
3.1 Introduction
3.2 Taxonomy of Machine Learning Techniques
3.2.1 Supervised ML Algorithm
3.2.1.1 Classification
3.2.1.2 Regression Analysis
3.2.1.3 Classification and Regression Tasks
3.2.2 Unsupervised Machine Learning Algorithms
3.2.2.1 Clustering
3.2.2.2 Feature Extraction
3.2.3 Conclusion
Chapter 4 IoT Data Analytics Using Cloud Computing
4.1 Introduction
4.2 IoT Data Analytics
4.2.1 Process of IoT Analytics
4.2.2 Types of Analytics
4.3 Cloud Computing for IoT
4.3.1 Deployment Models for Cloud.
4.3.1.1 Private Cloud
4.3.1.2 Public Cloud
4.3.1.3 Hybrid Cloud
4.3.1.4 Community Cloud
4.3.2 Service Models for Cloud Computing
4.3.2.1 Software as a Service (SaaS)
4.3.2.2 Platform as a Service (PaaS)
4.3.2.3 Infrastructure as a Service (IaaS)
4.3.3 Data Analytics on Cloud
4.4 Cloud-Based IoT Data Analytics Platform
4.4.1 Atos Codex
4.4.2 AWS IoT
4.4.3 IBM Watson IoT
4.4.4 Hitachi Vantara Pentaho, Lumada
4.4.5 Microsoft Azure IoT
4.4.6 Oracle IoT Cloud Services
4.5 Machine Learning for IoT Analytics in Cloud
4.5.1 ML Algorithms for Data Analytics
4.5.2 Types of Predictions Supported by ML and Cloud
4.6 Challenges for Analytics Using Cloud
4.7 Conclusion
Chapter 5 Deep Learning Architectures for IoT Data Analytics
5.1 Introduction
5.1.1 Types of Learning Algorithms
5.1.1.1 Supervised Learning
5.1.1.2 Unsupervised Learning
5.1.1.3 Semi-Supervised Learning
5.1.1.4 Reinforcement Learning
5.1.2 Steps Involved in Solving a Problem
5.1.2.1 Basic Terminology
5.1.2.2 Training Process
5.1.3 Modeling in Data Science
5.1.3.1 Generative
5.1.3.2 Discriminative
5.1.4 Why DL and IoT?
5.2 DL Architectures
5.2.1 Restricted Boltzmann Machine
5.2.1.1 Training Boltzmann Machine
5.2.1.2 Applications of RBM
5.2.2 Deep Belief Networks (DBN)
5.2.2.1 Training DBN
5.2.2.2 Applications of DBN
5.2.3 Autoencoders
5.2.3.1 Training of AE
5.2.3.2 Applications of AE
5.2.4 Convolutional Neural Networks (CNN)
5.2.4.1 Layers of CNN
5.2.4.2 Activation Functions Used in CNN
5.2.5 Generative Adversarial Network (GANs)
5.2.5.1 Training of GANs
5.2.5.2 Variants of GANs
5.2.5.3 Applications of GANs
5.2.6 Recurrent Neural Networks (RNN)
5.2.6.1 Training of RNN
5.2.6.2 Applications of RNN.
5.2.7 Long Short-Term Memory (LSTM)
5.2.7.1 Training of LSTM
5.2.7.2 Applications of LSTM
5.3 Conclusion
Chapter 6 Adding Personal Touches to IoT: A User-Centric IoT Architecture
6.1 Introduction
6.2 Enabling Technologies for BDA of IoT Systems
6.3 Personalizing the IoT
6.3.1 Personalization for Business
6.3.2 Personalization for Marketing
6.3.3 Personalization for Product Improvement and Service Optimization
6.3.4 Personalization for Automated Recommendations
6.3.5 Personalization for Improved User Experience
6.4 Related Work
6.5 User Sensitized IoT Architecture
6.6 The Tweaked Data Layer
6.7 The Personalization Layer
6.7.1 The Characterization Engine
6.7.2 The Sentiment Analyzer
6.8 Concerns and Future Directions
6.9 Conclusions
Chapter 7 Smart Cities and the Internet of Things
7.1 Introduction
7.2 Development of Smart Cities and the IoT
7.3 The Combination of the IoT with Development of City Architecture to Form Smart Cities
7.3.1 Unification of the IoT
7.3.2 Security of Smart Cities
7.3.3 Management of Water and Related Amenities
7.3.4 Power Distribution and Management
7.3.5 Revenue Collection and Administration
7.3.6 Management of City Assets and Human Resources
7.3.7 Environmental Pollution Management
7.4 How Future Smart Cities Can Improve Their Utilization of the Internet of All Things, with Examples
7.5 Conclusion
Chapter 8 A Roadmap for Application of IoT-Generated Big Data in Environmental Sustainability
8.1 Background and Motivation
8.2 Execution of the Study
8.2.1 Role of Big Data in Sustainability
8.2.2 Present Status and Future Possibilities of IoT in Environmental Sustainability
8.3 Proposed Roadmap
8.4 Identification and Prioritizing the Barriers in the Process.
8.4.1 Internet Infrastructure
8.4.2 High Hardware and Software Cost
8.4.3 Less Qualified Workforce
8.5 Conclusion and Discussion
Chapter 9 Application of High-Performance Computing in Synchrophasor Data Management and Analysis for Power Grids
9.1 Introduction
9.2 Applications of Synchrophasor Data
9.2.1 Voltage Stability Analysis
9.2.2 Transient Stability
9.2.3 Out of Step Splitting Protection
9.2.4 Multiple Event Detection
9.2.5 State Estimation
9.2.6 Fault Detection
9.2.7 Loss of Main (LOM) Detection
9.2.8 Topology Update Detection
9.2.9 Oscillation Detection
9.3 Utility Big Data Issues Related to PMU-Driven Applications
9.3.1 Heterogeneous Measurement Integration
9.3.2 Variety and Interoperability
9.3.3 Volume and Velocity
9.3.4 Data Quality and Security
9.3.5 Utilization and Analytics
9.3.6 Visualization of Data
9.4 Big Data Analytics Platforms for PMU Data Processing
9.4.1 Hadoop
9.4.2 Apache Spark
9.4.3 Apache HBase
9.4.4 Apache Storm
9.4.5 Cloud-Based Platforms
9.5 Conclusions
Chapter 10 Intelligent Enterprise-Level Big Data Analytics for Modeling and Management in Smart Internet of Roads
10.1 Introduction
10.2 Fully Convolutional Deep Neural Network for Autonomous Vehicle Identification
10.2.1 Detection of the Bounding Box of the License Plate
10.2.2 Segmentation Objective
10.2.3 Spatial Invariances
10.2.4 Model Framework
10.2.4.1 Increasing the Layer of Transformation
10.2.4.2 Data Format of Sample Images
10.2.4.3 Applying Batch Normalization
10.2.4.4 Network Architecture
10.2.5 Role of Data
10.2.6 Synthesizing Samples
10.2.7 Invariances
10.2.8 Reducing Number of Features
10.2.9 Choosing Number of Classes
10.3 Experimental Setup and Results
10.3.1 Sparse Softmax Loss.
10.3.2 Mean Intersection Over Union
10.4 Practical Implementation of Enterprise-Level Big Data Analytics for Smart City
10.5 Conclusion
Chapter 11 Predictive Analysis of Intelligent Sensing and Cloud-Based Integrated Water Management System
11.1 Introduction
11.2 Literature Survey
11.3 Proposed Six-Tier Data Framework
11.3.1 Primary Components
11.3.2 Contact Unit (FC-37)
11.3.3 Internet of Things Communicator (ESP8266)
11.3.4 GSM-Based ARM and Control System
11.3.5 Methodology
11.3.6 Proposed Algorithm
11.4 Implementation and Result Analysis
11.4.1 Water Report for Home 1 and Home 2 Modules
11.5 Conclusion
Chapter 12 Data Security in the Internet of Things: Challenges and Opportunities
12.1 Introduction
12.2 IoT: Brief Introduction
12.2.1 Challenges in a Secure IoT
12.2.2 Security Requirements in IoT Architecture
12.2.2.1 Sensing Layer
12.2.2.2 Network Layer
12.2.2.3 Interface Layer
12.2.3 Common Attacks in IoT
12.3 IoT Security Classification
12.3.1 Application Domain
12.3.1.1 Authentication
12.3.1.2 Authorization
12.3.1.3 Depletion of Resources
12.3.1.4 Establishment of Trust
12.3.2 Architectural Domain
12.3.2.1 Authentication in IoT Architecture
12.3.2.2 Authorization in IoT Architecture
12.3.3 Communication Channel
12.4 Security in IoT Data
12.4.1 IoT Data Security: Requirements
12.4.1.1 Data: Confidentiality, Integrity, and Authentication
12.4.1.2 Data Privacy
12.4.2 IoT Data Security: Research Directions
12.5 Conclusion
Chapter 13 DDoS Attacks: Tools, Mitigation Approaches, and Probable Impact on Private Cloud Environment
13.1 Introduction
13.1.1 State of the Art
13.1.2 Contribution
13.1.3 Organization
13.2 Cloud and DDoS Attack
13.2.1 Cloud Deployment Models.
13.2.1.1 Differences Between Private Cloud and Public Cloud.
Notes:
Description based on print version record.
Includes bibliographical references and index.
ISBN:
9781119740773
1119740770
9781119740780
1119740789
9781119740766
1119740762
OCLC:
1244620042

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