GLORIA

GEOMAR Library Ocean Research Information Access

feed icon rss

Your email was sent successfully. Check your inbox.

An error occurred while sending the email. Please try again.

Proceed reservation?

Export
Filter
  • Singapore :Springer Singapore Pte. Limited,  (3)
  • 1
    Online Resource
    Online Resource
    Singapore :Springer Singapore Pte. Limited,
    Keywords: Energy conservation. ; Electronic books.
    Type of Medium: Online Resource
    Pages: 1 online resource (359 pages)
    Edition: 1st ed.
    ISBN: 9789811373992
    Series Statement: Studies in Systems, Decision and Control Series ; v.206
    DDC: 333.79
    Language: English
    Note: Intro -- Preface -- Contents -- About the Editors -- The Rudiments of Energy Conservation and IoT -- 1 Introduction -- 2 Paradigmatic View of Energy-Efficient IoT -- 3 Pragmatic Energy-Efficient IoT System Architecture -- 4 Issues of Energy Conservation in IoT -- 5 Energy Conservation Approaches for IoT Devices and Its Perspectives -- 5.1 Node Activity Management -- 5.2 Data Aggregation and Transmission Process -- 5.3 Media Access Control (MAC) Protocol -- 5.4 Security Management -- 5.5 Topology Management -- 5.6 Routing -- 6 Energy-Efficient System Design for IoT Devices -- 7 Conclusions -- References -- Existing Enabling Technologies and Solutions for Energy Management in IoT -- 1 Introduction -- 2 Architectures of IoT -- 2.1 Three-Layer Architecture -- 2.2 Four Layer Architecture -- 2.3 Five-Layer Architecture -- 3 Components of IoT -- 3.1 Identification -- 3.2 Sensing -- 3.3 Communication -- 3.4 Computation -- 3.5 Services -- 3.6 Semantics -- 4 Applications -- 4.1 Home Automation -- 4.2 Health care -- 4.3 Transportation -- 4.4 Logistics -- 4.5 Smart Environment and Agriculture -- 5 Challenges in IoT -- 6 Energy Management -- 6.1 Energy Harvesting -- 6.2 Energy Conservation -- 7 Research Directions -- 8 Conclusion -- References -- Energy-Efficient System Design for Internet of Things (IoT) Devices -- 1 Introduction -- 2 Operation -- 3 Energy Conservation -- 3.1 Solar Energy Harvesting -- 3.2 Thermal Energy Harvesting -- 3.3 Vibrational Energy Harvesting -- 3.4 Electrostatic Energy Harvesting -- 3.5 Wind Energy Harvesting -- 3.6 RF Energy Harvesting -- 4 Harvesting Module -- 4.1 Rectenna Model -- 4.2 Sensing Antenna -- 4.3 DC-DC Converter -- 4.4 Power Management Unit -- 5 Wireless Energy Harvesting -- 5.1 Near Field Communication -- 5.2 Inductive Coupling -- 6 Applications -- 6.1 Home Appliances -- 6.2 Healthcare Devices. , 6.3 Automatic Vehicles -- 6.4 Business Infrastructure -- 6.5 Farming and Poultry -- 6.6 Smart Utilities -- References -- Models and Algorithms for Energy Conservation in Internet of Things -- 1 Introduction -- 2 Data Centers -- 2.1 Big Data -- 2.2 Cloud Computing -- 3 Virtualization -- 4 Load Balancing -- 4.1 Hardware Versus Software Load Balancing -- 5 Energy Consumptions in Data Centers -- 5.1 Green Computing -- 5.2 Power Calculation at Data Center -- 6 Static Energy-Efficient Algorithms -- 6.1 Exact Allocation Algorithm -- 6.2 Best Fit Heuristic Algorithm -- 7 Dynamic Energy-Efficient Algorithms -- 7.1 Hardware Level Solution -- 7.2 Software Level Solution -- 8 Summary -- References -- An Energy-Efficient IoT Group-Based Architecture for Smart Cities -- 1 Introduction -- 2 Related Work -- 3 System Description -- 3.1 The WSN for e-Health and Human Well-Being Monitoring -- 3.2 Utilities Monitoring Systems -- 3.3 Air Quality and Climate Monitoring Systems -- 3.4 Emergency Situations Monitoring -- 3.5 Other Systems -- 4 Proposed Architecture for the Smart City -- 5 Conclusion and Future Work -- References -- Context-Aware Automation Based Energy Conservation Techniques for IoT Ecosystem -- 1 Introduction -- 1.1 Communication Technologies -- 1.2 Pricing Policies -- 2 Introduction -- 3 Related Work -- 3.1 Demand-Side Management -- 3.2 Usage of Renewable Energy Source -- 3.3 Context-Aware Automation -- 3.4 Feedback-Based Automation -- 4 Case Studies -- 5 Proposed Framework -- 6 Future Directions and Challenges -- 7 Conclusion -- References -- Energy Conservation in IoT-Based Smart Home and Its Automation -- 1 Introduction -- 2 Electrical Network End-to-End System -- 2.1 Generation -- 2.2 Transmission and Distribution -- 2.3 Automation in Demand, Supply, and Monitoring -- 2.4 Load Shedding and Control -- 3 Causes of Energy Losses and Preventive Actions. , 3.1 Electrical Network Improvement -- 3.2 Smart Energy Monitoring Devices -- 4 Automation and Control in Electrical Network -- 4.1 Automation Devices -- 4.2 Standards for Automation Devices -- 4.3 Communication Hardware and Automation Protocols -- 5 Energy Conservation Key Area -- 5.1 Smart Buildings -- 5.2 Smart Homes -- 5.3 Smart Appliances -- 6 Energy Conservation in Smart Home and IoT -- 6.1 Automation and Sensors in Smart Home -- 6.2 Industry Trends and Present Technology -- 6.3 Energy Conservation Components of Smart Home -- 6.4 Renewable Energy Sources with IoT in Smart Home -- 7 Artificial Intelligence in Energy Conservation-Methods and Technology -- 7.1 Digital Signal Processing and IoT -- 7.2 Artificial Intelligence in Smart Home -- 8 Cloud Data Processing Using IoT Devices -- 9 Conclusions -- References -- IoT Architecture for Preventive Energy Conservation of Smart Buildings -- 1 Introduction -- 1.1 Prevalent Smart Components -- 1.2 IoT System Architectures -- 1.3 Smart Buildings -- 1.4 Energy Efficiency in Smart Building IoT Systems -- 2 Requirements and Approaches for Energy Efficiency in Smart Buildings -- 2.1 Requirements for Environmental Conservation -- 2.2 Requirement for Energy Modeling -- 2.3 Requirement for Energy Consumption Monitoring and Evaluation -- 3 Existing Application Architectures -- 3.1 Smart Energy Metering Architectures -- 3.2 Smart Lighting Architectures -- 3.3 Energy Management Interfaces for Buildings -- 3.4 Energy-Efficient Smart Building Automation Architectures -- 3.5 Energy-Efficient Implementations in Smart Grid -- 3.6 Energy-Efficient Comfort Management Systems in Smart Buildings -- 3.7 Energy Monitoring and Saving Methods in Smart Buildings -- 4 Open Challenges and Future Work -- 4.1 Lack of Interoperability for Currently Used Protocols -- 4.2 Need for a Cost-Effective Architecture that Conserves Energy. , 4.3 Integration of Renewable Energy Sources in Smart Buildings -- 4.4 Maintainability of Energy-Efficient Architectures -- 5 Conclusion -- References -- Designing Energy-Efficient IoT-Based Intelligent Transport System: Need, Architecture, Characteristics, Challenges, and Applications -- 1 Introduction -- 1.1 Intelligent Transport System -- 1.2 Motivations for IoT in Transportation -- 1.3 Architecture of ITS -- 2 Key Technologies and Related Power Optimization Bottlenecks -- 2.1 Perception Technology: Precision, Reliability, and Power Constraints -- 2.2 Communication Technology and Related Power Issues -- 2.3 Information Extraction and Underlying Power Issues -- 3 Energy Efficiency Challenges and Corresponding Solutions -- 3.1 Precision, Density, and Reliability of Perception and Smart Sensing Solutions -- 3.2 Information Exchange Based Solutions -- 3.3 Computational Feasibility and Distributed Computing Solutions -- 3.4 Data Collection and Pooling with Energy-Efficient Solutions -- 4 Further Challenges and Opportunities -- 4.1 Further Involvement of Internet of Vehicle (IoV) -- 4.2 Cooperative Automated Vehicle (CAV) Scheme -- 4.3 Utilization of Multiple-Source Data in ITS -- 4.4 Software-Defined Radio (SDR)-Based Communication -- 4.5 Energy Harvesting Corridors -- 5 Conclusion and Future Work -- References -- Capacity Estimation of Electric Vehicle Aggregator for Ancillary Services to the Grid -- 1 Historical Perspective -- 2 Development of Electric Vehicles -- 3 Motivation for Vehicle to Everything (V2X) and V2G Technology -- 4 Electric Vehicles and Solar Power Plants in Smart Grid Environment -- 5 Potential of EV to Grid Connection -- 6 Capacity Estimation of Aggregator -- 7 Battery Management System -- 8 Grid Connection and Performance Testing of V2G -- 9 Commercial Value of V2G -- 10 Challenges and Opportunities -- 11 Discussion and Conclusion. , References -- Need and Design of Smart and Secure Energy-Efficient IoT-Based Healthcare Framework -- 1 Introduction -- 2 Data Generation in IoT Environment -- 3 Applications of IoT -- 4 Publication Trends of IoT -- 5 Critical Human Disorders -- 6 Energy-Efficient IoT Systems (Related Works) -- 7 Role of IoT in Designing Energy-Optimized Systems -- 7.1 Proposed Energy-Efficient IoT-Based Healthcare System for Neurological and Psychological Disorder Patients -- 8 Conclusion -- References -- Medical Information Processing Using Smartphone Under IoT Framework -- 1 Introduction -- 1.1 Motivation -- 1.2 Objectives -- 1.3 Organization of the Chapter -- 2 System Model -- 3 System Requirement -- 4 Importance of Cloud for Smartphone-Enabled IoT -- 5 Internet of Medical Things (IoMT) Using Smartphone -- 6 Biomedical Data Processing -- 6.1 Transmission of Medical Image Signals -- 6.2 Transmission of Biomedical Signals (ECG, EEG, and EMG) -- 6.3 Transmission of Medical Video Signals -- 6.4 Teletrauma System -- 7 Application of IoT -- 7.1 Application Oriented to Health Care -- 8 Application Standards/Protocols Use in IoT (Health Care) -- 9 Challenges -- 10 Conclusion -- References -- Contributing Toward Green IoT: An Awareness-Based Approach -- 1 Introduction -- 2 A Walkthrough of Internets of Things and Its Applications -- 2.1 Challenges of Internet of Things -- 3 Green IoT: An Overview -- 3.1 Smart Homes -- 3.2 Smart Cities -- 3.3 Energy-Efficient Smart Health Care -- 4 Various Approaches to Achieve Green IoT -- 5 Awareness-Based Approach Toward Green IoT -- 5.1 Energy Awareness Campaigns -- 5.2 IoT-Based Smart Metering -- 5.3 Promoting Recycling -- 5.4 Creating Awareness About Green Information Communication Technology -- 5.5 Promoting the Usage of Sensor Cloud: A Step Toward Green IoT. , 6 Creating Awareness Through Prototyping: A Green IoT-Based Smart Home Model.
    Location Call Number Limitation Availability
    BibTip Others were also interested in ...
  • 2
    Keywords: Artificial intelligence-Congresses. ; Electronic books.
    Type of Medium: Online Resource
    Pages: 1 online resource (886 pages)
    Edition: 1st ed.
    ISBN: 9789811533693
    Series Statement: Lecture Notes in Networks and Systems Series ; v.121
    DDC: 004.6
    Language: English
    Note: Intro -- Preface -- Contents -- About the Editors -- Communication and Network Technologies -- State of the Art: A Review on Vehicular Communications, Impact of 5G, Fractal Antennas for Future Communication -- 1 Introduction -- 1.1 Vehicular Network Architecture (VNA) -- 1.2 Vehicular Communication Applications (VCA) -- 2 Communications -- 3 Existing Proposals -- 4 Fractal Antennas -- 5 Conclusion -- References -- Energy Enhancement of TORA and DYMO by Optimization of Hello Messaging Using BFO for MANETs -- 1 Introduction -- 1.1 MANET's Route Selection Process -- 1.2 Routing Protocols -- 2 Literature Review -- 3 Problem Formulation and Major Issues -- 4 Proposed Protocol Optimization Using BFOA -- 4.1 Introduction to BFOA -- 4.2 Bacteria Foraging Optimization Algorithm (BFOA) -- 5 Results and Comparison -- 5.1 Implementation Results -- 5.2 Comparisons -- 5.3 Optimization Results -- 6 Result and Conclusion -- References -- Horseshoe-Shaped Multiband Antenna for Wireless Application -- 1 Introduction -- 2 Horseshoe Fractal Design Methodology -- 3 Simulation Setup -- 4 Conclusion -- References -- A Review Paper on Performance Analysis of IEEE 802.11e -- 1 Introduction -- 1.1 Medium Access Control Layer -- 1.2 Distributed Coordination Function (DCF) -- 1.3 Enhanced Distributed Coordination Function (EDCF) -- 2 Literature Review -- 3 Conclusions -- References -- Voice-Controlled IoT Devices Framework for Smart Home -- 1 Introduction -- 2 Related Work -- 3 Proposed Model -- 3.1 Hardware Design -- 3.2 System Software -- 4 Analysis -- 5 Conclusion -- References -- Comprehensive Analysis of Social-Based Opportunistic Routing Protocol: A Study -- 1 Introduction -- 2 Research Contributions -- 3 Simulation Setup And Description -- 3.1 ONE (Opportunistic Network Environment) Simulator -- 3.2 Mobility Model and Real-World Traces. , 3.3 Simulation Parameter for Different Movement Model -- 4 Simulation Result -- 5 Conclusion and Future Direction -- References -- An Efficient Delay-Based Load Balancing using AOMDV in MANET -- 1 Introduction -- 2 Related Work -- 3 Delay-Based Load Balancing in MANET -- 4 Experimental Results -- 4.1 Packet Delivery Ratio -- 4.2 Delay -- 4.3 Throughput -- 4.4 Packet Loss Ratio -- 4.5 Normalized Routing Load -- 5 Conclusion -- References -- Metaheuristic-Based Intelligent Solutions Searching Algorithms of Ant Colony Optimization and Backpropagation in Neural Networks -- 1 Introduction -- 2 Swarm Intelligence and Problems Solving -- 2.1 Metaheuristic Algorithms -- 2.2 Ant Colony Optimization Search Algorithm -- 2.3 Neural Networks -- 2.4 Related Works -- 3 Methodology -- 3.1 Mathematical Model of NN Tuning -- 3.2 Algorithm of Tuning Model -- 4 Discussion of Results -- 5 Conclusion -- References -- Evaluating Cohesion Score with Email Clustering -- 1 Introduction -- 2 Related Works -- 2.1 Comparison Table -- 3 Proposed Cohesion Evaluation-Based Cluster System -- 3.1 Problem Formulation -- 3.2 Architecture -- 4 Experimental Setup -- 4.1 Dataset -- 4.2 Evaluation Measure -- 5 Result Analysis and Discussion -- 6 Conclusion -- References -- Congestion Control for Named Data Networking-Based Wireless Ad Hoc Network -- 1 Introduction -- 2 Related Work -- 2.1 Congestion Control for NDN in General -- 2.2 Congestion Control for NDN-Based MANET -- 3 Contribution of This Study -- 4 Standbyme Congestion Control as Suggested Solution -- 4.1 Local Congestion Detection -- 4.2 Hop-by-hop Congestion Notification -- 4.3 Multiple Strategy Congestion Avoidance -- 5 Testbed Design and Facility -- 5.1 Experiment Design and Analysis of Result -- 6 Conclusion and Future Work -- 6.1 Conclusion -- References. , A Comparative Review of Various Techniques for Image Splicing Detection and Localization -- 1 Introduction -- 1.1 Need for Image Forgery Detection -- 1.2 Types of Image Forgery -- 1.3 Image Forgery Detection Techniques -- 2 Methodology -- 3 Literature Survey -- 3.1 Comparative Analysis of the Existing Splicing Localization Techniques -- 4 Conclusion -- References -- Analysis and Synthesis of Performance Parameter of Rectangular Patch Antenna -- 1 Introduction -- 2 Micro Strip Antenna Design -- 3 Experimental Result -- 4 Code for Simulation -- 5 Conclusion -- References -- Advanced Computing Technologies and Latest Electrical and Electronics Trends -- Fog Computing Research Opportunities and Challenges: A Comprehensive Survey -- 1 Introduction -- 2 Working of the System -- 2.1 Fog Nodes -- 2.2 Cloud Platform -- 3 Recent Surveys on Fog Computing -- 4 Application of Fog Computing -- 5 Emerging Challenges -- 6 Advantages/Benefits of Fog Computing -- 7 Fog Computing Simulators -- 8 Conclusion and Future Scope -- References -- IIGPTS: IoT-Based Framework for Intelligent Green Public Transportation System -- 1 Introduction -- 1.1 Motivation -- 1.2 Research Contributions -- 1.3 Organization of the paper -- 2 Related Work -- 3 IIGPTS: System components and architecture -- 3.1 System Components -- 3.2 Architecture of IIGPTS -- 4 Performance Evaluation of IIGPTS -- 4.1 Experimental Setup -- 4.2 Simulation Results -- 5 Conclusions and Future Work -- References -- Integrating the AAL CasAware Platform Within an IoT Ecosystem, Leveraging the INTER-IoT Approach -- 1 Introduction -- 2 Interoperability of IoT Artifacts -- 3 CasAware Project Overview -- 3.1 CasAware Architecture -- 3.2 CasAware Integration-Motivating Scenario -- 4 INTER-IoT Project Overview -- 5 Integrating CasAware into INTER-IoT -- 6 Concluding Remarks -- References. , An IoT-Based Solution for Smart Parking -- 1 Introduction -- 2 Background and Related Work -- 3 Proposal and Construction of the Proposed Parking Solution -- 3.1 System Design -- 3.2 System Calibration -- 4 System Evaluation, Demonstration, and Validation -- 5 Conclusion and Future Works -- References -- Online Monitoring of Solar Panel Using I-V Curve and Internet of Things -- 1 Introduction -- 2 Contribution -- 3 Methodologies -- 4 Hardware Descriptions -- 5 Software Description and IoT Implementation -- 6 Conclusion and Future Scope -- References -- Classification of Chest Diseases Using Convolutional Neural Network -- 1 Introduction -- 2 Related Works -- 2.1 Visual Cortex's Receptive Fields -- 2.2 CNN Architecture Origin -- 2.3 Recognition of Image by CNNs Trained Using Gradient Descent -- 2.4 CNN for Lung Nodule Detection -- 3 Convolutional Neural Network -- 4 Methods -- 4.1 Dataset and Preprocessing -- 4.2 Preprocessing Class Labels -- 4.3 CNN Classification Model -- 5 Conclusion -- References -- Age and Gender Prediction Using Convolutional Neural Network -- 1 Introduction -- 2 Machine Learning -- 3 Related Work and Data -- 4 Methodology -- 4.1 Convolutional Neural Network -- 5 Methods for Proposed Work -- 5.1 Data Collection -- 5.2 Dataset Formation -- 5.3 CNN Formation -- 5.4 Training and Testing -- 6 Implemented Work -- 7 Results -- 8 Conclusion -- References -- Vision-Based Human Emotion Recognition Using HOG-KLT Feature -- 1 Introduction -- 2 Related Works -- 3 Proposed Methodology -- 3.1 Extraction of Histogram of Oriented Gradient Feature -- 3.2 Kanade-Lucas-Tomasi (KLT) Feature -- 3.3 Random Forest (RF) Classifier -- 3.4 Support Vector Machine (SVM) -- 4 Results and Analysis -- 4.1 Performance Evaluation Metrics -- 4.2 GEMEP Dataset -- 4.3 Experimental Results on Random Forest Classifiers -- 5 Conclusion -- References. , An Analysis of Lung Tumor Classification Using SVM and ANN with GLCM Features -- 1 Introduction -- 2 Tumor Types -- 3 Methodology -- 3.1 Segmentation Method -- 3.2 Feature Extraction -- 3.3 Classification of Extracted Tumor -- 4 Proposed Work -- 4.1 Segmentation -- 4.2 Feature Extraction -- 4.3 Tumor Classification -- 5 Conclusions and Future Work -- References -- Lane Detection Models in Autonomous Car -- 1 Introduction -- 1.1 Property of Road -- 2 Related Work -- 2.1 Mapping from an Image to Affordance -- 2.2 Mapping from Affordance to Action -- 3 Implementation -- 3.1 The Open Racing Vehicle Simulator Evaluation -- 3.2 Qualitative Assessment -- 3.3 Comparison with Baselines -- 4 Visualization -- 5 Conclusions -- References -- Various Noises in Medical Images and De-noising Techniques -- 1 Introduction -- 2 De-noising Techniques -- 3 Methods for De-noising an Image -- 4 Results of Comparison of De-noising Algorithms -- 5 Removing Salt and Pepper Noise -- 6 Removing Speckle Noise -- 7 De-noising Results for Synthetic Data -- 8 Conclusion -- References -- Debunking Online Reputation Rumours Using Hybrid of Lexicon-Based and Machine Learning Techniques -- 1 Introduction -- 2 Related Work -- 3 The Proposed ReputeCheck Model -- 3.1 Data Collection -- 3.2 Pre-processing -- 3.3 Feature Engineering -- 3.4 Classification -- 4 Results -- 5 Conclusion -- References -- A Novel Approach for Optimal Digital FIR Filter Design Using Hybrid Grey Wolf and Cuckoo Search Optimization -- 1 Introduction -- 2 Design Model of FIR -- 3 Hybrid Grey Wolf and Cuckoo Search Optimization -- 4 Simulation Results -- 4.1 Low-Pass Filter -- 4.2 High-Pass Filter -- 4.3 Band-Pass Filter -- 4.4 Band-Stop Filter -- 5 Analysis of Simulation Result -- 6 Conclusion -- References -- Quasi-opposition-Based Multi-verse Optimization Algorithm for Feature Selection -- 1 Introduction. , 1.1 Structuring of the Paper.
    Location Call Number Limitation Availability
    BibTip Others were also interested in ...
  • 3
    Online Resource
    Online Resource
    Singapore :Springer Singapore Pte. Limited,
    Keywords: Internet of things. ; Electronic books.
    Type of Medium: Online Resource
    Pages: 1 online resource (501 pages)
    Edition: 1st ed.
    ISBN: 9789811560446
    Series Statement: Studies in Big Data Series ; v.76
    DDC: 004.678
    Language: English
    Note: Intro -- Preface -- Contents -- About the Editor -- Introduction and Background of FDA -- Introduction -- 1 Introduction -- 1.1 Internet of Things (IoT) Applications -- 1.2 Fog Computing and Its Role in FDA -- 1.3 Process Model for FDA -- 1.4 FDA Attributes for IoT Applications -- 1.5 Classification for FDA in IoT Application -- 1.6 FDA Research Challenges and Future Direction -- 2 Conclusion -- References -- Introduction to Fog Data Analytics for IoT Applications -- 1 Introduction -- 1.1 Formally Defining Fog Computing -- 1.2 Cisco Vision of Fog Computing -- 2 Role of Fog Computing in IoT Applications -- 3 Why Use Fog Computing -- 4 Architecture of Fog Computing -- 5 How Fog Computing Works? -- 6 Fog Node -- 7 Characterization of Fog Computing -- 8 Fog Computing Versus Cloud Computing -- 8.1 Main Differences Between Fog and Cloud Paradigm -- 9 Edge Computing Versus Fog Computing -- 10 Fog Computing Advantages and Disadvantages -- 11 Fog Computing Applications -- References -- Fog Data Analytics: Systematic Computational Classification and Procedural Paradigm -- 1 Introduction -- 2 Literature Survey -- 3 Taxonomy of Fog Data Analytics -- 4 Case studies of Fog Data Analytics -- 5 Conclusion -- References -- Fog Computing: Building a Road to IoT with Fog Analytics -- 1 Introduction to Fog Computing -- 1.1 IoT Driven Economy and Its Challenges -- 1.2 Fog Computing and Cloud Comparison -- 2 Fog Computing as Solution -- 2.1 Definition of Fog Computing -- 2.2 Fog Computing Platform -- 2.3 Fog Computing: Characteristics -- 2.4 Fog Computing: Architecture -- 2.5 ParStream -- 3 Layers in Fog Computing Architecture -- 3.1 Present Challenges -- 4 Application Management in Fog -- 4.1 Latency-Aware Application Development -- 4.2 Distributed Application Development -- 5 Fog Analytics -- 5.1 Introduction. , 5.2 Fog Computing, Stream Data Analytics, and Big Data Analytics -- 5.3 Machine Learning for Fog Ecosystem -- 5.4 Distributed Parallel Association Rule Mining Techniques for Big Data Scenario -- 5.5 Dynamic Association Mining -- 6 Deep Learning and Big Data -- 7 Approaches for Fog Analytics -- 8 Research Directions -- 9 Case Study -- 10 Conclusion -- References -- Data Collection in Fog Data Analytics -- 1 Introduction -- 2 Methods of Collecting Data -- 3 Optimized Collection of Compressive Data -- 4 Management of Big Data -- 5 Case Studies -- 5.1 Data Collection in Moving Vehicles -- 5.2 Fog Computing in Industrial Automation -- 5.3 Collection of Data Under Water -- 5.4 Water Conservation in Agriculture Using Fog and IoT -- 5.5 IoT Implementation for Collection of Data Using QR Codes -- 5.6 Indoor Air Quality Monitoring Using IoT and Fog -- 5.7 Emotional Profiles -- 5.8 Health Monitoring System Using Fog Computing -- 5.9 Collecting Data Related to Elderly Behaviour -- 5.10 Telehealth Big Data Through Fog Computing -- 5.11 BLE-Based Data Collection -- 5.12 Safety Management System for Miners -- 5.13 Healthcare 4.0 -- 5.14 Comparison on Case Studies -- 6 Conclusions -- References -- Emerging Technologies and Architecture for FDA -- Mobile FOG Architecture Assisted Continuous Acquisition of Fetal ECG Data for Efficient Prediction -- 1 Introduction -- 2 Motivation -- 3 Fetal ECG Analysis and Synthesis -- 3.1 Data Extraction -- 3.2 Pre-processing and Generation of ECG Signal -- 3.3 Fetal ECG Extraction Using Adaptive Noise Cancellation -- 3.4 LMS Extraction -- 3.5 QRS Peak Detection -- 4 Mobile FOG Enabled Architecture -- 5 Design and Implementation -- 6 Results -- 7 Discussion and Outcome -- 8 Conclusion -- References -- Proposed Framework for Fog Computing to Improve Quality-of-Service in IoT Applications -- 1 Introduction -- 2 Cloud Computing. , 3 Fog Computing -- 3.1 Layered Architecture of FC -- 3.2 Challenges of FC -- 4 Data Analytics in FC -- 4.1 Fog Analytics -- 5 Resource Scheduling in FC -- 6 Proposed Framework -- 7 Conclusion and Future Work -- References -- Fog Data Based Statistical Analysis to Check Effects of Yajna and Mantra Science: Next Generation Health Practices -- 1 Introduction -- 1.1 Different Diseases -- 1.2 Machine Vision -- 1.3 Yajna Science and Cure for Different Diseases -- 1.4 Mantra Science -- 1.5 Effects of Yajna and Mantra on Human Health -- 1.6 Role of Technology in Addressing the Problem of Integration of Healthcare System -- 1.7 Impact of Yagya in Reducing the Atmospheric Pollution -- 2 Literature Survey -- 3 Methodology -- 4 Result and Discussion -- 5 Analysis of Fasting Blood Sugar Parameter (FBS) -- 6 Novelty in Our Work -- 7 Recommendations -- 8 Future Scope and Possible Applications -- 9 Limitations -- 10 Conclusions -- References -- Role of IoT in FDA -- Process Model for Fog Data Analytics for IoT Applications -- 1 Need for Fog Computing -- 2 Fog Computing -- 2.1 Advantages of Fog Computing -- 2.2 Cloud-vs-Edge-vs-Fog Computing -- 3 Fog Computing Architecture -- 4 Taxonomy and Process Model for FDA -- 4.1 Data Collection -- 4.2 Fog Nodes Formation -- 4.3 Fog Nodes Connection -- 4.4 Data Storage -- 4.5 Data Analytics -- 4.6 Data Security -- 5 Process Model -- 5.1 Transport IoT Data Through Fog Node -- 6 Challenges -- 7 Case Study -- 7.1 IoT Enabled E-Health Monitoring System (ECG Monitoring Device) Architecture with Fog Layer and Cloud -- 8 Different Tools for Implementation of Fog Computing -- 9 Conclusion -- References -- Medical Analytics Based on Artificial Neural Networks Using Cognitive Internet of Things -- 1 Introduction -- 1.1 Problem Statement -- 1.2 Objectives -- 2 Literature Review -- 2.1 HealthSense -- 2.2 Case Study. , 2.3 Scope of Presented Work -- 2.4 IBM Watson -- 3 Artificial Intelligence and Machine Learning -- 3.1 Artificial Intelligence -- 3.2 Types of Artificial Intelligence -- 3.3 Examples of Artificial Intelligence Systems -- 3.4 Artificial Intelligence Applications -- 3.5 Artificial Intelligence Elements -- 3.6 Machine Learning -- 3.7 Putting Machine Learning to Work -- 3.8 Risks and Limitations -- 3.9 Machine Learning Methods in Healthcare -- 3.10 Support Vector Machines -- 3.11 Artificial Neural Networks -- 4 Methodology -- 4.1 Cognitive Radio Architecture -- 4.2 WBAN: Wireless Body Area Network Architecture -- 4.3 Cognitive Remote Patient Monitoring -- 4.4 CogRPM System -- 4.5 Proposed System Architecture -- 4.6 Communication Protocols for Cognitive-Based RPM System -- 4.7 Priority Wait and Scheduling for CRN -- 5 Results -- 5.1 User-Friendly GUI -- 5.2 Cognitive Radio Results -- 5.3 SVM and Linear Regression ML Algorithm -- 5.4 Neural Network Modeling -- 5.5 Heart Disease Detection and Prediction -- 5.6 Chronic Kidney Disease Detection and Prediction -- 6 Conclusion -- References -- Application of IoT-Based Smart Devices in Health Care Using Fog Computing -- 1 Introduction -- 2 Integrated Architecture of Fog Computing and IoT -- 3 Technologies Used in Fog Computing -- 4 Health Care with Fog Computing and IoT -- 5 Fog Computing Based Healthcare Services and Applications -- 6 Issues and Challenges in Fog Computing -- 7 Conclusion -- References -- Data Reduction Techniques in Fog Data Analytics for IoT Applications -- 1 Introduction -- 2 Related Work -- 2.1 Fog Data Analytics and IoT -- 2.2 Challenges of Fog Data Analytics (FDA) for IoT Applications -- 3 Data Reduction Strategies in FDA for IoT -- 3.1 Missing Values Ratio -- 3.2 Low Variance Filter -- 3.3 Principal Component Analysis -- 3.4 Random Forest -- 3.5 Backward Feature Elimination. , 4 Framework for Data Reduction Strategies in FDA -- 4.1 FDA Framework for IoT -- 4.2 FDA for Image Classification with IoT -- 4.3 Summary -- 5 Conclusion -- References -- Security Issues, Research Challenges, and Opportunities -- Background and Research Challenges for Fog Data Analytics and IoT -- 1 Introduction -- 1.1 Background -- 1.2 Current Situation of Cloud Networking and the Need to Change -- 1.3 Introduction to Fog -- 2 Taxonomy of Fog Data Analytics -- 2.1 Components and Connections -- 2.2 Data Collection -- 2.3 Data Storage -- 3 Architecture and Processing -- 3.1 Interaction Between Layers -- 3.2 Interconnectivity of Nodes -- 4 Challenges and Scope of Improvement -- 4.1 Heterogeneity -- 4.2 Adaptability and Mobility -- 4.3 QoS/QoE -- 4.4 Security and Privacy -- 5 Example Use Case -- 5.1 Smart Traffic Light System -- 6 Conclusion and Future Advancements -- References -- Behavior-Based Approach for Fog Data Analytics: An Approach Toward Security and Privacy -- 1 Introduction -- 2 Our Contribution -- 3 Related Work -- 4 Attack Architecture at Various Layers of Fog Computing -- 5 Typing Behavior Parameters -- 6 Experiment and Results -- 6.1 New User Registration -- 6.2 Distance Metrics and Error Types -- 6.3 User Identification -- 6.4 Results -- 7 Case Study -- 8 Conclusion -- References -- Data Security and Privacy Functions in Fog Data Analytics -- 1 Introduction -- 1.1 What is Fog Computing -- 1.2 Characteristics of Fog Computing -- 1.3 CIA -- 1.4 Security Concerns with Respect to Fog Computing -- 2 Privacy and Security Issues -- 2.1 Need for Privacy and Security in the Fog Architecture -- 2.2 Vulnerability of Fog Nodes -- 2.3 Privacy and Security Fog Versus Cloud -- 3 Types of Attacks -- 3.1 Man in the Middle Attack -- 3.2 Authentication -- 3.3 Distributed Denial of Service -- 3.4 Single Point of Failure and Fault Tolerance. , 3.5 Data Privacy Attacks.
    Location Call Number Limitation Availability
    BibTip Others were also interested in ...
Close ⊗
This website uses cookies and the analysis tool Matomo. More information can be found here...