دسترسی نامحدود
برای کاربرانی که ثبت نام کرده اند
برای ارتباط با ما می توانید از طریق شماره موبایل زیر از طریق تماس و پیامک با ما در ارتباط باشید
در صورت عدم پاسخ گویی از طریق پیامک با پشتیبان در ارتباط باشید
برای کاربرانی که ثبت نام کرده اند
درصورت عدم همخوانی توضیحات با کتاب
از ساعت 7 صبح تا 10 شب
ویرایش: 1
نویسندگان: Peng Zhang (editor)
سری:
ISBN (شابک) : 1119890853, 9781119890850
ناشر: Wiley-IEEE Press
سال نشر: 2024
تعداد صفحات: 0
زبان: English
فرمت فایل : RAR (درصورت درخواست کاربر به PDF، EPUB یا AZW3 تبدیل می شود)
حجم فایل: 222 مگابایت
در صورت تبدیل فایل کتاب Microgrids: Theory and Practice (IEEE Press Series on Power and Energy Systems) به فرمت های PDF، EPUB، AZW3، MOBI و یا DJVU می توانید به پشتیبان اطلاع دهید تا فایل مورد نظر را تبدیل نمایند.
توجه داشته باشید کتاب ریزشبکه ها: تئوری و عمل (مجموعه مطبوعاتی IEEE در مورد سیستم های قدرت و انرژی) نسخه زبان اصلی می باشد و کتاب ترجمه شده به فارسی نمی باشد. وبسایت اینترنشنال لایبرری ارائه دهنده کتاب های زبان اصلی می باشد و هیچ گونه کتاب ترجمه شده یا نوشته شده به فارسی را ارائه نمی دهد.
Cover Title Page Copyright Contents About the Editor List of Contributors Preface Acknowledgments Chapter 1 Introduction 1.1 Background 1.2 Reader\'s Manual 1.2.1 Volume I: Theory 1.2.1.1 Platform 1.2.1.2 Steady‐State Analysis 1.2.1.3 Dynamics and Stability 1.2.1.4 Resilience 1.2.1.5 Control and Optimization 1.2.1.6 Cyber Infrastructure and Cybersecurity 1.2.2 Volume II: Practice 1.2.2.1 Community Microgrids 1.2.2.2 Control, Protection, and Analytics 1.2.2.3 Microgrid as a Service Chapter 2 AI‐Grid: AI‐Enabled, Smart Programmable Microgrids 2.1 Introduction 2.2 AI‐Grid Platform 2.3 AI‐Enabled, Provably Resilient NM Operations 2.3.1 Neuro‐Reachability: AI‐Enabled Dynamic Verification of NMs Dynamics 2.3.2 Neuro‐DSE: AI‐Enabled Dynamic State Estimation 2.3.3 Neural‐Adaptability: AI‐Based Resilient Microgrid Control 2.4 Resilient Modeling and Prediction of NM States Under Uncertainty 2.4.1 Hybrid Neural ODE‐SDE Graph Modeling of NM Dynamics 2.4.2 NeuralODE with Soft‐Masking to Adapt to Spatially Partial Observations 2.4.3 NeuralSDE with Wasserstein Adversarial Training for Efficient Learning of Process Uncertainty 2.4.4 Experiments 2.4.4.1 Overall Performance 2.4.4.2 Performance in the Presence of Noise 2.4.4.3 Prototyping 2.5 Runtime Safety and Security Assurance for AI‐Grid 2.5.1 Introduction 2.5.1.1 Architectural Overview of Bb‐Simplex 2.5.2 Preliminaries 2.5.2.1 BaC Synthesis Using SOS Optimization 2.5.2.2 BaC Synthesis Using Deep Learning 2.5.3 Deriving the Switching Condition 2.5.3.1 Forward Switching Condition 2.5.3.2 Reverse Switching Condition 2.5.3.3 Decision Logic 2.5.4 Application to Microgrids 2.5.4.1 Baseline Controller 2.5.4.2 Neural Controller 2.5.4.3 Adaptation Module 2.5.5 Implementation and Experiments 2.5.5.1 Integration of Bb‐Simplex in RTDS 2.5.5.2 User Interface 2.5.5.3 Consistency of RTDS and MATLAB Models 2.5.5.4 Evaluation of Forward Switching Condition 2.5.5.5 Evaluation of Neural Controller 2.5.5.6 Evaluation of Adaptation Module 2.5.6 Extension to Approximate Dynamics 2.5.6.1 Impact of Approximate Dynamics on BaC 2.5.6.2 Impact of Approximate Dynamics on FSC 2.5.7 Extension to Hybrid Systems 2.5.7.1 Switching Logic for Hybrid Systems 2.5.7.2 FSC for Hybrid Systems 2.5.8 Related Work 2.6 Software Platform for AI‐Grid 2.6.1 Infrastructure Overview 2.6.1.1 Real Time Digital Simulator (RTDS) 2.6.1.2 Windows 2.6.1.3 Network 2.6.1.4 SQL Server 2.6.1.5 Python 2.6.1.6 DNP3 2.6.1.7 Asp.net Web Server 2.6.2 Software Architecture Overview 2.6.3 Software Architecture Component 2.6.3.1 RTDS 2.6.3.2 DNP3 2.6.3.3 Special Encoding/Decoding Process 2.6.3.4 SQL Server 2.6.3.5 AI‐Grid Control Function 2.6.4 Customization for Each Team 2.6.4.1 SDC 2.6.4.2 Power Flow 2.6.4.3 Digital Twin User Interface 2.7 AI‐Grid for Grid Modernization 2.8 Exercises References Chapter 3 Distributed Power Flow and Continuation Power Flow for Steady‐State Analysis of Microgrids 3.1 Background 3.2 Individual Microgrid Power Flow 3.2.1 Enhanced Newton‐Type Power Flow 3.2.1.1 EMPF Formulation 3.2.1.2 Modified Jacobian Matrix 3.2.2 Revisited Implicit Zbus Power Flow 3.2.2.1 Basic GRev Formulation 3.2.2.2 GRev with Hierarchical Control 3.2.3 Generalized Back/Forward Sweep Power Flow 3.2.3.1 Direct Back/Forward Sweep Method 3.2.3.2 Generalized Microgrid Power Flow Algorithm 3.3 Networked Microgrids Power Flow 3.3.1 Networked Microgrids Architecture 3.3.2 Distributed NMPF Formulation 3.3.2.1 Power Sharing (PS) Mode 3.3.2.2 Voltage Regulation (VR) Mode 3.3.3 Distributed NMPF Algorithm 3.3.4 APF‐Based Continuation Power Flow 3.4 Numerical Tests of Microgrid Power Flow 3.4.1 Validity of Individual Microgrid Power Flow 3.4.1.1 Power Flow Results for Different Microgrid Configurations 3.4.1.2 Power Flow Results Under Various Control Modes 3.4.2 Validity of Networked Microgrids Power Flow 3.4.2.1 APF Results Under Droop Control 3.4.2.2 APF Results Under PS Control 3.4.2.3 APF Results Under VR Control 3.4.2.4 Convergence Performance of APF 3.5 Exercises References Chapter 4 State and Parameter Estimation for Microgrids 4.1 Introduction 4.2 State and Parameter Estimation for Inverter‐Based Resources 4.2.1 Background and Motivation 4.2.2 Overview of CPDSE Framework 4.2.2.1 Cyber‐Physical State‐Space Representation of IBRs 4.2.2.2 Comparison with Conventional Single‐State‐Space Representation 4.2.2.3 CPDSE and CPDPE for IBRs 4.2.3 Examples of Cyber‐Physical State‐Space Models 4.2.3.1 Physical State‐Space Model 4.2.3.2 Cyber State‐Space Model 4.2.4 CKF for Dynamic State Estimation and Bad Data Processing 4.2.5 Simulation Results 4.3 State and Parameter Estimation for Network Components 4.3.1 Background and Motivation 4.3.2 Dynamic State Estimation‐Based Protection for Microgrid Circuits 4.3.3 Dynamic State Estimation‐Based Fault Location for Microgrid Circuits 4.4 Conclusion 4.5 Exercise 4.6 Acknowledgment References Chapter 5 Eigenanalysis of Delayed Networked Microgrids 5.1 Introduction 5.2 Formulation of Delayed NMs 5.3 Delayed NMs Eigenanalysis 5.3.1 Solution Operator Basics 5.3.2 ODE‐SOD Eigensolver 5.4 Case Study 5.4.1 Methodology Validity 5.4.2 Cyber Network\'s Impact on NMs Stability 5.4.2.1 Impact of Communication Delay 5.4.2.2 Impact of Measurement Delay 5.4.3 Electrical Network\'s Impact on NMs Stability 5.5 Conclusion 5.6 Exercises References Chapter 6 AI‐Enabled Dynamic Model Discovery of Networked Microgrids 6.1 Preliminaries on ODE‐Based Dynamical Modeling of NMs 6.1.1 Formulation of DERs with Hierarchical Control 6.1.2 Formulation of Network Dynamics 6.1.3 ODE‐Enabled NMs Dynamic Model 6.2 Physics‐Data‐Integrated ODE Model of NMs 6.2.1 Physics‐Based InSys Formulation 6.2.2 Data‐Driven ExSys Formulation 6.3 ODE‐Net‐Enabled Dynamic Model Discovery for Microgrids 6.3.1 ODE‐Net‐Based State‐Space Model Formulation 6.3.2 Continuous‐Time Learning Model for ODE‐Net 6.3.2.1 Discrete‐Time Learning 6.3.2.2 Continuous‐Time Learning 6.3.3 Continuous Backpropagation 6.3.4 Further Discussion 6.4 Physics‐Informed Learning for ODE‐Net‐Enabled Dynamic Models 6.4.1 Physics‐Informed Formulation for ODE‐Net Training 6.4.2 Physics‐Informed Continuous Backpropagation 6.5 Experiments 6.5.1 Case Design 6.5.1.1 Test System 1 6.5.1.2 Test System 2 6.5.2 Method Validity 6.5.3 Method Scalability 6.5.4 Method Superiority over Discrete‐Time Learning 6.6 Summary 6.7 Exercises References Chapter 7 Transient Stability Analysis for Microgrids with Grid‐Forming Converters 7.1 Background 7.2 System Modeling 7.2.1 Grid‐Following Inverter 7.2.2 Grid‐Forming Inverter 7.2.3 SG Model 7.2.4 Network Model 7.2.5 Fault Model 7.3 Metric for Transient Stability 7.4 Microgrid Transient Stability Analysis 7.4.1 Transient Stability of an Islanded Microgrid with Single SG 7.4.2 Impact of GFL Inverter on Transient Stability of an Islanded Microgrid 7.4.3 Impact of GFM and Parameter Tuning on Transient Stability of an Islanded Microgrid 7.4.4 The Transient Stability of an Islanded Microgrid with Only GFM 7.5 Conclusion and Future Directions 7.6 Exercises References Chapter 8 Learning‐Based Transient Stability Assessment of Networked Microgrids 8.1 Motivation 8.2 Networked Microgrid Dynamics 8.3 Learning a Lyapunov Function 8.3.1 Stability of Equilibrium Points 8.3.2 Neural Network Architecture 8.3.3 Neural Lyapunov Methods 8.4 Case Study 8.5 Summary 8.6 Exercises References Chapter 9 Microgrid Protection 9.1 Introduction 9.1.1 Motivation 9.2 Protection Fundamentals 9.2.1 Big Picture 9.2.2 Protection Systems and Actions 9.2.2.1 Overcurrent Element 9.2.2.2 Distance Element 9.2.2.3 Current Differential 9.2.2.4 Directional Comparison 9.2.3 Phasor‐Based Protection 9.2.4 Full‐Cycle Fourier Transformation 9.2.5 Superimposed Quantities 9.2.6 Traveling Wave‐Based Protection 9.2.7 Centralized Protection 9.3 Typical Microgrid Protection Schemes 9.3.1 Subtransmission 9.3.2 Distribution 9.3.2.1 Radial 9.3.2.2 Looped/Meshed 9.3.2.3 Typical Response Times 9.3.3 IEEE 1547 Guidelines for DERs 9.4 Challenges Posed by Microgrids 9.4.1 Challenges Posed by Changes in Operational Mode 9.4.1.1 Short‐Circuit Capacity 9.4.1.2 Current‐Flow Direction 9.4.2 Challenges Posed by DER Operation 9.4.2.1 Voltage Regulation and Stability 9.4.2.2 Frequency Decay and Angular Stability 9.4.3 IBR Challenges 9.4.3.1 Impacts of IBR Fault Current 9.4.3.2 Impacts Posed by IBR to Protection Schemes 9.5 Examples of Solutions in Practice 9.5.1 Case 1: North Bay Hydro Microgrid 9.5.1.1 Challenges 9.5.1.2 Protection Overview 9.5.1.3 Solution 9.5.2 Case 2: IIT Microgrid 9.5.2.1 Challenges 9.5.2.2 Protection Overview 9.5.2.3 Solution 9.5.3 Case 3: Duke Energy Microgrid 9.5.3.1 Microgrid Overview and Challenges 9.5.3.2 Solution 9.5.4 Protection of DC Microgrids 9.6 Summary 9.7 Exercises References Chapter 10 Microgrids Resilience: Definition, Measures, and Algorithms 10.1 Background of Resilience and the Role of Microgrids 10.1.1 Essence of Resilience 10.1.2 Microgrids in Resilience 10.2 Enhance Power System Resilience with Microgrids 10.2.1 Investment Planning 10.2.1.1 Sitting and Sizing of Distributed Generators 10.2.1.2 Infrastructure Hardening 10.2.2 Pre‐Event Preparation 10.2.2.1 Mobile Emergency Resource Prepositioning 10.2.2.2 Proactive Management of Microgrids 10.2.3 Efficient Restoration 10.2.3.1 Coordinated Operation of Networked Microgrids 10.2.3.2 Microgrids Formation in Distribution Systems 10.3 Future Challenges 10.4 Exercises References Chapter 11 In Situ Resilience Quantification for Microgrids 11.1 Introduction 11.1.1 Background and Motivation 11.2 STL‐Enabled In Situ Resilience Evaluation 11.2.1 Robustness Computation Using STL 11.2.2 STL Requirements for Microgrids 11.2.3 In Situ Resilience Quantification Mechanism 11.3 Case Study 11.3.1 Experimental Setup 11.3.2 Experimental Results 11.3.2.1 DER Disconnection 11.3.2.2 Load Shedding 11.3.3 Comparison with Existing Method 11.4 Conclusion 11.5 Exercises 11.6 Acknowledgment References Chapter 12 Distributed Voltage Regulation of Multiple Coupled Distributed Generation Units in DC Microgrids: An Output Regulation Approach 12.1 Introduction 12.2 Problem Statement 12.3 Review of Output Regulation Theory 12.4 Distributed Voltage Regulation in the Presence of Time‐Varying Loads 12.5 Simulation Results 12.5.1 State Feedback Design 12.5.1.1 Scenario 1: Constant Loads 12.5.1.2 Scenario 2: Sinusoidal Loads 12.5.1.3 Scenario 3: Pulsed Loads 12.5.2 Output Feedback Design 12.5.2.1 Scenario 1: Constant Loads 12.5.2.2 Scenario 2: Sinusoidal Loads 12.5.2.3 Scenario 3: Pulsed Loads 12.6 Conclusions 12.7 Exercises 12.8 Acknowledgment References Chapter 13 Droop‐Free Distributed Control for AC Microgrids 13.1 Cyber‐Physical Microgrid Modeling 13.1.1 Power Network 13.1.2 Communication Network 13.2 Hierarchical Control of Islanded Microgrid 13.2.1 Zero‐Level Control 13.2.2 Primary Control 13.2.3 Distributed Secondary Control with Droop 13.3 Droop‐Free Distributed Control with Proportional Power Sharing 13.3.1 Distributed Average Voltage Estimation 13.3.2 Voltage Regulation 13.3.3 Frequency Regulation 13.4 Droop‐Free Distributed Control with Voltage Profile Guarantees 13.4.1 Distributed Voltage Variance Estimation 13.4.2 Voltage Variance Regulator 13.4.3 Relaxed Reactive Power Regulator 13.5 Steady‐State Analysis for the Control in Section 13.4 13.6 Microgrid Test System and Control Performance 13.7 Steady‐State Performance Under Different Loading Conditions and Controller Settings 13.8 Exercises References Chapter 14 Optimal Distributed Control of AC Microgrids 14.1 Optimization Problem for Secondary Control 14.1.1 Formulated Optimization Problem 14.1.2 Convex Optimization Problem 14.1.3 Convexity of Problem (14.8) 14.1.4 Distinct Features of the Formulation 14.2 Primal–Dual Gradient Based Distributed Solving Algorithm 14.2.1 Augmented Lagrangian 14.2.2 Standard Primal–Dual Gradient Algorithm 14.2.3 Non‐Separable Objective Function 14.2.4 Distributed Average Voltage Estimation 14.2.5 Coupled Reactive Power Inequality Constraints 14.2.6 Solving Algorithm 14.3 Microgrid Test Systems 14.4 Control Performance on 4‐DG System 14.4.1 Performance Under Different α and β 14.4.2 Performance Under Heavy Load Scenario 14.5 Control Performance on IEEE 34‐Bus System 14.5.1 Performance Under Load Change 14.5.2 Performance Under A Wide Range of Load Scenarios 14.5.3 Optimality Comparison 14.5.4 Performance Under Line Parameter Uncertainty 14.6 Exercises References Chapter 15 Cyber‐Resilient Distributed Microgrid Control 15.1 Push‐Sum Enabled Resilient Microgrid Control 15.1.1 Push‐Sum‐Based Resilient Distributed Control 15.1.1.1 Case Studies 15.2 Employing Interacting Qubits for Distributed Microgrid Control 15.2.1 Preliminaries 15.2.1.1 Graph Theory 15.2.1.2 Quantum Systems and Notations 15.2.2 Quantum Distributed Control 15.2.2.1 Algorithm 15.2.2.2 Analysis 15.2.2.3 Numerical Example 15.2.3 Quantum Distributed Controller for AC and DC Microgrids 15.2.3.1 Quantum Distributed Frequency Control 15.2.3.2 Verification on an AC Networked‐Microgrid Case Study 15.2.3.3 Quantum Distributed Voltage Control for DC Microgrids 15.2.3.4 Verification on a DC Microgrid Case Study 15.2.4 Discussion and Outlook 15.2.4.1 Realization 15.2.4.2 Outlook References Chapter 16 Programmable Crypto‐Control for Networked Microgrids 16.1 Introduction 16.2 PCNMs and Privacy Requirements 16.2.1 Architecture of PCNMs 16.2.2 Formulations of Programmable Control 16.2.3 Privacy Requirement in PCNMs 16.3 Dynamic Encrypted Weighted Addition 16.3.1 The Paillier Cryptosystem 16.3.1.1 Overview of The Paillier Cryptosystem 16.3.1.2 Homomorphism 16.3.2 Additive Zero Secret Sharing 16.3.3 The DEWA Algorithm 16.4 DEWA Privacy Analysis 16.4.1 Privacy Analysis 16.4.1.1 Scenario 1 16.4.1.2 Scenario 2 16.4.2 Security Level Analysis 16.5 Case Studies 16.5.1 The PCNMs Testbed 16.5.2 The Impact of DEWA 16.5.3 DEWA Delays and Eigen Analysis of DEWA‐Based PCNMs 16.5.4 Privacy Evaluation for DEWA 16.5.5 Benefit of SDN‐Enabled Crypto‐Control 16.5.6 Comparison of DEWA with Existing Scheme 16.6 Conclusion 16.7 Exercises References Chapter 17 AI‐Enabled, Cooperative Control, and Optimization in Microgrids 17.1 Introduction 17.2 Energy Hub Model in Microgirds 17.3 Distributed Adaptive Cooperative Control in Microgrids 17.3.1 Structure and Feature Analysis 17.3.2 The Control of Outputs Based on Consensus Algorithm 17.3.3 The Control of Devices Based on Improved Equal Increment Principle 17.3.4 Example 17.3.4.1 Example 1 17.3.4.2 Example 2 17.4 Optimal Energy Operation in Microgrids Based on Hybrid Reinforcement Learning 17.4.1 Multi‐objective Optimization Model Formulation 17.4.1.1 Objective 17.4.1.2 Constraints 17.4.2 Multi‐Policy Convex Hull Reinforcement Learning with Human‐in‐the‐Loop 17.4.2.1 Formulation of Multi‐Policy Convex Hull Reinforcement Learning 17.4.2.2 Two‐Channel Human‐in‐the‐Loop Mechanism 17.4.3 Example 17.4.3.1 System Initialization 17.4.3.2 Example 1 17.4.3.3 Example 2 17.5 Conclusion 17.6 Exercises References Chapter 18 DNN‐Based EV Scheduling Learning for Transactive Control Framework 18.1 Introduction 18.2 Transactive Control Formulation 18.3 Proposed Deep Neural Networks in Transactive Control 18.4 Case Study 18.5 Simulation Results and Discussion 18.6 Conclusion 18.7 Exercises References Chapter 19 Resilient Sensing and Communication Architecture for Microgrid Management 19.1 Introduction 19.1.1 Background and Motivation 19.1.2 Overview of Microgrid Sensing Technology 19.1.2.1 Remote Terminal Units (RTUs) and Intelligent Electronic Devices (IEDs) 19.1.2.2 Phasor Measurement Units (PMUs) 19.1.2.3 Smart Meters 19.1.2.4 Smart Inverter 19.1.3 Overview of Microgrid Communication Technology 19.1.3.1 Wired Communication 19.1.3.2 Wireless Communication 19.2 Resilient Sensing and Communication Network Planning Against Multidomain Failures 19.2.1 Observability Analysis and PMUs 19.2.2 Concept Definition 19.2.3 Fundamental Design Principles 19.2.4 Resilient PMU Placement and Essential Role Selection 19.2.4.1 Resilient PMU Placement 19.2.4.2 Essential Role Selection 19.2.5 Observability‐Aware Resilient Communication Link Placement 19.2.6 Optimal PMU‐Communication Link Selection 19.2.7 Case Study 19.2.7.1 Simulation Setup 19.2.7.2 Simulation Results 19.3 Observability‐Aware Network Routing for Fast and Resilient Microgrid Monitoring 19.3.1 Problem Statement 19.3.2 Shared Observability PMU Group (SOPG) 19.3.3 Fundamental Routing Principles 19.3.4 Cost Metric Definition 19.3.5 Routing Algorithm 19.3.6 Case Study 19.3.6.1 Test Case for IEEE 30‐Bus System 19.3.6.2 Performance Comparison with Baseline 19.4 Conclusion 19.5 Exercises References Chapter 20 Resilient Networked Microgrids Against Unbounded Attacks 20.1 Introduction 20.1.1 Background and Motivation of Attack‐Resilient Secondary Control of AC Microgrids 20.1.2 Background and Motivation of Attack‐Resilient Secondary Control of DC Microgrids 20.2 Adaptive Resilient Control of AC Microgrids Under Unbounded Actuator Attacks 20.2.1 Preliminaries on Graph Theory and Notations 20.2.2 Conventional Cooperative Secondary Control of AC Microgrids 20.2.3 Problem Formulation 20.2.4 Distributed Resilient Controller Design 20.2.5 Case Studies 20.3 Distributed Resilient Secondary Control of DC Microgrids Against Unbounded Attacks 20.3.1 Preliminaries 20.3.2 Standard Cooperative Secondary Control 20.3.3 Resilient Secondary Control 20.3.3.1 Attack‐Resilient Secondary Control Problem Formulation 20.3.3.2 Distributed Attack‐Resilient Secondary Controller Design 20.3.4 Hardware‐in‐the‐Loop Validation 20.3.4.1 DC Microgrid HIL Testbed 20.3.4.2 Response to the Link Failure and Load Change 20.3.4.3 Performance Assessment Under Unknown Unbounded Attacks 20.3.4.4 Performance Assessment Under Unknown Bounded Attacks 20.4 Conclusion 20.5 Acknowledgment 20.6 Exercises References Chapter 21 Quantum Security for Microgrids 21.1 Background 21.1.1 Securing Microgrid Data Transmission 21.1.2 The Quantum Era is Coming 21.2 Quantum Communication for Microgrids 21.2.1 Overview of Quantum Cryptography 21.2.2 Basics of Quantum Key Distribution 21.2.2.1 Quantum States 21.2.2.2 General Setting of a QKD System 21.2.2.3 The Practical Decoy‐State QKD Protocol 21.2.2.4 Benefits of Using QKD for Microgrids 21.3 The QKD Simulator 21.4 Quantum‐Secure Microgrid 21.4.1 Quantum Communication Architecture for Microgrid 21.4.2 Quantum‐Secure Microgrid Testbed 21.4.2.1 High‐Level Design 21.4.2.2 QKD‐Based Microgrid Communication Network 21.4.2.3 Microgrid Modeling and Operation 21.5 Quantum‐Secure NMs 21.5.1 Quantum Communication Architecture for NMs 21.5.2 Quantum‐Secure NMs Testbed 21.5.2.1 QKD‐Enabled Testing Environment 21.5.2.2 Quantum‐Secure NMs Communication Network 21.6 Experimental Results 21.6.1 Impact of Data Transmission Speed 21.6.2 Effectiveness of QKD‐Enabled Communication 21.6.3 Performance of QKD‐Enabled Microgrid When Quantum Keys Are Exhausted 21.6.4 Impact of QKD on Real‐Time Microgrid Operations 21.6.5 Evaluation of Quantum Key Generation Speed Under Different Fiber Lengths and Noise Levels 21.6.6 Evaluation of Quantum Key Generation Speed Under Different Receiver\'s Detection Efficiencies 21.6.7 Comparison of Different QKD Protocols 21.7 Future Perspectives 21.8 Summary 21.9 Exercises References Chapter 22 Community Microgrid Dynamic and Power Quality Design Issues 22.1 Introduction 22.2 Potsdam Resilient Microgrid Overview 22.3 Power Quality Parameters and Guidelines 22.3.1 Voltage Magnitude 22.3.2 Voltage Flicker 22.3.3 Temporary Overvoltage Guidelines 22.3.4 Disruptive Undervoltage Events 22.3.5 Harmonics 22.3.6 Frequency Variations 22.3.7 IEEE 1547.4‐2011 22.4 Microgrid Analytical Methods 22.4.1 Modeling Tools 22.4.2 Simplified Spreadsheet Model Calculations 22.5 Analysis of Grid Parallel Microgrid Operation 22.5.1 Voltage Regulation (Grid Parallel) 22.5.1.1 Voltage Drop Due to Load 22.5.1.2 Voltage Rise Due to Generation 22.5.1.3 Calculating Net Voltage Change on Practical Feeders 22.5.2 Voltage Sensitivity Test (Grid‐Parallel Mode of Operation) 22.5.3 Substation LTC Response and Feeder Regulator as a Solution 22.5.4 Voltage Change Within the Microgrid 22.5.5 Low Generation Case: Low Voltage Issues 22.5.6 Voltage Flicker Conditions (Grid Parallel Condition) 22.5.7 Voltage Flicker and Voltage Changes on 115 kV Transmission 22.5.8 Unusual Load and DG Interactions That Might Cause Flicker 22.5.9 High Steady‐State Voltage at Generator Terminals 22.5.10 Operating Mode for Generator Controller (In Grid‐Parallel State) 22.6 Fault Current Contributions and Grounding 22.6.1 Unintended Islanding Protection (in Grid‐Parallel Mode) 22.6.2 Unintentional Islands of Interest 22.6.3 Alternatives to DTT 22.6.4 Ground Fault Overvoltage (Grid Parallel Mode) 22.6.4.1 Ground Fault Overvoltage Background 22.6.5 IEEE Effective Grounding 22.6.6 Effective Grounding Status of Potsdam DG Sites 22.6.7 Effective Grounding of DG with Respect to 115 kV System 22.6.8 Mitigation of Ground Fault Overvoltage 22.6.9 Load Rejection Overvoltage 22.7 Microgrid Operation in Islanded Mode 22.7.1 Initial Switching Transitions and Start‐Up Procedures for Islanding Mode 22.7.2 Returning to Grid Parallel Mode from Intentional Island 22.7.3 Synchronization during Transitions and Aggregations 22.7.4 Coordinating Islanded Microgrid Operation with UPS Ride‐Through Capability and UPS Frequency Limits 22.7.5 Power Mismatch Allowance for Seamless Intentional Island Formation 22.7.6 Inverter‐Based Resource (IBR) Compatibility 22.7.7 Avoiding Cable‐Resonances During Startup Procedure 22.7.8 Fault Levels (Islanded) 22.7.9 Voltage Flicker Levels During Motor Starts (Islanded) 22.7.10 Voltage Sags During Transformer Inrush (Islanded) 22.7.11 Cold Load Pickup 22.7.12 Microgrid Primary Voltage Target Level 22.7.13 Voltage Changes Due to PV Power Variations 22.7.14 Frequency Regulation (Islanded) 22.7.15 Harmonics (Islanded) 22.7.16 Load Unbalance (Islanded) 22.7.17 Microgrid Effective Grounding (Islanded) 22.7.18 DG Plant Stability (Grid Parallel and Islanded) 22.7.19 Energy Storage for Stability and Seamless Transition 22.8 Conclusions and Recommendations 22.9 Exercises 22.10 Acknowledgment References Chapter 23 A Time of Energy Transition at Princeton University 23.1 Introduction 23.2 Cogeneration 23.3 The Magic of The Refrigeration Cycle 23.4 Capturing Heat, Not Wasting It 23.5 Multiple Forms of Energy Storage 23.6 Daily Thermal Storage – Chilled or Hot Water 23.7 Seasonal Thermal Storage – Geoexchange 23.8 Moving to Renewable Electricity as the Main Energy Input 23.9 Water Use Reduction 23.10 Closing Comments Chapter 24 Considerations for Digital Real‐Time Simulation, Control‐HIL, and Power‐HIL in Microgrids/DER Studies 24.1 Introduction 24.2 Considerations and Applications for Real‐Time Simulation 24.2.1 Challenges to Real‐Time Simulation of Microgrids with Modern Converters 24.2.2 Modeling Power Converter for Real‐Time Simulation and HIL Tests 24.2.3 Solving Microgrid Models Through an FPGA 24.2.4 Smart Inverters for Microgrid Applications 24.2.5 Digital Twins 24.3 Considerations and Applications of Control Hardware‐in‐the‐Loop 24.3.1 Microgrid Control System Testing 24.3.2 GHOST Microgrid 24.3.3 CHIL Using Microcontrollers 24.4 Considerations and Applications of Power Hardware‐in‐the‐Loop 24.4.1 Selecting the Right Power Amplifier for a PHIL Application 24.4.2 PHIL Interfacing 24.4.3 Network and DER Emulators 24.4.3.1 Network Emulator 24.4.3.2 PVGS Emulator 24.5 Concluding Remarks 24.6 Exercises References Chapter 25 Real‐Time Simulations of Microgrids: Industrial Case Studies 25.1 Universal Converter Model Representation 25.2 Practical Microgrid Case 1: Aircraft Microgrid System 25.2.1 Electrical System Modeling 25.2.2 System Simulation 25.3 Practical Microgrid Case 2: Banshee Power System 25.3.1 System Modeling 25.3.2 System Simulation 25.4 Summary 25.5 Exercises References Chapter 26 Coordinated Control of DC Microgrids 26.1 DC Droop 26.1.1 Linear Droop Control Scheme 26.1.2 Piecewise Linear Formation of DC Droop 26.1.3 Case Study 26.2 Hierarchical Control Scheme 26.3 Average Voltage Sharing 26.3.1 Anti Windup 26.3.2 Pilot Bus Regulation 26.3.3 Dynamic Analysis 26.4 Bus Line Communication 26.4.1 Dual Active Bridge 26.4.2 Active DC Bus Signaling 26.4.3 Operation Principle and Control Logic 26.4.4 Case Study and Simulation 26.4.4.1 Discharging Test 26.4.4.2 Charging Test 26.5 Summary 26.6 Exercises References Chapter 27 Foundations of Microgrid Resilience 27.1 Introduction 27.2 Background/Problem Statement 27.3 Defining Resilience 27.3.1 Energy Security 27.3.2 Defining Resilience 27.3.3 Microgrid Cost 27.3.4 Assessing Resilience and Cost 27.3.5 Climate Resilience 27.3.6 Assessing Climate Resilience 27.4 Resilience Analysis Examples 27.4.1 Analysis of Resilience Versus Cost 27.4.2 Analysis of Climate Resilience 27.5 Discussion and Future Work 27.6 Conclusion 27.7 Acknowledgments 27.8 Exercises Labs 27.8.0 Lab 1: Resilience‐Cost Assessment 27.8.0.0 Background 27.8.0.0 Required Documents 27.8.0 Lab 2: Optimizing Renewable Energy Microgrids 27.8.0.0 Background 27.8.0 Lab 3: Optimizing Renewable Energy for McMurdo Station, Antarctica 27.8.0.0 Background References Chapter 28 Reliability Evaluation and Voltage Control Strategy of AC–DC Microgrid 28.1 Introduction 28.2 Typical Topology Evaluation of AC–DC Microgrid 28.2.1 Typical Topology of AC–DC Microgrid 28.2.1.1 AC Grid‐Connected Type 28.2.1.2 DC Grid‐Connected Type 28.2.1.3 AC–DC Bus Co‐Connected Type 28.2.1.4 AC–DC Bus Co‐Connected Interconnected Type 28.2.2 Reliability Modeling of AC–DC Microgrid 28.2.2.1 Reliability Model of PV Power Generation System 28.2.2.2 Reliability Model of Wind Power Generation System 28.2.2.3 Reliability Model of Diesel Generator and Energy Storage 28.2.2.4 Reliability Model of Load 28.2.3 Reliability Analysis for the AC–DC Microgrid 28.2.3.1 Equivalent Model of PCC 28.2.3.2 Reliability Assessment for the AC–DC Microgrid Based on PCC Equivalent Generator Model 28.3 Coordinated Optimization for the AC–DC Microgrid 28.3.1 Small Signal Model of Droop Control AC–DC Microgrid 28.3.1.1 VSC Model 28.3.1.2 The Line Model 28.3.1.3 The Load Model 28.3.2 Objective Function and Constraints for Droop Coefficient Optimization 28.3.2.1 Objective Function 28.3.2.2 Constraints 28.3.3 Optimal Solution Algorithm for Droop Coefficient 28.4 Case Study 28.4.1 Reliability Analysis of AC–DC Microgrid 28.4.2 Voltage Control Strategy of AC–DC Microgrid 28.4.2.1 Analysis of Optimization Results 28.4.2.2 Analysis of Droop Coefficient Optimization Results 28.4.2.3 Model Comparison Analysis 28.5 Actual Project Construction 28.6 Conclusion 28.7 Exercises References Chapter 29 Self‐Organizing System of Sensors for Monitoring and Diagnostics of a Modern Microgrid 29.1 Introduction 29.2 Structures for Building Modern Microgrids 29.2.1 Fundamental Structures 29.2.1.1 Branching 29.2.1.2 Loops 29.2.2 Dynamic Structure 29.3 Requirements for the Monitoring and Diagnostics System of Modern Microgrids 29.4 Communication Systems in Microgrids 29.5 Sensors 29.5.1 Energy Flow Sensor 29.5.1.1 Construction of the Sensor 29.5.2 Why Energy Flow Sensors and not Ammeters? 29.6 Network Topology Identification Algorithm 29.6.1 Algorithm 29.6.2 Simplified Algorithm 29.6.3 Illustration of the Algorithm 29.7 Implementation 29.8 Exercise References Chapter 30 Event Detection, Classification, and Location Identification with Synchro‐Waveforms 30.1 Introduction 30.2 Event Detection 30.2.1 Synchronized Lissajous Curve 30.2.2 Event Detection Methodology 30.2.3 Event Detection Results 30.3 Event Classification 30.3.1 Challenging Factors 30.3.1.1 Impact of the Event Angle 30.3.1.2 Impact of the Event Location 30.3.1.3 Impact of other Event Parameters 30.3.2 Synchronized Lissajous Curve as Image 30.3.3 Convolutional Neural Networks 30.3.4 Event Classification Results 30.3.5 Classification Based on Images Versus Time Series 30.4 Event Location Identification 30.4.1 Modal Analysis of Captured Transient Synchronized Waveform Measurements 30.4.1.1 Single‐Signal Versus Multi‐Signal Modal Analysis 30.4.1.2 Selecting the Time Window and the Number of Modes 30.4.1.3 Selecting the Dominant Transient Event Mode(s) 30.4.1.4 Comparison with Time‐Domain Analysis 30.4.2 Constructing the Feeder Model at the Dominant Transient Modes 30.4.2.1 Case I: Transient Event Does Not Create a New Mode 30.4.2.2 Case II: Transient Event Creates a New Mode 30.4.2.3 Load Modeling in Cases I and II 30.4.3 Event Location Methodology 30.4.3.1 Forward Sweep and Backward Sweep 30.4.3.2 Minimizing Discrepancy 30.4.3.3 Algorithm 30.4.3.4 Extension to Arbitrary Number of WMUs 30.4.4 Event Location Results 30.4.4.1 Scenario I: Sub‐cycle Incipient Fault 30.4.4.2 Scenario II: Multi‐cycle Incipient Fault 30.4.4.3 Scenario III: Permanent Fault 30.4.4.4 Scenario IV: Capacitor Bank Switching Event 30.4.4.5 Sensitivity Analysis 30.5 Applications 30.6 Exercises References Chapter 31 Traveling Wave Analysis in Microgrids 31.1 Introduction 31.2 Background Theories 31.2.1 Mathematical Analysis 31.2.2 Transient Response of Instrument Transformers 31.3 Challenges for TW Applications in Microgrid 31.3.1 Simulations Scenarios 31.4 Proposed Traveling Wave Protection Scheme 31.4.1 Periodic Reflected Traveling Waves from IBR 31.4.2 Merging Unit (MU) 31.4.2.1 Preprocessing 31.4.2.2 Traveling Wave Extraction 31.4.2.3 Modal Components 31.4.2.4 Settings to Avoid Superimposition 31.4.3 Central Unit (CU) 31.4.3.1 Estimation of the Frequency of Occurrence (F.o.O) 31.4.3.2 Fault Location 31.5 Performance Analysis 31.5.1 Microgrid Under Study 31.5.2 Extracted Traveling Waves in MUs 31.5.3 Fault Location Identification 31.5.4 Performance for Faults at Different Locations 31.5.5 Performance for Different Fault Resistance 31.5.6 Performance for Different Fault Inception Angles 31.5.7 Large‐Scale Analysis 31.6 Conclusion 31.7 Exercises References Chapter 32 Neuro‐Dynamic State Estimation of Microgrids 32.1 Background 32.2 Preliminaries of Physics‐Based DSE 32.3 Neuro‐DSE Algorithm 32.3.1 ODE‐Net‐Enabled ExSys Modeling 32.3.2 Physics‐Based InSys Modeling 32.3.3 Neuro‐DSE Algorithm 32.3.4 Joint Estimation of Dynamic States and Parameters via Neuro‐DSE 32.4 Self‐Refined Neuro‐DSE 32.4.1 Self‐Refined Training of ODE‐Net 32.4.2 Procedure of Neuro‐DSE+ Algorithm 32.5 Numerical Tests of Neuro‐DSE 32.5.1 Test System and Algorithm Settings 32.5.2 Validity of Neuro‐DSE 32.5.2.1 Neuro‐DSE Under Different Noise Levels 32.5.2.2 Comparison with Conventional DNN‐Based DSE 32.5.2.3 Neuro‐DSE Under Different NMs Compositions 32.5.3 Efficacy of Neuro‐DSE+ 32.5.3.1 Neuro‐DSE+ Under Different Noise Levels 32.5.3.2 Neuro‐DSE+ Under Different Measurement Availability 32.6 Exercises References Chapter 33 Hydrogen‐Supported Microgrid toward Low‐Carbon Energy Transition 33.1 Introduction 33.2 Hydrogen Production in Microgrid Operation 33.2.1 Framework 33.2.2 Modeling for Power‐to‐Hydrogen 33.2.3 System Model 33.3 Hydrogen Utilization in Microgrid Operation 33.3.1 Framework 33.3.2 Modeling for FCHEV 33.3.2.1 Techno‐Economic Analysis 33.3.2.2 FCHEV Mileage Model 33.3.2.3 Charging/Refueling Station Model 33.3.3 Trans‐Energy System Scheduling 33.3.3.1 Optimal Scheduling Model 33.3.3.2 Benefits of FCHEV 33.4 Case Studies 33.4.1 Hydrogen Production in Microgrid Operation 33.4.2 Hydrogen Utilization in Microgrid Operation 33.5 Exercises 33.6 Acknowledgement References Chapter 34 Sharing Economy in Microgrid 34.1 Introduction 34.2 Aggregation of Distributed Energy Resources in Energy Markets 34.2.1 Energy Sharing Scheme 34.2.1.1 Energy Trading Without Energy Sharing 34.2.1.2 Energy Trading with Energy Sharing 34.2.1.3 Decentralized Implementation 34.2.2 System Model 34.2.2.1 The Aggregator\'s Net Cost 34.2.2.2 A User Model Without Energy Sharing 34.2.2.3 The Energy Sharing Model 34.2.3 Profit Sharing Mechanism 34.2.3.1 Sharing Contribution Rate 34.2.3.2 Mechanism Design 34.2.4 Solution Algorithm 34.3 Aggregation of Distributed Energy Resources in Energy and Capacity Markets 34.3.1 Energy Sharing Scheme 34.3.1.1 Market Framework 34.3.1.2 Energy Trading Scheme Comparison 34.3.2 System Model 34.3.2.1 The Model Without Energy Sharing 34.3.2.2 The Energy Sharing Model 34.3.3 Profit Sharing Mechanism 34.3.3.1 Sharing Contribution Rate 34.3.3.2 Mechanism Design 34.4 Case Studies 34.4.1 Aggregation of DERs in Energy Markets 34.4.2 Aggregation of DERs in Energy and Capacity Markets 34.5 Exercises 34.6 Acknowledgement References Chapter 35 Microgrid: A Pathway to Mitigate Greenhouse Impact of Rural Electrification 35.1 Introduction 35.2 System Model 35.2.1 Rural Resident Data 35.2.2 Electric Power Data 35.2.3 Rural Heating in Microgrid 35.2.4 Electricity Dispatch Model 35.2.5 National Carbon Emission Estimation 35.2.6 Cost Analysis for Microgrid Heating 35.3 Case Studies 35.3.1 Provincial Carbon Emissions Caused by Electric Heating Policy 35.3.2 National Impacts of Electric Heating Policy 35.3.3 Techno‐Economic Analysis for Microgrid Heating 35.4 Discussion 35.5 Exercises 35.6 Acknowledgement References Chapter 36 Operations of Microgrids with Meshed Topology Under Uncertainty 36.1 Self‐sufficiency and Sustainability of Microgrids Under Uncertainty 36.1.1 AC Power Flow 36.1.1.1 AC Power Flow for Radial Topologies 36.1.1.2 AC Power Flow for Meshed Topologies 36.1.2 Intermittent Renewables 36.1.3 Tap Changers 36.2 Microgrid Model: Proactive Operation Optimization Under Uncertainties 36.2.1 Objective 36.2.1.1 Generation Capacity Constraints 36.2.1.2 Ramp‐Rate Constraints 36.2.1.3 Droop‐Control Constraints 36.2.1.4 Tap‐Changer Constraints 36.3 Solution Methodology 36.3.1 Surrogate Absolute‐Value Lagrangian Relaxation 36.3.1.1 Relaxed Problem 36.3.2 Surrogate “l1‐Proximal” Lagrangian Relaxation 36.3.2.1 Linearized Relaxed Problem 36.3.2.2 Feasibility 36.4 Conclusions 36.5 Exercises References Chapter 37 Operation Optimization of Microgrids with Renewables 37.1 Introduction 37.2 Existing Work 37.3 Mathematical Modeling 37.3.1 Modeling of Devices 37.3.1.1 Modeling of CCHP 37.3.1.2 Modeling of Natural Gas Boilers 37.3.1.3 Modeling of Electric Chillers 37.3.2 Modeling of Uncertain Renewables 37.3.3 Modeling of Battery and Other Devices Based on the PV States 37.3.3.1 Modeling of Battery Based on PV States 37.3.3.2 Modeling of CCHP, Boilers, and Chillers Based on PV States 37.3.4 Modeling of System Balance 37.3.4.1 Electrical Balance 37.3.4.2 Thermal Balance 37.3.5 Objective Function 37.4 Solution Methodology 37.5 Exercises References Index Series Page EULA