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Big Data Privacy Preservation for Cyber-Physical Systems 2019 ed. [Mīkstie vāki]

  • Formāts: Paperback / softback, 73 pages, height x width: 235x155 mm, weight: 454 g, 23 Illustrations, color; 2 Illustrations, black and white; IX, 73 p. 25 illus., 23 illus. in color., 1 Paperback / softback
  • Sērija : SpringerBriefs in Electrical and Computer Engineering
  • Izdošanas datums: 04-Apr-2019
  • Izdevniecība: Springer Nature Switzerland AG
  • ISBN-10: 3030133699
  • ISBN-13: 9783030133696
  • Mīkstie vāki
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  • Formāts: Paperback / softback, 73 pages, height x width: 235x155 mm, weight: 454 g, 23 Illustrations, color; 2 Illustrations, black and white; IX, 73 p. 25 illus., 23 illus. in color., 1 Paperback / softback
  • Sērija : SpringerBriefs in Electrical and Computer Engineering
  • Izdošanas datums: 04-Apr-2019
  • Izdevniecība: Springer Nature Switzerland AG
  • ISBN-10: 3030133699
  • ISBN-13: 9783030133696

This SpringerBrief mainly focuses on effective big data analytics for CPS, and addresses the privacy issues that arise on various CPS applications. The authors develop a series of privacy preserving data analytic and processing methodologies through data driven optimization based on applied cryptographic techniques and differential privacy in this brief. This brief also focuses on effectively integrating the data analysis and data privacy preservation techniques to provide the most desirable solutions for the state-of-the-art CPS with various application-specific requirements.  

Cyber-physical systems (CPS) are the “next generation of engineered systems,” that integrate computation and networking capabilities to monitor and control entities in the physical world. Multiple domains of CPS typically collect huge amounts of data and rely on it for decision making, where the data may include individual or sensitive information, for e.g., smart metering, intelligent transportation, healthcare, sensor/data aggregation, crowd sensing etc. This brief assists users working in these areas and contributes to the literature by addressing data privacy concerns during collection, computation or big data analysis in these large scale systems. Data breaches result in undesirable loss of privacy for the participants and for the entire system, therefore identifying the vulnerabilities and developing tools to mitigate such concerns is crucial to build high confidence CPS.

This Springerbrief targets professors, professionals and research scientists working in Wireless Communications, Networking, Cyber-Physical Systems and Data Science. Undergraduate and graduate-level  students interested in Privacy Preservation of state-of-the-art Wireless Networks and Cyber-Physical Systems will use this Springerbrief as a study guide.  


1 Cyber-Physical Systems
1(10)
1.1 Introduction to Cyber-Physical Systems
1(2)
1.2 Cognitive Radio Networks in CPS
3(2)
1.3 Smart Grids in CPS
5(1)
1.4 Information-Centric Networking in CPS
6(2)
1.5 Colocation Data Centers in CPS
8(3)
References
9(2)
2 Preliminaries
11(10)
2.1 Differential Privacy
11(4)
2.1.1 Centralized Differential Privacy
11(2)
2.1.2 Distributed Differential Privacy
13(1)
2.1.3 Local Differential Privacy
14(1)
2.2 Big Data Analysis: Data-Driven Methodology Preliminaries
15(3)
2.2.1 ξ-Structure Probability Metrics
15(1)
2.2.2 Converge Rate Under ξ-Structure Probability Metrics
16(2)
2.3 Descending Clock Auction
18(3)
References
19(2)
3 Spectrum Trading with Secondary Users' Privacy Preservation
21(14)
3.1 System Description and 3DPP Outline
21(2)
3.1.1 System Model and Adversary Model
21(2)
3.1.2 3DPP Outline
23(1)
3.2 3DPP Problem Formulation
23(2)
3.2.1 PSP's Revenue Maximization Formulation
23(1)
3.2.2 Data-Driven Based PSP's Revenue Optimization
24(1)
3.2.3 3DPP: Data-Driven Based PSP's Revenue Optimization Under ε-DP
25(1)
3.3 3DPP Proof and Solutions
25(5)
3.3.1 Converge Rate Under ξ-Structure Probability Metrics with ε-DP
26(2)
3.3.2 Problem Reformulation Under ξ-Probability Metrics, and Solutions
28(2)
3.4 Performance Evaluation
30(5)
3.4.1 Simulation Setup
30(1)
3.4.2 Privacy and Performance Analysis
30(3)
References
33(2)
4 Optimization for Utility Providers with Privacy Preservation of Users' Energy Profile
35(12)
4.1 Network Model
35(7)
4.1.1 Data-Driven Prediction
37(1)
4.1.2 Cost Minimization Problem Formulation
38(2)
4.1.3 Solution to the Optimization Problem
40(2)
4.2 Performance Evaluation
42(5)
References
44(3)
5 Caching with Users' Differential Privacy Preservation in Information-Centric Networks
47(10)
5.1 Network Model and Preliminaries
47(5)
5.1.1 System Description
47(1)
5.1.2 Data-Driven Analysis of Content Popularity
48(1)
5.1.3 Caching Revenue Maximization Problem with Local Privacy Preservation
49(1)
5.1.4 Solution to Caching Optimization Under Distribution Uncertainty
50(2)
5.2 Performance Evaluation
52(5)
References
55(2)
6 Clock Auction Inspired Privacy Preservation in Colocation Data Centers
57
6.1 System Model and Preliminaries
57(4)
6.1.1 System Architecture
57(3)
6.1.2 Threat Model and Design Goals
60(1)
6.2 Mechanism and Problem Formulation of PPCA for EDR
61(9)
6.2.1 Homomorphic Encryption for Aggregation
61(1)
6.2.2 Mechanism for Price Descending Clock Auction
62(2)
6.2.3 Mechanism for Energy Descending Clock Auction
64(5)
6.2.4 Differential Privacy Preservation
69(1)
6.3 Security and Performance Analysis
70
6.3.1 Security Analysis
70(1)
6.3.2 Performance Analysis
71(2)
References
73