de
en
Schliessen
Detailsuche
Bibliotheken
Projekt
Impressum
Datenschutz
zum Inhalt
Detailsuche
Schnellsuche:
OK
Ergebnisliste
Titel
Titel
Inhalt
Inhalt
Seite
Seite
Im Dokument suchen
Meckel, Simon Julius: Time-triggered architecture for online diagnosis in resource-constrained systems with compressed data streams. 2021
Inhalt
Abstract
Zusammenfassung
Acknowledgements
Contents
List of Figures
List of Tables
List of Algorithms
Acronyms
Symbols
Introduction
Motivation
Research Scope
Document Structure
Basic Concepts
Embedded Real-Time Systems
Distributed Systems
Characteristics of Distributed Systems
Resource Constraints
Time-Triggered Systems and Scheduling
Dependability
Reliability
Maintainability
Availability
Safety
Faults, Errors, and Failures
Terminologies
Faults
Errors
Failures
Fault-Tolerant Systems
Fault-Tolerant System Design
Hardware Redundancy
Information Redundancy
Software Redundancy
Time Redundancy
Degradation Steps
Fault Diagnosis
Introduction to Fault Diagnosis
Fault Detection Methods
Single Signal Analysis
Signal Models
Process Models
Active and Passive Fault Detection
Fault Diagnosis Methods
Inference Methods
Classification Methods
Data Compression
Introduction to Data Compression
Lossy Compression
Introduction to Lossy Compression
Discrete Cosine Transform
Lossless Compression
Introduction to Lossless Compression
Huffman Coding
Arithmetic Coding
Context-Based Compression
Dictionary Techniques
Differential Encoding
Other Lossless Compression Techniques
Related Work
Requirements
Related Work
Transform Coding
Entropy Coding and Dictionary Techniques
Differential Encoding and Predictive Encoding
Distributed Source Coding
Off-the-Shelf Algorithms Versus Application-Specific Compression Algorithms
Data Compression and Scheduling
Summary of the Requirements and Related Work
DAKODIS Architecture
Architecture Overview
Physical Model
Logical Model
Directed Acyclic Graphs
Data Streams
Applications
Compression Model
Scheduling Model
Online Data Compression for Time-Triggered Communication
Compression of Individual Data Streams
Cache-Based Compression Algorithm for Individual Data Streams
Algorithm Enhancements – Reducing Uncertainty and Miss Rate
Reducing the Uncertainty
Reducing the Miss Rate
Example of the Cache-Based Compression Algorithm
Probability of a Miss
Dynamic Cache-Based Compression Algorithm for Individual Data Streams
Example of the Dynamic Cache-Based Compression Algorithm
Difference Coding for Individual Data Streams
Simultaneous Compression of Multiple Data Streams
Preliminaries
Cache-Based Compression Algorithm for Multiple Data Streams
Dynamic Cache-Based Compression Algorithm for Multiple Data Streams
Partial Misses
Grouping of Active Hypercubes
Automatic Grouping of Active Hypercubes
Monitoring the Data Streams
Static Transmission Dictionary Updates
Dynamic Transmission Dictionary Updates
Merging and Splitting Compressed Data Streams
Routing and Compression Scenarios
Merging and Splitting with the Static Cache-Based Algorithm
Merging and Splitting with the Dynamic Cache-Based Algorithm
Evaluation and Results
Use Case – Hybrid Electric Vehicle
Hybrid Electric Vehicle Model in Simulink
Fault Model and Fault Injection
Evaluation of the Online Data Compression Algorithms
Test Signals
Sensor Measurements from the HEV Model
Generation of Synthetic Test Signals
Loss Rates of Individually Compressed Data Streams
Loss Rates of Multiple Simultaneously Compressed Data Streams
Transmission Regions
Scalability of Simultaneous Data Compression
Signal Selection for Simultaneous Data Compression
Time Considerations for Dictionary Searches
Comparison with Other Data Compression Techniques
Compression of Individual Data Streams
Simultaneous Compression of Multiple Data Streams
Data Compression and Information Redundancy
Influence of Compressed Communication on Schedules
Impact of Data Compression on Fault Diagnosis
Classification-Based Fault Diagnosis
Fault Diagnosis Use Case
Hybrid Electric Vehicle Model
Condition Monitoring of a Hydraulic System
Classifier Implementation
Constrained Communication Resources and Fault Diagnosis
Conclusion
Summary and Contribution
Future Work
Appendix
Loss Rates of Evaluation Test Signals
Classification Report for the Fault Diagnosis Use Case
Publications
Bibliography