Enhancing Smart Grid Cyber-Security Using A Fuzzy Adaptive Autonomy Expert System
Title | Enhancing Smart Grid Cyber-Security Using A Fuzzy Adaptive Autonomy Expert System |
Publication Type | Conference Paper |
Year of Publication | 2019 |
Authors | Khosravi, Morteza, Fereidunian, Alireza |
Conference Name | 2019 Smart Grid Conference (SGC) |
Keywords | Adaptive Autonomy, Adaptive systems, Automation, Complexity theory, Computer crime, cyber security, environmental conditions, expert system database, expert systems, Expert Systems and Security, False Data Detection, fuzzy adaptive autonomy expert system, fuzzy expert system, fuzzy rule, fuzzy set theory, fuzzy systems, gradient descent algorithm, gradient methods, Human automation interaction, Human Behavior, human computer interaction, information technology, leave-one-out cross-validation, level of automation, performance shaping factors, power engineering computing, power system security, pubcrawl, Resiliency, Scalability, security of data, smart grid cybersecurity, Smart grids, smart power grids |
Abstract | Smart Grid cyber-security sounds to be a critical issue, because of widespread development of information technology. To achieve secure and reliable operation, the complexity of human automation interaction (HAI) necessitates more sophisticated and intelligent methodologies. In this paper, an adaptive autonomy fuzzy expert system is developed using gradient descent algorithm to determine the Level of Automation (LOA), based on the changing of Performance Shaping Factors (PSF). These PSFs indicate the effects of environmental conditions on the performance of HAI. The major advantage of this method is that the fuzzy rule or membership function can be learnt without changing the form of the fuzzy rule in conventional fuzzy control. Because of data shortage, Leave-One-Out Cross-Validation (LOOCV) technique is applied for assessing how the results of proposed system generalizes to the new contingency situations. The expert system database is extracted from superior experts' judgments. In order to regard the importance of each PSF, weighted rules are also considered. In addition, some new environmental conditions are introduced that has not been seen before. Nine scenarios are discussed to reveal the performance of the proposed system. Results confirm that the presented fuzzy expert system can effectively calculates the proper LOA even in the new contingency situations. |
DOI | 10.1109/SGC49328.2019.9056611 |
Citation Key | khosravi_enhancing_2019 |
- power system security
- Human automation interaction
- Human behavior
- human computer interaction
- information technology
- leave-one-out cross-validation
- level of automation
- performance shaping factors
- power engineering computing
- gradient methods
- pubcrawl
- Resiliency
- Scalability
- security of data
- smart grid cybersecurity
- Smart Grids
- smart power grids
- expert systems
- Adaptive Autonomy
- adaptive systems
- automation
- Complexity theory
- Computer crime
- cyber security
- environmental conditions
- expert system database
- False Data Detection
- Expert Systems and Security
- fuzzy adaptive autonomy expert system
- fuzzy expert system
- fuzzy rule
- fuzzy set theory
- fuzzy systems
- gradient descent algorithm