Research on the Attack Strategy of Multifunctional Market Trading Oriented to Price
Abstract
:1. Introduction
- The research focuses on developing a robust EH mathematical model to support energy management optimization and market transactions. Specifically, we propose a price-oriented TE market clearing strategy, tailored to the EH model, which enables multi-energy two-way trading between multiple EHs in a distributed, competitive manner. To solve the complex optimization problem associated with this strategy, a distributed algorithm based on the Nash equilibrium is employed.
- In order to target the state estimators of TSOs, we propose a two-stage attack strategy that is data-driven. In the first stage, a real-time topology estimation method is designed, making use of market data to provide the necessary conditions for subsequent successful False Data Injection (FDI) attacks. In the second stage, the attacker’s role is determined based on the attack mode that is feasible within the TE market environment. From the perspective of maximizing profit, we propose an objective function to guide the attacker’s actions.
- In the attack strategy, we introduce an optimal method for identifying attack targets based on MTE. This method leverages market data for causal inference, enabling us to effectively identify potential targets for attack. By manipulating the TE market price information, our aim is to achieve attack targets that are both cost-effective and highly precise. This approach utilizes market data to its full potential and enhances the accuracy and efficiency of target identification in the attack strategy.
2. Price Oriented TE Market Model
2.1. Structure of EH
2.2. TE Market Clearing Model Based on Price Guidance
2.2.1. TSO Market Trading Model
2.2.2. EH Transaction Model
2.3. Nash Equilibrium Distributed Solution
Algorithm 1 Solving the potential game based on the ADMM. |
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3. A Data-Driven Attack Strategy against TSO State Estimators
3.1. A Data-Driven Topology Estimation Method
3.2. The Attacker Model in the TE Market Environment
3.2.1. Role Analysis of the Market Attacker
3.2.2. Attack Model of the Virtual Bidder
3.3. Optimal Attack Target Identification Method Based on MTE
4. Simulation Results
4.1. Performance Analysis of the System’s Topology Estimation
4.2. Economic Analysis under False Data Injection Attacks
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Virtual Bid Node | Node i (DA) | Node j (DA) | Node i (RT) | Node j (RT) |
---|---|---|---|---|
Electricity Sold | - | - | ||
Electricity Purchase | - | - |
Attack Selection | VB1 | VB2 | Target Line | Attacker Profit |
---|---|---|---|---|
Attack set 1 | 15 | 23 | 30 | 1003.67 |
Attack set 2 | 25 | 27 | 35 | 966.084 |
Attack set 3 | 8 (EB3) | 6 | 10 | 1544.17 |
Attack set 4 | 8 (EB3) | 23 | 10/30/35 | 2111.31 |
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Tian, J.; Huang, B.; Shi, Z.; Liu, L.; Feng, L.; Jing, G. Research on the Attack Strategy of Multifunctional Market Trading Oriented to Price. Mathematics 2023, 11, 4728. https://doi.org/10.3390/math11234728
Tian J, Huang B, Shi Z, Liu L, Feng L, Jing G. Research on the Attack Strategy of Multifunctional Market Trading Oriented to Price. Mathematics. 2023; 11(23):4728. https://doi.org/10.3390/math11234728
Chicago/Turabian StyleTian, Jiaqi, Bonan Huang, Zewen Shi, Lu Liu, Lihong Feng, and Guoxiu Jing. 2023. "Research on the Attack Strategy of Multifunctional Market Trading Oriented to Price" Mathematics 11, no. 23: 4728. https://doi.org/10.3390/math11234728
APA StyleTian, J., Huang, B., Shi, Z., Liu, L., Feng, L., & Jing, G. (2023). Research on the Attack Strategy of Multifunctional Market Trading Oriented to Price. Mathematics, 11(23), 4728. https://doi.org/10.3390/math11234728