Research on Hybrid Logic Dynamic Model and Voltage Predictive Control of Photovoltaic Storage System
Abstract
1. Introduction
2. Hybrid Model of Microgrid Systems
2.1. Hybrid System Model
2.1.1. “Aggregation” Class Models
- Finite State Machine
- 2.
- Petri Grid
2.1.2. “Extension” Class Models
- Mixed Logical Dynamic (MLD) Model
- 2.
- Switching System Models
2.2. Modeling of Hybrid Systems Using MLD Models
2.2.1. The Mathematical Foundation of MLD Modeling
- Propositional Logic and its Fundamental Conversion Relations
- 2.
- Propositional Logic and Linear Integer Inequalities
- 3.
- Propositional Logic and Mixed Linear Integer Inequalities
2.2.2. Steps for MLD Model Construction
- (1)
- Establish the state space model of the continuous part of the system based on actual operating conditions, while setting auxiliary logical variables for different operational modes or regions.
- (2)
- Address nonlinear components, logical expressions, control inputs, and their inherent constraints within the system using conversion rules to establish corresponding mixed linear integer inequality constraints.
- (3)
- Introduce auxiliary variables to describe the coupling between continuous and logical variables. Describe the interactions between discrete events, continuous events, and their relationships within a unified control framework to establish the MLD model of the system.
2.3. MLD Model Based on Microgrid Systems
3. Model Predictive Control (MPC) Based on Microgrid System MLD Model
3.1. The Basic Principles of Model Predictive Control (MPC)
- Prediction model
- 2.
- Rolling optimization
- 3.
- Feedback correction
- 4.
- Discrete control inputs and explicit constraints
3.2. Mixed Logical Dynamical System Predictive Control
3.2.1. Open-Loop Constrained Optimal Control of MLD Models
3.2.2. Model Predictive Control of MLD Systems
3.3. Model Predictive Control of Microgrid Systems with MLD Models
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Microgrid Demonstration Projects | Country | Description |
---|---|---|
CERTS test bed | United States | The system utilizes three 60 kW micro gas turbines, with three feeders including two capable of islanding operation. This setup facilitates testing the dynamic characteristics of various components of the microgrid [9,10]. |
Boston Bar IPP | Canada | The system comprises two 3.45 MW hydroelectric generators supplying power to users through a 120/25 kV substation. It is capable of conducting islanding operation tests [11]. |
Kythnos Islands Microgrid | Greece | The system utilizes a 400 V distribution network to supply electricity to 12 households on Kisnos Island. It includes six photovoltaic units totaling 11 kW, one 5 kW diesel generator, and one 3.3 kW battery energy storage unit. Its primary purpose is to test the system’s peak load capacity and reliability [12]. |
Hachinohe project | Japan | The system is equipped with three units of 170 kW gas turbines and a 50 kW photovoltaic unit. Its primary objective is to mitigate energy supply-demand imbalance issues during system operation [13]. |
Hefei University of Technology Microgrid Demonstration Project | China | Established in collaboration with the University of New Brunswick, Canada, the system includes wind and photovoltaic units with a total capacity of 200 kW. It is capable of islanding operation to supply power to a campus building [14]. |
Name | Conversion Relations |
---|---|
Law of Equivalence | |
Implication Law | |
Associative Law | |
De Morgan’s Law |
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Zhao, H.; Xing, Y.; Zhou, C.; Wang, Y.; Duan, H.; Liu, K.; Jiang, S. Research on Hybrid Logic Dynamic Model and Voltage Predictive Control of Photovoltaic Storage System. Energies 2024, 17, 4285. https://doi.org/10.3390/en17174285
Zhao H, Xing Y, Zhou C, Wang Y, Duan H, Liu K, Jiang S. Research on Hybrid Logic Dynamic Model and Voltage Predictive Control of Photovoltaic Storage System. Energies. 2024; 17(17):4285. https://doi.org/10.3390/en17174285
Chicago/Turabian StyleZhao, Haibo, Yahong Xing, Chengpeng Zhou, Yao Wang, Hui Duan, Kai Liu, and Shigong Jiang. 2024. "Research on Hybrid Logic Dynamic Model and Voltage Predictive Control of Photovoltaic Storage System" Energies 17, no. 17: 4285. https://doi.org/10.3390/en17174285
APA StyleZhao, H., Xing, Y., Zhou, C., Wang, Y., Duan, H., Liu, K., & Jiang, S. (2024). Research on Hybrid Logic Dynamic Model and Voltage Predictive Control of Photovoltaic Storage System. Energies, 17(17), 4285. https://doi.org/10.3390/en17174285