Machine learning-driven multi-agent-based AC optimal power flow with effective dataset creation for data privacy and interoperability

IF 4.8 2区 工程技术 Q2 ENERGY & FUELS
Burak Dindar , Can Berk Saner , Hüseyin K. Çakmak , Veit Hagenmeyer
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引用次数: 0

Abstract

As power systems continue to evolve, the demand for effective collaboration among institutions has grown, driven by the challenges of balancing production and consumption, as well as by the increasing need for redispatch. Despite this, achieving interoperability in such a complex landscape is often hindered by concerns regarding data privacy. In response to these challenges, our paper presents a novel approach: a multi-agent system (MAS)-based AC optimal power flow (AC-OPF), empowered by machine learning (ML), designed for safeguarding data privacy and promoting interoperability. In the proposed method, the technical operator agent creates an effective dataset using n-ball, multivariate Gaussian distribution (MGD), and perturbation techniques. It also formulates valid inequalities to reduce the search space. Then, neural network (NN) models are developed to map the feasible space of the AC-OPF by utilizing only active power. Notably, these models conceal both the grid topology and sensitive data before transmission to another agent. Subsequently, the market operator agent integrates these NN models and valid inequalities into a mixed-integer linear programming (MILP) problem. This resulting MILP can be solved with various market based objective functions and constraints considering the power system limits. Thus, if there are private market-based data, they are kept confidential without being shared with the other agent. In addition, mapping is performed using the effective dataset generation technique that ensures a balanced representation of feasible and infeasible data points around the boundary. Furthermore, this effective dataset contributes to achieving remarkable accuracy in NN models, even with a relatively small volume of data points. The results on 30-, 57-, and 162-bus benchmark models of PGLib-OPF demonstrate that the proposed method can be effectively conducted while concurrently enhancing data privacy, and thus interoperability among institutions.
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来源期刊
Sustainable Energy Grids & Networks
Sustainable Energy Grids & Networks Energy-Energy Engineering and Power Technology
CiteScore
7.90
自引率
13.00%
发文量
206
审稿时长
49 days
期刊介绍: Sustainable Energy, Grids and Networks (SEGAN)is an international peer-reviewed publication for theoretical and applied research dealing with energy, information grids and power networks, including smart grids from super to micro grid scales. SEGAN welcomes papers describing fundamental advances in mathematical, statistical or computational methods with application to power and energy systems, as well as papers on applications, computation and modeling in the areas of electrical and energy systems with coupled information and communication technologies.
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