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Rojiar Pir mohammadiani

Rojiar Pir mohammadiani

Academic rank: Assistant Professor
ORCID:
Education: PhD.
ScopusId: 3216
Faculty: Faculty of Engineering
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Research

Title
Optimal stochastic self-scheduling of a water-energy virtual power plant considering data clustering and multiple storage systems
Type
JournalPaper
Keywords
Virtual power plant, Water-energy nexus, Data clustering, Renewable energy, Stochastic programming
Year
2023
Journal Journal of Energy Storage
DOI
Researchers Navid Rezaei ، Yasin Pezhmani ، Rojiar Pir mohammadiani

Abstract

As the world moves towards the integration of different water and energy resources, as well as storage systems, it is necessary to develop the conventional structure of virtual power plants (VPPs). In this work, a mixed-integer nonlinear programming (MINLP) model is established for stochastic self-scheduling problem of a new VPP structure, namely water-energy VPP. The proposed VPP, which participates in the electricity market to maximize its daily proft, aggregates different energy and water resources including wind turbines, compressed air energy storage (CAES), gas boiler, electrical boiler, absorption chiller, ice storage, water storage, and water well to supply water demand, as well as different types of energy demands such as cooling, power, and heat demands. To cope with the uncertain behavior of wind power, a scenario-based approach is employed. First, with the use of Monte Carlo simulation in MATLAB, a number of scenarios are obtained, and afterwards, K-means technique, which is a fast and effcient data clustering method, is implemented for the scenario reduction. Additionally, the impact of the consideration of CAES system on the performance of the proposed water-energy is discussed. The numerical results indicate that with the deployment of CAES system into the structure of the water-energy VPP, the expected daily proft is increased up to 4.26 %.