Optimal selection of time windows for preventive maintenance of offshore wind farms subject to wake losses

Author:

Zhang Junqiang1ORCID,Chowdhury Souma2,Zhang Jie3,Tong Weiyang4,Messac Achille5

Affiliation:

1. School of Artificial Intelligence Hezhou University Hezhou Guangxi China

2. Department of Mechanical and Aerospace Engineering University at Buffalo Buffalo New York USA

3. Department of Mechanical Engineering University of Texas at Dallas Richardson Texas USA

4. Department of Mechanical and Aerospace Engineering Syracuse University Syracuse New York USA

5. Department of Mechanical Engineering Howard University Washington DC USA

Abstract

AbstractThe maintenance of wind farms is one of the major factors affecting their profitability. During preventive maintenance, the shutdown of wind turbines causes downtime energy losses. The selection of when and which turbines to maintain can significantly impact the overall downtime energy loss. This paper leverages a wind farm power generation model to calculate downtime energy losses during preventive maintenance for an offshore wind farm. Wake effects are considered to accurately evaluate power output under specific wind conditions. In addition to wind speed and direction, the influence of wake effects is an important factor in selecting time windows for maintenance. To minimize the overall downtime energy loss of an offshore wind farm caused by preventive maintenance, a mixed‐integer nonlinear optimization problem is formulated and solved by the genetic algorithm, which can select the optimal maintenance time windows of each turbine. Weather conditions are imposed as constraints to ensure the safety of maintenance personnel and transportation. Using the climatic data of Cape Cod, Massachusetts, the schedule of preventive maintenance is optimized for a simulated utility‐scale offshore wind farm. The optimized schedule not only reduces the annual downtime energy loss by selecting the maintenance dates when wind speed is low but also decreases the overall influence of wake effects within the farm. The portion of downtime energy loss reduced due to consideration of wake effects each year is up to approximately 0.2% of the annual wind farm energy generation across the case studies—with other stated opportunities for further profitability improvements.

Funder

National Science Foundation

Publisher

Wiley

Subject

Renewable Energy, Sustainability and the Environment

Reference87 articles.

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3. Offshore Wind Turbines: Reliability, availability and maintenance

4. StehlyT BeiterP DuffyP.2019 cost of wind energy review. Tech. Rep. NREL/TP‐5000‐78471  U.S. National Renewable Energy Laboratory;2020.

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