Abstract

Abstract. Wind turbines in a wind farm typically operate individually to maximize their own performance and do not take into account information from nearby turbines. To enable cooperation to achieve farm-level objectives, turbines will need to use information from nearby turbines to optimize performance, ensure resiliency when other sensors fail, and adapt to changing local conditions. A key element of achieving a more efficient wind farm is to develop algorithms that ensure reliable, robust, real-time, and efficient operation of wind turbines in a wind farm using local sensor information that is already being collected, such as supervisory control and data acquisition (SCADA) data, local meteorological stations, and nearby radars/sodars/lidars. This article presents a framework for developing a cooperative wind farm that incorporates information from nearby turbines in real time to better align turbines in a wind farm. SCADA data from multiple turbines can be used to make better estimates of the local inflow conditions at each individual turbine. By incorporating measurements from multiple nearby turbines, a more reliable estimate of the wind direction can be obtained at an individual turbine. The consensus-based approach presented in this paper uses information from nearby turbines to estimate wind direction in an iterative way rather than aggregating all the data in a wind farm at once. Results indicate that this estimate of the wind direction can be used to improve the turbine's knowledge of the wind direction. This estimated wind direction signal has implications for potentially decreasing dynamic yaw misalignment, decreasing the amount of time a turbine spends yawing due to a more reliable input to the yaw controller, increasing resiliency to faulty wind-vane measurements, and increasing the potential for wind farm control strategies such as wake steering.

Highlights

  • The wind industry continues to seek methods to decrease the levelized cost of energy (LCOE) by using advances in science, engineering, and computation (Lindenberg, 2009)

  • The network topology can be used to advance the state of the art in wind farm controls in topics ranging from distributed optimization and control to fault detection and short-term forecasting

  • The approach presented in this article is an iterative algorithm that takes advantage of the topology of a wind farm and incorporates local measurements from nearby turbines to determine the wind direction at an individual turbine

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Summary

Introduction

The wind industry continues to seek methods to decrease the levelized cost of energy (LCOE) by using advances in science, engineering, and computation (Lindenberg, 2009). This article presents a consensus-based distributed optimization algorithm for reliably calculating wind direction at a wind turbine using only supervisory control and data acquisition (SCADA) data from the turbines in the wind farm. This wind direction estimate can be used as an input to a turbine yaw controller, facilitate wake steering wind farm control (Fleming et al, 2014a) and other forms of wind farm control, inform operations management, and provide condition monitoring. It is important to note that this approach requires no additional sensing information This algorithm is based on the work presented in Hallac et al (2015) and is solved using an alternating direction method of multipliers (Boyd et al, 2011).

Wind farm as a network
Distributed optimization for real-time operation
Wind direction consensus
Alternating direction method of multipliers
Alternative methods for estimating wind direction
Averaging
Weighted averaging
Cluster average
Small wind farm – fault detection
Large wind farm
Network topology and sensitivity analysis
Comparing different methods
SCADA data analysis using the consensus algorithm for power analysis
Findings
Conclusions and future work
Full Text
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