open access publication

Article, 2024

Active trailing edge flap system fault detection via machine learning

Wind Energy Science, ISSN 2366-7451, 2366-7443, Volume 9, 1, Pages 181-201, 10.5194/wes-9-181-2024

Contributors

Gamberini, Andrea (Corresponding author) [1] [2] Abdallah, Imad 0000-0001-8678-0965 [3]

Affiliations

  1. [1] Siemens (Denmark)
  2. [NORA names: Siemens Gamesa Renewable Energy; Private Research; Denmark; Europe, EU; Nordic; OECD];
  3. [2] Technical University of Denmark
  4. [NORA names: DTU Technical University of Denmark; University; Denmark; Europe, EU; Nordic; OECD];
  5. [3] ETH Zurich
  6. [NORA names: Switzerland; Europe, Non-EU; OECD]

Abstract

Abstract. Active trailing edge flapĀ (AFlap) systems have shown promising results in reducing wind turbineĀ (WT) loads. The design of WTs relying on AFlap load reduction requires implementing systems to detect, monitor, and quantify any potential fault or performance degradation of the flap system to avoid jeopardizing the wind turbine's safety and performance. Currently, flap fault detection or monitoring systems are yet to be developed. This paper presents two approaches based on machine learning to diagnose the health state of an AFlap system. Both approaches rely only on the sensors commonly available on commercial WTs, avoiding the need and the cost of additional measurement systems. The first approach combines manual feature engineering with a random forest classifier. The second approach relies on random convolutional kernels to create the feature vectors. The study shows that the first method is reliable in classifying all the investigated combinations of AFlap health states in the case of asymmetrical flap faults not only when the WT operates in normal power production but also before startup. Instead, the second method can identify some of the AFlap health states for both asymmetrical and symmetrical faults when the WT is in normal power production. These results contribute to developing the systems for detecting and monitoring active flap faults, which are paramount for the safe and reliable integration of active flap technology in future wind turbine design.

Keywords

WT, active trailing edge flaps, approach, cases, classifier, convolution kernel, cost, degradation, design, detection, engineering, fault, fault detection, feature engineering, feature vector, features, flap, flap system, forest classifier, health, health states, implementation system, integration, investigated combinations, kernel, learning, load, load reduction, machine, machine learning, manual feature engineering, measurement system, measurements, method, monitoring, monitoring system, performance, performance degradation, potential faults, random convolution kernels, random forest classifier, reduction, results, safety, sensor, startup, state, study, symmetrical fault, system, system fault detection, technology, trailing edge flap, turbine, turbine design, turbine safety, vector, wind, wind turbine design, wind turbine safety, wind turbines

Funders

  • Innovation Fund Denmark

Data Provider: Digital Science