Research on Wind Turbine Fault Detection Based on the Fusion of ASL-CatBoost and TtRSA

Author:

Kong Lingchao1,Liang Hongtao1,Liu Guozhu1,Liu Shuo1

Affiliation:

1. School of Information Science and Technology, Qingdao University of Science and Technology, Qingdao 266061, China

Abstract

The internal structure of wind turbines is intricate and precise, although the challenging working conditions often give rise to various operational faults. This study aims to address the limitations of traditional machine learning algorithms in wind turbine fault detection and the imbalance of positive and negative samples in the fault detection dataset. To achieve the real-time detection of wind turbine group faults and to capture wind turbine fault state information, an enhanced ASL-CatBoost algorithm is proposed. Additionally, a crawling animal search algorithm that incorporates the Tent chaotic mapping and t-distribution mutation strategy is introduced to assess the sensitivity of the ASL-CatBoost algorithm toward hyperparameters and the difficulty of manual hyperparameter setting. The effectiveness of the proposed hyperparameter optimization strategy, termed the TtRSA algorithm, is demonstrated through a comparison of traditional intelligent optimization algorithms using 11 benchmark test functions. When applied to the hyperparameter optimization of the ASL-CatBoost algorithm, the TtRSA-ASL-CatBoost algorithm exhibits notable enhancements in accuracy, recall, and other performance measures compared with the ASL-CatBoost algorithm and other ensemble learning algorithms. The experimental results affirm that the proposed algorithm model improvement strategy effectively enhances the wind turbine fault detection classification recognition rate.

Funder

National Natural Science Foundation of China

Shandong Provincial Production-Education Integration Postgraduate Joint Training Demonstration Base Project

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference33 articles.

1. Grid integration feasibility and investment planning of offshore wind power under carbon-neutral transition in China;Guo;J. Nat. Commun.,2023

2. The complex end-of-life of wind turbine blades: A review of the European context;Beauson;J. Renew. Sustain. Energy Rev.,2022

3. Kale, A.P., Wahul, R.M., Patange, A.D., Soman, R., and Ostachowicz, W. (2023). Development of Deep Belief Network for Tool Faults Recognition. Sensors, 23.

4. Application of machine learning for tool condition monitoring in turning;Patange;Sound Vib.,2022

5. Application of metaheuristic optimization based support vector machine for milling cutter health monitoring;Bajaj;Intell. Syst. Appl.,2023

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