Abstract
This paper proposes effective Random Forest (RF)-based fault detection and diagnosis for wind energy conversion (WEC) systems. The proposed technique involved two major steps: feature selection and fault classification. Feature selection pre-processing is an important step to increase the accuracy of the classification algorithm and decrease the dimensionality of a dataset. Therefore, a hybrid feature selection based diagnosis technique, that can preserve the advantages of wrapper and filter algorithms as well as RF model, is proposed. In the first phase, the neighborhood component analysis (NCA) filter algorithm is used to reduce and select only the pertinent features from the original raw data. This phase helps in improving data by removing redundant and unimportant features. In the second step, we applied a wrapper technique called equilibrium optimizer to get optimized features and better classification accuracy. The main idea behind using a hybrid feature selection step is to select a small subset from original data that can achieve maximum classification accuracy and reduce the computational complexity of the RF technique. Then, the sensitive and significant characteristics are transmitted to the RF model for classification purposes. The presented results prove that the proposed methods offer enhanced diagnosis accuracy when applied to WEC systems.
Original language | English |
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Pages (from-to) | 5362-5371 |
Number of pages | 10 |
Journal | Energy Reports |
Volume | 9 |
DOIs | |
Publication status | Published - Dec 2023 |
Externally published | Yes |
Keywords
- Equilibrium optimizer (EO)
- Fault classification
- Fault diagnosis
- Neighborhood component analysis (NCA)
- Random Forest (RF)
- Wind energy conversion (WEC)