Real-Time Monitoring of Wind Turbine Bearing Using Simple Neural Network on Raspberry Pi

Author:

Wang Tianhao1ORCID,Meng Hongying1ORCID,Qin Rui2,Zhang Fan3ORCID,Nandi Asoke Kumar1ORCID

Affiliation:

1. Department of Electronic and Electrical Engineering, Brunel University London, London UB8 3PH, UK

2. School of Computing and Mathematical Sciences, University of Leicester, Leicester LE1 7RH, UK

3. School of Design, Southwest Jiaotong University, Chengdu 610031, China

Abstract

Wind turbines are a crucial part of renewable energy generation, and their reliable and efficient operation is paramount in ensuring clean energy availability. However, the bearings in wind turbines are subjected to high stress and loads, resulting in faults that can lead to costly downtime and repairs. Fault detection in real time is critical to minimize downtime and reduce maintenance costs. In this work, a simple neural network model was designed and implemented on a Raspberry Pi for the real-time detection of wind turbine bearing faults. The model was trained to accurately identify complex patterns in raw sensor data of healthy and faulty bearings. By splitting the data into smaller segments, the model can quickly analyze each segment and generate predictions at high speed. Additionally, simplified algorithms were developed to analyze the segments with minimum latency. The proposed system can efficiently process the sensor data and performs rapid analysis and prediction within 0.06 milliseconds per data segment. The experimental results demonstrate that the model achieves a 99.8% accuracy in detecting wind turbine bearing faults within milliseconds of their occurrence. The model’s ability to generate real-time predictions and to provide an overall assessment of the bearing’s health can significantly reduce maintenance costs and increase the availability and efficiency of wind turbines.

Funder

Royal Society

Publisher

MDPI AG

Reference38 articles.

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