Structural Engineering and Mechanics
Volume 88, Number 6, 2023, pages 569-581
DOI: 10.12989/sem.2023.88.6.569
Multi-sensor data-based anomaly detection and diagnosis of a pumped storage hydropower plant
Sojin Shin, Cheolgyu Hyun, Seongpil Cho and Phill-Seung Lee
Abstract
This paper introduces a system to detect and diagnose anomalies in pumped storage hydropower plants. We collect data from various types of sensors, including those monitoring temperature, vibration, and power. The data are classified according to the operation modes (pump and turbine operation modes) and normalized to remove the influence of the external environment. To detect anomalies and diagnose their types, we adopt a multivariate normal distribution analysis by learning the distribution of the normal data. The feasibility of the proposed system is evaluated using actual monitoring data of a pumped
storage hydropower plant. The proposed system can be used to implement condition monitoring systems for other plants through modifications.
Key Words
anomaly detection; anomaly diagnosis; multivariate analysis; prognostics and health management; pumped storage hydropower plants; pump-turbine
Address
Sojin Shin, Cheolgyu Hyun, Phill-Seung Lee: Department of Mechanical Engineering, Korean Advanced Institute for Science and Technology, 291 Daehak-ro, Yuseong-gu, Daejeon 305-701, Republic of Korea
Seongpil Cho: School of Aerospace and Mechanical Engineering, Korea Aerospace University, Goyang 10540, Republic of Korea