Diagnostic Method for Hydropower Plant Condition-based Maintenance combining Autoencoder with Clustering Algorithms
By: Samy Jad , Xavier Desforges , Pierre-Yves Villard and more
Potential Business Impact:
Finds problems in power plants using smart math.
The French company EDF uses supervisory control and data acquisition systems in conjunction with a data management platform to monitor hydropower plant, allowing engineers and technicians to analyse the time-series collected. Depending on the strategic importance of the monitored hydropower plant, the number of time-series collected can vary greatly making it difficult to generate valuable information from the extracted data. In an attempt to provide an answer to this particular problem, a condition detection and diagnosis method combining clustering algorithms and autoencoder neural networks for pattern recognition has been developed and is presented in this paper. First, a dimension reduction algorithm is used to create a 2-or 3-dimensional projection that allows the users to identify unsuspected relationships between datapoints. Then, a collection of clustering algorithms regroups the datapoints into clusters. For each identified cluster, an autoencoder neural network is trained on the corresponding dataset. The aim is to measure the reconstruction error between each autoencoder model and the measured values, thus creating a proximity index for each state discovered during the clustering stage.
Similar Papers
Prognostics and Health Management of Wafer Chemical-Mechanical Polishing System using Autoencoder
Artificial Intelligence
Predicts machine wear to save money.
Condition Monitoring with Machine Learning: A Data-Driven Framework for Quantifying Wind Turbine Energy Loss
Systems and Control
Finds broken wind turbine parts to save energy.
Car Sensors Health Monitoring by Verification Based on Autoencoder and Random Forest Regression
Artificial Intelligence
Finds broken car sensors before they fail.