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Water Droplet Erosion Life Prediction Method for Steam Turbine Blade Materials Based on Image Recognition and Machine Learning

Zheyuan Zhang, Tianyuan Liu, Di Zhang, Yonghui Xie

2021Journal of Engineering for Gas Turbines and Power20 citationsDOI

Abstract

Abstract In this paper, a method for predicting remaining useful life (RUL) of turbine blade under water droplet erosion (WDE) based on image recognition and machine learning is presented. Using the experimental rig for testing the WDE characteristics of materials, the morphology pictures of specimen surface at different times in the process of WDE are collected. According to the data processing method of ASTM-G73 and the cumulative erosion-time curves, the WDE stages of materials is quantitatively divided and the WDE life coefficient (ζ) is defined. The life coefficient (ζ) could be used to calculate the RUL of turbine blades. One convolutional neural network model and three machine learning models are adopted to train and predict the image dataset. Then the training process and feature maps of the Resnet model are studied in detail. It is found that the highest prediction accuracy of the method proposed in this paper can be 0.949, which is considered acceptable to provide reference for turbine overhaul period and blade replacement time.

Topics & Concepts

Blade (archaeology)Process (computing)Steam turbineConvolutional neural networkArtificial neural networkTurbine bladeComputer scienceErosionFeature (linguistics)Artificial intelligenceTurbineStructural engineeringPattern recognition (psychology)EngineeringMechanical engineeringGeologyOperating systemPhilosophyLinguisticsPaleontologyErosion and Abrasive MachiningCyclone Separators and Fluid DynamicsMaterial Properties and Failure Mechanisms
Water Droplet Erosion Life Prediction Method for Steam Turbine Blade Materials Based on Image Recognition and Machine Learning | Litcius