Abstract

Gamma titanium aluminide (γ-TiAl) is considered a high-performance, low-density replacement for nickel-based superalloys in the aerospace industry due to its high specific strength, which is retained at temperatures above 800 °C. However, low damage tolerance, i.e., brittle material behavior with a propensity to rapid crack propagation, has limited the application of γ-TiAl. Any cracks introduced during manufacturing would dramatically lower the useful (fatigue) life of γ-TiAl components, making the workpiece surface’s quality from finish machining a critical component to product quality and performance. To address this issue and enable more widespread use of γ-TiAl, this research aims to develop a real-time non-destructive evaluation (NDE) quality monitoring technique based on acoustic emission (AE) signals, wavelet transform, and deep neural networks (DNN). Previous efforts have opted for traditional approaches to AE signal analysis, using statistical feature extraction and classification, which face challenges such as the extraction of good/relevant features and low classification accuracy. Hence, this work proposes a novel AI-enabled method that uses a convolutional neural network (CNN) to extract rich and relevant features from a two-dimensional image representation of 1D time-domain AE signals (known as scalograms), subsequently classifying the AE signature based on pedigreed experimental data and finally predicting the process-induced surface quality. The results of the present work show good classification accuracy of 80.83% using scalogram images, in-situ experimental data, and a VGG-19 pre-trained neural network, establishing the significant potential for real-time quality monitoring in manufacturing processes.

Highlights

  • Intermetallic titanium aluminide alloys such as TiAl, Ti3Al, Al3Ti, and Ti2AlNb are currently gaining ground in the aerospace, biomedical, and automotive industry, due to their low density, high strength, and suitability for high-temperature applications

  • This study presents a novel approach to detect crack formation during gamma-titanium aluminide machining by integrating scalograms generated from wavelet transformation of acoustic emission (AE) signals into convolutional neural network (CNN) models used for training and classifying different cutting modes

  • The main contribution of this work is the presentation of a novel approach for converting AE signals extracted during machining to time-frequency scalograms and executing further analysis with classification into different cutting modes using CNN models

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Summary

Introduction

Intermetallic titanium aluminide alloys such as TiAl, Ti3Al, Al3Ti, and Ti2AlNb are currently gaining ground in the aerospace, biomedical, and automotive industry, due to their low density, high strength, and suitability for high-temperature applications. Gamma titanium aluminide (γ-TiAl) features unique physical and mechanical properties: high melting point, low density, high strength, resistance to oxidation, and corrosion. Steel, and nickel-based (super)alloys, the low density offered by γ-TiAl provides improved specific strength in high-temperature performance. Zr elements act as β-stabilizers and promote the compression strength of binary TiAl alloys For this reason, gamma titanium aluminide alloys have been proposed as a higher-performance replacement for Ni-based superalloys [2,3]. Gamma titanium aluminide alloys have been proposed as a higher-performance replacement for Ni-based superalloys [2,3] These unique properties of titanium aluminide have made it of interest during the manufacturing of next-generation rotating parts in gas turbine engines for the automotive and aeronautical industry. This study deals with a proprietary second-generation (near-gamma) TiAl alloy used by a major turbine manufacturer

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