DOE PAGES title logo U.S. Department of Energy
Office of Scientific and Technical Information

Title: A Novel Approach for Real-Time Quality Monitoring in Machining of Aerospace Alloy through Acoustic Emission Signal Transformation for DNN

Journal Article · · Journal of Manufacturing and Materials Processing

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.

Research Organization:
Univ. of Kentucky, Lexington, KY (United States)
Sponsoring Organization:
USDOE; USDOE Office of Energy Efficiency and Renewable Energy (EERE), Energy Efficiency Office. Advanced Manufacturing Office
Grant/Contract Number:
EE0009121
OSTI ID:
1842230
Journal Information:
Journal of Manufacturing and Materials Processing, Journal Name: Journal of Manufacturing and Materials Processing Journal Issue: 1 Vol. 6; ISSN JMMPBJ; ISSN 2504-4494
Publisher:
MDPI AGCopyright Statement
Country of Publication:
Switzerland
Language:
English

References (32)

Recent Progress in the Development of Gamma Titanium Aluminide Alloys journal November 2000
Machining Sequence to Manufacture a γ-TiAl-Conrod for Application in Combustion Engines journal February 2006
Intermetallic alloys based on gamma titanium aluminide journal July 1989
Tool wear and surface quality in milling of a gamma-TiAl intermetallic journal October 2011
Milling of gamma titanium–aluminum alloys journal December 2011
Tool life and surface integrity when turning titanium aluminides with PCD tools under conventional wet cutting and cryogenic cooling journal October 2015
Quasi-static chip formation of intermetallic titanium aluminides journal August 2009
Fracture properties of γ-base TiAl alloys with lamellar microstructure at room temperature journal July 1994
Fatigue crack growth behavior of equiaxed, duplex and lamellar microstructure γ-base titanium aluminides journal January 1996
The Machining of γ-TiAI Intermetallic Alloys journal January 2005
Workpiece surface integrity considerations when finish turning gamma titanium aluminide journal June 2001
The effects of machined workpiece surface integrity on the fatigue life of γ-titanium aluminide journal September 2001
Surface integrity and fatigue life of turned gamma titanium aluminide journal December 1997
Application of cast gamma TiAl for automobiles journal January 1998
The effect of machining on the fatigue strength of a gamma titanium aluminide intertmetallic alloy journal August 1999
Physical properties of TiAl-base alloys journal September 2001
Cutting temperatures when ball nose end milling γ-TiAl intermetallic alloys journal January 2013
Machining vibration states monitoring based on image representation using convolutional neural networks journal October 2017
Effects of cutting angle, edge preparation, and nano-structured coating on milling performance of a gamma titanium aluminide journal December 2012
AI-enabled dynamic finish machining optimization for sustained surface integrity journal August 2021
Investigation of Surface Integrity in High Speed Milling of Gamma Titanium Aluminide under Dry and Minimum Quantity Lubricant Conditions journal January 2015
Computationally efficient, multi-domain hybrid modeling of surface integrity in machining and related thermomechanical finishing processes journal January 2019
Grinding of Gamma TiAl Intermetallic Alloys journal January 2013
Experimental Confirmation of Lamb Waves at Megacycle Frequencies journal June 1961
Intermetallic titanium aluminides in aerospace applications – processing, microstructure and properties journal April 2016
TiAl alloys in commercial aircraft engines journal May 2016
Drill Fault Diagnosis Based on the Scalogram and Mel Spectrogram of Sound Signals Using Artificial Intelligence journal January 2020
Bearing Fault Detection Using Scalogram and Switchable Normalization-Based CNN (SN-CNN) journal January 2021
In-Situ Calibrated Digital Process Twin Models for Resource Efficient Manufacturing journal September 2021
Optimising the milling of titanium aluminide alloys journal January 2010
Drilling Process in γ-TiAl Intermetallic Alloys journal November 2018
Sensitivity Analysis of Tool Wear in Drilling of Titanium Aluminides journal March 2019