TY - JOUR
T1 - Effect of Noise on Accuracy of Grain Size Evaluation by Magnetic Barkhausen Noise Analysis
AU - Omae, Kanna
AU - Yamazaki, Takahiro
AU - Sano, Kohya
AU - Oka, Chiemi
AU - Sakurai, Junpei
AU - Hata, Seiichi
N1 - Publisher Copyright:
© Fuji Technology Press Ltd.
PY - 2024/7
Y1 - 2024/7
N2 - Magnetic Barkhausen noise (MBN) is a magnetic signal caused by domain wall motion and is used for non-destructive testing and evaluation of ferromagnetic materials because of its sensitivity to both mechanical and magnetic properties. Recently, machine learning models have been employed to evaluate materials based on MBN; however, the application of material evaluation to low-volume targets is challenging because of their low signal-to-noise ratio, which is due to their low vol-ume. Therefore, understanding the influence of the signal-to-noise ratio is important, particularly for low-volume objects. However, very few reports have quan-titatively assessed the influence of noise in MBN anal-ysis. In this study, we focused on noise to improve the accuracy of MBN analysis using machine learning, investigated its impact on the prediction accuracy of machine learning models, and explored methods to mit-igate its effects. A method for grain size evaluation based on MBN analysis was adopted and performed for Fe-Co alloy wires with different grain sizes. After the measurement of MBN, the relationship between the extracted features from the analysis of MBN by fast Fourier transform and grain size was learned using a gradient boosting decision tree to create a grain size evaluation model, and the coefficient of determi-nation was used to evaluate the prediction accuracy of the grain size evaluation. The machine learning model demonstrated high prediction accuracy (R2 = 0.926) across the entire grain size range. Using the model to assess the effect of signal-to-noise ratio, experiments were also conducted using MBN time-series data with artificially applied Gaussian noise. Additionally, from the insight of the distribution of predicted grain sizes, we confirmed that a noise reduction method by aver-aging the MBN prediction results can improve the prediction accuracy by reducing the effect of noise as ex-pected. This research will lead to the adoption of MBN applications, which are simple and practical methods of material evaluation, for the micro–nano discipline.
AB - Magnetic Barkhausen noise (MBN) is a magnetic signal caused by domain wall motion and is used for non-destructive testing and evaluation of ferromagnetic materials because of its sensitivity to both mechanical and magnetic properties. Recently, machine learning models have been employed to evaluate materials based on MBN; however, the application of material evaluation to low-volume targets is challenging because of their low signal-to-noise ratio, which is due to their low vol-ume. Therefore, understanding the influence of the signal-to-noise ratio is important, particularly for low-volume objects. However, very few reports have quan-titatively assessed the influence of noise in MBN anal-ysis. In this study, we focused on noise to improve the accuracy of MBN analysis using machine learning, investigated its impact on the prediction accuracy of machine learning models, and explored methods to mit-igate its effects. A method for grain size evaluation based on MBN analysis was adopted and performed for Fe-Co alloy wires with different grain sizes. After the measurement of MBN, the relationship between the extracted features from the analysis of MBN by fast Fourier transform and grain size was learned using a gradient boosting decision tree to create a grain size evaluation model, and the coefficient of determi-nation was used to evaluate the prediction accuracy of the grain size evaluation. The machine learning model demonstrated high prediction accuracy (R2 = 0.926) across the entire grain size range. Using the model to assess the effect of signal-to-noise ratio, experiments were also conducted using MBN time-series data with artificially applied Gaussian noise. Additionally, from the insight of the distribution of predicted grain sizes, we confirmed that a noise reduction method by aver-aging the MBN prediction results can improve the prediction accuracy by reducing the effect of noise as ex-pected. This research will lead to the adoption of MBN applications, which are simple and practical methods of material evaluation, for the micro–nano discipline.
KW - Fe-Co wire
KW - grain size
KW - machine learning
KW - magnetic barkhausen noise
KW - non-destructive evaluation
UR - http://www.scopus.com/inward/record.url?scp=85199646397&partnerID=8YFLogxK
U2 - 10.20965/ijat.2024.p0528
DO - 10.20965/ijat.2024.p0528
M3 - Article
AN - SCOPUS:85199646397
SN - 1881-7629
VL - 18
SP - 528
EP - 536
JO - International Journal of Automation Technology
JF - International Journal of Automation Technology
IS - 4
ER -