Characterisation of oxide layers on technical copper based on visible hyperspectral imaging

Author:

Stiedl Jan1ORCID,Azemtsop M. Georgette2ORCID,Boldrini Barbara2ORCID,Green Simon3,Chassé Thomas4ORCID,Rebner Karsten5ORCID

Affiliation:

1. University of Tuebingen, Institute of Physical and Theoretical Chemistry, Auf der Morgenstelle 18, 72076 Tuebingen, Germany; Reutlingen University, Process Analysis & Technology, Alteburgstrasse 150, 72762 Reutlingen, Germany; Robert Bosch GmbH, Automotive Electronics, Postfach 1342, 72703 Reutlingen, Germany

2. Reutlingen University, Process Analysis & Technology, Alteburgstrasse 150, 72762 Reutlingen, Germany

3. Robert Bosch GmbH, Automotive Electronics, Postfach 1342, 72703 Reutlingen, Germany

4. Center for Light-Matter Interaction, Sensors & Analytics (LISA+), Auf der Morgenstelle 15, 72076 Tuebingen, Germany

5. Reutlingen University, Process Analysis & Technology, Alteburgstrasse 150, 72762 Reutlingen, Germany. karsten.rebner@reutlingen-university.de

Abstract

The detection and characterisation of oxide layers on metallic copper samples plays an important role for power electronic modules in the automotive industry. However, since precise identification of oxide layers by visual inspection is difficult and time consuming due to inhomogeneous colour distribution, a reliable and efficient method for estimating their thickness is needed. In this study, hyperspectral imaging in the visible wavelength range (425–725 nm) is proposed as an in-line inspection method for analysing oxide layers in real-time during processing of copper components such as printed circuit boards in the automotive industry. For implementation in the production line a partial least square regression (PLSR) model was developed with a calibration set of n = 12 with about 13,000 spectra per sample to determine the oxide layer thickness on top of the technical copper surfaces. The model shows a good prediction performance in the range of 0–30 nm compared to Auger electron spectroscopy depth profiles as a reference method. The root mean square error (RMSE) is 1.75 nm for calibration and 2.70 nm for full cross-validation. Applied to an external dataset of four new samples with about 13,000 spectra per sample the model provides an RMSE of 1.84 nm for prediction and demonstrates the robustness of the model during real-time processing. The results of this study prove the ability and usefulness of the proposed method to estimate the thickness of oxide layers on technical copper. Hence, the application of hyperspectral imaging for the industrial process control of electronic devices is very promising.

Publisher

IM Publications Open LLP

Subject

Spectroscopy,Analytical Chemistry

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