How to characterize a NDT method for weld inspection in battery cell manufacturing using deep learning

Author(s):  
Erik Rohkohl ◽  
Mathias Kraken ◽  
Malte Schönemann ◽  
Alexander Breuer ◽  
Christoph Herrmann
2021 ◽  
Author(s):  
Erik Rohkohl ◽  
Mathias Kraken ◽  
Malte Schönemann ◽  
Alexander Breuer ◽  
Christoph Herrmann

Abstract Battery cells are central components of electric vehicles. It is important for automotive OEM to utilize high quality battery cells to ensure high performance and safety of their vehicles. This results in the high demand for quality control measures and inspection methods in battery cell manufacturing. Particular relevant features of battery cells are welds for the internal electrical contact. Failures of these welds are often the cause for battery defects in the field and scrap during production. Consequently, there is a strong need to evaluate all welds during manufacturing. However, there is no established method which allows a quick, comprehensive, and cheap inline measurement of the weld quality. This paper presents a new eddy current based method for non-destructive testing of seam welds as well as a machine learning approach for its validation. A deep learning model has been trained on eddy current measurements to predict results from a reference inspection method, in this case computer tomography. The results prove that eddy current measurements can be used to replicate data acquired by computer tomography which means that eddy current measurements could be a suitable candidate for non-destructive 100% inline inspection. More general, this study demonstrates how machine learning may help to get deeper insights into measurement results and to validate new non-destructive testing techniques whose detailed features are yet unknown. The presented evaluation method enables understanding the capabilities and the limits of a new technique and to extract hidden features from the data. Furthermore, the usage of machine learning allows to perform these evaluations on artificial product samples with specific defects and features, which avoids the costly production physical samples.


10.1142/12511 ◽  
2022 ◽  
Author(s):  
Kai Peter Birke ◽  
Max Weeber ◽  
Michael Oberle

Procedia CIRP ◽  
2019 ◽  
Vol 80 ◽  
pp. 126-131 ◽  
Author(s):  
Matthias Thomitzek ◽  
Nicolas von Drachenfels ◽  
Felipe Cerdas ◽  
Christoph Herrmann ◽  
Sebastian Thiede

2019 ◽  
Vol 8 (2) ◽  
pp. 1900136 ◽  
Author(s):  
Artem Turetskyy ◽  
Sebastian Thiede ◽  
Matthias Thomitzek ◽  
Nicolas von Drachenfels ◽  
Till Pape ◽  
...  

2022 ◽  
Vol 35 (1) ◽  
Author(s):  
Yunhong Che ◽  
Zhongwei Deng ◽  
Xiaolin Tang ◽  
Xianke Lin ◽  
Xianghong Nie ◽  
...  

AbstractAging diagnosis of batteries is essential to ensure that the energy storage systems operate within a safe region. This paper proposes a novel cell to pack health and lifetime prognostics method based on the combination of transferred deep learning and Gaussian process regression. General health indicators are extracted from the partial discharge process. The sequential degradation model of the health indicator is developed based on a deep learning framework and is migrated for the battery pack degradation prediction. The future degraded capacities of both battery pack and each battery cell are probabilistically predicted to provide a comprehensive lifetime prognostic. Besides, only a few separate battery cells in the source domain and early data of battery packs in the target domain are needed for model construction. Experimental results show that the lifetime prediction errors are less than 25 cycles for the battery pack, even with only 50 cycles for model fine-tuning, which can save about 90% time for the aging experiment. Thus, it largely reduces the time and labor for battery pack investigation. The predicted capacity trends of the battery cells connected in the battery pack accurately reflect the actual degradation of each battery cell, which can reveal the weakest cell for maintenance in advance.


2021 ◽  
Vol 111 (07-08) ◽  
pp. 486-489
Author(s):  
Jürgen Fleischer ◽  
Florian Kößler ◽  
Julia Sawodny ◽  
Tobias Storz ◽  
Philipp Gönnheimer ◽  
...  

Die industrielle Batteriezellfertigung ist geprägt durch starre Produktionssysteme für die Massenfertigung. Die Fertigung anwendungsspezifischer Zellen im geringen bis mittleren Stückzahlsegment erfolgt derzeit kostenintensiv in einer Werkstattfertigung. Basierend auf standardisierten Roboterzellen und einer flexiblen Steuerungsarchitektur wird ein Konzept zur hoch automatisierten material-, format- und stückzahlflexiblen Batteriezellfertigung beschrieben.   Industrial battery cell production is characterized by rigid production systems for mass production. The production of application-specific cells in a low to medium quantity segment is currently performed by cost-intensive workshop production. Based on standardized robotic cells and a flexible control architecture, a concept for highly automated battery cell production that is flexible in terms of material, format and number of units is described.


Procedia CIRP ◽  
2021 ◽  
Vol 99 ◽  
pp. 531-536
Author(s):  
Julian Grimm ◽  
Ekrem Köse ◽  
Max Weeber ◽  
Alexander Sauer ◽  
Kai Peter Birke

Procedia CIRP ◽  
2021 ◽  
Vol 104 ◽  
pp. 1215-1220
Author(s):  
Jacob Wessel ◽  
Artem Turetskyy ◽  
Olaf Wojahn ◽  
Tim Abraham ◽  
Christoph Herrmann

2020 ◽  
Vol 43 ◽  
pp. 32-39
Author(s):  
Max Weeber ◽  
Johannes Wanner ◽  
Philipp Schlegel ◽  
Kai Peter Birke ◽  
Alexander Sauer

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