Fault Isolation for the Ink Deposition Process in High-End Industrial Printers
Casper van Peijpe, Farhad Ghanipoor, Youri de Loore, Pim Hacking,, Nathan van de Wouw, and Peyman Mohajerin Esfahani

TL;DR
This paper introduces a hybrid fault detection and isolation framework for ink channels in high-end industrial printers, combining model-based and data-driven techniques to improve fault diagnosis accuracy under challenging sensing conditions.
Contribution
It proposes a novel hybrid FDI method that effectively isolates multiple fault types in ink channels, overcoming limitations of traditional approaches and performing well with limited data.
Findings
Outperforms state-of-the-art fault isolation methods.
Effective in scenarios with scarce data.
Accurately isolates multiple fault variants.
Abstract
This paper presents a mathematical framework for modeling the dynamic effects of three fault categories and six fault variants in the ink channels of high-end industrial printers. It also introduces a hybrid approach that combines model-based and data-based methods to detect and isolate these faults effectively. A key challenge in these systems is that the same piezo device is used for actuation (generating ink droplets) and for sensing and, as a consequence, sensing is only available when there is no actuation. The proposed Fault Detection (FD) filter, based on the healthy model, uses the piezo self-sensing signal to generate a residual, while taking the above challenge into account. The system is flagged as faulty if the residual energy exceeds a threshold. Fault Isolation (FI) is achieved through linear regression or a k-nearest neighbors approach to identify the most likely fault…
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Taxonomy
TopicsIndustrial Vision Systems and Defect Detection · Additive Manufacturing and 3D Printing Technologies
MethodsLinear Regression
