Machine learning based data driven inkjet printed electronics: jetting prediction for novel inks

被引:24
作者
Brishty, Fahmida Pervin [1 ]
Urner, Ruth [1 ]
Grau, Gerd [1 ]
机构
[1] York Univ, Dept Elect Engn & Comp Sci, Toronto, ON, Canada
来源
FLEXIBLE AND PRINTED ELECTRONICS | 2022年 / 7卷 / 01期
基金
加拿大自然科学与工程研究理事会;
关键词
machine learning; inkjet printing; printed electronics; random forest; decision tree; gradient boosting; jetting; OPTIMIZATION; DESIGN;
D O I
10.1088/2058-8585/ac5a39
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Machine learning (ML) as a predictive methodology can potentially reduce the configuration cost and workload of inkjet printing. Inkjet printing has many advantages for additive manufacturing and printed electronics including low cost, scalability, non-contact printing and on-demand customization. Inkjet generates droplets with a piezoelectric dispenser controlled through frequency, voltage pulse and timing parameters. A major challenge is the design of jettable inks and the rapid optimization of stable jetting conditions whilst preventing common problems (no ejection, perturbation, satellite drop, multiple drops, drop breaking, nozzle clogging). Material consuming trial and error experiments are replaced here with a ML based jetting window. A dataset of machine and material properties is created from literature and experimental data. After exploratory data analysis and feature identification, various (linear and non-linear) regression models are compared in detail. The models are trained on 80% of the data and root mean square error (RMSE) is calculated on 20% test data. Simple polynomial relationships between the input and output features yield coarse prediction. Instead, small ensembles of decision trees (DTs) (boosted DTs and random forests) have improved predictive power for drop velocity and radius with RMSE of 0.39 m s(-1) and 2.21 mu m respectively. The mean absolute percentage error is 3.87%. The models are validated with experimentally collected data for a novel ink where no data points with this ink were included in the training set. Additionally, several classification algorithms are utilized to categorize ink and printer parameters by jetting regime ('single drop', 'multiple drops', 'no ejection'). Categorization and regression models are combined to improve overall model prediction. This article demonstrates that ML can be used to predict ink jetting behavior from 11 different ink and printing parameters. Different algorithms are analyzed and the optimal combination of algorithms is identified. It is shown that experimental and literature data can be combined and an initial dataset is created that other reserachers can build on in the future. ML enables efficient material and printing parameter selection speeding up the development of novel ink materials for printed electronics by eliminating jetting experiments that are money, time and material intensive.
引用
收藏
页数:19
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  • [31] Pedregosa F, 2011, J MACH LEARN RES, V12, P2825
  • [32] Machine vision methodology for inkjet printing drop sequence generation and validation
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    Grau, Gerd
    [J]. FLEXIBLE AND PRINTED ELECTRONICS, 2021, 6 (03):
  • [33] Ink-jet delivery of particle suspensions by piezoelectric droplet ejectors
    Reis, N
    Ainsley, C
    Derby, B
    [J]. JOURNAL OF APPLIED PHYSICS, 2005, 97 (09)
  • [34] Coupling machine learning with 3D bioprinting to fast track optimisation of extrusion printing *
    Ruberu, Kalani
    Senadeera, Manisha
    Rana, Santu
    Gupta, Sunil
    Chung, Johnson
    Yue, Zhilian
    Venkatesh, Svetha
    Wallace, Gordon
    [J]. APPLIED MATERIALS TODAY, 2021, 22
  • [35] Towards inkjet-printed low cost passive UHF RFID skin mounted tattoo paper tags based on silver nanoparticle inks
    Sanchez-Romaguera, Veronica
    Ziai, Mohamed A.
    Oyeka, Dumtoochukwu
    Barbosa, Silvia
    Wheeler, Joseph S. R.
    Batchelor, John C.
    Parker, Edward. A.
    Yeates, Stephen G.
    [J]. JOURNAL OF MATERIALS CHEMISTRY C, 2013, 1 (39) : 6395 - 6402
  • [36] A MATHEMATICAL THEORY OF COMMUNICATION
    SHANNON, CE
    [J]. BELL SYSTEM TECHNICAL JOURNAL, 1948, 27 (03): : 379 - 423
  • [37] Multi-Objective Optimization Design through Machine Learning for Drop-on-Demand Bioprinting
    Shi, Jia
    Song, Jinchun
    Song, Bin
    Lu, Wen F.
    [J]. ENGINEERING, 2019, 5 (03) : 586 - 593
  • [38] Sofeikov KI, 2014, IEEE IJCNN, P3548, DOI 10.1109/IJCNN.2014.6889842
  • [39] Inkjet-printed line morphologies and temperature control of the coffee ring effect
    Soltman, Dan
    Subramanian, Vivek
    [J]. LANGMUIR, 2008, 24 (05) : 2224 - 2231
  • [40] Methodology for Inkjet Printing of Partially Wetting Films
    Soltman, Dan
    Ben Smith
    Kang, Hongki
    Morris, S. J. S.
    Subramanian, Vivek
    [J]. LANGMUIR, 2010, 26 (19) : 15686 - 15693