Machine learning-assisted E-jet printing for manufacturing of organic flexible electronics

被引:17
作者
Shirsavar, Mehran Abbasi [1 ]
Taghavimehr, Mehrnoosh [1 ]
Ouedraogo, Lionel J. [1 ]
Javaheripi, Mojan [2 ]
Hashemi, Nicole N. [1 ,3 ]
Koushanfar, Farinaz [2 ]
Montazami, Reza [1 ,4 ]
机构
[1] Iowa State Univ, Dept Mech Engn, Ames, IA 50011 USA
[2] Univ Calif San Diego, Dept Elect & Comp Engn, La Jolla, CA 92093 USA
[3] Stanford Univ, Dept Mech Engn, Stanford, CA 94305 USA
[4] Nazarbayev Univ, Dept Mech & Aerosp Engn, Nur Sultan 010000, Kazakhstan
基金
美国国家科学基金会;
关键词
Flexible electronics; Machine learning; Sensors; E-jet printing; Graphene; GRAPHENE; FABRICATION; DESIGN;
D O I
10.1016/j.bios.2022.114418
中图分类号
Q6 [生物物理学];
学科分类号
071011 ;
摘要
Electrohydrodynamic-jet (E jet)printing technique enables the high-resolution printing of complex soft electronic devices. As such, it has an unmatched potential for becoming the conventional technique for printing soft electronic devices. In this study, the electrical conductivity of the E-jet printed circuits was studied as a function of key printing parameters (nozzle speed, ink flow rate, and voltage). The collected experimental dataset was then used to train a machine learning algorithm to establish models capable of predicting the characteristics of the printed circuits in real-time. A decision tree was applied to the data set and resulted in an accuracy of 0.72, and further evaluations showed that pruning the tree increased the accuracy while sensitivity decreased in the highly pruned trees. The k-fold cross-validation (CV) method was used in model selection to test the ability of the model to get trained on data. The accuracy of CV method was the highest for random forest at 0.83 and K-NN model (k = 10) at 0.82. Precision parameters were compared to evaluate the supervised classification models. According to F-measure values, the K-NN model (k = 10) and random forest are the best methods to classify the conductivity of electrodes.
引用
收藏
页数:11
相关论文
共 50 条
  • [31] Machine Learning-Assisted Identification of Single-Layer Graphene via Color Variation Analysis
    Yang, Eunseo
    Seo, Miri
    Rhee, Hanee
    Je, Yugyeong
    Jeong, Hyunjeong
    Lee, Sang Wook
    [J]. NANOMATERIALS, 2024, 14 (02)
  • [32] Machine Learning-Assisted Simulations and Predictions for Battery Interfaces
    Sun, Zhaojun
    Li, Xin
    Wu, Yiming
    Gu, Qilin
    Zheng, Shiyou
    [J]. ADVANCED INTELLIGENT SYSTEMS, 2025,
  • [33] Machine Learning-Assisted Modeling in Antenna Array Design
    Wu, Qi
    Chen, Weiqi
    Li, Yuefeng
    Wang, Haiming
    Yin, Jiexi
    Yin, Weishuang
    [J]. 2024 IEEE INTERNATIONAL WORKSHOP ON ANTENNA TECHNOLOGY, IWAT, 2024, : 92 - 93
  • [34] Machine Learning-Assisted PAPR Reduction in Massive MIMO
    Kalinov, Aleksei
    Bychkov, Roman
    Ivanov, Andrey
    Osinsky, Alexander
    Yarotsky, Dmitry
    [J]. IEEE WIRELESS COMMUNICATIONS LETTERS, 2021, 10 (03) : 537 - 541
  • [35] Machine learning-assisted investigations toward polymer synthesis
    Zhang, Zexi
    Cai, Zhanxiang
    Zhang, Wenbin
    Lu, Hua
    Chen, Mao
    [J]. CHINESE SCIENCE BULLETIN-CHINESE, 2025, 70 (4-5): : 471 - 480
  • [36] Machine learning-assisted global optimization of photonic devices
    Kudyshev, Zhaxylyk A.
    Kildishev, Alexander, V
    Shalaev, Vladimir M.
    Boltasseva, Alexandra
    [J]. NANOPHOTONICS, 2021, 10 (01) : 371 - 383
  • [37] Novel Cocrystals of Vonoprazan: Machine Learning-Assisted Discovery
    Lee, Min-Jeong
    Kim, Ji-Yoon
    Kim, Paul
    Lee, In-Seo
    Mswahili, Medard E.
    Jeong, Young-Seob
    Choi, Guang J.
    [J]. PHARMACEUTICS, 2022, 14 (02)
  • [38] Machine learning-assisted synthetic biology of cyanobacteria and microalgae
    Jin, Weijia
    Wang, Fangzhong
    Chen, Lei
    Zhang, Weiwen
    [J]. ALGAL RESEARCH-BIOMASS BIOFUELS AND BIOPRODUCTS, 2025, 86
  • [39] Machine Learning-Assisted System for Thyroid Nodule Diagnosis
    Zhang, Bin
    Tian, Jie
    Pei, Shufang
    Chen, Yubing
    He, Xin
    Dong, Yuhao
    Zhang, Lu
    Mo, Xiaokai
    Huang, Wenhui
    Cong, Shuzhen
    Zhang, Shuixing
    [J]. THYROID, 2019, 29 (06) : 858 - 867
  • [40] Machine Learning-Assisted Beam Alignment for mmWave Systems
    Heng, Yuqiang
    Andrews, Jeffrey G.
    [J]. IEEE TRANSACTIONS ON COGNITIVE COMMUNICATIONS AND NETWORKING, 2021, 7 (04) : 1142 - 1155