A printing quality optimization framework for non-contact ink writing techniques

Non-contact ink writing techniques are a promising additive manufacturing (AM) technology to fabricate customized, low-cost and flexible electronic devices, while dramatically reducing chemical waste and lowering manufacturing costs. However, the printing quality of non-contact ink writing technique...

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Main Author: Zhang, Haining
Other Authors: Moon Seung Ki
Format: Thesis-Doctor of Philosophy
Language:English
Published: Nanyang Technological University 2020
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Online Access:https://hdl.handle.net/10356/144058
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Institution: Nanyang Technological University
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spelling sg-ntu-dr.10356-1440582023-03-11T18:06:37Z A printing quality optimization framework for non-contact ink writing techniques Zhang, Haining Moon Seung Ki School of Mechanical and Aerospace Engineering National Research Foundation (NRF), SMRT skmoon@ntu.edu.sg Engineering::Manufacturing::Flexible manufacturing systems Engineering::Mechanical engineering Non-contact ink writing techniques are a promising additive manufacturing (AM) technology to fabricate customized, low-cost and flexible electronic devices, while dramatically reducing chemical waste and lowering manufacturing costs. However, the printing quality of non-contact ink writing techniques is still highlighted as the main limitation significantly affecting the electrical performance of printed components. In this research, the author attempts to develop an optimization framework that helps designers improve the printing quality of the non-contact ink writing techniques. In the proposed optimization framework, the following methodologies have been proposed: 1) a novel hybrid machine learning method to determine an optimal operating process window of non-contact ink writing in various design spaces; 2) a statistical method to quantify the conflicting relationship between the printed line roughness and printed line thickness; 3) a Bayesian based approach to investigate the correlations between process parameters and printed line morphology; 4) a hybrid multi-objective optimization approach to optimize the conflicting relationship between the printed line edge roughness and line thickness in 2D and 3D design spaces, respectively; 5) a fast multi-objective optimization approach to optimize the overall printing quality, under the objective of customizing line width, and dual conflicting objectives of minimizing line edge roughness and maximizing line thickness; and 6) a knowledge transfer based method for rapid process modeling of non-contact ink writing techniques under varied operating conditions. To demonstrate the effectiveness of the developed methodology, an emerging and widely adopted non-contact ink writing technology - aerosol jet printing (AJP) is used as case studies throughout this thesis. The results of the case studies show that the proposed framework is beneficial to balance the complex relationship between different process parameters by the identified operating process windows of AJP, hence the lines can be fabricated with better edge definition and lower overspray in a design space. Following that, based on the determined operating process windows, the conflicting relationship between different printed line morphology is further optimized by the proposed optimization framework, thus improving the overall printed line quality. Additionally, rapid process modeling of AJP under varied operating conditions is achieved based on the proposed knowledge transfer method, which is more efficient than traditional modeling approaches in AJP. Despite the limitations of the proposed optimization framework, the implementation of the developed methodology demonstrates a significant improvement in printing process optimization of non-contact ink writing techniques. As the major contribution of this research, the proposed optimization framework provides designers with a guideline in developing customized and high-performance of electrical circuits and components. Moreover, considering its data-driven based characteristics, the proposed framework can be applicable to other process optimization researches in additive manufacturing technologies. Doctor of Philosophy 2020-10-12T02:55:28Z 2020-10-12T02:55:28Z 2020 Thesis-Doctor of Philosophy Zhang, H. (2020). A printing quality optimization framework for non-contact ink writing techniques. Doctoral thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/144058 10.32657/10356/144058 en This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License (CC BY-NC 4.0). application/pdf Nanyang Technological University
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Manufacturing::Flexible manufacturing systems
Engineering::Mechanical engineering
spellingShingle Engineering::Manufacturing::Flexible manufacturing systems
Engineering::Mechanical engineering
Zhang, Haining
A printing quality optimization framework for non-contact ink writing techniques
description Non-contact ink writing techniques are a promising additive manufacturing (AM) technology to fabricate customized, low-cost and flexible electronic devices, while dramatically reducing chemical waste and lowering manufacturing costs. However, the printing quality of non-contact ink writing techniques is still highlighted as the main limitation significantly affecting the electrical performance of printed components. In this research, the author attempts to develop an optimization framework that helps designers improve the printing quality of the non-contact ink writing techniques. In the proposed optimization framework, the following methodologies have been proposed: 1) a novel hybrid machine learning method to determine an optimal operating process window of non-contact ink writing in various design spaces; 2) a statistical method to quantify the conflicting relationship between the printed line roughness and printed line thickness; 3) a Bayesian based approach to investigate the correlations between process parameters and printed line morphology; 4) a hybrid multi-objective optimization approach to optimize the conflicting relationship between the printed line edge roughness and line thickness in 2D and 3D design spaces, respectively; 5) a fast multi-objective optimization approach to optimize the overall printing quality, under the objective of customizing line width, and dual conflicting objectives of minimizing line edge roughness and maximizing line thickness; and 6) a knowledge transfer based method for rapid process modeling of non-contact ink writing techniques under varied operating conditions. To demonstrate the effectiveness of the developed methodology, an emerging and widely adopted non-contact ink writing technology - aerosol jet printing (AJP) is used as case studies throughout this thesis. The results of the case studies show that the proposed framework is beneficial to balance the complex relationship between different process parameters by the identified operating process windows of AJP, hence the lines can be fabricated with better edge definition and lower overspray in a design space. Following that, based on the determined operating process windows, the conflicting relationship between different printed line morphology is further optimized by the proposed optimization framework, thus improving the overall printed line quality. Additionally, rapid process modeling of AJP under varied operating conditions is achieved based on the proposed knowledge transfer method, which is more efficient than traditional modeling approaches in AJP. Despite the limitations of the proposed optimization framework, the implementation of the developed methodology demonstrates a significant improvement in printing process optimization of non-contact ink writing techniques. As the major contribution of this research, the proposed optimization framework provides designers with a guideline in developing customized and high-performance of electrical circuits and components. Moreover, considering its data-driven based characteristics, the proposed framework can be applicable to other process optimization researches in additive manufacturing technologies.
author2 Moon Seung Ki
author_facet Moon Seung Ki
Zhang, Haining
format Thesis-Doctor of Philosophy
author Zhang, Haining
author_sort Zhang, Haining
title A printing quality optimization framework for non-contact ink writing techniques
title_short A printing quality optimization framework for non-contact ink writing techniques
title_full A printing quality optimization framework for non-contact ink writing techniques
title_fullStr A printing quality optimization framework for non-contact ink writing techniques
title_full_unstemmed A printing quality optimization framework for non-contact ink writing techniques
title_sort printing quality optimization framework for non-contact ink writing techniques
publisher Nanyang Technological University
publishDate 2020
url https://hdl.handle.net/10356/144058
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