posted on 2024-08-20, 15:34authored byZhongyu Cheng, Ke Wang, Ali M.N. Tanvir, Wenjie Shang, Tengfei Luo, Yanliang Zhang, Alexander W. Dowling, David B. Go
In response to the escalating demand for flexible devices
in applications
such as wearables, sensors, and touch panels, there is a need for
innovative fabrication approaches for devices made from nanomaterial-based
inks. Subsequent to ink deposition, a pivotal stage in device manufacturing
typically involves high-temperature sintering, posing challenges for
heat-sensitive substrates. Nonthermal plasma jet sintering utilizing
an atmospheric pressure dielectric barrier discharge (DBD) plasma
jet enables sintering at room temperature and standard pressure, facilitating
the sintering of printed nanoparticle films without compromising substrate
or film surface integrity. However, determining optimal plasma jet
sintering conditions can be challenging due to multiple processing
variables with intricate interrelationships. This work employed Bayesian
optimization (BO) and machine learning (ML) to identify optimal values
for seven primary plasma jet sintering variables. Optimization yielded
a 99.2% increase in the measured electrical conductivity for plasma
jet-sintered indium tin oxide (ITO) films after five rounds of experiments.
Moreover, the optimal sintering conditions achieved an electrical
conductivity that was 81.4% of conventional furnace sintering at 300
°C, but was three times faster and with a peak substrate temperature
below 47 °C. This result demonstrates the prospect of applying
BO to optimize processing techniques for emerging low-temperature
requirements.