Wu Yitong, Kong Sifan, Yao Qingxin, Li Muyun, Lai Huayi, Sun Duoyu, Cai Qingyue, Qiu Zelin, Ning Honglong, Zhang Yong
School of Electronics and Information Engineering, South China Normal University, Foshan 528225, China.
School of Semiconductor Science and Technology, South China Normal University, Foshan 528225, China.
Micromachines (Basel). 2024 Aug 26;15(9):1073. doi: 10.3390/mi15091073.
Electrochromic devices have demonstrated considerable potential in a range of applications, including smart windows and automotive rearview mirrors. However, traditional cycle life testing methods are time-consuming and require significant resources to process a substantial amount of generated data, which presents a significant challenge and remains an urgent issue to be addressed. To address this challenge, we proposed the use of Long Short-Term Memory (LSTM) networks to construct a prediction model of the cycle life of electrochromic devices and introduced an interpretable analysis method to further analyze the model's predictive capabilities. The original dataset used for modeling was derived from preliminary experiments conducted under 1000 cycles of six devices prepared with varying mixing ratios of heavy water (DO). Furthermore, validation experiments confirmed the feasibility of the DO mixing strategy, with 83% of the devices exhibiting a high initial transmittance modulation amplitude (Δ = 43.95%), a rapid response time ( = 7 s and = 8 s), and excellent cyclic stability (Δ = 44.92% after 1000 cycles). This study is the first to use machine learning techniques to predict the cycle life of electrochromic devices while proposing performance enhancement and experimental time savings for inorganic all-liquid electrochromic devices.
电致变色器件在一系列应用中已展现出相当大的潜力,包括智能窗户和汽车后视镜。然而,传统的循环寿命测试方法耗时且需要大量资源来处理大量生成的数据,这带来了重大挑战,仍是亟待解决的紧迫问题。为应对这一挑战,我们提出使用长短期记忆(LSTM)网络构建电致变色器件循环寿命的预测模型,并引入一种可解释的分析方法来进一步分析该模型的预测能力。用于建模的原始数据集来自对六种用不同重水(DO)混合比制备的器件在1000次循环下进行的初步实验。此外,验证实验证实了DO混合策略的可行性,83%的器件表现出高的初始透过率调制幅度(Δ = 43.95%)、快速响应时间( = 7秒和 = 8秒)以及出色的循环稳定性(1000次循环后Δ = 44.92%)。本研究首次使用机器学习技术预测电致变色器件的循环寿命,同时为无机全液体电致变色器件提出了性能提升和节省实验时间的方法。