Xu Liying, Liu Siqi, Hu Dandan, Liu Junhao, Zhang Yuze, Li Ziqiang, Su Zichuan, Liang Daxin
School of Food Engineering, Harbin University, Harbin 150086, China.
Key Laboratory of Bio-Based Material Science and Technology (Ministry of Education), Northeast Forestry University, Harbin 150040, China.
Gels. 2025 Jun 18;11(6):464. doi: 10.3390/gels11060464.
Understanding the relationships between design factors is crucial for the development of hydrogel supercapacitors, yet the relative importance and interdependencies of material properties and operating conditions remain unclear. This study employs interpretable machine learning to analyze the design factors that affect hydrogel supercapacitor performance, using 232 experimental samples from 41 recent studies. SHAP analysis was implemented to quantify parameter importance and reveal feature interactions among 16 key design parameters, including polymer types, electrolyte formulations, and operating conditions. Results show that synthetic vinyl polymers most strongly influence specific capacitance, while conductive polymers predominantly affect cycle stability. Ionic conductivity emerged as the most impactful parameter despite moderate feature importance, indicating complex nonlinear relationships. Critical interdependencies between polymer concentration and electrolyte formulation suggest that optimal design requires coordinated parameter selection rather than independent optimization. This interpretable framework provides quantitative insights into design factor hierarchies and parameter interdependencies, offering evidence-based guidelines for rational material selection in hydrogel supercapacitor development.
了解设计因素之间的关系对于水凝胶超级电容器的开发至关重要,但材料特性和操作条件的相对重要性及相互依赖性仍不明确。本研究采用可解释的机器学习方法,利用来自41项近期研究的232个实验样本,分析影响水凝胶超级电容器性能的设计因素。实施SHAP分析以量化参数重要性,并揭示包括聚合物类型、电解质配方和操作条件在内的16个关键设计参数之间的特征相互作用。结果表明,合成乙烯基聚合物对比电容的影响最大,而导电聚合物主要影响循环稳定性。尽管特征重要性一般,但离子电导率却是最具影响力的参数,这表明存在复杂的非线性关系。聚合物浓度与电解质配方之间的关键相互依赖性表明,最佳设计需要协调参数选择,而非独立优化。这个可解释的框架提供了对设计因素层次结构和参数相互依赖性的定量见解,为水凝胶超级电容器开发中的合理材料选择提供了循证指南。