Journal of Textile Research ›› 2026, Vol. 47 ›› Issue (03): 175-183.doi: 10.13475/j.fzxb.20251102702

• Safety and Protective Materials • Previous Articles     Next Articles

Advances in thermal protective performance of firefighter protective clothing for intelligent design

ZHANG Jinfeng1, LI Jiayin1,2,3, SU Yun1,2,3(), TIAN Miao1,2,3, LI Jun1,2,3   

  1. 1 College of Fashion and Design, Donghua University, Shanghai 200051, China
    2 Protective Clothing Research Center, Donghua University, Shanghai 200051, China
    3 Key Laboratory of Clothing Design and Technology, Ministry of Education, Donghua University, Shanghai 200051, China
  • Received:2025-11-11 Revised:2026-02-06 Online:2026-03-15 Published:2026-03-15
  • Contact: SU Yun E-mail:suyun150@dhu.edu.cn

Abstract:

Significance Firefighter protective clothing serves as a critical barrier for firefighters operating in extreme thermal hazard environments. Consequently, accurate prediction and optimization of the thermal protective performance of firefighter protective clothing present a core scientific challenge. The physical experiments provide direct performance test data, but their applications are restricted by destructive nature, high cost, long duration, and the difficulty in replicating complex dynamic conditions. Numerical simulations gain computational efficiency but face bottlenecks from their reliance on precise boundary conditions and high computational costs as models grow more complex. The combination of these bottlenecks necessitates a new research paradigm and data-driven machine learning provides promising solution. These algorithms enable learning of high-dimensional mapping relationships from large-scale experimental or simulation data. They could therefore predict outcomes without directly solving complex systems of heat and mass transfer differential equations. This data-driven approach demonstrates high possibility of effectively overcoming the efficiency and accuracy limitations that traditional methods face when dealing with complex dynamic conditions, and shows immense potential for performance assessment of firefighter protective clothing and the dynamic prediction of human burn injury risk.

Progress In machine learning algorithms, the attributes of data instances are referred to as ″features″. The input features cover three major dimensions, which are fire environment parameters, physical properties of fabrics, and human physiological indicators. The output response comprises quantitative measures of the performance of firefighter protective clothing, such as the second-degree skin burn time. Machine learning algorithms could refine the mapping relationship between input features and output responses, breaking through the limitation of linear assumptions. The data sources for machine learning algorithms are derived from physical experiments, literature compilations, and numerical simulations. The precise identification and engineering of key features help to improve the performance of machine learning models. The black-box nature of machine learning algorithms significantly reduces time costs and improves computational efficiency, but input data of poor quality may cause the model to produce biased results. The performance of these algorithms is evaluated based on the accuracy of prediction results, goodness of fit, and stability, with studies demonstrating that machine learning models outperform empirical equations. Furthermore, machine learning facilitates an emerging research direction, i.e. intelligent inverse design, which employs algorithms to find optimal fabric parameters that satisfy specific protective performance requirements. This approach offers a framework for the intelligent inverse design of firefighter protective clothing.

Conclusion and Prospect The prediction and design methods for the thermal protective performance of firefighter protective clothing are undergoing an evolutionary process, transitioning from physical experiments and numerical simulations toward data-driven and intelligent directions. At present, data-driven research has made practical advancements, but several challenges remain. First, collecting data from firefighters' live burn exercises involves high risks and substantial costs. Future research on the intelligent design of firefighter protective clothing can integrate experimentally validated high-fidelity numerical models or computational fluid dynamics heat transfer numerical simulations to generate virtual training data for multiple working conditions. Second, existing design paradigms lack a fully intelligent inverse design capability tailored to specific protection objectives. Future research could develop personalized inverse design platforms constrained by prior knowledge and driven by data. Finally, machine learning algorithms possess high application value in the areas of performance prediction for firefighter protective clothing and firefighter training. Exploring a synergistic pathway that combines ″physics-informed priors, data-driven models, and artificial intelligence agents″, and constructing digital twin systems, is expected to advance the design of firefighter protective clothing in a more precise, practical, and intelligent direction. This will provide key scientific support for development of intelligent firefighter protective clothing and next-generation safety assurance systems.

Key words: firefighter protective clothing, thermal protective performance, machine learning, performance prediction, reverse design

CLC Number: 

  • TS 941.73

Fig.1

Division of domain in numerical model"

Fig.2

Research paradigms for performance evaluation and optimization design of firefighter protective clothing"

Tab.1

Comparative analysis of machine learning algorithms for evaluating the performance of firefighter protective clothing under fire conditions"

文献 算法 输入特征 输出响应 模型效能
[54] 径向基函数神经网络 环境热流密度,热暴露时间;消防服TPP值 皮肤Ⅱ级烧伤时间 RE<9.3%
[55] 人工神经网络 环境热流密度;单层织物组成成分、
经纬密、厚度;
衣下空气层厚度
皮肤Ⅱ级烧伤时间 RE<3.565 8%;
σ<0.047 8
[56] 人工神经网络 环境热流密度;多层织物组成成分、
面密度、厚度、热阻、透气性、
湿阻、液体扩散速度
织物热防护性综合指标 R2=0.99;
RMSE=0.71
热生理舒适性综合指标 R2=0.94;
RMSE=1.53
[57] 多层感知机
神经网络
织物结构、线密度、经纬密、面密度、
厚度、极限氧指数、湿阻
EN 367标准/ISO 6942
标准下升温12 ℃/
24 ℃各自所需时间
MAPE<6.87%;
r>0.83
[4] 人工神经网络 织物组成成分、结构、经纬密、面密度、
厚度、透气性、热阻、湿阻、
湿润程度;是否存在衣下空气层
热传递性能指标 r=0.54;
RMSE=4.37
总热损失 r=0.33;
RMSE=293.03
[5] 人工神经网络 多层织物厚度、经纬密、导热系数、比热容;
固体纤维体积分数、回潮率、湿润程度、液体
扩散系数;衣下空气层厚度;基于上述物理参
数量纲分析得到17个无量纲参数
皮肤Ⅱ级烧伤时间 RE<10%;
RMS<0.001;
R2=0.972 3
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