Research advances towards multidimensional signal processing strategies for polymeric multimodal flexible sensors

IF 21.8 2区 材料科学 Q1 MATERIALS SCIENCE, COMPOSITES
Advanced Composites and Hybrid Materials Pub Date : 2026-03-25 Epub Date: 2026-04-08 DOI:10.1007/s42114-026-01750-6
Jun Tong, Bin Lan, Min Wu, Zhifeng Wang, Haichen Zhang, Wei Li, Ruiqi Yuan, Haichu Chen, Lan Liao
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引用次数: 0

Abstract

The inherent advantages of polymer materials, such as excellent flexibility, processability, and molecular structure tunability, make them critical materials for fabrication of multimodal flexible sensors, which can be applicated in complex scenarios to perceive and monitor diverse stimuli, particularly in physiological signal acquisition and human-machine interaction. However, the widespread existence of signal crosstalk and coupling phenomena, which originate from the intrinsic material properties and device integration strategies, severely compromise the performance and reliability of multimodal flexible sensors. This paper systematically reviews the strategies of signal processing to identify the correct signal for multimodal flexible sensors from multiple perspectives, containing signal processing based on material combination, structural optimization, differences of signal response characteristics, and artificial intelligence technology. Previously, the basic structural composition, commonly used materials, fundamental sensing mechanisms and common fabrication methods of flexible sensors are systematically introduced. Signal decoupling by extracting the characteristic differences of output signals in terms of sensing behavior dependent on test condition, time response and variations in amplitude, and utilizing differential measurement techniques are systematically discussed. Moreover, the fundamental types and principles of machine learning algorithms, as well as the advantages and disadvantages of them are also introduced in detail before discussing their application in signal decoupling and recognition. Simultaneously, the advantages of signal processing strategies based on machine learning compared with traditional signal processing strategies and their current limitations are elaborated in detail. Finally, the paper summarizes the persistent challenges in multimodal flexible sensing and offers a forward-looking perspective on the developmental trajectory of polymeric multimodal sensors, with the goal of providing a reference for future research and promoting the practical application of multimodal flexible sensors.

聚合物多模态柔性传感器的多维信号处理策略研究进展
高分子材料具有优异的柔韧性、可加工性和分子结构可调性等固有优势,是制造多模态柔性传感器的关键材料,可应用于复杂场景中感知和监测各种刺激,特别是生理信号采集和人机交互。然而,由于材料固有特性和器件集成策略导致的信号串扰和耦合现象普遍存在,严重影响了多模态柔性传感器的性能和可靠性。本文从多个角度系统综述了多模态柔性传感器识别正确信号的信号处理策略,包括基于材料组合的信号处理、基于结构优化的信号处理、基于信号响应特性差异的信号处理以及基于人工智能技术的信号处理。在此之前,系统地介绍了柔性传感器的基本结构组成、常用材料、基本传感机构和常用制造方法。系统地讨论了根据测试条件、时间响应和幅度变化提取输出信号在传感行为方面的特征差异,并利用差分测量技术实现信号解耦。此外,还详细介绍了机器学习算法的基本类型和原理,以及它们的优缺点,并讨论了它们在信号解耦和识别中的应用。同时,详细阐述了基于机器学习的信号处理策略相对于传统信号处理策略的优势以及目前的局限性。最后,总结了多模态柔性传感领域面临的持续挑战,并对聚合物多模态传感器的发展轨迹进行了前瞻性展望,以期为未来的研究提供参考,促进多模态柔性传感器的实际应用。
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来源期刊
CiteScore
26.00
自引率
21.40%
发文量
185
期刊介绍: Advanced Composites and Hybrid Materials is a leading international journal that promotes interdisciplinary collaboration among materials scientists, engineers, chemists, biologists, and physicists working on composites, including nanocomposites. Our aim is to facilitate rapid scientific communication in this field. The journal publishes high-quality research on various aspects of composite materials, including materials design, surface and interface science/engineering, manufacturing, structure control, property design, device fabrication, and other applications. We also welcome simulation and modeling studies that are relevant to composites. Additionally, papers focusing on the relationship between fillers and the matrix are of particular interest. Our scope includes polymer, metal, and ceramic matrices, with a special emphasis on reviews and meta-analyses related to materials selection. We cover a wide range of topics, including transport properties, strategies for controlling interfaces and composition distribution, bottom-up assembly of nanocomposites, highly porous and high-density composites, electronic structure design, materials synergisms, and thermoelectric materials. Advanced Composites and Hybrid Materials follows a rigorous single-blind peer-review process to ensure the quality and integrity of the published work.
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