Baburaj Aiswarya, Jayadevan Syamini, Aliyana Akshaya Kumar, Sk Naveen Kumar, Stylios George K
Department of Electronics, Mangalore University, Mangalore, 574199, India.
Research Institute for Flexible Materials, School of Textiles and Design, Heriot-Watt University, Netherdale, Galashiels, TD1 3HF, United Kingdom of Great Britain and Northern Ireland.
Adv Sci (Weinh). 2025 May;12(20):e2417414. doi: 10.1002/advs.202417414. Epub 2025 Apr 25.
Triboelectric nanogenerators (TENGs) are emerging as transformative technologies for sustainable energy harvesting and precision sensing, offering eco-friendly power generation from mechanical motion. They harness mechanical energy while enabling self-sustaining sensing for self-powered devices. However, challenges such as material optimization, fabrication techniques, design strategies, and output stability must be addressed to fully realize their practical potential. Artificial intelligence (AI), with its capabilities in advanced data analysis, pattern recognition, and adaptive responses, is revolutionizing fields like healthcare, industrial automation, and smart infrastructure. When integrated with TENGs, AI can overcome current limitations by enhancing output, stability, and adaptability. This review explores the synergistic potential of AI-driven TENG systems, from optimizing materials and fabrication to embedding machine learning and deep learning algorithms for intelligent real-time sensing. These advancements enable improved energy harvesting, predictive maintenance, and dynamic performance optimization, making TENGs more practical across industries. The review also identifies key challenges and future research directions, including the development of low-power AI algorithms, sustainable materials, hybrid energy systems, and robust security protocols for AI-enhanced TENG solutions.
摩擦纳米发电机(TENGs)正作为可持续能量收集和精确传感的变革性技术崭露头角,可通过机械运动实现环保发电。它们在利用机械能的同时,还能为自供电设备实现自我维持的传感功能。然而,要充分发挥其实际潜力,必须应对诸如材料优化、制造技术、设计策略和输出稳定性等挑战。人工智能(AI)凭借其在高级数据分析、模式识别和自适应响应方面的能力,正在彻底改变医疗保健、工业自动化和智能基础设施等领域。与TENGs集成时,AI可以通过提高输出、稳定性和适应性来克服当前的局限性。本文综述探讨了AI驱动的TENG系统的协同潜力,从优化材料和制造到嵌入机器学习和深度学习算法以实现智能实时传感。这些进展有助于改进能量收集、预测性维护和动态性能优化,使TENGs在各个行业中更具实用性。综述还确定了关键挑战和未来研究方向,包括低功耗AI算法、可持续材料、混合能源系统的开发,以及用于AI增强TENG解决方案的强大安全协议。