人工智能支持的液流电池建模和管理:一个小回顾

Qiang Zheng , Xingyi Shi , Yuze Cai , Liang An , Dongxiao Zhang
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引用次数: 0

摘要

液流电池因其可扩展性和能量-功率解耦设计而成为电网规模可再生能源存储的关键,但其在降低成本和提高效率方面仍面临挑战,这需要先进的建模来加速开发,作为实验的补充。然而,传统的数值模拟效率不高,限制了其在优化管理中的应用。人工智能(AI)正在彻底改变这一领域,它支持加速仿真,集成了预测准确性和计算效率,而数据驱动的建模可以智能优化输入设计参数。除了静态建模,人工智能技术还通过实时状态估计和自适应控制策略来促进动态管理,以响应复杂的操作条件。本文总结了近五年来人工智能在液流电池中的应用进展,并批判性地研究了人工智能方法如何解决建模和管理范式的基本限制,同时确定了模型鲁棒性和实际实施方面的关键挑战,这些挑战指导了未来开发智能液流电池系统的研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial intelligence-empowered modeling and management of flow batteries: A mini-review
Flow batteries are pivotal for grid-scale renewable energy storage due to their scalability and decoupled energy-power design, yet they still face challenges in cost reduction and efficiency improvement, which necessitates advanced modeling to accelerate development as a complement to experiments. However, traditional numerical modeling is not efficient, restricting its application to optimal management. Artificial intelligence (AI) is revolutionizing this field by enabling accelerated simulations that integrate predictive accuracy and computational efficiency, while data-driven modeling empowers intelligent optimization of input design parameters. Beyond static modeling, AI techniques facilitate dynamic management through real-time state estimation and adaptive control strategies that respond to complex operating conditions. This review summarizes advances in recent five years of AI applications for flow batteries, and critically examine how the AI approaches address fundamental limitations in modeling and management paradigms, while identifying key challenges in model robustness and practical implementation that guide future research directions in developing intelligent flow battery systems.
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