Duan Haoran, Li Jiuling, Yuan Zhiguo
The Australian Centre for Water and Environmental Biotechnology (ACWEB), The University of Queensland, St. Lucia, QLD, Australia.
Water Research Centre (WRC), School of Civil and Environmental Engineering, The University of New South Wales, Sydney, NSW, Australia.
Water Res X. 2024 Jul 4;24:100234. doi: 10.1016/j.wroa.2024.100234. eCollection 2024 Sep 1.
Mathematical modeling plays a crucial role in understanding and managing urban water systems (UWS), with mechanistic models often serving as the foundation for their design and operations. Despite the wide adoptions, mechanistic models are challenged by the complexity of dynamic processes and high computational demands. Data-driven models bring opportunities to capture system complexities and reduce computational cost, by leveraging the abundant data made available by recent advance in sensor technologies. However, the interpretability and data availability hinder their wider adoption. This paper advocates for a paradigm shift in the application of data-driven models within the context of UWS. Integrating existing mechanistic knowledge into data-driven modeling offers a unique solution that reduces data requirements and enhances model interpretability. The knowledge-informed approach balances model complexity with dataset size, enabling more efficient and interpretable modeling in UWS. Furthermore, the integration of mechanistic and data-driven models offers a more accurate representation of UWS dynamics, addressing lingering uncertainties and advancing modelling capabilities. This paper presents perspectives and conceptual framework on developing and implementing knowledge-informed data-driven modeling, highlighting their potential to improve UWS management in the digital era.
数学建模在理解和管理城市供水系统(UWS)中起着至关重要的作用,其中机理模型通常是其设计和运行的基础。尽管得到了广泛应用,但机理模型面临着动态过程复杂性和高计算需求的挑战。数据驱动模型通过利用传感器技术最新进展提供的丰富数据,为捕捉系统复杂性和降低计算成本带来了机遇。然而,其可解释性和数据可用性阻碍了它们的更广泛采用。本文主张在城市供水系统背景下,数据驱动模型的应用应进行范式转变。将现有机理知识整合到数据驱动建模中提供了一种独特的解决方案,可减少数据需求并增强模型可解释性。知识驱动方法在模型复杂性与数据集大小之间取得平衡,使城市供水系统建模更高效且可解释。此外,机理模型与数据驱动模型的整合能更准确地呈现城市供水系统动态,解决长期存在的不确定性并提升建模能力。本文提出了关于开发和实施知识驱动数据驱动建模的观点和概念框架,强调了它们在数字时代改善城市供水系统管理的潜力。