School of Earth Resources, China University of Geosciences, Wuhan, 430074, China.
Yunnan Geological Environmental Monitoring Institute, Kunming, 650000, China.
Environ Sci Pollut Res Int. 2022 Jul;29(32):48812-48826. doi: 10.1007/s11356-022-19330-8. Epub 2022 Feb 24.
Water resource carrying capacity (WRCC) is an important index for measuring the relations between water resource systems and socio-economic-environmental development. In view of the difficulty in describing the complex and nonlinear relationships between the WRCC and indicators using traditional methods, this study introduces deep learning theory and proposes a novel deep neural network named WRCC-Net for WRCC assessment. Unlike typical network structures, we constructed a hierarchical structure that can indicate the index system in WRCC evaluation. Furthermore, we utilized a residual learning technique to increase the network depth for fitting the complex relationship between the WRCC state and indicators. The proposed deep learning method was applied to solve the real-world WRCC problem by taking the Yunnan province (Southwest China) as the case area. The WRCC was assessed from the following five dimensions: the water resources, social, economic, ecological environment, and coordination subsystems. Performance evaluation shows the advantages of the proposed WRCC-Net over the typical deep feed-forward network and shallow methods. Therefore, the proposed method provides a new way of evaluating the WRCC state and has potential for WRCC research. Overall, the WRCC evaluation using the WRCC-Net shows that the state of the WRCC in Yunnan constantly decreased from 2008 to 2018. These central-eastern areas in the Yunnan province, such as Kunming, Qujing, and Yuxi, are under an unfavorable capacity state. Measures, such as improving water resources management and increasing water utilization efficiency, should be considered in water resource planning in Yunnan province for the sustainable development of water resources.
水资源承载能力(WRCC)是衡量水资源系统与社会经济环境发展关系的重要指标。鉴于传统方法在描述 WRCC 与指标之间复杂的非线性关系方面存在困难,本研究引入了深度学习理论,并提出了一种名为 WRCC-Net 的新型深度神经网络,用于 WRCC 评估。与典型的网络结构不同,我们构建了一个分层结构,可以指示 WRCC 评价中的指标体系。此外,我们利用残差学习技术增加网络深度,以拟合 WRCC 状态与指标之间的复杂关系。该深度学习方法应用于解决中国西南云南省的实际 WRCC 问题。从水资源、社会、经济、生态环境和协调子系统五个方面对 WRCC 进行评估。性能评估表明,所提出的 WRCC-Net 优于典型的深度前馈网络和浅层方法。因此,该方法为评估 WRCC 状态提供了一种新途径,在 WRCC 研究中具有潜力。总的来说,WRCC-Net 对云南省 WRCC 的评价表明,云南省 WRCC 的状态从 2008 年到 2018 年不断下降。云南省中部和东部地区,如昆明、曲靖和玉溪,处于不利的承载能力状态。在云南省水资源规划中,应考虑采取措施,如改善水资源管理和提高水资源利用率,以实现水资源的可持续发展。