School of Civil Engineering, Hefei University of Technology, Hefei 230009, China.
Department of Civil and Earth Resources Engineering, Kyoto University, Kyoto 615-8540, Japan.
Int J Environ Res Public Health. 2020 Mar 25;17(7):2206. doi: 10.3390/ijerph17072206.
The sustainable utilization of water resources is a significant factor in the development of the national economy and society. Regional water resources carrying capacity (RWRCC) is an appropriate method for evaluating the balance in such utilization. In this paper, we combined time difference correlation analysis and set pair analysis firstly to identify the early warning sign index (EWSI) for RWRCC, and warning limits were determined using a logical curve. Analytic hierarchy process based on the accelerating genetic algorithm (AGA-AHP) method was used to improve the KLR model by determining weights objectively. We took advantage of the new improved model to build the aggregate warning index (AWI). Then, according to the corresponding relationship between EWSI and AWI, the early warning system for regional water resources carrying capacity (EWS-RWRCC) was established, and a case study was carried out in Anhui Province. The results showed there are eight effective EWSI obtained through the early warning analysis process of RWRCC in Anhui Province, among which the repetitive use rate of industrial water and average daily coefficient have a greater impact on AWI. Basically, the EWS-RWRCC can describe RWRCC changes in Anhui Province. From 2006 to 2014, more than half the signal lights in Anhui Province were yellow and orange, which indicated a poor state. It has been proved that the constraints of population, GDP growth and water supply capacity on the utilization of water resources in the future will be further tightened, which should be considered for future monitoring and early warning. The early warning method we used here can be widely applied into other fields; the results will enhance monitoring capacity and scientifically guide regional water resources management.
水资源的可持续利用是国民经济和社会发展的重要因素。区域水资源承载能力(RWRCC)是评估这种利用平衡的一种适宜方法。本文首次结合时差相关分析和集对分析,识别了 RWRCC 的预警指标(EWSI),并采用逻辑曲线确定了预警限。基于加速遗传算法(AGA)的层次分析法(AHP)方法用于通过客观确定权重来改进 KLR 模型。我们利用新改进的模型构建了综合预警指数(AWI)。然后,根据 EWSI 和 AWI 之间的对应关系,建立了区域水资源承载能力预警系统(EWS-RWRCC),并对安徽省进行了案例研究。结果表明,通过对安徽省 RWRCC 的预警分析过程,得到了 8 个有效的 EWSI,其中工业用水重复利用率和日均系数对 AWI 的影响较大。基本上,EWS-RWRCC 可以描述安徽省 RWRCC 的变化情况。从 2006 年到 2014 年,安徽省超过一半的信号灯为黄色和橙色,这表明安徽省水资源利用状况较差。事实证明,未来人口、GDP 增长和供水能力对水资源利用的制约将进一步加剧,这应在未来的监测和预警中加以考虑。本文使用的预警方法可广泛应用于其他领域;研究结果将提高监测能力,为区域水资源管理提供科学指导。