Department of Civil Engineering, Faculty of Engineering, University of Malaya, Kuala Lumpur, Wilayah Persekutuan Kuala Lumpur, Malaysia.
Department of Agricultural and Biological Engineering, University of Florida, Gainesville, United States.
PLoS One. 2017 Dec 7;12(12):e0188489. doi: 10.1371/journal.pone.0188489. eCollection 2017.
Conflicts over water resources can be highly dynamic and complex due to the various factors which can affect such systems, including economic, engineering, social, hydrologic, environmental and even political, as well as the inherent uncertainty involved in many of these factors. Furthermore, the conflicting behavior, preferences and goals of stakeholders can often make such conflicts even more challenging. While many game models, both cooperative and non-cooperative, have been suggested to deal with problems over utilizing and sharing water resources, most of these are based on a static viewpoint of demand points during optimization procedures. Moreover, such models are usually developed for a single reservoir system, and so are not really suitable for application to an integrated decision support system involving more than one reservoir. This paper outlines a coupled simulation-optimization modeling method based on a combination of system dynamics (SD) and game theory (GT). The method harnesses SD to capture the dynamic behavior of the water system, utilizing feedback loops between the system components in the course of the simulation. In addition, it uses GT concepts, including pure-strategy and mixed-strategy games as well as the Nash Bargaining Solution (NBS) method, to find the optimum allocation decisions over available water in the system. To test the capability of the proposed method to resolve multi-reservoir and multi-objective conflicts, two different deterministic simulation-optimization models with increasing levels of complexity were developed for the Langat River basin in Malaysia. The later is a strategic water catchment that has a range of different stakeholders and managerial bodies, which are however willing to cooperate in order to avoid unmet demand. In our first model, all water users play a dynamic pure-strategy game. The second model then adds in dynamic behaviors to reservoirs to factor in inflow uncertainty and adjust the strategies for the reservoirs using the mixed-strategy game and Markov chain methods. The two models were then evaluated against three performance indices: Reliability, Resilience and Vulnerability (R-R-V). The results showed that, while both models were well capable of dealing with conflict resolution over water resources in the Langat River basin, the second model achieved a substantially improved performance through its ability to deal with dynamicity, complexity and uncertainty in the river system.
水资源冲突由于诸多因素而具有高度的动态性和复杂性,这些因素包括经济、工程、社会、水文、环境甚至政治因素,以及这些因素中的许多固有不确定性。此外,利益相关者的冲突行为、偏好和目标往往使这些冲突更加具有挑战性。虽然已经提出了许多博弈模型,包括合作和非合作模型,来解决水资源利用和共享方面的问题,但这些模型大多基于优化过程中需求点的静态观点。此外,这些模型通常是为单个水库系统开发的,因此并不真正适用于涉及多个水库的综合决策支持系统。本文概述了一种基于系统动力学 (SD) 和博弈论 (GT) 相结合的耦合模拟-优化建模方法。该方法利用 SD 来捕捉水系统的动态行为,在模拟过程中利用系统组件之间的反馈循环。此外,它还利用 GT 概念,包括纯策略和混合策略博弈以及纳什讨价还价解 (NBS) 方法,来寻找系统中可用水资源的最优分配决策。为了测试所提出的方法解决多水库和多目标冲突的能力,针对马来西亚的拉让河流域开发了两个具有不同复杂程度的确定性模拟-优化模型。后者是一个具有一系列不同利益相关者和管理机构的战略性集水区,但它们愿意合作以避免未满足的需求。在我们的第一个模型中,所有的用水户都进行动态的纯策略博弈。第二个模型则在水库中加入了动态行为,以考虑到流入不确定性,并通过混合策略博弈和马尔可夫链方法调整水库的策略。然后,使用三个性能指标对这两个模型进行了评估:可靠性、弹性和脆弱性 (R-R-V)。结果表明,虽然这两个模型都能够很好地解决拉让河流域的水资源冲突,但第二个模型通过处理河流系统中的动态性、复杂性和不确定性,实现了性能的显著提高。