Research Center for Eco-environmental Engineering, Dongguan University of Technology, No 1 Daxue Street, Songshan Lake, Dongguan 523808, China.
School of Environment and Energy, South China University of Technology, University Town, Guangzhou 510006, China.
Int J Environ Res Public Health. 2019 Mar 9;16(5):868. doi: 10.3390/ijerph16050868.
Ecofriendly reservoir operation is an important tool for sustainable water resource management in regulated rivers. Optimization of reservoir operation is potentially affected by the stochastic characteristics of inflows. However, inflow stochastics are not widely incorporated in ecofriendly reservoir operation optimization. The reasons might be that computational cost and unsatisfactory performance are two key issues for reservoir operation under uncertainty inflows, since traditional simulation methods are usually needed to evaluate over many realizations and the results vary between different realizations. To solve this problem, a noisy genetic algorithm (NGA) is adopted in this study. The NGA uses an improved type of fitness function called sampling fitness function to reduce the noise of fitness assessment. Meanwhile, the Monte Carlo method, which is a commonly used approach to handle the stochastic problem, is also adopted here to compare the effectiveness of the NGA. Degree of hydrologic alteration and water supply reliability, are used to indicate satisfaction of environmental flow requirements and human needs. Using the Tanghe Reservoir in China as an example, the results of this study showed that the NGA can be a useful tool for ecofriendly reservoir operation under stochastic inflow conditions. Compared with the Monte Carlo method, the NGA reduces ~90% of the computational time and obtains higher water supply reliability in the optimization.
生态友好型水库调度是受人工控制河流可持续水资源管理的重要工具。水库调度的优化可能会受到来水的随机特性的影响。然而,在生态友好型水库调度优化中,来水的随机性并没有得到广泛的应用。原因可能是由于不确定性来流下的水库调度需要大量的模拟来评估,并且不同的模拟结果之间存在差异,因此计算成本和不理想的性能是两个关键问题。为了解决这个问题,本研究采用了一种有噪声的遗传算法(NGA)。NGA 使用一种改进的适应度函数,即采样适应度函数,来减少适应度评估的噪声。同时,本研究还采用了蒙特卡罗方法(Monte Carlo method),这是一种常用的处理随机问题的方法,来比较 NGA 的有效性。水文变化程度和供水可靠性被用来表示对环境流量要求和人类需求的满足程度。以中国唐河水库为例,本研究的结果表明,NGA 可以成为在随机来流下进行生态友好型水库调度的有用工具。与蒙特卡罗方法相比,NGA 减少了约 90%的计算时间,并在优化中获得了更高的供水可靠性。