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A probabilistic approach to rainwater harvesting systems design and evaluation

机译:雨水收集系统设计和评估的概率方法

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Although rainwater harvesting system (RHS) is an effective alternative to water supply, its efficiency is often heavily influenced by temporal distribution of rainfall and water demand. Since natural precipitation is a random process and has probabilistic characteristics, it will be more appropriate to describe these probabilistic features of rainfall and its relationship with design storage capacity as well as supply deficit of RHS. This paper aims at developing a methodology for establishing the probabilistic relationship between storage capacities and deficit rates of RHS. A simulation model was built to simulate the input rainfall and water release in RHS. Historical rainfall records were then used as input for simulation and the results were used in probabilistic analysis for establishing the relationships between storage capacities and water supply deficits. The city of Taipei was used as study area for demonstration of this methodology and probabilistic distribution curves for storage capacity and deficit rate relationships were presented. As a result, a set of curves describing the continuous relationships between storage capacities and deficit rates Under different exceedance probabilities were generated as references to RHS storage design. At a chose exceedance probability of failure, the engineer can decide from the curve on the storage size Under a preset deficit rate
机译:尽管雨水收集系统(RHS)是供水的有效替代方案,但其效率通常受到降雨和水需求的时间分布的严重影响。由于自然降水是一个随机过程,并且具有概率特征,因此描述降雨的这些概率特征及其与设计储水量和RHS供给不足的关系将更为合适。本文旨在开发一种方法来建立RHS的存储容量和赤字率之间的概率关系。建立了一个模拟模型来模拟RHS中的输入降雨和水释放。然后将历史降雨记录用作模拟输入,并将结果用于概率分析,以建立存储容量和供水赤字之间的关系。台北市被用作该方法论的证明区域,并给出了存储容量和赤字率关系的概率分布曲线。结果,生成了一组曲线,描述了在不同超出概率下存储容量和缺陷率之间的连续关系,以此作为RHS存储设计的参考。在选定的超出故障概率时,工程师可以根据存储大小曲线确定预设的缺陷率

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