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Distributional Assumptions in Chance-Constrained Programming Models of Stochastic Water Pollution

机译:随机水污染机会约束规划模型中的分布假设

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In the water management literature both the normal and log-normal distribution are commonly used to model stochastic water pollution. The normality assumption is usually motivated by the central limit theorem, while the log-normality assumption is often motivated by the need to avoid the possibility of negative pollution loads. We utilize the truncated normal distribution as an alternative to these distributions. Using probabilistic constraints in a cost-minimization model for the Baltic Sea, we show that the distribution assumption bias is between 1% and 60%. Simulations show that a greater difference is to be expected for data with a higher degree of truncation. Using the normal distribution instead of the truncated normal distribution leads to an underestimation of the true cost. On the contrary, the difference in cost when using the normal versus the log-normal can be positive as well as negative.
机译:在水管理文献中,通常使用正态分布和对数正态分布来模拟随机水污染。正态性假设通常是由中心极限定理引起的,而对数正态性假设通常是由避免负污染负荷的可能性引起的。我们利用截断的正态分布来替代这些分布。在波罗的海的成本最小化模型中使用概率约束,我们表明分布假设偏差在1%到60%之间。仿真表明,对于具有更高截断度的数据,预期会有更大的差异。使用正态分布而不是截断的正态分布会导致对真实成本的低估。相反,使用法线与对数法线时的成本差异既可以是正数,也可以是负数。

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