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Nearest neighbor time series bootstrap for generating influent water quality scenarios

机译:最近邻时间序列引导程序,用于生成进水水质情景

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Understanding influent water quality variability is essential for the long-term planning of potable water systems. To quantify variability and generate realistic influent scenarios, we propose a nonparametric time series approach based on k-nearest neighbor (k-NN) bootstrap resampling. The k-NN approach resamples historical data conditioned on a "feature vector" at a given time to generate values at subsequent times. We modified this algorithm by adding random perturbations to the resampled values to generate realistic extremes unobserved in the historical record. k-NN is widely used in stochastic hydrology and hydroclimatology; however, it is adapted here for the multivariate, data-limited context of water treatment. To examine the performance of the algorithm, we applied it to an eleven-year, monthly water quality dataset of alkalinity, temperature, total organic carbon, and pH from the Cache la Poudre River in Colorado. We found that the k-NN simulations captured the relevant distributional statistics of the historical record, which suggests that the algorithm produces realistic and varied scenarios. When used in conjunction with modeling and optimization, these scenarios have the potential to improve the sustainability, resilience, and efficiency of potable water systems.
机译:了解饮用水的水质变异性对于饮用水系统的长期规划至关重要。为了量化可变性并生成实际的进水方案,我们提出了一种基于k最近邻(k-NN)引导重采样的非参数时间序列方法。 k-NN方法在给定时间对以“特征向量”为条件的历史数据进行重新采样,以在后续时间生成值。我们通过向重新采样的值添加随机扰动以生成历史记录中未观察到的现实极端来修改此算法。 k-NN被广泛用于随机水文和水文气候学中。但是,在此它适用于水处理的多变量数据受限环境。为了检查算法的性能,我们将其应用于科罗拉多州Cache la Poudre河的11年月度水质数据集,包括碱度,温度,总有机碳和pH值。我们发现,k-NN模拟捕获了历史记录的相关分布统计信息,这表明该算法产生了现实而多样的场景。当与建模和优化结合使用时,这些方案有可能改善饮用水系统的可持续性,弹性和效率。

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