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首页> 外文期刊>Engineering Applications of Artificial Intelligence >Predicting the total suspended solids in wastewater: a data-mining approach
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Predicting the total suspended solids in wastewater: a data-mining approach

机译:预测废水中的总悬浮固体:一种数据挖掘方法

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Total suspended solids (TSS) are a major pollutant that affects waterways all over the world. Predicting the values of TSS is of interest to quality control of wastewater processing. Due to infrequent measurements, time series data for TSS are constructed using influent flow rate and influent carbonaceous bio-chemical oxygen demand (CBOD). We investigated different scenarios of daily average influent CBOD and influent flow rate measured at 15 min intervals. Then, we used five data-mining algorithms, i.e., multi-layered perceptron, k-nearest neighbor, multi-variate adaptive regression spline, support vector machine, and random forest, to construct day-ahead, time-series prediction models for TSS. Historical TSS values were used as input parameters to predict current and future values of TSS. A sliding-window approach was used to improve the results of the predictions.
机译:总悬浮固体(TSS)是影响全世界水道的主要污染物。预测TSS的值对于废水处理的质量控制很重要。由于测量很少,因此使用进水流速和进水含碳生化需氧量(CBOD)来构建TSS的时间序列数据。我们调查了以15分钟为间隔测量的每日平均进水CBOD和进水流速的不同情况。然后,我们使用了五种数据挖掘算法,即多层感知器,k最近邻,多元自适应回归样条,支持向量机和随机森林,为TSS构建了日前,时间序列的预测模型。 TSS历史值用作输入参数,以预测TSS的当前和将来值。滑动窗口方法用于改善预测结果。

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