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A Stormwater Management Framework for Predicting First Flush Intensity and Quantifying its Influential Factors

机译:预测首次冲洗强度并量化其影响因素的雨水管理框架

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摘要

Abstract Despite numerous applications of Random Forest (RF) techniques in the water-quality field, its use to detect first-flush (FF) events is limited. In this study, we developed a stormwater management framework based on RF algorithms and two different FF definitions (30/80 and M(V) curve). This framework can predict the FF intensity of a single rainfall event for three of the most detected pollutants in urban areas (TSS, TN, and TP), yielding satisfactory results (30/80: accuracyaveragedocumentclass12pt{minimal} usepackage{amsmath} usepackage{wasysym} usepackage{amsfonts} usepackage{amssymb} usepackage{amsbsy} usepackage{mathrsfs} usepackage{upgreek} setlength{oddsidemargin}{-69pt} begin{document}$$accuracy_{average}$$end{document}?=?0.87; M(V) curve: accuracyaveragedocumentclass12pt{minimal} usepackage{amsmath} usepackage{wasysym} usepackage{amsfonts} usepackage{amssymb} usepackage{amsbsy} usepackage{mathrsfs} usepackage{upgreek} setlength{oddsidemargin}{-69pt} begin{document}$$accuracy_{average}$$end{document}?=?0.75). Furthermore, the framework can quantify and rank the most critical variables based on their level of importance in predicting FF, using a non-model-biased method based on game theory. Compared to the classical physically-based models that require catchment and drainage information apart from meteorological data, our framework inputs only include rainfall-runoff variables. Furthermore, it is generic and independent from the data adopted in this study, and it can be applied to any other geographical region with a complete rainfall-runoff dataset. Therefore, the framework developed in this study is expected to contribute to accurate FF prediction, which can be exploited for the design of treatment systems aimed to store and treat the FF-runoff volume.
机译:摘要 尽管随机森林(RF)技术在水质领域得到了广泛的应用,但其在检测首次冲洗(FF)事件方面的应用仍然有限。在这项研究中,我们开发了一个基于RF算法和两种不同FF定义(30/80和M(V)曲线)的雨水管理框架。该框架可以预测城市地区三种最常检测到的污染物(TSS、TN 和 TP)的单次降雨事件的 FF 强度,并产生令人满意的结果 (30/80: accuracyaveragedocumentclass[12pt]{minimal} usepackage{amsmath} usepackage{wasysym} usepackage{amsfonts} usepackage{amssymb} usepackage{amsbsy} usepackage{mathrsfs} usepackage{upgreek} setlength{oddsidemargin}{-69pt} begin{document}$$accuracy_{average}$$end{document}?=?0.87;M(V) 曲线:accuracyaveragedocumentclass[12pt]{minimal} usepackage{amsmath} usepackage{wasysym} usepackage{amsfonts} usepackage{amssymb} usepackage{amsbsy} usepackage{mathrsfs} usepackage{upgreek} setlength{oddsidemargin}{-69pt} begin{document}$$accuracy_{average}$$end{document}?=?0.75)。此外,该框架可以使用基于博弈论的非模型偏差方法,根据最关键的变量在预测FF中的重要性水平对最关键的变量进行量化和排序。与除了气象数据之外还需要集水区和排水信息的经典物理模型相比,我们的框架输入仅包括降雨-径流变量。此外,它是通用的,独立于本研究采用的数据,并且可以应用于具有完整降雨-径流数据集的任何其他地理区域。因此,本研究建立的框架有望为准确的FF预测做出贡献,可用于设计旨在储存和处理FF径流量的处理系统。

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