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Predictive models using 'cheap and easy' field measurements: Can they fill a gap in planning, monitoring, and implementing fecal sludge management solutions?

机译:使用'便宜和轻松'现场测量的预测模型:它们是否可以填补规划,监测和实施粪便污泥管理解决方案的差距?

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摘要

The characteristics of fecal sludge delivered to treatment plants are highly variable. Adapting treatment process operations accordingly is challenging due to a lack of analytical capacity for characterization and monitoring at many treatment plants. Cost-efficient and simple field measurements such as photographs and probe readings could be proxies for process control parameters that normally require laboratory analysis. To investigate this, we evaluated questionnaire data, expert assessments, and simple analytical measurements for fecal sludge collected from 421 onsite containments. This data served as inputs to models of varying complexity. Random forest and linear regression models were able to predict physical-chemical characteristics including total solids (TS) and ammonium (NH4+-N) concentrations, and solid-liquid separation performance including settling efficiency and filtration time (R-2 from 0.51-0.66) based on image analysis of photographs (sludge color, supernatant color, and texture) and probe readings (conductivity (EC) and pH). Supernatant color was the best predictor of settling efficiency and filtration time, EC was the best predictor of NH4+-N, and texture was the best predictor of TS. Predictive models have the potential to be applied for real-time monitoring and process control if a database of measurements is developed and models are validated in other cities. Simple decision tree models based on the single classifier of containment type can also be used to make predictions about citywide planning, where a lower degree of accuracy is required. (C) 2021 The Authors. Published by Elsevier Ltd.
机译:输送到治疗植物的粪便污泥的特征是高度可变的。由于许多治疗厂的表征和监测缺乏分析能力,相应地调整处理过程操作是具有挑战性的。诸如照片和探头读数之类的成本效益和简单的现场测量可能是用于通常需要实验室分析的过程控制参数的代理。为了调查这一点,我们评估了从421个现场遏制收集的粪便污泥的问卷数据,专家评估和简单的分析测量。该数据作为不同复杂性的模型的输入。随机森林和线性回归模型能够预测物理化学特性,包括总固体(TS)和铵(NH4 + -N)浓度,以及固体液体分离性能,包括沉降效率和过滤时间(R-2,从0.51-0.66 r-2)基于照片的图像分析(污泥颜色,上清颜色和纹理)和探针读数(电导率(EC)和pH)。上清色是稳定效率和过滤时间的最佳预测因子,EC是NH4 + -N的最佳预测因子,纹理是TS的最佳预测因子。如果开发了测量数据库并且在其他城市验证了型号,则预测模型具有实时监控和过程控制。简单的决策树模型基于单个容纳类型的分类器的模型也可用于对CiveWide规划进行预测,其中需要较低程度的准确度。 (c)提交人2021年。 elsevier有限公司出版

著录项

  • 来源
    《Water Research》 |2021年第15期|116997.1-116997.12|共12页
  • 作者单位

    Eawag Swiss Fed Inst Aquat Sci & Technol Dubendorf Switzerland|Swiss Fed Inst Technol Inst Environm Engn Zurich Switzerland;

    Eawag Swiss Fed Inst Aquat Sci & Technol Dubendorf Switzerland;

    Univ Zambia Sch Engn Dept Civil & Environm Engn Lusaka Zambia;

    Univ Zambia Sch Engn Dept Civil & Environm Engn Lusaka Zambia;

    Swiss Fed Inst Technol Dept Phys CH-8093 Zurich Switzerland;

    Eawag Swiss Fed Inst Aquat Sci & Technol Dubendorf Switzerland;

    Eawag Swiss Fed Inst Aquat Sci & Technol Dubendorf Switzerland|Swiss Fed Inst Technol Inst Environm Engn Zurich Switzerland;

    Eawag Swiss Fed Inst Aquat Sci & Technol Dubendorf Switzerland;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Random forest; machine learning; image analysis; sanitation; WASH; fecal sludge;

    机译:随机森林;机器学习;图像分析;卫生;洗;粪便污泥;

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