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Benchmarking Soft Sensors for Remote Monitoring of On-Site Wastewater Treatment Plants

机译:基准测试软传感器,用于远程监控现场污水处理厂

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摘要

On-site wastewater treatment plants (OSTs) are usually unattended, so failures often remain undetected and lead to prolonged periods of reduced performance. To stabilize the performance of unattended plants, soft sensors could expose faults and failures to the operator. In a previous study, we developed soft sensors and showed that soft sensors with data from unmaintained physical sensors can be as accurate as soft sensors with data from maintained ones. The monitored variables were pH and dissolved oxygen (DO), and soft sensors were used to predict nitrification performance. In the present study, we use synthetic data and monitor three plants to test these soft sensors. We find that a long solids retention time and a moderate aeration rate improve the pH soft-sensor accuracy and that the aeration regime is the main operational parameter affecting the accuracy of the DO soft sensor. We demonstrate that integrated design of monitoring and control is necessary to achieve robustness when extrapolating from one OST to another in the absence of plant-specific fine-tuning. Additionally, we provide a unique labeled dataset for further feature and data-driven soft-sensor development. Our benchmarking results indicate that it is feasible to monitor OSTs with unmaintained sensors and without plant-specific tuning of the developed soft sensors. This is expected to drastically reduce monitoring costs for OST-based sanitation systems.
机译:现场废水处理厂(OSTS)通常无人看管,因此失败常常未被检测,导致延长的性能降低。为了稳定无人值守植物的性能,软传感器可能会使操作员暴露故障和故障。在以前的一项研究中,我们开发了软传感器,并显示了来自未欣此物理传感器的数据的软传感器可以与维护的数据一样准确。监测的变量是pH并溶解氧(DO),并且使用软传感器来预测硝化性能。在本研究中,我们使用合成数据并监控三个工厂来测试这些柔软传感器。我们发现长固体保留时间和中等曝气速率提高了pH软传感器精度,并且曝气制度是影响DO软传感器精度的主要操作参数。我们证明,在没有植物特异性微调的情况下从一个OST推断到另一个OST时,必须实现监测和控制的集成设计。此外,我们提供唯一标记的数据集,可用于进一步的功能和数据驱动的软传感器开发。我们的基准测试结果表明,使用发发的软传感器的植物特定调整,可以使用发达的软传感器的植物特异性调整,因此可以是可行的。这预计将大大降低基于OST的卫生系统的监测成本。

著录项

  • 来源
    《Environmental Science & Technology》 |2020年第17期|10840-10849|共10页
  • 作者单位

    Swiss Federal Institute of Aquatic Science and Technology Eawag 8600 Duebendorf Switzerland Institute of Civil Environmental and Geomatic Engineering ETH Zuerich 8093 Zuerich Switzerland;

    Swiss Federal Institute of Aquatic Science and Technology Eawag 8600 Duebendorf Switzerland;

    Institute of Civil Environmental and Geomatic Engineering ETH Zuerich 8093 Zuerich Switzerland;

    Swiss Federal Institute of Aquatic Science and Technology Eawag 8600 Duebendorf Switzerland Institute for Energy Technology University of Applied Sciences Rapperswil 8640 Rapperswil Switzerland;

    Swiss Federal Institute of Aquatic Science and Technology Eawag 8600 Duebendorf Switzerland Institute of Civil Environmental and Geomatic Engineering ETH Zuerich 8093 Zuerich Switzerland Oak Ridge National Laboratory Oak Ridge Tennessee 37831 United States;

    Swiss Federal Institute of Aquatic Science and Technology Eawag 8600 Duebendorf Switzerland Institute of Civil Environmental and Geomatic Engineering ETH Zuerich 8093 Zuerich Switzerland;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);美国《化学文摘》(CA);
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  • 正文语种 eng
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