机器学习作为污水处理厂运行的决策支持工具

Thibault Mercier, A. Dembélé, T. Denoeux, P. Blanc
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引用次数: 0

摘要

废水处理是一项重大的环境挑战。对于所有运营商来说,这也是一个经济挑战,他们面临着越来越严格的国家和超国家法规。优化废水处理过程需要不同复杂程度的物理、生物和化学模型。从操作的角度来看,通常使用可编程逻辑控制器。这些控制器遵循由具有不同专业知识程度的技术人员实施的策略。这可能会导致过度或不足的曝气,这可能是非常昂贵的。常用的策略大多基于业务规则和专家指导方针,它们不一定考虑特定的操作条件。本研究以曝气过程为研究对象,采用机器学习方法预测曝气机的日常运行时间。根据所考虑的数据,对两种类型的模型进行了评估。第一个模型只考虑操作数据作为解释变量(污染物浓度和流入),而第二个模型包括外源天气数据(温度、湿度、降雨深度)。最佳模型的平均误差小于1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MACHINE LEARNING AS A DECISION SUPPORT TOOL FOR WASTEWATER TREATMENT PLANT OPERATION
Wastewater treatment is a significant environmental challenge. It is also an economic challenge for all operators, who face more and more demanding national and supranational regulations. Optimizing wastewater treatment processes requires physical, biological and chemical models with various degrees of complexity. From an operational perspective, programmable logic controllers are generally used. Those controllers follow strategies implemented by technicians with various degrees of expertise. This may lead to overor under-aeration, which can be very costly. Commonly used strategies are mostly based on business rules and expert guidelines, which do not necessarily consider specific operating conditions. In this study, focused on the aeration process, a machine learning approach is applied to predict the daily operating time of aerators. Two types of models, according to the data considered, have been evaluated. The first model considers only the operation data as explanatory variables (pollutant concentrations and inflow), while the second model includes exogenous weather data (temperature, hygrometry, rainfall depth). The best model reaches a mean error less than 1%.
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