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Design of a hybrid mechanistic/Gaussian process model to predict full-scale wastewater treatment plant effluent

机译:混合机械/高斯工艺模型的设计预测满量程废水处理厂的流出物

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This paper presents the design of a hybrid model of a wastewater treatment plant (WWTP), which is meant to improve the quality of effluent prediction. By combining mechanistic, i.e. activated sludge model, and data-driven model it is expected to retain physical transparency and achieve good prediction accuracy. For the data-driven model, a state-of-the-art machine learning approach based on Gaussian process (GP) model was applied. GP models systematically address model uncertainty when lacking identification data and are applicable also for small data-sets, which both are encountered in WWTP modelling. Serial and parallel hybrid structures were designed to address the challenges of missing input data, insufficient mechanistic model accuracy and demanding model parameter estimation. Results of full-scale effluent predictions show that, by applying hybrid models, the accuracy of the model is improved. Good results were obtained also for default values of activated sludge model parameters, which significantly simplifies the model design process.
机译:本文介绍了废水处理厂(WWTP)的混合模型的设计,这意味着提高流出物质的预测质量。通过组合机械,即激活的污泥模型,以及数据驱动的模型,预计将保留物理透明度并实现良好的预测精度。对于数据驱动模型,应用了基于高斯过程(GP)模型的最先进的机器学习方法。 GP模型在缺少识别数据时系统地解决了模型不确定性,并且还适用于小型数据集,两者都在WWTP建模中遇到。串行和并行混合结构旨在解决缺失输入数据的挑战,机械模型精度不足和苛刻的模型参数估计。全规模污水预测结果表明,通过应用混合模型,提高了模型的准确性。还可以获得良好的活性污泥模型参数的默认值,这显着简化了模型设计过程。

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