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A systematic approach to data-driven modeling and soft sensing in a full-scale plant

机译:大规模工厂中数据驱动的建模和软传感的系统方法

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摘要

The well-known mathematical modeling and neural networks (NNs) methods have limitations to incorporate the key process characteristics at the wastewater treatment plants (WWTPs) which are complex, non-stationary, temporal correlation, and nonlinear systems. In this study, a systematic methodology of NNs modeling which can be efficiently included in the key modeling information of the WWTPs is performed by selecting the temporal effect of the hydraulics based on multi-way principal components analysis (MPCA). The proposed method is applied for modeling wastewater quality of a full-scale plant, which is a Daewoo nutrient removal (DNR) process. Through the experimental results in a full-scale plant, the efficiency of the proposed method is evaluated and the prediction capability is highly improved by the inclusion of the hydraulics term due to the optimized structure of neural networks.
机译:众所周知的数学建模和神经网络(NNs)方法在合并废水处理厂(WWTP)的关键过程特征方面有局限性,这些特征是复杂的,非平稳的,时间相关的和非线性的系统。在这项研究中,通过基于多路主成分分析(MPCA)选择水力的时间效应,可以执行可有效地包含在污水处理厂关键建模信息中的神经网络建模的系统方法。该方法适用于模拟大宇养分去除(DNR)过程的大型工厂废水质量。通过在大型工厂中的实验结果,评估了所提方法的效率,并由于神经网络的优化结构而将水力项包括在内,大大提高了预测能力。

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