MAO-DBN based membrane fouling prediction

Zhiwen Wang, Yibin Zhao, Yaoke Shi, Guobi Ling
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Abstract

Due to the complexity of the factors influencing membrane fouling in membrane bioreactors (MBR), it is difficult to accurately predict membrane fouling. This paper proposes a multi-strategy of integration aquila optimizer deep belief network (MAO-DBN) based membrane fouling prediction method. The method is developed to improve the accuracy and efficiency of membrane fouling prediction. Firstly, partial least squares (PLS) are used to reduce the dimensionality of many membrane fouling factors to improve the algorithm’s generalization ability. Secondly, considering the drawbacks of deep belief network (DBN) such as long training time and easy overfitting, piecewise mapping is introduced in aquila optimizer (AO) to improve the uniformity of population distribution, while adaptive weighting is used to improve the convergence speed and prevent falling into local optimum. Finally, the prediction of membrane fouling is carried out by utilizing membrane fouling data as the research object. The experimental results show that the method proposed in this paper can achieve accurate prediction of membrane fluxes, with an 88.45% reduction in RMSE and 87.53% reduction in MAE compared with the DBN model before improvement. The experimental results show that the model proposed in this paper achieves a prediction accuracy of 98.61%, both higher than other comparative models, which can provide a theoretical basis for membrane fouling prediction in the practical operation of membrane water treatment.
基于 MAO-DBN 的膜污垢预测
由于膜生物反应器(MBR)中膜污损的影响因素十分复杂,因此很难准确预测膜污损。本文提出了一种基于多策略集成优化器深度信念网络(MAO-DBN)的膜污损预测方法。该方法旨在提高膜污损预测的准确性和效率。首先,利用偏最小二乘法(PLS)降低了许多膜污损因子的维度,从而提高了算法的泛化能力。其次,考虑到深度信念网络(DBN)存在训练时间长、易过拟合等缺点,在AO中引入片断映射以提高种群分布的均匀性,同时采用自适应加权以提高收敛速度,防止陷入局部最优。最后,以膜污损数据为研究对象,进行了膜污损预测。实验结果表明,本文提出的方法可以实现对膜通量的精确预测,与改进前的 DBN 模型相比,RMSE 降低了 88.45%,MAE 降低了 87.53%。实验结果表明,本文提出的模型预测准确率达到 98.61%,均高于其他对比模型,可为膜法水处理实际运行中的膜污垢预测提供理论依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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