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A data-driven model for maximization of methane production in a wastewater treatment plant

机译:一种数据驱动的模型,可最大化废水处理厂中的甲烷产量

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摘要

A data-driven approach for maximization of methane production in a wastewater treatment plant is presented. Industrial data collected on a daily basis was used to build the model. Temperature, total solids, volatile solids, detention time and pH value were selected as parameters for the model construction. First, a prediction model of methane production was built by a multi-layer perceptron neural network. Then a particle swarm optimization algorithm was used to maximize methane production based on the model developed in this research. The model resulted in a 5.5% increase in methane production.
机译:提出了一种数据驱动的方法,可最大程度地提高废水处理厂的甲烷产量。每天收集的工业数据用于构建模型。选择温度,总固体,挥发性固体,保留时间和pH值作为模型构建的参数。首先,通过多层感知器神经网络建立了甲烷产量的预测模型。然后根据本研究开发的模型,使用粒子群优化算法最大化甲烷产量。该模型导致甲烷产量增加了5.5%。

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