利用人工神经网络技术推导厌氧消化池最佳运行因素

Yumeng Bao, R. Koutavarapu, Tae‐Gwan Lee
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引用次数: 1

摘要

韩国污水处理厂的污泥厌氧消化受季节因素等影响,导致消化效率和产气量较低,无法达到最佳产气量。本研究的目的是通过数据挖掘技术调整操作参数,提高污水处理厂污泥厌氧消化的消化效率和产气量。通过韩国大邱市污水处理厂的实验数据,采用人工神经网络(ANN)技术调节厌氧污泥的有机负荷率(OLR)和水力滞留率(HRT)的取值范围,提高厌氧污泥的消化效率和甲烷产气量。对数据源进行归一化处理,数据分析包括Pearson相关分析、多元回归分析和人工神经网络优化。结果表明,在有机负荷为1.26 ~ 1.46 kg/m3 d、HRT为26 ~ 30 d的条件下,预计消化效率提高0.5%,产气量提高1.3%。这表明我们建立的人工神经网络模型是可行的,可以用于提高污泥厌氧消化的效率和产气量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Derivation of Optimal Operation Factors of Anaerobic Digesters through Artificial Neural Network Technology
The anaerobic digestion of sewage sludge in South Korean wastewater treatment plants is affected by seasonal factors and other influences, resulting in lower digestion efficiency and gas production, which cannot reach optimal yields. The aim of this study was to improve the digestion efficiency and gas production of sludge anaerobic digestion in a wastewater treatment plant (WWTP) by using data mining techniques to adjust operational parameters. Through experimental data obtained from the WWTP in Daegu City, South Korea, an artificial neural network (ANN) technology was used to adjust the range of the organic loading rate (OLR) and hydraulic retention rate (HRT) to improve the efficiency and methane gas production from anaerobic sludge digestion. Data sources were normalized, and data analysis including Pearson correlation analysis, multiple regression analysis and an artificial neural network for optimal results. The results of the study showed a predicted 0.5% increase in digestion efficiency and a 1.3% increase in gas production at organic loads of 1.26–1.46 kg/m3 day and an HRT of 26–30 days. This shows that the ANN model that we established is feasible and can be used to improve the efficiency and gas production of sludge anaerobic digestion.
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