基于机器学习的UASB反应器处理生活污水沼气和甲烷产量优化。

IF 3.1 4区 生物学 Q2 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Saurabh Kumar, Saurabh Kumar, Divesh Ranjan Kumar, Dayanand Sharma, Warit Wipulanusat
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引用次数: 0

摘要

本研究旨在利用先进的机器学习模型,即极限梯度增压(XGBoost)及其混合形式XGBoost,结合粒子群优化(XGBoost- pso),优化上流式厌氧污泥膜式反应器处理生活污水的沼气和甲烷产量。关键操作变量包括时间、流量、化学需氧量(COD)、pH、挥发性脂肪酸、总悬浮物、水力停留时间、碱度和有机负载率。用于训练和验证预测模型的经验数据是通过对实验室制备的低强度合成废水和实际城市废水样品的顺序处理获得的。数据分为两个处理阶段:第0 ~ 270天处理合成废水(COD: 335.45±28.32 mg/L),第0 ~ 130天处理真实生活废水(COD: 225.28±65.98 mg/L)。整个过程中连续监测了产气情况。XGBoost- pso模型在训练和测试阶段都优于标准XGBoost算法。对于训练期间的沼气预测,XGBoost-PSO的RMSE为0.0405,MAE为0.0225,R2为0.9832;对于甲烷,RMSE为0.0257,MAE为0.0175,R2为0.9942。检验结果进一步证实了模型的稳健性,沼气的RMSE、MAE和R2值分别为0.1017、0.0676和0.9404,甲烷的RMSE、MAE和R2值分别为0.0694、0.0519和0.9717。这些发现强调了整合人工智能驱动的方法来优化废水处理系统中生物能源回收的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning-based optimization of biogas and methane yields in UASB reactors for treating domestic wastewater.

This study aimed to optimize biogas and methane production from Up-flow anaerobic sludge blanket reactors for treating domestic wastewater using advanced machine learning models-namely, eXtreme Gradient Boosting (XGBoost) and its hybridized form, XGBoost, integrated with particle swarm optimization (XGBoost-PSO). The key operational variables included time, flow rate, chemical oxygen demand (COD), pH, volatile fatty acids, total suspended solids, hydraulic retention time, alkalinity, and the organic loading rate. Empirical data used to train and validate the predictive models were acquired from the sequential treatment of laboratory-prepared low-strength synthetic wastewater and actual municipal wastewater samples. Data was collected from two treatment phases: synthetic wastewater (COD: 335.45 ± 28.32 mg/L) was treated from days 0 to 270, followed by real domestic wastewater (COD: 225.28 ± 65.98 mg/L) from days 0 to 130. Gas production was continuously monitored throughout. The XGBoost-PSO model outperformed the standard XGBoost algorithm in both the training and testing phases. For biogas prediction during training, XGBoost-PSO achieved an RMSE of 0.0405, an MAE of 0.0225, and an R2 of 0.9832, whereas for methane, the values were an RMSE of 0.0257, an MAE of 0.0175, and an R2 of 0.9942. The testing results further confirmed the model's robustness, with RMSE, MAE, and R2 values of 0.1017, 0.0676, and 0.9404 for biogas and 0.0694, 0.0519, and 0.9717 for methane, respectively. These findings highlight the potential of integrating artificial intelligence-driven approaches to optimize bioenergy recovery in wastewater treatment systems.

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来源期刊
Biodegradation
Biodegradation 工程技术-生物工程与应用微生物
CiteScore
5.60
自引率
0.00%
发文量
36
审稿时长
6 months
期刊介绍: Biodegradation publishes papers, reviews and mini-reviews on the biotransformation, mineralization, detoxification, recycling, amelioration or treatment of chemicals or waste materials by naturally-occurring microbial strains, microbial associations, or recombinant organisms. Coverage spans a range of topics, including Biochemistry of biodegradative pathways; Genetics of biodegradative organisms and development of recombinant biodegrading organisms; Molecular biology-based studies of biodegradative microbial communities; Enhancement of naturally-occurring biodegradative properties and activities. Also featured are novel applications of biodegradation and biotransformation technology, to soil, water, sewage, heavy metals and radionuclides, organohalogens, high-COD wastes, straight-, branched-chain and aromatic hydrocarbons; Coverage extends to design and scale-up of laboratory processes and bioreactor systems. Also offered are papers on economic and legal aspects of biological treatment of waste.
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