Accurate prediction and intelligent control of COD and other parameters removal from pharmaceutical wastewater using electrocoagulation coupled with catalytic ozonation process.

IF 2.5 4区 环境科学与生态学 Q3 ENGINEERING, ENVIRONMENTAL
Yujie Li, Chen Li, Yunhan Jia, Zhenbei Wang, Yatao Liu, Zitan Zhang, Xingyu DuanChen, Amir Ikhlaq, Jolanta Kumirska, Ewa Maria Siedlecka, Oksana Ismailova, Fei Qi
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引用次数: 0

Abstract

In this study, we employed the response surface method (RSM) and the long short-term memory (LSTM) model to optimize operational parameters and predict chemical oxygen demand (COD) removal in the electrocoagulation-catalytic ozonation process (ECOP) for pharmaceutical wastewater treatment. Through RSM simulation, we quantified the effects of reaction time, ozone dose, current density, and catalyst packed rate on COD removal. Then, the optimal conditions for achieving a COD removal efficiency exceeding 50% were identified. After evaluating ECOP performance under optimized conditions, LSTM predicted COD removal (56.4%), close to real results (54.6%) with a 0.2% error. LSTM outperformed RSM in predictive capacity for COD removal. In response to the initial COD concentration and effluent discharge standards, intelligent adjustment of operating parameters becomes feasible, facilitating precise control of the ECOP performance based on this LSTM model. This intelligent control strategy holds promise for enhancing the efficiency of ECOP in real pharmaceutical wastewater treatment scenarios. PRACTITIONER POINTS: This study utilized the response surface method (RSM) and the long short-term memory (LSTM) model for pharmaceutical wastewater treatment optimization. LSTM predicted COD removal (56.4%) closely matched experimental results (54.6%), with a minimal error of 0.2%. LSTM demonstrated superior predictive capacity, enabling intelligent parameter adjustments for enhanced process control. Intelligent control strategy based on LSTM holds promise for improving electrocoagulation-catalytic ozonation process efficiency in pharmaceutical wastewater treatment.

利用电凝耦合催化臭氧工艺去除制药废水中 COD 和其他参数的精确预测和智能控制。
在本研究中,我们采用响应面法(RSM)和长短期记忆(LSTM)模型来优化操作参数,并预测用于制药废水处理的电凝催化臭氧工艺(ECOP)的化学需氧量(COD)去除率。通过 RSM 仿真,我们量化了反应时间、臭氧剂量、电流密度和催化剂填充率对 COD 去除率的影响。然后,确定了使 COD 去除率超过 50%的最佳条件。在对优化条件下的 ECOP 性能进行评估后,LSTM 预测的 COD 去除率(56.4%)接近实际结果(54.6%),误差为 0.2%。LSTM 的 COD 去除预测能力优于 RSM。根据最初的 COD 浓度和污水排放标准,对运行参数进行智能调整是可行的,这有助于在 LSTM 模型的基础上精确控制 ECOP 的性能。这种智能控制策略有望提高 ECOP 在实际制药废水处理场景中的效率。实践要点:本研究利用响应面法(RSM)和长短期记忆(LSTM)模型进行制药废水处理优化。LSTM 预测的 COD 去除率(56.4%)与实验结果(54.6%)非常接近,误差最小为 0.2%。LSTM 展示了卓越的预测能力,可通过智能参数调整来增强过程控制。基于 LSTM 的智能控制策略有望提高制药废水处理中的电凝催化臭氧工艺效率。
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来源期刊
Water Environment Research
Water Environment Research 环境科学-工程:环境
CiteScore
6.30
自引率
0.00%
发文量
138
审稿时长
11 months
期刊介绍: Published since 1928, Water Environment Research (WER) is an international multidisciplinary water resource management journal for the dissemination of fundamental and applied research in all scientific and technical areas related to water quality and resource recovery. WER''s goal is to foster communication and interdisciplinary research between water sciences and related fields such as environmental toxicology, agriculture, public and occupational health, microbiology, and ecology. In addition to original research articles, short communications, case studies, reviews, and perspectives are encouraged.
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