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基于深度强化学习的造纸废水处理过程多目标优化
Multi-objective Optimization of Papermaking Wastewater Treatment Process Based on Deep Reinforcement Learning
收稿日期:2022-10-25  
DOI:10.11980/j.issn.0254-508X.2023.03.003
关键词:  优化  过程控制  废水处理  深度强化学习  模型
Key Words:optimization  process control  wastewater treatment  deep reinforcement learning  model
基金项目:国家重点研发计划(2020YFE0201400);国家自然科学基金(52000078);广州市科技计划项目(202201010356)。
作者单位邮编
陆造好 华南理工大学制浆造纸工程国家重点实验室广东广州510640 510640
满奕 华南理工大学制浆造纸工程国家重点实验室广东广州510640 510640
李继庚 华南理工大学制浆造纸工程国家重点实验室广东广州510640 510640
洪蒙纳 华南理工大学制浆造纸工程国家重点实验室广东广州510640
中新国际联合研究院广东广州510555 
510555
何正磊* 华南理工大学制浆造纸工程国家重点实验室广东广州510640 510640
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摘要:本课题提出了一种基于多智能体深度强化学习的动态优化方法,以期实现造纸废水处理过程的运行成本和能耗的协同优化。实验采用了基准仿真1号模型(BSM1)模拟造纸废水处理过程的生化反应和沉淀过程,并利用模型数据对强化学习智能体进行训练,最后用实际的造纸废水数据对搭建的模型系统进行验证。结果表明,基于多智能体深度强化学习的废水处理系统能够保障排水质量,实现成本与能耗的多目标优化控制,其性能表现优于传统方法。
Abstract:In this study, a dynamic optimization method based on multi-intelligent deep reinforcement learning was proposed to realize the collaborative optimization, of the operation cost and energy consumption of papermaking wastewater treatment process. The BSM1 benchmark simulation model was used to simulate the biochemical reaction and precipitation process of papermaking wastewater treatment process, the reinforcement learning intelligences were trained, and the actual paper making wastewater data was used to verify the model system. The results showed that the wastewater treatment system based on multi-intelligent deep reinforcement learning system could guarantee the effluent quality, realized the multi-objective optimization control of cost and energy consumption, and its performance was better than the traditional methods.
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