使用机器学习方法的生活和工业污水处理厂优化运行

Q4 Social Sciences Revista de Gestao Social e Ambiental Pub Date : 2023-10-18 DOI:10.24857/rgsa.v17n10-040
Sarah Lilian de Lima Silva, Marcos Sousa Leite, Thalita Cristine Ribeiro Lucas Fernandes, Sidinei Kleber Da Silva, Antonio Carlos Brandão De Araújo
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引用次数: 0

摘要

目的:本研究旨在通过使用数学建模和机器学习技术进行流程优化的应用程序,确定运营和租赁污水处理厂的经济和技术可行性。理论框架:污水处理厂(STPs)的高效运行是确保水质、减少环境影响和优化成本的关键。本研究探讨了机器学习(ML)如何建模和优化污水处理过程,以适应实时条件。方法/设计/方法:BSM1模型与机器学习技术相结合,创建简化的元模型,实现优化结果,并开发用于评估经济和技术成果的应用程序。结果与结论:简化元模型成功地再现了Simulink模型,达到了满意的优化效果。研究意义:本研究有利于改善水质、降低成本、可持续性、创新、水资源管理、对极端天气事件的认识和适应能力,以及影响知情政策。原创性/价值:效率、可持续性、经济性和生活质量是本研究的核心价值,有利于社会、环境和经济。
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Optimal Operation of Domestic and Industrial Sewage Treatment Plants Using Machine Learning Methods
Purpose: This study aims to determine the economic and technical feasibility of operating and leasing sewage treatment plants through an application that uses mathematical modeling and Machine Learning techniques for process optimization. Theoretical Framework: Efficient operation of sewage treatment plants (STPs) is crucial to ensure water quality, minimize environmental impacts, and optimize costs. This study explores how Machine Learning (ML) can model and optimize sewage treatment processes, adapting to real-time conditions. Method/Design/Approach: The BSM1 model is combined with Machine Learning techniques to create simplified metamodels, enabling optimized results and the development of an application for evaluating economic and technical outcomes. Results and Conclusion: The reduced metamodel successfully reproduced the Simulink model, achieving satisfactory optimization. Research Implications: This research benefits water quality improvement, cost reduction, sustainability, innovation, water resource management, awareness, and resilience to extreme weather events, as well as influencing informed policies. Originality/Value: Efficiency, sustainability, economy, and quality of life are core values in this research, benefiting society, the environment, and the economy.
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来源期刊
Revista de Gestao Social e Ambiental
Revista de Gestao Social e Ambiental Social Sciences-Geography, Planning and Development
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发文量
34
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