机器学习作为废水处理系统的辅助工具-简要回顾

S. Radović, S. Pap, M. Turk Sekulić
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引用次数: 1

摘要

机器学习是人工智能的一个子集。它的基础是教会计算机如何从数据中学习,以及如何通过经验来改进。这项宝贵的技术已经越来越多地应用于生活的不同领域。这包括ML在增强和优化许多生态和环境工程解决方案中的应用,例如废水处理系统(WWTS)。工艺的复杂性引发了通过对动态工艺条件的充分响应来确保良好出水质量的挑战。这就是为什么ML等经过训练后具有较强预测能力的技术被应用于WWTS的原因。ML通过数据驱动的方法有助于理解输入特征和输出目标之间的相关性。为此目的使用了不同的ML模型。常用的有人工神经网络(ANN)或深度神经网络(DNN)模型、支持向量机(SVM)及其变异支持向量回归(SVR)模型、随机森林(RF)模型等。更常见的情况是,作者应用几个不同的模型,以获得最适合特定问题的模型。在废水管理中,这些问题是多种多样的,可能包括污水处理过程的建模、某些技术性能的预测、技术工作参数的优化、污水处理技术中使用的材料生产的优化等。例如,有几篇文章描述了机器学习在优化材料合成(例如,生物炭生产)中的作用。ML的应用减少了应用生产程序获得最佳结果所需的运行次数,节省了时间,也具有成本效益。事实上,由于近年来人工智能应用的指数级技术发展和进步,将机器学习纳入解决或避免WWTS中潜在问题是一种很有前途的方法。
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 as a support tool in wastewater treatment systems – a short review
Machine learning (ML) is a subset of artificial intelligence (AI). It is based on teaching computers how to learn from data and how to improve with experience. This valuable technique has been increasingly supporting different spheres of life. This includes ML application in enhancement and optimisation of many ecological and environmental engineering solutions, such as wastewater treatment systems (WWTS). Complexity of processes triggers challenges in ensuring good effluent quality by adequate response to dynamic process conditions. That is why techniques such as ML which, after being trained, have strong prediction ability, have been applied in WWTS. ML facilitates understanding of correlation between input features and output targets through a data-driven approach. Different ML models have been used for this purpose. Some of the commonly used were artificial neural network (ANN) or deep neural network (DNN) model, support vector machine (SVM) and its variation support vector regression (SVR) model, random forest (RF) model and many others. More often authors apply a few different models in order to obtain the one that most appropriately works for specific problem. In wastewater management those problems are various, and could include modelling of WWT processes, prediction of certain technology performance, optimisation of technology working parameters, optimisation of the production of the materials there are being used in WWT technology etc. For instance, there are several articles which describes ML power in optimisation of material synthesis (e.g., biochar production). Application of ML led to reduction in number of runs which were necessary for obtaining the best results by applied production procedure, which saved time and was also cost-beneficial. Indeed, ML incorporation in solving or avoiding potential problems within WWTS is a promising approach which has gained more attention in recent years due to the exponential technology development and progress in artificial intelligence application.
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