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Prediction of the five-day biochemical oxygen demand and chemical oxygen demand in natural streams using machine learning methods

机译:采用机器学习方法预测自然流中的五天生化需氧量和化学氧需求

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Rivers, as the most prominent component of water resources, have a key role to play in increasing the life expectancy of living creatures. The essential characteristics of water pollutants can be described by water quality indices (WQIs). Hence, a ferocious demand for obtaining an accurate prediction of WQIs is of high importance for perception of pollutant patterns in natural streams. Field studies conducted on different rivers indicated that there is no general relationship to yield water quality parameters with a permissible level of accuracy. Over the past decades, several artificial intelligence (AI) models have been employed to predict more precise estimation of WQIs rather than conventional models. In this way, through the current study, multivariate adaptive regression spline (MARS) and least square-support vector machine (LS-SVM), as machine learning methods, were used to predict indices of the five-day biochemical oxygen demand (BOD5) and chemical oxygen demand (COD). To improve the proposed approaches, 200 series of field data, collected from Karoun River southwest of Iran, pertain to the nine independent input parameters, namely electrical conductivity (EC), sodium (Na+), calcium (Ca2+), magnesium (Mg2+), orthophosphate (PO43-), nitrite (mml:mspace width="0.25em mml:mspace NO2-), nitrate nitrogen (NO3-), turbidity, and pH. The performances of the LS-SVM and MARS techniques were quantified in both training and testing stages by means of several statistical parameters. Furthermore, the results of the proposed AI models were compared with those obtained using artificial neural network (ANN), adaptive neuro-fuzzy inference system (ANFIS), and multiple regression equations. Results of the present research work indicated that the proposed artificial intelligence techniques, as machine learning classifiers, were found to be efficient in order to predict water quality parameters.
机译:河流是水资源最突出的成分,在增加生物的预期寿命时发挥着关键作用。水污染物的基本特征可以通过水质指数(WQI)来描述。因此,对获得WQI的准确预测的凶猛需求对于自然流中的污染物模式感知高度重要。在不同河流上进行的现场研究表明,没有一般的关系,以产生水质参数,具有允许的准确性水平。在过去的几十年中,已经采用了几种人工智能(AI)模型来预测WQI的更精确估计而不是传统模型。通过这种方式,通过目前的研究,多变量自适应回归花键(MARS)和最小二乘支持的向量机(LS-SVM)作为机器学习方法,用于预测五天生化氧需求的指标(BOD5)和化学需氧量(COD)。为改善拟议的方法,200系列现场数据,从伊朗西南卡鲁克河收集,涉及九个独立输入参数,即导电(EC),钠(Na +),钙(Ca2 +),镁(Mg2 +),正磷酸盐(PO43-),亚硝酸盐(MML:MSPACE宽度=“0.25MMML:MSPACE NO2-),硝酸盐氮(NO3-),浊度和pH。在训练中量化了LS-SVM和MARS技术的性能通过几种统计参数测试阶段。此外,将所提出的AI模型的结果与使用人工神经网络(ANN),自适应神经模糊推理系统(ANFIS)和多元回归方程获得的结果进行比较。结果目前的研究工作表明,发现所提出的人工智能技术作为机器学习分类器,以便预测水质参数。

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