应用多层感知器人工神经网络预测和建模加马锡亚布河化学需氧量

Mohamad Parsimehr, K. Shayesteh, K. Godini, Maryam Bayat Varkeshi
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引用次数: 7

摘要

在过去三十年中,人们对水质的担忧普遍增加;因此,现在水质和水量一样重要。为了研究和模拟加马锡河的水质,在四个站点测量了其数据,包括化学需氧量(COD)、生物需氧量(BOD)、溶解氧(DO)、总溶解固体(TDS)、水中总悬浮固体、酸度、温度、浊度以及阳离子和阴离子。然后,使用Pearson相关系数测量这些参数与COD之间的相关性,并用多层感知器人工神经网络建模。为了最大限度地降低所进行实验的成本,并根据数据和COD之间的相关性向人工神经网络提供输入参数,减少了输入参数的数量,最后,在3号模型中,使用动量训练函数和TanhAxon激活函数,验证相关系数为0.97,2.88的平均绝对误差和0.11的归一化均方根误差被确定为具有最低成本的最准确的模型。研究结果表明,多层感知器神经网络对河流COD具有很高的建模能力,并且相互关联的数据对模型的影响最大。此外,可以减少输入参数的数量,以降低实验成本,同时不破坏模型的性能。
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Using Multilayer Perceptron Artificial Neural Network for Predicting and Modeling the Chemical Oxygen Demand of the Gamasiab River
Concerns about water quality have widely increased in the last three decades; thus, water quality is now as important as its quantity. To study and model the quality of the Gamasiab River, its data, including chemical oxygen demand (COD), biological oxygen demand (BOD), dissolved oxygen (DO), total dissolved solids (TDS), total suspended solids in water, acidity, temperature, turbidity, and cations and anions were measured at four stations. Then, the correlations between these parameters and COD were measured using Pearson’s correlation coefficient and modeled by multilayer perceptron artificial neural network. In order to minimize the cost of the experiments performed and to provide the input parameters to the artificial neural network based on the correlations between the data and COD, the number of input parameters was reduced and finally, model No.3, with the Momentum training function and the TanhAxon activation function with the validation correlation coefficient of 0.97, mean absolute error of 2.88, and normalized root mean square error of 0.11 was identified as the most accurate model with the lowest cost. The results of the present study showed that the multilayer perceptron neural network has high ability in modeling the COD of the river, and those data correlated with each other have the greatest effect on the model. Moreover, the number of input parameters can be reduced in order to lower the cost of experiments while the performance of the model is not undermined.
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来源期刊
Avicenna Journal of Environmental Health Engineering
Avicenna Journal of Environmental Health Engineering Environmental Science-Health, Toxicology and Mutagenesis
CiteScore
1.00
自引率
0.00%
发文量
8
审稿时长
8 weeks
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