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A hybrid neural network and ARIMA model for water quality time series prediction

机译:水质时间序列预测的混合神经网络和ARIMA模型

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摘要

Accurate predictions of time series data have motivated the researchers to develop innovative models for water resources management. Time series data often contain both linear and nonlinear patterns. Therefore, neither ARIMA nor neural networks can be adequate in modeling and predicting time series data. The ARIMA model cannot deal with nonlinear relationships while the neural network model alone is not able to handle both linear and nonlinear patterns equally well. In the present study, a hybrid ARIMA and neural network model is proposed that is capable of exploiting the strengths of traditional time series approaches and artificial neural networks. The proposed approach consists of an ARIMA methodology and feed-forward, backpropagation network structure with an optimized conjugated training algorithm. The hybrid approach for time series prediction is tested using 108-month observations of water quality data, including water temperature, boron and dissolved oxygen, during 1996-2004 at Biiyiik Menderes river, Turkey. Specifically, the results from the hybrid model provide a robust modeling framework capable of capturing the nonlinear nature of the complex time series and thus producing more accurate predictions. The correlation coefficients between the hybrid model predicted values and observed data for boron, dissolved oxygen and water temperature are 0.902,0.893, and 0.909, respectively, which are satisfactory in common model applications. Predicted water quality data from the hybrid model are compared with those from the ARIMA methodology and neural network architecture using the accuracy measures. Owing to its ability in recognizing time series patterns and nonlinear characteristics, the hybrid model provides much better accuracy over the ARIMA and neural network models for water quality predictions.
机译:时间序列数据的准确预测促使研究人员开发创新的水资源管理模型。时间序列数据通常包含线性和非线性模式。因此,ARIMA和神经网络都无法充分建模和预测时间序列数据。 ARIMA模型无法处理非线性关系,而仅神经网络模型无法同时很好地处理线性和非线性模式。在本研究中,提出了一种ARIMA和神经网络的混合模型,该模型能够利用传统时间序列方法和人工神经网络的优势。所提出的方法包括ARIMA方法和具有优化共轭训练算法的前馈,反向传播网络结构。在1996年至2004年期间,在土耳其Biiyiik Menderes河上使用108个月的水质数据观测数据(包括水温,硼和溶解氧)对混合时间序列预测方法进行了测试。具体来说,混合模型的结果提供了一个强大的建模框架,能够捕获复杂时间序列的非线性性质,从而产生更准确的预测。硼,溶解氧和水温的混合模型预测值与观测数据之间的相关系数分别为0.902、0.893和0.909,在普通模型应用中令人满意。使用精度测度,将混合模型的预测水质数据与ARIMA方法和神经网络体系结构的水质数据进行比较。由于其具有识别时间序列模式和非线性特征的能力,因此与ARIMA和神经网络模型相比,该混合模型提供了更高的准确性,可用于水质预测。

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