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The Water Quality Predicition Based on the Gray Model and Curve Fitting

机译:基于灰色模型和曲线拟合的水质预测

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摘要

Water quality prediction can be applied to guard against all kinds of emergency events and provide decision support to the relevant departments. Many water quality prediction methods have supplied, such as time series analysis method, fuzzy algorithm, artificial neural network, wavelet analysis. Time series analysis method is suitable for the changing apparent data sequence, the predicted data are very random; fuzzy algorithm are used in forecast of the water quality, establishing the correspondences between predicting factors and predicting objects is more difficu artificial neural network method is not a good method for the network topology; study and application of wavelet analysis is not very perfect in water quality prediction.Combining the water quality characteristics of the region, this paper uses the combination forecast method of gray model and curve fitting. Before prediction, it pretreats and classifies the corresponding data, using gray model predicts the periodic parameters, using the curve fitting method predicts the cyclical parameters. Then combining forecast result gets the final trend. Experimental data analysis shows that the fusion method has the higher forecast accuracy than the single method, if data are enough, this method may also be made better effect.
机译:水质预测可用于预防各种紧急事件,并为相关部门提供决策支持。提供了许多水质预测方法,例如时间序列分析方法,模糊算法,人工神经网络,小波分析。时间序列分析方法适用于变化的表观数据序列,预测数据非常随机;模糊算法用于水质预测,建立预测因子与预测对象之间的对应关系较为困难。人工神经网络方法不是网络拓扑的好方法。小波分析的研究和应用在水质预测中并不十分完善。结合区域水质特征,本文采用灰色模型和曲线拟合相结合的预测方法。在进行预测之前,它会对相应的数据进行预处理和分类,使用灰色模型预测周期性参数,使用曲线拟合方法预测周期性参数。然后结合预测结果得到最终趋势。实验数据分析表明,该融合方法比单一方法具有更高的预测精度,如果数据量足够大,则该方法效果也更好。

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