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A Hybrid Model of Empirical Wavelet Transform and Extreme Learning Machine for Dissolved Oxygen Forecasting

机译:一种溶解氧预测的经验小波变换及极限学习机的混合模型

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The accurate predicting trend of dissolved oxygen (DO) can reduce the risk of aquaculture, so a combined non-linear prediction model based on empirical wavelet transform (EWT) and extreme learning machine (ELM) optimized by particle swarm optimization (PSO) is proposed. First of all, DO series are decomposed into a term of relatively subsequence by EWT, Secondly, the decomposed components are reconstructed using the C-C method, and thirdly an ELM prediction model of every component is established. At last, the predicted values of DO datasets are calculated by using RBF to reconstruct the forecasting values of all components. This model is tested in the special aquaculture farm in Liyang City, Jiangsu Province. Results indicate that the proposed prediction model of EWT-ELM has good performance than WD-ELM, EMD-ELM, ELM and EWT-BP. The research shows that the combined forecasting model can effectively extract the sequence characteristics, and can provide a basis for decision-making management of water quality, which has certain application value.
机译:溶解氧(DO)的准确预测趋势可以降低水产养殖的风险,因此提出了基于经验小波变换(EWT)和极端学习机(ELM)的基于粒子群优化(PSO)的基于经验小波变换(EWT)的组合的非线性预测模型。首先,DO系列通过EWT分解成术语,其次,使用C-C方法重建分解组分,第三,建立了每个组件的ELM预测模型。最后,通过使用RBF重建所有组件的预测值来计算DO数据集的预测值。该模型在江苏省溧阳市特殊水产养殖场进行测试。结果表明,EWT-ELM的提议预测模型具有比WD-ELM,EMD-ELM,ELM和EWT-BP的良好性能。该研究表明,组合的预测模型可以有效提取序列特性,可以为水质的决策管理提供依据,这具有一定的应用价值。

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