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Prediction of dissolved oxygen in aquaculture based on EEMD and LSSVM optimized by the Bayesian evidence framework

机译:基于EEMD和LSSVM优化贝叶斯证据框架的水产养殖中溶解氧预测

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摘要

In order to improve the accuracy and effectiveness of dissolved oxygen (DO) prediction, a combined forecasting model based on ensemble empirical mode decomposition (EEMD) and least squares support vector machine (LSSVM) is proposed. Firstly, the DO time series are decomposed into a group of relatively stable subsequences by ensemble empirical mode decomposition to reduce mutual influences among diverse trend information. Secondly, the decomposed subsequence is reconstructed by phase space reconstruction (PSR), and then, an LSSVM optimized by the Bayesian evidence framework prediction model of each sub-sequence is established. Lastly, we use Bp neural network to reconstruct the predicted values of each component to obtain the predicted value of the original DO sequence. This paper used the single point iterative method to achieve multi-step prediction in order to obtain forecasting results for 24 h into the future. EEMD-LSSVM is tested and compared with other algorithms in the Jiangsu Liyang huangjiadang special aquaculture farms. The experimental results show that the proposed combination prediction model of EEMD-LSSVM has a better prediction effect than WDLSSVM, EEMD-ELM and standard LSSVM methods. The relative mean absolute percentage error (MAPE), root mean square error (RMSE), mean absolute error (MAE) and the largest error (e(max)) for the EEMD-LSSVM model are 0.0261, 0.2161, 0.1721 and 0.0767, respectively. Consequently, it is clear that the EEMD-LSSVM model has high forecast accuracy and generalization ability.
机译:为了提高溶解氧(DO)预测的精度和有效性,提出了基于集合经验模式分解(EEMD)和最小二乘支持向量机(LSSVM)的组合预测模型。首先,DO时间序列通过集合经验模式分解分解成一组相对稳定的子序列,以减少不同趋势信息之间的相互影响。其次,通过相位空间重建(PSR)重建分解的子序列,然后,建立由每个子序列的贝叶斯证据框架预测模型优化的LSSVM。最后,我们使用BP神经网络重建每个组件的预测值以获得原始DO序列的预测值。本文使用了单点迭代方法来实现多步预测,以便在将来获得预测结果24小时。 eemd-lssvm经过测试,并与江苏溧阳黄嘉丹特殊水产养殖农场的其他算法进行了测试。实验结果表明,EEMD-LSSVM的建议组合预测模型具有比WDLSSVM,EEMD-ELM和标准LSSVM方法更好的预测效果。 EEMD-LSSVM模型的相对平均绝对百分比误差(MAPE),根均线误差(RMSE),平均值误差(MAE)和最大误差(E(最大))分别为0.0261,0.2161,0.1721和0.0767 。因此,显然EEMD-LSSVM模型具有高预测精度和泛化能力。

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