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Research on SVR Water Quality Prediction Model Based on Improved Sparrow Search Algorithm

机译:基于改进麻雀搜索算法的SVR水质预测模型研究

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摘要

Multiparameter water quality trend prediction technique is one of the important tools for water environment management and regulation. This study proposes a new water quality prediction model with better prediction performance, which is combined with improved sparrow search algorithm (ISSA) and support vector regression (SVR) machine. For the problems of low population diversity and easily falling into local optimum of sparrow search algorithm (SSA), ISSA is proposed to increase the initial population diversity by introducing Skew-Tent mapping and to help the algorithm jump out of local optimum by using the adaptive elimination mechanism. The optimal values of the penalty factor C and kernel function parameter g of the SVR model are selected using ISSA to make the model have better prediction accuracy and generalization performance. The performance of the ISSA-SVR water quality prediction model is compared with BP neural network, SVR model, and other hybrid models by conducting water quality prediction experiments with actual breeding-water quality data. The experimental results showed that the prediction accuracy of the ISSA-SVR model was signi”cantly higher than that of other models, reaching 99.2; the mean square deviation (MSE) was 0.013, which was 79.37 lower than that of the SVR model and 75 lower than that of SSA-SVR model, and the coefficient of determination (R2) was 0.98, which was 5.38 higher than that of the SVR model and 7.57 higher than that of the SSA-SVR model, indicating that the ISSA-SVR water quality prediction model has some engineering application value in the ”eld of water body management.
机译:多参数水质趋势预测技术是水环境管理和调控的重要工具之一。该文结合改进的麻雀搜索算法(ISSA)和支持向量回归(SVR)机,提出了一种预测性能更好的水质预测模型。针对麻雀搜索算法(SSA)种群多样性低、易陷入局部最优的问题,提出ISSA通过引入Skew-Tent映射来增加初始种群多样性,并利用自适应消除机制帮助算法跳出局部最优。利用ISSA选取SVR模型的惩罚因子C和核函数参数g的最优值,使模型具有更好的预测精度和泛化性能。通过与实际养殖水质数据进行水质预测实验,将ISSA-SVR水质预测模型与BP神经网络、SVR模型等混合模型的性能进行了对比。实验结果表明,ISSA-SVR模型的预测准确率显著高于其他模型,达到99.2%;均方差(MSE)为0.013,比SVR模型低79.37%,比SSA-SVR模型低75%,决定系数(R2)为0.98,比SVR模型和7模型高5.38%。ISSA-SVR水质预测模型比SSA-SVR模型高57%,在“水体管理领域”具有一定的工程应用价值。

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