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A comparative study of multiple linear regression, artificial neural network and support vector machine for the prediction of dissolved oxygen

机译:多元线性回归,人工神经网络和支持向量机预测溶解氧的比较研究

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摘要

Dissolved oxygen (DO) is an important indicator reflecting the healthy state of aquatic ecosystems. The balance between oxygen supply and consuming in the water body is significantly influenced by physical and chemical parameters. This study aimed to evaluate and compare the performance of multiple linear regression (MLR), back propagation neural network (BPNN), and support vector machine (SVM) for the prediction of DO concentration based on multiple water quality parameters. The data set included 969 samples collected from rivers in China and the 16 predicted variables involved physical factors, nutrients, organic substances, and metal ions, which would affect the DO concentrations directly or indirectly by influencing the water-air exchange, the growth of water plants, and the lives of aquatic animals. The models optimized by particle swarm optimization (PSO) algorithm were calibrated and tested, with nearly 80% and 20% data, respectively. The results showed that the PSO-BPNN and PSO-SVM had better predicted performances than linear regression methods. All of the evaluated criteria, including coefficient of determination, mean squared error, and absolute relative errors suggested that the PSO-SVM model was superior to the MLR and PSO-BPNN for DO prediction in the rivers of China with limited knowledge of other information.
机译:溶解氧(DO)是反映水生生态系统健康状态的重要指标。水体中氧气的供求之间的平衡受物理和化学参数的影响很大。本研究旨在评估和比较基于多个水质参数的DO浓度预测的多元线性回归(MLR),反向传播神经网络(BPNN)和支持向量机(SVM)的性能。该数据集包括从中国河流收集的969个样本,而16个预测变量涉及物理因素,营养素,有机物质和金属离子,这些变量会通过影响水-空气交换,水的生长而直接或间接影响DO的浓度。植物和水生动物的生命。通过粒子群优化(PSO)算法优化的模型已经过校准和测试,分别具有近80%和20%的数据。结果表明,与线性回归方法相比,PSO-BPNN和PSO-SVM具有更好的预测性能。所有评估标准,包括确定系数,均方误差和绝对相对误差,均表明PSO-SVM模型在中国河流的DO预测方面优于MLR和PSO-BPNN,而对其他信息的了解却有限。

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