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The application of support vector machines and improved particle swarm optimization

机译:支持向量机的应用及改进的粒子群算法

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Parameters selection of support vector machine is the key issue that impacts its accurate performance. A method for support vector regression machine with standard particle swarm optimization (SPSO) algorithm is proposed in this paper. Furthermore, in order to improve the performance of the SPSO algorithm, the concept of the particles'' average distance and fitness variance is proposed to make the efficiency of algorithm better. So, the improve algorithm was also applied in this paper. The two different models using SPSO and IPSO respectively were used to forecast the density of the acid-lead battery electrolyte. The experimental results indicate that both SPSO and IPSO have high prediction accuracy and efficiency. The time of the parametric searching by IPSO is obviously decreased to that of SPSO. The mean squared error (MSE) of the prediction model using SPSO is about 2.02056×10−4, Meanwhile, the MSE of the model using IPSO is only about 1.9324×10−4. So, the IPSO algorithm has more superior performance on convergence speed and global optimization.
机译:支持向量机的参数选择是影响其精确性能的关键问题。提出了一种基于标准粒子群算法的支持向量回归机方法。此外,为了提高SPSO算法的性能,提出了粒子平均距离和适应度方差的概念,以提高算法的效率。因此,本文还应用了改进算法。分别使用SPSO和IPSO的两种不同模型来预测酸铅电池电解质的密度。实验结果表明,SPSO和IPSO均具有较高的预测精度和效率。 IPSO进行参数搜索的时间明显比SPSO减少了。使用SPSO的预测模型的均方误差(MSE)约为2.02056×10 −4 ,同时使用IPSO的预测模型的MSE仅为1.9324×10 −4 。因此,IPSO算法在收敛速度和全局优化方面具有更好的性能。

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