最小二乘支持向量机的最优稀疏化方法

Jia Luo, Shihe Chen, Le Wu, Shirong Zhang
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引用次数: 0

摘要

最小二乘支持向量机(LSSVM)是一种被广泛接受的过程建模技术。然而,它有一个天生的缺点,那就是解决方案缺乏备用性。提出了一种基于粒子群算法的LSSVM最优稀疏度算法,并对其进行了验证。首先将LSSVM的稀疏性表述为一个优化问题,将训练数据集的剪枝百分比作为优化变量。然后,利用粒子群算法求解稀疏性问题。利用电厂锅炉飞灰含碳量的LSSVM模型对算法进行验证。收集了一台600MW锅炉的长期运行数据进行对比研究。结果表明,基于粒子群的最优稀疏度方法优于经典方法,能够收敛到最优支持向量集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An optimal sparseness approach for least square support vector machine
Least square support vector machine (LSSVM) is a well accepted process modeling technique. However, it has an instinct shortcoming as that the solution is lack of spareness. In this paper, a particle swarm optimization (PSO) based optimal spareness approach for LSSVM is proposed and validated. The spareness of LSSVM is firstly formulated as an optimization problem, where pruning percentage of the training data set is taken as the optimization variable. And then, PSO is employed to solve the spareness problem. A LSSVM model for carbon content in fly ash of utility boiler is used for algorithm validation. Long term operation data of a 600MW boiler is collected for comparison studies. The presented results convince that the PSO based optimal spareness approach exceeds the classical method, and is capable of converging to an optimal support vector set.
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