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Online Learning Algorithm for LSSVM Based Modeling with Time-varying Kernels

机译:基于LSSVM的时变核建模在线学习算法

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Online learning based Least Squares Support Vector Machine (LSSVM) can address the modeling problems of a time-varying process, which has a few advantages such as low training time and good general. Nevertheless, many of online learning algorithms cannot adapt the kernel parameters for the time-varying characteristic, so the inferred LSSVM models are low-accuracy. An online learning algorithm with time-varying kernels is proposed to improve online training accuracy of LSSVM model. The kernel parameters are optimized along with time-varying process using updating samples data. To achieve reliable performance during online optimization, we propose a controllable metaheuristic algorithm that adopts a contracted particle swarm optimization with an elaborate chaotic operator. The proposed modeling approach is utilized in the energy efficiency prediction of the electrical smelting process, and the experimental results show that the proposed online learning algorithm can both improve the accuracy of LSSVM model and ensure low online training time.
机译:基于在线学习的最小二乘支持向量机(LSSVM)可以解决时变过程的建模问题,它具有训练时间短和通用性强等优点。然而,许多在线学习算法不能将内核参数适应于随时间变化的特征,因此推断的LSSVM模型的准确性较低。提出了一种具有时变核的在线学习算法,以提高LSSVM模型的在线训练精度。使用更新样本数据可以优化随时间变化的内核参数。为了在在线优化过程中获得可靠的性能,我们提出了一种可控的元启发式算法,该算法采用了带有精细混沌算子的收缩粒子群优化算法。所提出的建模方法被用于电冶炼过程的能效预测中,实验结果表明,所提出的在线学习算法既可以提高LSSVM模型的精度,又可以保证较低的在线训练时间。

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