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Short-Term Load Forecasting Based on LS-SVM Optimized by Bacterial Colony Chemotaxis Algorithm

机译:基于LS-SVM的细菌菌落趋化性算法优化的短期负荷预测

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Aiming at improving the accuracy and speed of short-term load forecasting (STLF), the proposed BCC-LS-SVM model is presented, among which bacterial colony chemotaxis (BCC) optimization algorithm is used to determine hyper-parameters of least squares support vector machine (LS-SVM). BCC is a novel category of bionic algorithm, which takes advantage of the bacterium's reaction to chemoattractants to find the optimum. The algorithm not only has strong global search capability, but also is easy to implement. Thus, BCC is suitable to determine parameters of LS-SVM. Finally, load forecasting examples are used to illustrate the performance of proposed model. The experimental results indicate that the BCC-LS-SVM method can achieve higher forecasting accuracy and faster speed than artificial neural network and LS-SVM with gird search. Therefore, the BCC-LS-SVM model is suitable for short-term load forecasting.
机译:旨在提高短期负荷预测(STLF)的准确性和速度,提出了所提出的BCC-LS-SVM模型,其中细菌菌落化学(BCC)优化算法用于确定最小二乘支持向量的超参数机器(LS-SVM)。 BCC是一种新型的仿生算法类别,可利用细菌对化学试管的反应来找到最佳的。该算法不仅具有强大的全局搜索功能,而且易于实现。因此,BCC适用于确定LS-SVM的参数。最后,使用负载预测例子来说明所提出的模型的性能。实验结果表明,BCC-LS-SVM方法可以实现比人工神经网络和GiRD搜索的LS-SVM更高的预测精度和更快的速度。因此,BCC-LS-SVM模型适用于短期负荷预测。

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