Time-series gas prediction model using LS-SVR within a Bayesian framework
The traditional least squares support vector regression(LS-SVR)model,using cross validation to determine the regularization parameter and kernel parameter,is time-consuming.We propose a Bayesian evidence framework to infer the LS-SVR model parameters.Three levels Bayesian inferences are used to dete...
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Veröffentlicht in: | Mining science and technology (China) 2011, Vol.21 (1), p.153-157 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | The traditional least squares support vector regression(LS-SVR)model,using cross validation to determine the regularization parameter and kernel parameter,is time-consuming.We propose a Bayesian evidence framework to infer the LS-SVR model parameters.Three levels Bayesian inferences are used to determine the model parameters,regularization hyper-parameters and tune the nuclear parameters by model comparison.On this basis,we established Bayesian LS-SVR time-series gas forecasting models and provide steps for the algorithm.The gas outburst data of a Hebi 10th mine working face is used to validate the model.The optimal embedding dimension and delay time of the time series were obtained by the smallest differential entropy method.Finally,within a MATLAB7.1 environment,we used actual coal gas data to compare the traditional LS-SVR and the Bayesian LS-SVR with LS-SVMlab1.5 Toolbox simulation.The results show that the Bayesian framework of an LS-SVR significantly improves the speed and accuracy of the forecast. |
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ISSN: | 1674-5264 2212-6066 |
DOI: | 10.1016/j.mstc.2010.12.012 |