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A MKL based on-line prediction for gasholder level in steel industry

机译:基于MKL的钢铁行业储气罐水平在线预测

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The real-time prediction for gasholder level is significant for gas scheduling in steel enterprises. In this study, we extended the least squares support vector regression (LSSVR) to multiple kernel learning (MKL) based on reduced gradient method. The MKL based LSSVR, using the optimal linear combination of kernels, improves the generalization of the model and reduces the training time. The experiments using the classical non-flat function and the practical problem shows that the proposed method achieves well performance and high computational efficiency. And, an application system based on the approach is developed and applied to the practice of Shanghai Baosteel Co. Ltd.
机译:气罐水平的实时预测对于钢铁企业的气体调度具有重要意义。在这项研究中,我们基于最小梯度法将最小二乘支持向量回归(LSSVR)扩展到多核学习(MKL)。基于MKL的LSSVR,使用内核的最佳线性组合,可以改善模型的通用性并减少训练时间。使用经典非平坦函数和实际问题进行的实验表明,该方法具有良好的性能和较高的计算效率。并且,开发了基于该方法的应用系统并将其应用于上海宝钢股份有限公司的实践。

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