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Improvement of the prediction performance of a soft sensor model based on support vector regression for production of ultra-low sulfur diesel

机译:基于支持向量回归的超低硫柴油生产软传感器模型预测性能的改进

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A novel data-driven, soft sensor based on support vector regression (SVR) integrated with a data compression technique was developed to predict the product quality for the hydrodesulfurization (HDS) process. A wide range of experimental data was taken from a HDS setup to train and test the SVR model. Hyper-parameter tuning is one of the main challenges to improve predictive accuracy of the SVR model. Therefore, a hybrid approach using a combination of genetic algorithm (GA) and sequential quadratic programming (SQP) methods (GA–SQP) was developed. Performance of different optimization algorithms including GA–SQP, GA, pattern search (PS), and grid search (GS) indicated that the best average absolute relative error (AARE), squared correlation coefficient ( R ~(2)), and computation time (CT) (AARE?=?0.0745, R ~(2)?=?0.997 and CT?=?56?s) was accomplished by the hybrid algorithm. Moreover, to reduce the CT and improve the accuracy of the SVR model, the vector quantization (VQ) technique was used. The results also showed that the VQ technique can decrease the training time and improve prediction performance of the SVR model. The proposed method can provide a robust, soft sensor in a wide range of sulfur contents with good accuracy.
机译:开发了一种基于数据支持技术回归(SVR)和数据压缩技术的新型数据驱动软传感器,以预测加氢脱硫(HDS)过程的产品质量。从HDS设置中获取了大量实验数据,以训练和测试SVR模型。超参数调整是提高SVR模型的预测准确性的主要挑战之一。因此,开发了一种结合了遗传算法(GA)和顺序二次规划(SQP)方法(GA–SQP)的混合方法。 GA–SQP,GA,模式搜索(PS)和网格搜索(GS)等不同优化算法的性能表明,最佳平均绝对相对误差(AARE),平方相关系数(R〜(2))和计算时间(CT)(AARE≤0.0745,R〜(2)≤0.999,CT≤56≤s)通过混合算法完成。此外,为了减少CT并提高SVR模型的准确性,使用了矢量量化(VQ)技术。结果还表明,VQ技术可以减少训练时间,提高SVR模型的预测性能。所提出的方法可以在宽范围的硫含量范围内提供一种坚固,柔软的传感器,并具有良好的精度。

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