An effective high-quality prediction intervals construction method based on parallel bootstrapped RVM for complex chemical processes
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An effective high-quality prediction intervals construction method based on parallel bootstrapped RVM for complex chemical processes

机译:一种基于平行引导RVM的有效高质量预测间隔施工方法,复杂化学过程

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摘要

AbstractData-driven techniques have been becoming increasingly popular and widely used for prediction in complex chemical processes. In general, prediction results are usually provided with point estimations. However, point estimations cannot meet the requirement of accuracy due to the characteristics of high-dimension, high nonlinearity, and containing noise of process data. In order to deal with the trend and the uncertainty of process data, an effective prediction intervals (PIs) method based on bootstrap and relevance vector machine (Bootstrapped RVM) is proposed in this paper. In the proposed method, bootstrap is adopted to obtain PIs and RVM is used as a regression tool. In order to accelerate the training and testing phases, a parallel algorithm is utilized in the proposed Bootstrapped RVM method. In addition, to better evaluating the quality of PIs, some performance indicators are improved. Finally, the proposed method is validated by using a standard function and High Density Polyethylene (HDPE) data. Compared with some other PIs methods, the simulation results show that the proposed method can achieve better performance in terms of prediction accuracy and training time.Highlights?A novel prediction intervals method using a parallel bootstrapped RVM is proposed.?A parallel bootstrap strategy is adopted to construct high-quality PIs.?Simulation results of case studies verify the performance of the proposed method.]]>
机译:<![CDATA [ 抽象 数据驱动技术已经变得越来越受欢迎并且广泛用于复杂化学过程中的预测。通常,通常提供预测结果,具有点估计。然而,由于高尺寸,高非线性和包含过程数据噪声的特性,点估计不能满足准确性的要求。为了处理过程数据的趋势和不确定性,本文提出了一种基于自举和相关矢量机(引导RVM)的有效预测间隔(PIS)方法。在所提出的方法中,采用引导程序获得PIS,RVM用作回归工具。为了加速训练和测试阶段,在提出的引导RVM方法中使用并行算法。此外,为了更好地评估PI的质量,一些性能指标得到改善。最后,通过使用标准功能和高密度聚乙烯(HDPE)数据来验证所提出的方法。与其他一些PIS方法相比,仿真结果表明,该方法可以在预测准确性和培训时间方面实现更好的性能。 亮点 提出了一种新的预测间隔,使用并行引导的RVM方法。 采用并行引导策略构建高质量PIS。 仿真研究结果验证了所提出的方法的性能。 ]]>

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