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首页> 外文期刊>Journal of Chemometrics >A two-layer ensemble learning framework for data-driven soft sensor of the diesel attributes in an industrial hydrocracking process
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A two-layer ensemble learning framework for data-driven soft sensor of the diesel attributes in an industrial hydrocracking process

机译:工业加氢裂化过程中柴油属性的数据驱动软传感器的双层集合学习框架

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摘要

In the hydrocracking process, it is of great significance to timely measure the product attributes for real-time process control and optimization. However, they are often very difficult to measure online due to technical and economical limitations. To this end, soft sensor is introduced to predict product attributes through easy-to-measure process variables, with the advantages of low cost, fast response, and ease of maintenance. In this paper, a two-layer ensemble learning framework is developed for soft sensing of three diesel attributes in an industrial hydrocracking process. In this modeling framework, the process variables are first divided into subspace blocks according to process topological structure to capture the local behaviors of different production cells. Then, to overcome the weak generalization ability of a single calibration model with specific hypothesis, different regression learners are constructed on each variable subblock to increase the model diversity. At last, individual models are fused to improve the prediction performance and generalization ability of soft sensor models. The effectiveness and flexibility of the proposed ensemble learning method is validated on a real industrial hydrocracking process.
机译:在加氢裂化过程中,有重要的是,及时测量实时过程控制和优化的产品属性。然而,由于技术和经济的限制,它们通常很难在线衡量。为此,引入软传感器以通过易于测量的工艺变量预测产品属性,成本低,响应快,易于维护的优点。在本文中,开发了一种双层集合学习框架,用于工业加氢裂化过程中的三个柴油属性的软感。在该建模框架中,根据过程拓扑结构首先将过程变量分为子空间块,以捕获不同生产细胞的局部行为。然后,为了克服特定假设的单个校准模型的弱泛化能力,在每个可变子块上构建不同的回归学习者以增加模型分集。最后,融合各个模型以改善软传感器模型的预测性能和泛化能力。建议的集合学习方法的有效性和灵活性在真正的工业加氢裂化过程中验证。

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