自适应软传感器在工业精炼加氢裂化过程质量预测中的比较研究

Xiaofeng Yuan, Jiao Zhou, Yalin Wang
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引用次数: 12

摘要

软传感器在现代炼油工业中发挥着不可替代的作用,它可以为过程建模、控制、监测和优化提供重要的信息。但由于催化剂失活等原因引起的过程时变问题,预测性能往往会逐渐下降。因此,为了保持良好的预测性能,定期更新推理模型是非常重要的。在实际加氢裂化过程中,对自适应软传感器进行了质量预测的对比研究。建立了递归偏最小二乘(RPLS)、移动窗口偏最小二乘(MWRPLS)、局部加权偏最小二乘(LWPLS)和移动窗口偏最小二乘(MWLWPLS)模型,对航空煤油产品10%沸点进行了预测。结果表明,RPLS和MWRPLS具有较好的预测效果。
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A Comparative Study of Adaptive Soft Sensors for Quality Prediction in an Industrial Refining Hydrocracking Process
Soft sensors have played indispensable roles in modern refining industry, which can provide significant information for process modeling, control, monitoring and optimization. However, the prediction performance often gradually deteriorates due to process time-varying problem caused by reasons like catalyst deactivation. Therefore, it is very important to update the inferential models regularly in order to keep good prediction performance. In this paper, a comparative study of adaptive soft sensors is carried out for quality prediction in a real hydrocracking process. Recursive partial least squares (RPLS), moving window RPLS (MWRPLS), locally weighted partial least squares (LWPLS) and moving window LWPLS (MWLWPLS) models are built to predict the 10% boiling point of the aviation kerosene product. The results show that RPLS and MWRPLS can provide better prediction performance.
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