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Soft-sensing in complex chemical process based on a sample clustering extreme learning machine model ?

机译:基于样本聚类极限学习机模型的复杂化学过程中的软传感

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In actual chemical processes, the fact that some essential variables cannot be directly measured makes the production quality out-of-control and even results in large economic losses. In this study, a novel sample clustering extreme learning machine (SC-ELM) model is developed to achieve timely and accurate measurement. SC-ELM is a fast training algorithm with an excellent generalization performance, and the combined sample clustering approach solves the non-optimal input weights of ELM. The network structure is designed by a fast leave-one-out cross-validation (FLOO-CV) method. Meanwhile, the validity of SC-ELM model is firstly tested by two classical regression datasets. With the comparison of other ELM models, SC-ELM is proved to be an effective model in both modeling accuracy and network structure. Then, SC-ELM is applied in measuring the quality index of a high-density polyethylene (HDPE) process running in a chemical plant, and the experiment results demonstrate that SC-ELM model can achieve quality estimation with higher measuring accuracy and less training time.
机译:在实际的化学过程中,某些基本变量无法直接测量的事实使生产质量失控,甚至造成巨大的经济损失。在这项研究中,开发了一种新颖的样本聚类极限学习机(SC-ELM)模型,以实现及时准确的测量。 SC-ELM是一种具有出色泛化性能的快速训练算法,并且组合样本聚类方法解决了ELM的非最优输入权重。网络结构是通过快速留一法交叉验证(FLOO-CV)方法设计的。同时,首先通过两个经典的回归数据集检验了SC-ELM模型的有效性。通过与其他ELM模型的比较,证明SC-ELM在建模精度和网络结构方面都是有效的模型。然后,将SC-ELM应用于某化工厂运行的高密度聚乙烯(HDPE)工艺的质量指标的测量,实验结果表明,SC-ELM模型能够以较高的测量精度和较少的培训时间实现质量估算。 。

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