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An improved extreme learning machine integrated with nonlinear principal components and its application to modeling complex chemical processes

机译:一种改进的极端学习机与非线性主成分集成及其应用于复杂化学过程的应用

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摘要

In order to enhance the performance of extreme learning machine (ELM) in modeling complex chemical processes, an improved ELM integrated with nonlinear principal components is proposed. Firstly, an improved ELM (IELM) model is presented. The IELM has a special structure with two independent input subnets: a positive correlation subnet and a negative correlation subnet. The two independent input sub nets are developed based on the correlation coefficient between input attributes and output attributes. The nonlinear principal components of original input attributes are extracted using input training neural network (ITNN). The extracted nonlinear principal components are connected to output layer nodes. Thus, the output nodes not only connect with the positive correlation subnet and the negative correlation subnet, but also with the extracted nonlinear principal components. Thus, an IELM integrated with nonlinear principal components (NPCs-IELM) model can be built. The effectiveness of the proposed NPCs-IELM is verified by modeling a high density polyethylene process. Simulation results indicate that the proposed NPCs-IELM can achieve higher accuracy and better stability. (C) 2017 Elsevier Ltd. All rights reserved.
机译:为了提高极端学习机(ELM)在建模复杂化学过程中的性能,提出了一种与非线性主成分集成的改进的ELM。首先,提出了一种改进的ELM(IELM)模型。 IELM具有具有两个独立输入子网的特殊结构:正相关子网和负相关子网。两个独立的输入子网是基于输入属性和输出属性之间的相关系数而开发的。使用输入训练神经网络(ITNN)提取原始输入属性的非线性主组件。提取的非线性主组件连接到输出层节点。因此,输出节点不仅与正相关子网和负相关子网连接,还与提取的非线性主组件连接。因此,可以构建与非线性主组件(NPCS-IELM)模型集成的IELM。通过建模高密度聚乙烯方法来验证所提出的NPCS-IELM的有效性。仿真结果表明,所提出的NPCS-IELM可以实现更高的准确性和更好的稳定性。 (c)2017 Elsevier Ltd.保留所有权利。

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