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Stochastic configuration networks with block increments for data modeling in process industries

机译:具有块增量的随机配置网络,用于过程行业中的数据建模

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Stochastic configuration networks (SCNs) that employ a supervisory mechanism to automatically and fast construct universal approximators can achieve promising performance for resolving regression problems. This paper develops an extension of the original SCNs with block increments to enhance learning efficiency, which has received considerable attention in industrial process modeling. This extension allows the learner model to add multiple hidden nodes (termed hidden node block) simultaneously to the network during construction process. To meet industrial demands, two block incremental implementations of SCNs are presented by adopting different strategies for setting the block size. Specifically, the first one adds the hidden node blocks with a fixed block size, which achieves the acceleration of convergence rate at the cost of model compactness; the second one can automatically set the block size by incorporating simulated annealing algorithm, achieving a good balance between efficiency and complexity. The two algorithms are suitable for industrial data modeling with distinct requirements on modeling speed and memory space. The improved methods for building SCNs are evaluated by two function approximations, four benchmark datasets and two real world applications in process industries. Experimental results with comparisons indicate that the proposed schemes perform favorably. (C) 2019 Elsevier Inc. All rights reserved.
机译:随机配置网络(SCNS)采用自动和快速构建通用近似器的监控机制可以实现有希望的性能来解决回归问题。本文开发了原始SCNS的扩展,具有阻止增量,以提高学习效率,在工业过程建模中受到相当大的关注。此扩展允许学习者模型在施工过程中同时向网络添加多个隐藏节点(称为隐藏节点块)。为了满足工业需求,通过采用不同的策略来呈现SCNS的两个块增量实现来设置块大小。具体地,第一个添加具有固定块大小的隐藏节点块,其实现了模型紧凑性成本的收敛速率的加速度;第二个可以通过结合模拟的退火算法自动设置块大小,在效率和复杂性之间实现良好的平衡。这两种算法适用于工业数据建模,具有对建模速度和存储空间的不同要求。建立SCNS的改进方法是通过两个函数近似,四个基准数据集和过程行业中的两个现实世界应用来评估。比较的实验结果表明,所提出的方案有利地表现。 (c)2019 Elsevier Inc.保留所有权利。

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