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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Optimization of a Multilayer Neural Network by Using Minimal Redundancy Maximal Relevance-Partial Mutual Information Clustering With Least Square Regression
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Optimization of a Multilayer Neural Network by Using Minimal Redundancy Maximal Relevance-Partial Mutual Information Clustering With Least Square Regression

机译:最小二乘回归的最小冗余最大关联-部分互信息聚类优化多层神经网络

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摘要

In this paper, an optimized multilayer feed-forward network (MLFN) is developed to construct a soft sensor for controlling naphtha dry point. To overcome the two main flaws in the structure and weight of MLFNs, which are trained by a back-propagation learning algorithm, minimal redundancy maximal relevance-partial mutual information clustering (mPMIc) integrated with least square regression (LSR) is proposed to optimize the MLFN. The mPMIc can determine the location of hidden layer nodes using information in the hidden and output layers, as well as remove redundant hidden layer nodes. These selected nodes are highly related to output data, but are minimally correlated with other hidden layer nodes. The weights between the selected hidden layer nodes and output layer are then updated through LSR. When the redundant nodes from the hidden layer are removed, the ideal MLFN structure can be obtained according to the test error results. In actual applications, the naphtha dry point must be controlled accurately because it strongly affects the production yield and the stability of subsequent operational processes. The mPMIc-LSR MLFN with a simple network size performs better than other improved MLFN variants and existing efficient models.
机译:在本文中,开发了一种优化的多层前馈网络(MLFN),以构建用于控制石脑油干点的软传感器。为了克服通过反向传播学习算法训练的MLFN的结构和权重的两个主要缺陷,提出了结合最小二乘回归(LSR)的最小冗余最大相关部分互信息聚类(mPMIc)以优化MLFN。 mPMIc可以使用隐藏层和输出层中的信息来确定隐藏层节点的位置,并删除冗余的隐藏层节点。这些选定的节点与输出数据高度相关,但与其他隐藏层节点的相关性最小。然后,通过LSR更新所选隐藏层节点和输出层之间的权重。当去除隐藏层的冗余节点时,根据测试误差结果可以获得理想的MLFN结构。在实际应用中,必须精确控制石脑油的干点,因为它会严重影响产量和后续操作过程的稳定性。具有简单网络规模的mPMIc-LSR MLFN的性能优于其他改进的MLFN变体和现有的高效模型。

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