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A New Multiobjective RBFNNs Designer and Feature Selector for a Mineral Reduction Application

机译:用于矿物还原应用的新型多目标RBFNNS设计者和特征选择器

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Radial Basis Function Neural Networks (RBFNNs) are well known because, among other applications, they present a good performance when approximating functions although their design still remains as a difficult task. The function approximation problem arises in the construction of a control system to optimize the process of the mineral reduction. In order to regulate the temperature of the ovens and other parameters, a module to predict the final concentration of mineral that will be obtained from the source materials is necessary. In a previous work, this problem was successfully solved by designing an RBFNN using a MultiObjective Genetic Algorithm (MOGA). However, the more samples are obtained from the system, the more difficult it becomes to design the RBFNN due to the high dimensionality of the problem. Therefore, a new algorithm that addresses the dimensionality reduction has been developed, allowing to obtain more accurate RBFNNs, deciding which input parameters must be considered. Another important element incorporated in the algorithm is the concept of fuzzy dominance, the algorithm, when performing the sorting of the population dividing it in subsets of non-dominated individuals, uses a fuzzy criteria to decide if an individual dominates another. As the experimental results will show, the new version of the algorithm generates RBFNNs with smaller approximation errors and less complexity due to the reduction in the number of input variables and neurons.
机译:径向基函数神经网络(RBFNNS)是众所周知的,因为除其他应用中,它们在近似函数时呈现出良好的性能,尽管它们的设计仍然保持困难的任务。在控制系统的结构中出现了功能近似问题,以优化矿物还原过程。为了调节烤箱和其他参数的温度,需要一种预测将从源材料获得的矿物的最终浓度的模块是必要的。在以前的工作中,通过使用多目标遗传算法(MOGA)设计RBFNN来成功解决了这个问题。然而,从系统获得的样品越多,由于问题的高维度,设计RBFNN越困难。因此,已经开发出解决维度减少的新算法,允许获得更准确的RBFNN,决定必须考虑哪个输入参数。在算法中包含的另一个重要元素是模糊优势的概念,算法,当在非主导的人群中划分的人口分类时,使用模糊标准来确定个人是否主导另一个。随着实验结果将显示,新版本的算法产生具有较小近似误差的RBFNN,并且由于输入变量和神经元数减少而较小的复杂性。

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