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Application of a Modular Feedforward Neural Network for Grade Estimation

机译:模块化前馈神经网络在等级估计中的应用

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This article presents new neural network (NN) architecture to improve its ability for grade estimation. The main aim of this study is to use a specific NN which has a simpler architecture and consequently achieve a better solution. Most of the commonly used NNs have a fully established connection among their nodes, which necessitates a multivariable objective function to be optimized. Therefore, the more the number of variables in the objective function, the more the complexity of the NN. This leads the NN to trap in local minima. In this study, a new NN, in which the connections based on the final performance are eliminated, is used. Toward this aim, several network architectures were tested, and finally a network which yielded the minimum error was selected. This selected network has low complexity and connection among nodes which help the learning algorithm to converge rapidly and more accurately. Furthermore, this network has this ability to deal with the small number of data sets. For testing and evaluating this new method, a case study of an iron deposit was performed. Also, to compare the obtained results, some common techniques for grade estimation, e.g., geostatistics and multilayer perceptron (MLP) were used. According to the obtained results, this new NN architecture shows a better performance for grade estimation.
机译:本文介绍了新的神经网络(NN)架构,以提高其等级估计的能力。这项研究的主要目的是使用具有更简单架构的特定NN,从而获得更好的解决方案。大多数常用的NN在它们的节点之间具有完全建立的连接,这需要优化多变量目标函数。因此,目标函数中变量的数量越多,NN的复杂性就越大。这导致NN陷入局部最小值。在这项研究中,使用了一种新的NN,其中消除了基于最终性能的连接。为了达到这个目的,测试了几种网络架构,最后选择了产生最小错误的网络。该选定的网络具有较低的复杂性,并且节点之间的连接性较低,这有助于学习算法快速,准确地收敛。此外,该网络具有处理少量数据集的能力。为了测试和评估这种新方法,对铁矿床进行了案例研究。另外,为了比较获得的结果,使用了一些常用的坡度估算技术,例如地统计学和多层感知器(MLP)。根据获得的结果,这种新的NN架构显示出更好的等级估计性能。

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