首页> 外文期刊>Applied Geochemistry: Journal of the International Association of Geochemistry and Cosmochemistry >Neuro-fuzzy modeling based genetic algorithms for identification of geochemical anomalies in mining geochemistry
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Neuro-fuzzy modeling based genetic algorithms for identification of geochemical anomalies in mining geochemistry

机译:基于神经模糊建模的遗传算法在采矿地球化学中识别地球化学异常

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A genetic algorithm (GA)-based neuro-fuzzy approach is used for identification of geochemical anomalies by implementing a Takagi, Sugeno and Kang (TSK) type fuzzy inference system in a 5-layered feed-forward adaptive artificial neural network. This paper investigates the effectiveness of GA-based neuro-fuzzy for separating zone dispersed mineralization (ZDM) from blind mineralization, and its application for identification of geochemical anomalies in the arid landscape of the Lut metallogenic province in eastern Iran. Other classification algorithms such as metallometry, zonality, criteria, and back-propagation artificial neural network classifiers are also used for comparison. The genetic operators are carefully designed to optimize the artificial neural network, avoiding premature convergence and permutation problems. The results show that the GA-based hybrid neuro-fuzzy model can provide accurate results in comparison with those results obtained by other techniques. Neuro-fuzzy and GA-based neuro-fuzzy techniques appear to be well-suited for routine exploration geochemistry applications. In conjunction with statistics and conventional mathematical methods, hybrid approaches can be developed and may prove a step forward in the practice of applied geochemistry.
机译:通过在5层前馈自适应人工神经网络中实现Takagi,Sugeno和Kang(TSK)型模糊推理系统,将基于遗传算法(GA)的神经模糊方法用于地球化学异常的识别。本文研究了基于GA的神经模糊技术从盲矿区中分离出区域分散矿区(ZDM)的有效性,并将其用于识别伊朗东部卢特成矿省干旱地区的地球化学异常。其他分类算法(如金相,区域性,标准和反向传播人工神经网络分类器)也用于比较。精心设计了遗传算子以优化人工神经网络,避免了过早的收敛和排列问题。结果表明,与其他技术相比,基于遗传算法的混合神经模糊模型可以提供准确的结果。神经模糊和基于GA的神经模糊技术似乎非常适合常规勘探地球化学应用。结合统计和常规数学方法,可以开发混合方法,并且可以证明在应用地球化学实践中向前迈出了一步。

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