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Prediction of the performance of impact hammer by adaptive neuro-fuzzy inference system modelling

机译:自适应神经模糊推理系统建模对冲击锤性能的预测

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摘要

Impact type excavators are widely used for excavations, performed in weak-laminated-foliated-aniso-tropic rocks. Therefore the prediction of the performance of impact hammer is very important in many mining and civil engineering projects. This paper describes the construction of adaptive neuro-fuzzy inference system model for predicting the performance of impact hammer type excavator by considering rock and excavating machine properties such as block punch strength index, geological strength index system and impact hammer power. Extensive field and laboratory studies were conducted in the tunnel construction route of the second stage of Izmir Metro Project, which excavated in laminated-foliated flysch rocks. The results of the constructed adaptive neuro-fuzzy inference system and traditional multiple regression models were compared. Although the prediction performance of traditional multiple regression model is high, it is seen that adaptive neuro-fuzzy inference model exhibits better prediction performance according to statistical performance indicators. By means of the developed model, the performance of impact type excavators can be predicted in terms of net excavation based on the selected rock and machine properties.
机译:冲击式挖掘机广泛用于弱层状叶面各向异性岩石中的开挖。因此,在许多采矿和土木工程项目中,冲击锤性能的预测非常重要。本文介绍了一种自适应神经-模糊推理系统模型的构建,该模型通过考虑岩石和挖掘机的性能(例如,块冲头强度指标,地质强度指标系统和冲击锤功率)来预测冲击锤式挖掘机的性能。在伊兹密尔地铁二期工程的隧道施工路线中进行了广泛的现场和实验室研究,该工程是在层状叶状的碎石中开挖的。比较了构建的自适应神经模糊推理系统和传统多元回归模型的结果。尽管传统的多元回归模型的预测性能很高,但是可以看到,根据统计性能指标,自适应神经模糊推理模型表现出更好的预测性能。通过开发的模型,可以根据所选的岩石和机器特性,根据净开挖来预测冲击式挖掘机的性能。

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