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Applying improved artificial neural network models to evaluate drilling rate index

机译:应用改进的人工神经网络模型评估钻速指数

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摘要

The drilling rate index (DRI) is the most important input parameter of a commonly used performance prediction model for drilling and rock excavation. In this paper, the hybrid artificial neural network (ANN) with back propagation (BP) algorithm, simulated annealing algorithm (SAA), firefly algorithm (FA), invasive weed optimization algorithm (IWO) and shuffled frog leaping algorithm (SFLA) were used to build a prediction model for the indirect estimation of DRI. The estimation abilities offered using five ANN models (ANN-BP, ANN-SAA, ANN FA, ANN-IWO and ANN-SFLA) were presented by using available data given in open source literature. In these models, strengths (Uniaxial Compressive Strength (UCS) and Brazilian Tensile Strength (BTS)) and indexes properties (Shore Scleroscope Hardness (SSH), diametral point load strength index (Is((50)) ->) and axial point load strength index (Is(sol)) were utilized as the input parameters, while the DRI was the output parameter. Various statistical performance indexes were utilized to compare the performance of those estimation models. The comparative results revealed that hybrid of SAA and ANN yield robust model which outperform other models in term of higher squared correlation coefficient (R-2), variance account for (VAF) and lower mean square error (MSE), root mean squared error (RMSE) and mean absolute percentage error (MAPE).
机译:钻速指数(DRI)是常用的钻探和岩石开挖性能预测模型中最重要的输入参数。本文采用了具有反向传播(BP)算法,模拟退火算法(SAA),萤火虫算法(FA),侵入性杂草优化算法(IWO)和混洗蛙跳算法(SFLA)的混合人工神经网络(ANN)建立间接估计DRI的预测模型。通过使用开源文献中提供的可用数据,介绍了使用五个ANN模型(ANN-BP,ANN-SAA,ANN FA,ANN-IWO和ANN-SFLA)提供的估计能力。在这些模型中,强度(单轴抗压强度(UCS)和巴西抗拉强度(BTS))和指标属性(邵尔硬度镜硬度(SSH),直径点负荷强度指标(Is((50))->)和轴点负荷强度指标(Is(sol))作为输入参数,DRI作为输出参数,利用各种统计性能指标对这些估计模型的性能进行比较,比较结果表明,SAA和ANN的混合具有鲁棒性在较高的平方相关系数(R-2),方差占比(VAF)和较低的均方误差(MSE),均方根误差(RMSE)和平均绝对百分比误差(MAPE)方面,该模型优于其他模型。

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