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首页> 外文期刊>Applied Soft Computing >A new soft computing model for estimating and controlling blast-produced ground vibration based on Hierarchical K-means clustering and Cubist algorithms
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A new soft computing model for estimating and controlling blast-produced ground vibration based on Hierarchical K-means clustering and Cubist algorithms

机译:一种新的软计算模型,用于基于分层K-Means聚类和基区算法的估计和控制爆破产生地面振动

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摘要

Blasting is an essential task in open-pit mines for rock fragmentation. However, its dangerous side effects need to be accurately estimated and controlled, especially ground vibration as measured in the form of peak particle velocity (PPV). The accuracy for estimating blast-induced PPV can be improved by hybrid artificial intelligence approach. In this study, a new hybrid model was developed based on Hierarchical K-means clustering (HKM) and Cubist algorithm (CA), code name HKM-CA model. The HKM clustering hybrid technique was used to separate data according to their characteristics. Subsequently, the Cubist model was trained and developed on the clusters generated by HKM. Empirical technique, the benchmark algorithms [random forest (RF), support vector machine (SVM), classification and regression tree (CART)], and single CA model were also established for benchmarking the HKM-CA model. Root-mean-square error (RMSE), determination coefficient (R-2), and mean absolute error (MAE) were the key indicators used for evaluating the model performance. The results revealed that the proposed HKM-CA model was a powerful tool for improving the accuracy of the CA model. Specifically, the HKM-CA model yielded a superior result with an RMSE of 0.475, R-2 of 0.995, and MAE of 0.373 in comparison to other models. The proposed HKM-CA model has the potential to be used for predicting blast-induced PPV on-site to control undesirable effects on the surrounding environment. (C) 2019 Elsevier B.V. All rights reserved.
机译:爆破是岩石碎片的露天矿区的必备任务。然而,需要精确地估计和控制其危险的副作用,特别是以峰粒速(PPV)的形式测量的地面振动。混合人工智能方法可以提高估计爆炸诱导的PPV的准确性。在本研究中,基于分层K-Means聚类(HKM)和CAB校位算法(CA),代码名称HKM-CA Model开发了一种新的混合模型。 HKM聚类混合技术用于根据其特征分离数据。随后,在HKM生成的群集中培训并开发了立体模型。还建立了经验技术,基准算法[随机林(RF),支持向量机(SVM),分类和回归树(推车)和单个CA模型,用于基准测试HKM-CA模型。根均方误差(RMSE),确定系数(R-2)和平均绝对误差(MAE)是用于评估模型性能的关键指标。结果表明,建议的HKM-CA型号是提高CA型号的准确性的强大工具。具体地,与其他模型相比,HKM-CA模型产生优异的0.475,R-2,0.995的RMSE为0.995,MAE为0.373。所提出的HKM-CA模型具有可用于预测爆炸诱导的PPV现场,以控制对周围环境的不希望的影响。 (c)2019年Elsevier B.V.保留所有权利。

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