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A Novel Hybrid Model for Predicting Blast-Induced Ground Vibration Based on k-Nearest Neighbors and Particle Swarm Optimization

机译:基于k最近邻和粒子群算法的爆破振动预测混合模型

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摘要

In this scientific report, a new technique of artificial intelligence which is based on k-nearest neighbors (KNN) and particle swarm optimization (PSO), named as PSO-KNN, was developed and proposed for estimating blast-induced ground vibration (PPV). In the proposed PSO-KNN, the hyper-parameters of the KNN were searched and optimized by the PSO. Accordingly, three forms of kernel function of the KNN were used, Quartic (Q), Tri weight (T), and Cosine (C), which result in three models and abbreviated as PSO-KNN-Q, PSO-KNN-T, and PSO-KNN-C models. The valid of the proposed models was surveyed through comparing with those of benchmarks, random forest (RF), support vector regression (SVR), and an empirical technique. A total of 152 blasting events were recorded and analyzed for this aim. Herein, maximum explosive per blast delay (W) and the distance of PPV measurement (R), were used as the two input parameters for predicting PPV. RMSE, R2, and MAE were utilized as performance indicators for evaluating the models’ accuracy. The outcomes instruct that the PSO algorithm significantly improved the efficiency of the PSO-KNN-Q, PSO-KNN-T, and PSO-KNN-C models. Compared to the three benchmarks models (i.e., RF, SVR, and empirical), the PSO-KNN-T model (RMSE = 0.797, R2 = 0.977, and MAE = 0.385) performed better; therefore, it can be introduced as a powerful tool, which can be used in practical blasting for reducing unwanted elements induced by PPV in surface mines.
机译:在这份科学报告中,开发了一种基于k最近邻(KNN)和粒子群优化(PSO)的人工智能新技术,称为PSO-KNN,用于估算爆炸引起的地面振动(PPV) 。在提出的PSO-KNN中,通过PSO搜索并优化了KNN的超参数。因此,使用了三种形式的KNN核函数:四次(Q),三重(T)和余弦(C),这产生了三个模型,并缩写为PSO-KNN-Q,PSO-KNN-T,和PSO-KNN-C模型。通过与基准,随机森林(RF),支持向量回归(SVR)和经验技术进行比较,对所提出模型的有效性进行了调查。为此,总共记录并分析了152次爆炸事件。在此,最大爆炸爆炸延迟时间(W)和PPV测量距离(R)被用作预测PPV的两个输入参数。 RMSE,R 2 和MAE被用作评估模型准确性的性能指标。结果表明,PSO算法大大提高了PSO-KNN-Q,PSO-KNN-T和PSO-KNN-C模型的效率。与三个基准模型(即RF,SVR和经验模型)相比,PSO-KNN-T模型(RMSE = 0.797,R 2 = 0.977和MAE = 0.385)表现更好;因此,它可以作为一种功能强大的工具引入,可用于实际爆破中,以减少露天矿中PPV引起的有害元素。

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