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Long-term prediction model of rockburst in underground openings using heuristic algorithms and support vector machines

机译:基于启发式算法和支持向量机的地下洞室岩爆长期预测模型

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Rockburst possibility prediction is an important activity in many underground openings design and construction as well as mining production. Due to the complex features of rockburst hazard assessment systems, such as multivariables, strong coupling and strong interference, this study employs support vector machines (SVMs) for the determination of classification of long-term rockburst for underground openings. SVMs is firmly based on the theory of statistical learning algorithms, uses classification technique by introducing radial basis function (RBF) kernel function. The inputs of models are buried depth H, rocks' maximum tangential stress σ_θ, rocks' uniaxial compressive strength σ_c, rocks' uniaxial tensile strength σ_t, stress coefficient σ_θ/σ_c, rock brittleness coefficient σ_c/σ_t and elastic energy index W_(et). In order to improve predictive accuracy and generalization ability, the heuristic algorithms of genetic algorithm (GA) and particle swarm optimization algorithm (PSO) are adopted to automatically determine the optimal hyper-parameters for SVMs. The performance of hybrid models (GA + SVMs = GA-SVMs) and (PSO + SVMs = PSO-SVMs) have been compared with the grid search method of support vector machines (GSM-SVMs) model and the experimental values. It also gives variance of predicted data. A rockburst dataset, which consists of 132 samples, was employed to evaluate the current method for predicting rockburst grade, and the good results of overall success rate were obtained. The results indicated that the heuristic algorithms of GA and PSO can speed up SVMs parameter optimization search, the proposed method is robust model and might hold a high potential to become a useful tool in rockburst prediction research.
机译:岩爆可能性预测在许多地下洞口的设计,建造以及采矿生产中都是重要的活动。由于岩爆危险性评估系统的复杂性,例如多变量,强耦合和强干扰,本研究使用支持向量机(SVM)来确定地下洞口的长期岩爆分类。 SVM牢固地基于统计学习算法的理论,通过引入径向基函数(RBF)核函数使用分类技术。模型的输入是埋深H,岩石的最大切向应力σ_θ,岩石的单轴抗压强度σ_c,岩石的单轴抗拉强度σ_t,应力系数σ_θ/σ_c,岩石脆性系数σ_c/σ_t和弹性能指数W_(et) 。为了提高预测精度和泛化能力,采用遗传算法(GA)和粒子群优化算法(PSO)的启发式算法自动确定支持向量机的最优超参数。将混合模型(GA + SVM = GA-SVM)和(PSO + SVM = PSO-SVM)的性能与支持向量机(GSM-SVM)模型的网格搜索方法和实验值进行了比较。它还提供了预测数据的方差。采用由132个样本组成的岩爆数据集,对目前的岩爆等级预测方法进行了评估,取得了良好的总体成功率。结果表明,遗传算法和粒子群算法的启发式算法可以加快支持向量机的参数优化搜索,所提出的方法是鲁棒的模型,具有很高的潜力,有可能成为岩爆预测研究中的有用工具。

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