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Rockburst prediction in kimberlite with unsupervised learning method and support vector classifier

机译:金伯利岩中无监督学习方法和支持向量分类器的岩爆预测

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摘要

One of the most serious types of mining disasters in many countries, rockburst leads to injuries, deaths, and damages to facilities, which explains the need to study its prediction. However, due to highly non-linear relationship between the occurrence of rockburst and burst impact factors, traditional mechanism-based prediction methods cannot generate precise results. This paper employed a support vector classifier (SVC) to predict rockburst in kimberlite pipes at a diamond mine. We collected 246 groups of data based on real rockburst cases from all over the world as a supportive database. A novel dimensionality reduction method, t-SNE, helped to reduce relevance of original data attributes, and then, an unsupervised learning method (clustering) was adopted to relabel original data to determine relative intensity of these rockburst cases. After the processed prediction data was fed into the trained SVC model, the prediction results were obtained, which matched real rockburst cases that recently occurred at this mine. This data-driven prediction method can be easily conducted and does not rely on the discussion of rockburst mechanism, which has wide potential applications in rockburst prediction in engineering.
机译:岩爆是许多国家/地区中最严重的采矿灾害之一,可导致人员受伤,死亡和设施损坏,这解释了研究其预测的必要性。但是,由于岩爆的发生与爆破影响因素之间的高度非线性关系,传统的基于机理的预测方法无法生成精确的结果。本文使用支持向量分类器(SVC)来预测钻石矿的金伯利岩管道中的岩爆。我们根据世界各地的真实岩爆案例收集了246组数据,作为支持性数据库。一种新颖的降维方法t-SNE有助于降低原始数据属性的相关性,然后,采用无监督学习方法(聚类)来重新标记原始数据以确定这些岩爆案例的相对强度。将处理后的预测数据输入经过训练的SVC模型后,获得了预测结果,该预测结果与该矿场最近发生的实际岩爆案例相符。这种以数据为依据的预测方法易于实施,无需依赖于岩爆机理的讨论,该方法在工程岩爆预测中具有广阔的应用前景。

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