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Investigating the effects of varying cluster numbers on anomalies detected in mining machines

机译:调查变化的簇数对采矿机中检测到的异常的影响

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Anomaly detection is very important for the mining industry. If anomalies in mining equipment can be correctly detected to predict machine breakdown, mining companies will be able to reduce the cost of maintaining their machines. However, anomaly detection in this context is quite difficult considering the large volume of sensor data involved and unlabelled nature of the data. Clustering techniques have therefore been applied to analyse this problem, by dividing the data into normal and abnormal clusters. In this paper, we investigate the influence of using different numbers of clusters in clustering models, which include k-means, fuzzy c-means and the self-organising map, to obtain useful data patterns and classify the data into normal and abnormal types. Our aim here is to reduce the trigger of false alarm in the anomaly detection process. The data used in this study is based on real-world grease cycle data from a mining company in Australia. Our experimental results show that with more clusters, the number of anomalies detected tends to decrease for the clustering models considered. This means false alarms can be reduced by increasing the number of clusters used.
机译:异常检测对于采矿业非常重要。如果可以正确检测到采矿设备中的异常情况以预测机器故障,那么采矿公司将能够降低维护机器的成本。但是,考虑到涉及的大量传感器数据和数据的未标记性质,在这种情况下异常检测非常困难。因此,通过将数据分为正常和异常群集,已将群集技术应用于分析此问题。在本文中,我们研究了在聚类模型中使用不同数量的聚类(包括k均值,模糊c均值和自组织图)的影响,以获得有用的数据模式并将数据分为正常和异常类型。我们的目的是减少异常检测过程中错误警报的触发。本研究中使用的数据基于澳大利亚一家采矿公司的实际润滑脂循环数据。我们的实验结果表明,对于更多的聚类,对于所考虑的聚类模型,检测到的异常数量趋于减少。这意味着可以通过增加使用的群集数量来减少错误警报。

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