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Detection for Anomaly Data in Microseismic Survey

机译:微地震勘探中异常数据的检测

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摘要

With the development and application of modern science and technology, many new technical measurement methods have been put forward successively which are of high resolution and high collection rate about microseismic monitoring. We urgently need an effective detection method of abnormal data (mine earthquake) to collect lots of data to make real-time detection. In the past, we usually depend on experienced professional staff to solve this kind of problems. They make judgments by comparing numerical size or analysis change trend of factors. The key problem in this paper is how to find abnormal data automatically by linear autoregressive analysis (include gross error) and point out the position of abnormal data. Through this way, we can give prediction model and prediction mechanism of data stream in coal mine microseism. On the basic of this prediction model, we put out a detecting method of abnormal data, and we can detect whether data at this moment is abnormal by calculating the ratio of prediction error and average forecasting error at this moment. The results of the experiments show correctness and efficiency, and it indicates this model can make real-time detection of mine earthquake abnormal event.
机译:随着现代科学技术的发展和应用,相继提出了许多新的技术测量方法,这些方法对微震监测具有较高的分辨率和较高的采集率。我们迫切需要一种有效的异常数据检测方法(矿井地震),以收集大量数据进行实时检测。过去,我们通常依靠经验丰富的专业人员来解决此类问题。他们通过比较数值大小或分析因素的变化趋势做出判断。本文的关键问题是如何通过线性自回归分析(包括总误差)自动查找异常数据并指出异常数据的位置。通过这种方式,我们可以给出煤矿微震数据流的预测模型和预测机制。在此预测模型的基础上,提出了一种异常数据的检测方法,可以通过计算此时的预测误差与平均预测误差的比值来判断当前数据是否异常。实验结果表明了该方法的正确性和有效性,表明该模型可以对矿山地震异常事件进行实时检测。

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