Near Real-Time Optimal Prediction of Adverse Events in Aviation Data | |
Martin, Rodney Alexander ; Das, Santanu | |
PID : NTRS Document ID: 20100027525 RP-ID : ARC-E-DAA-TN1454 |
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学科分类:统计和概率 | |
美国|英语 | |
来源: NASA Technical Reports Server | |
【 摘 要 】
The prediction of anomalies or adverse events is a challenging task, and there are a variety of methods which can be used to address the problem. In this paper, we demonstrate how to recast the anomaly prediction problem into a form whose solution is accessible as a level-crossing prediction problem. The level-crossing prediction problem has an elegant, optimal, yet untested solution under certain technical constraints, and only when the appropriate modeling assumptions are made. As such, we will thoroughly investigate the resilience of these modeling assumptions, and show how they affect final performance. Finally, the predictive capability of this method will be assessed by quantitative means, using both validation and test data containing anomalies or adverse events from real aviation data sets that have previously been identified as operationally significant by domain experts. It will be shown that the formulation proposed yields a lower false alarm rate on average than competing methods based on similarly advanced concepts, and a higher correct detection rate than a standard method based upon exceedances that is commonly used for prediction.
【 预 览 】
Files | Size | Format | View |
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RO201712050002341LZ | 725KB | download |