Rotary machine breakdown detection systems are outdated and dependent upon routine testing to discover faults. This is costly and often reactive in nature. Real-time monitoring offers a solution for detecting faults without the need for manual observation. However, manual interpretation for threshold anomaly detection is often subjective and varies between industrial experts. This approach is ridged and prone to a large number of false positives. To address this issue, we propose a Machine Learning (ML) approach to model normal working operation and detect anomalies. The approach extracts key features from signals representing known normal operation to model machine behaviour and automatically identify anomalies. The ML learns generalisations and generates thresholds based on fault severity. This provides engineers with a traffic light system were green is normal behaviour, amber is worrying and red signifies a machine fault. This scale allows engineers to undertake early intervention measures at the appropriate time. The approach is evaluated on windowed real machine sensor data to observe normal and abnormal behaviour. The results demonstrate that it is possible to detect anomalies within the amber range and raise alarms before machine failure.
翻译:扶轮机故障检测系统已经过时,需要例行测试才能发现故障。这是昂贵的,而且往往具有反应性。实时监测为发现故障提供了一种解决办法,无需人工观察。然而,对临界异常检测的人工解释往往是主观的,在工业专家之间有差异。这种方法被淘汰,容易出现大量虚假的阳性。为解决这一问题,我们建议采用机械学习(ML)方法来模拟正常的工作操作和检测异常。该方法从代表已知正常操作的信号中提取关键特征,以模拟机器行为和自动识别异常。ML学习一般特征,并生成基于过错严重程度的阈值。这为工程师提供了交通灯光系统是正常的,Amber令人担心,并重新表示机器故障。这一尺度允许工程师在适当的时候采取早期干预措施。我们用窗口真实机器传感器数据来评估该方法,以观察正常和异常行为。结果表明,在机器故障发生之前,可以检测出黄距离范围内的异常现象,并发出警报。