论文标题

使用集合学习的粒子加速器功率电子中的故障预后

Fault Prognosis in Particle Accelerator Power Electronics Using Ensemble Learning

论文作者

Radaideh, Majdi I., Pappas, Chris, Wezensky, Mark, Ramuhalli, Pradeep, Cousineau, Sarah

论文摘要

早期的故障检测和故障预后对于确保复杂工程系统(例如Spallation Neutron Source(SNS)及其功率电子设备)(高压转换器调制器)等复杂工程系统的有效和安全操作至关重要。遵循模仿SNS操作条件的高级实验设施,作者成功地进行了21次故障预后实验,在系统中引入故障前体的程度足以导致波形信号中的降解,但不足以达到真正的故障。提出了基于整体树,卷积神经网络,支持向量机和层次投票集合的九种不同的机器学习技术,以检测故障前体。尽管在训练和测试阶段,所有9个模型均表现出完美且相同的性能,但是一旦他们暴露于21个实验中的现实世界数据后,大多数模型的性能都在预后阶段下降。层次投票集合具有多种模型的多层层次,在早期检测成功率(20/21测试)的早期检测中保持了杰出的性能,其次是Adaboost和Adaboost和非常随机的树木,其成功率分别为52%和48%。支持向量机模型最差,成功率仅为24%(5/21个测试)。该研究得出的结论是,在SNS或粒子加速器电源系统中成功实施机器学习将需要在控制器和数据采集系统中进行重大升级,以促进机器学习模型的流媒体和处理大数据。此外,这项研究表明,最佳性能模型是多种多样的,并且基于集合概念,以降低单个模型的偏见和高参数灵敏度。

Early fault detection and fault prognosis are crucial to ensure efficient and safe operations of complex engineering systems such as the Spallation Neutron Source (SNS) and its power electronics (high voltage converter modulators). Following an advanced experimental facility setup that mimics SNS operating conditions, the authors successfully conducted 21 fault prognosis experiments, where fault precursors are introduced in the system to a degree enough to cause degradation in the waveform signals, but not enough to reach a real fault. Nine different machine learning techniques based on ensemble trees, convolutional neural networks, support vector machines, and hierarchical voting ensembles are proposed to detect the fault precursors. Although all 9 models have shown a perfect and identical performance during the training and testing phase, the performance of most models has decreased in the prognosis phase once they got exposed to real-world data from the 21 experiments. The hierarchical voting ensemble, which features multiple layers of diverse models, maintains a distinguished performance in early detection of the fault precursors with 95% success rate (20/21 tests), followed by adaboost and extremely randomized trees with 52% and 48% success rates, respectively. The support vector machine models were the worst with only 24% success rate (5/21 tests). The study concluded that a successful implementation of machine learning in the SNS or particle accelerator power systems would require a major upgrade in the controller and the data acquisition system to facilitate streaming and handling big data for the machine learning models. In addition, this study shows that the best performing models were diverse and based on the ensemble concept to reduce the bias and hyperparameter sensitivity of individual models.

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