Faculty of Computer Science, Electronics and Telecommunications, AGH University of Science and Technology, al. Adama Mickiewicza 30, 30-059 Cracow, Poland.
Academic Computer Centre CYFRONET AGH, ul. Nawojki 11, 30-072 Cracow, Poland.
Sensors (Basel). 2018 Nov 14;18(11):3933. doi: 10.3390/s18113933.
Sensing the voltage developed over a superconducting object is very important in order to make superconducting installation safe. An increase in the resistive part of this voltage (quench) can lead to significant deterioration or even to the destruction of the superconducting device. Therefore, detection of anomalies in time series of this voltage is mandatory for reliable operation of superconducting machines. The largest superconducting installation in the world is the main subsystem of the Large Hadron Collider (LHC) accelerator. Therefore a protection system was built around superconducting magnets. Currently, the solutions used in protection equipment at the LHC are based on a set of hand-crafted custom rules. They were proved to work effectively in a range of applications such as quench detection. However, these approaches lack scalability and require laborious manual adjustment of working parameters. The presented work explores the possibility of using the embedded Recurrent Neural Network as a part of a protection device. Such an approach can scale with the number of devices and signals in the system, and potentially can be automatically configured to given superconducting magnet working conditions and available data. In the course of the experiments, it was shown that the model using Gated Recurrent Units (GRU) comprising of two layers with 64 and 32 cells achieves 0.93 accuracy for anomaly/non-anomaly classification, when employing custom data compression scheme. Furthermore, the compression of proposed module was tested, and showed that the memory footprint can be reduced four times with almost no performance loss, making it suitable for hardware implementation.
为了确保超导装置的安全,检测超导物体上产生的电压非常重要。该电压的电阻部分(失超)增加可能导致超导器件的严重劣化甚至破坏。因此,及时检测该电压的时间序列中的异常对于超导机器的可靠运行是强制性的。世界上最大的超导装置是大型强子对撞机(LHC)加速器的主要子系统。因此,围绕超导磁体构建了一个保护系统。目前,LHC 保护设备中使用的解决方案基于一组手工定制的规则。它们已被证明在失超检测等一系列应用中有效。然而,这些方法缺乏可扩展性,并且需要费力地手动调整工作参数。本研究探讨了将嵌入式递归神经网络作为保护设备一部分的可能性。这种方法可以根据系统中的设备和信号数量进行扩展,并且可以根据给定的超导磁体工作条件和可用数据自动配置。在实验过程中,展示了使用包含两个 64 个和 32 个单元的门控循环单元(GRU)的模型,在采用自定义数据压缩方案时,异常/非异常分类的准确率达到 0.93。此外,还测试了所提出模块的压缩,表明内存占用可以减少四倍,而几乎没有性能损失,使其适合硬件实现。