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Sensor fault diagnosis based on on-line random forests

机译:基于在线随机森林的传感器故障诊断

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In order to reduce the memory requirement, and obtain real-time status of equipment, the paper proposed to use the the on-line random forests (ORFs) algorithm to identify sensor fault. The sample set is derived from Tennessee Eastman (TE) process. The models are updated by a group of sensor data, which are collected in each interval. As models are real-time and dynamic, the equipment could be tested at any time. Moreover, the samples obtained at previous intervals are not need to store. The results of experiments show that the accuracies of ORFs and Random Forests (RFs) are similar in sensor fault diagnosis process. And in some fast changing process, ORFs distinguishes fault types with higher accuracy, better adaptable and faster than RFs.
机译:为了减少内存需求并获得设备的实时状态,本文提出使用在线随机森林(ORF)算法来识别传感器故障。样本集来自田纳西伊士曼(TE)流程。通过一组传感器数据更新模型,这些传感器数据在每个间隔中收集。由于模型是实时和动态的,因此可以随时对设备进行测试。而且,不需要存储在先前间隔获得的样本。实验结果表明,ORF和随机森林(RF)的精度在传感器故障诊断过程中相似。而且在某些快速变化的过程中,ORF可以比RF更高的准确性,更好的适应性和更快的速度来识别故障类型。

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