An enhanced fireworks algorithm and its application in fault detection of the displacement sensor

Q4 Engineering
Tianlu Hao , Zhuang Ma , Yaping Wang
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引用次数: 0

Abstract

Regarding the fault detection problem of the displacement sensor, an enhanced fireworks algorithm with information crossover and conversion factor (EFWA-IC) is proposed in this paper. In EFWA-IC, an information crossover strategy is proposed to maintain population diversity. This strategy is based on the predatory behavior of carnivores in nature. In addition, a conversion factor is set to control whether the explosion operator is executed or not to provide a more reasonable search. To fully evaluate the performance of EFWA-IC, a range of tests are carried out based on the CEC2017 and 23 classical test functions. The results show that the performance of EFWA-IC is better than other state-of-the-art optimization algorithms in terms of solution accuracy, convergence speed, and stability. Finally, EFWA-IC is utilized to optimize the particle filter (PF) to establish a fault detection model of displacement sensor in the continuous casting mold. The simulation experiment result of field data manifests that EFWA–IC–PF can accurately detect faults in the displacement sensor. For bias faults, the RMSE of the EFWA–IC–PF model is 0.14468, and the false alarm rate (FAR) and missed detection rate (MDR) are 1 % and 0.5 %, respectively. For stuck faults, the RMSE is 1.00148, and the FAR and MDR are 0.88 % and 1 %, respectively.

增强型烟花算法及其在位移传感器故障检测中的应用
针对位移传感器的故障检测问题,本文提出了一种带有信息交叉和转换因子的增强型烟花算法(EFWA-IC)。在 EFWA-IC 中,提出了一种信息交叉策略,以保持种群多样性。该策略基于自然界中食肉动物的捕食行为。此外,还设置了一个转换系数来控制是否执行爆炸算子,以提供更合理的搜索。为了全面评估 EFWA-IC 的性能,基于 CEC2017 和 23 个经典测试函数进行了一系列测试。结果表明,EFWA-IC 在求解精度、收敛速度和稳定性方面都优于其他最先进的优化算法。最后,利用 EFWA-IC 对粒子滤波器(PF)进行优化,建立了连铸模具位移传感器故障检测模型。现场数据的仿真实验结果表明,EFWA-IC-PF 能够准确检测出位移传感器的故障。对于偏差故障,EFWA-IC-PF 模型的均方根误差为 0.14468,误报率(FAR)和漏检率(MDR)分别为 1 % 和 0.5 %。对于卡滞故障,均方根误差为 1.00148,误报率和漏检率分别为 0.88 % 和 1 %。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Measurement Sensors
Measurement Sensors Engineering-Industrial and Manufacturing Engineering
CiteScore
3.10
自引率
0.00%
发文量
184
审稿时长
56 days
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