Chen Jie, Li Chen, Fan Jingwen, Gao Ke, Sun Chang, Zhang Gaofei
Northwestern Polytechnical University, Xi'an, Shaanxi 710072, People's Republic of China.
Rev Sci Instrum. 2024 Jul 1;95(7). doi: 10.1063/5.0208046.
Given the lack of sufficient historical data for aircraft landing gear retractor systems, a model-based fault diagnosis approach is needed to overcome this data deficiency. Meanwhile, inherent uncertainties are inevitable in engineering practice, and it is a great challenge to construct a model that accurately reflects the complexity of the actual system under uncertain conditions. Due to the urgent need for reliable model-based diagnostic methods and the need to cope with inherent uncertainties, this paper proposes an improved fault diagnostic method aimed at increasing the diagnostic efficiency of the landing gear retractor system, a critical component in aircraft take-off and landing operations. Due to a lack of historical data, the model-based fault diagnosis method can solve the problem of lack of data. The proposed uncertainty method addresses the challenge of multiple sources of uncertainty by using subsystems to reduce complexity. Fault diagnosis is achieved by comparing residuals with thresholds derived from a diagnostic bond graph (DBG) model. To address the problem of limited fault data, we modeled and simulated the landing gear retractor system using AMESim®. In addition, the linear fractional transform (LFT) approach has been used to resolve parametric uncertainties, but is unable to resolve system structural uncertainties. Therefore, we also analyzed the comparative fault diagnosis results derived from the linear fractional transformation-DBG (LFT-DBG) and the subsystem-DBG approaches. The experimental results support the effectiveness of the subsystem approach in improving fault diagnosis accuracy and reliability, highlighting its potential as a viable diagnostic strategy in aerospace engineering applications.
鉴于飞机起落架收放系统缺乏足够的历史数据,需要一种基于模型的故障诊断方法来克服这一数据不足的问题。同时,工程实践中不可避免地存在固有不确定性,在不确定条件下构建准确反映实际系统复杂性的模型是一项巨大挑战。由于迫切需要可靠的基于模型的诊断方法以及应对固有不确定性的需求,本文提出了一种改进的故障诊断方法,旨在提高起落架收放系统的诊断效率,该系统是飞机起飞和着陆操作中的关键部件。由于缺乏历史数据,基于模型的故障诊断方法可以解决数据不足的问题。所提出的不确定性方法通过使用子系统来降低复杂性,从而应对多种不确定性来源的挑战。通过将残差与从诊断键合图(DBG)模型导出的阈值进行比较来实现故障诊断。为了解决故障数据有限的问题,我们使用AMESim®对起落架收放系统进行了建模和仿真。此外,线性分式变换(LFT)方法已被用于解决参数不确定性,但无法解决系统结构不确定性。因此,我们还分析了线性分式变换 - DBG(LFT - DBG)和子系统 - DBG方法得出的比较故障诊断结果。实验结果支持了子系统方法在提高故障诊断准确性和可靠性方面的有效性,突出了其作为航空航天工程应用中可行诊断策略的潜力。