基于虚实融合的船舶液压舵机故障诊断方法研究

A Virtual–Real Fusion-Based Fault Diagnosis Method for Marine Hydraulic Steering Gears

  • 摘要: 【目的】针对船舶液压舵机故障诊断中数据稀缺和故障样本分布不均难题,考虑到单纯依赖真实数据难以支撑高精度建模,而仅依靠虚拟仿真数据又难以充分反映复杂海洋工况,本文提出一种基于虚实融合的诊断方法,以突破舵机故障诊断中有限故障数据的瓶颈。【方法】首先构建高保真的船舶液压舵机虚拟模型,并利用真实数据对其参数进行校准,确保虚拟模型与实际工况的一致性。在此基础上,模拟油泵轻微泄漏、油泵严重泄漏、阀门轻微卡滞、阀门严重卡滞以及系统正常工作五种典型状态,生成大量具备物理约束的虚拟生成数据。随后,将虚拟生成数据与有限的真实数据进行有效融合:虚拟数据提供丰富的故障样本,真实数据校正工况偏差并引入环境噪声特性。针对融合数据的特点,构建了时序卷积网络(TCN,提取全局变量)与门控循环单元(GRU,建模动态依赖)相结合的混合诊断模型,实现多尺度时序特征提取与动态依赖建模,从而深入挖掘故障特征并提升诊断精度。最后,通过对比实验与消融分析验证了该虚实融合诊断方法的有效性与优势。【结果】实验表明,虚拟样机不仅弥补了真实数据不足,还通过物理建模保证了数据可解释性与可控性;与真实数据融合后,模型在五类典型故障诊断任务中达到了99.6%的准确率,并展现出良好的泛化能力。【结论】所提出的虚实融合诊断方法充分发挥了虚拟样机与真实数据的互补优势,有效缓解了实际海洋环境中故障样本稀缺的问题,为船舶液压舵机故障诊断提供了一种可靠且具有工程应用价值的技术路径。

     

    Abstract: Objectives Addressing the challenges of data scarcity and imbalanced distribution of fault samples in the fault diagnosis of marine hydraulic steering gears, and considering that relying solely on real data struggles to support high-precision modeling while depending exclusively on virtual simulation data fails to adequately capture complex marine operating conditions, this paper proposes a diagnosis method based on virtual-real fusion to overcome the bottleneck of limited fault data in steering gear fault diagnosis. Methods First, a high-fidelity virtual model of the marine hydraulic steering gear is constructed, and its parameters are calibrated using real data to ensure consistency between the virtual model and actual operating conditions. On this basis, five typical states are simulated: slight oil pump leakage, severe oil pump leakage, slight valve sticking, severe valve sticking, and normal system operation, thereby generating a large amount of virtual data constrained by physical principles. Subsequently, the virtual generated data is effectively fused with the limited real data: the virtual data provides abundant fault samples, while the real data corrects operational deviations and introduces environmental noise characteristics. Addressing the characteristics of the fused data, a hybrid diagnostic model combining Temporal Convolutional Network (TCN, for extracting global features) and Gated Recurrent Unit (GRU, for modeling dynamic dependencies) is constructed. This model achieves multi-scale temporal feature extraction and dynamic dependency modeling, thereby deeply mining fault features and enhancing diagnostic accuracy. Finally, the effectiveness and advantages of this virtual-real fusion diagnostic method are validated through comparative experiments and ablation analysis. Results Experiments demonstrate that the virtual prototype not only compensates for the insufficiency of real data but also ensures data interpretability and controllability through physical modeling; after fusion with real data, the model achieves an accuracy of 99.6% in the diagnosis of five typical fault types and exhibits strong generalization capability.Conclusions The proposed virtual-real fusion diagnostic method fully leverages the complementary advantages of virtual prototypes and real data, effectively alleviating the issue of scarce fault samples in actual marine environments, and provides a reliable technical pathway with engineering application value for fault diagnosis of marine hydraulic steering gears.

     

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