Ziquan Zhan, Bin Fang, Shaoke Wan, Yu Bai, Jun Hong, Xiaohu Li
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Secondly, based on an analysis of the rapidity and robustness, robust geodesic distance-based fuzzy c-medoid clustering with a simulated annealing algorithm (RGDFCMSA) is proposed to optimize sensor placement by minimizing the information entropy of the system. Next, uncertain parameters with estimability are selected based on SIAN and Sobol’s sensitivity indicator under optimal sensor placement. Furthermore, a multilayer particle filter (MLPF) is proposed to estimate temperature fields and predict the thermal error of SBSs by fusing information from multiple sources with different fidelity. Finally, experiments under different working conditions are conducted to validate the effectiveness and accuracy of the proposed method. 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引用次数: 0
摘要
要对主轴轴承系统(SBS)进行精确的热误差预测,就必须对从多源传感器收集到的信息进行综合分析。然而,由于结构限制,数据可用性有限,这给全面描述系统状态带来了挑战。在本研究中,我们介绍了一种基于传感器优化布置的数据模型混合驱动框架,用于准确预测 SBS 的热误差。首先,我们开发了一种热超网络方法,以考虑不均匀的温度分布,并为状态估计建立统一的信息融合模型。其次,在分析快速性和鲁棒性的基础上,提出了基于大地距离的鲁棒模糊 c-medoid 聚类与模拟退火算法(RGDFCMSA),通过最小化系统的信息熵来优化传感器的布置。接着,根据 SIAN 和 Sobol 的灵敏度指标,在优化传感器位置的情况下,选择具有可估计性的不确定参数。此外,还提出了一种多层粒子滤波器(MLPF),通过融合来自多个不同保真度来源的信息来估计温度场并预测 SBS 的热误差。最后,在不同的工作条件下进行了实验,以验证所提方法的有效性和准确性。结果表明,所提出的框架能够准确估计全局温度场、不确定的热参数和热误差。
Application of a hybrid-driven framework based on sensor optimization placement for the thermal error prediction of the spindle-bearing system
The precise thermal error prediction of spindle-bearing systems (SBSs) necessitates a comprehensive analysis of information gathered from multi-source sensors. However, limited data availability due to structural constraints poses challenges to fully characterize the system state. In this study, we introduce a data-model hybrid-driven framework based on sensor optimization placement for accurate thermal error prediction of SBSs. Firstly, a thermal hypernetwork method is developed to consider uneven temperature distribution and establish a unified information fusion model for state estimation. Secondly, based on an analysis of the rapidity and robustness, robust geodesic distance-based fuzzy c-medoid clustering with a simulated annealing algorithm (RGDFCMSA) is proposed to optimize sensor placement by minimizing the information entropy of the system. Next, uncertain parameters with estimability are selected based on SIAN and Sobol’s sensitivity indicator under optimal sensor placement. Furthermore, a multilayer particle filter (MLPF) is proposed to estimate temperature fields and predict the thermal error of SBSs by fusing information from multiple sources with different fidelity. Finally, experiments under different working conditions are conducted to validate the effectiveness and accuracy of the proposed method. The result indicates that the proposed framework is capable of an accurate estimation of the global temperature field, uncertain thermal parameters and thermal errors.
期刊介绍:
Precision Engineering - Journal of the International Societies for Precision Engineering and Nanotechnology is devoted to the multidisciplinary study and practice of high accuracy engineering, metrology, and manufacturing. The journal takes an integrated approach to all subjects related to research, design, manufacture, performance validation, and application of high precision machines, instruments, and components, including fundamental and applied research and development in manufacturing processes, fabrication technology, and advanced measurement science. The scope includes precision-engineered systems and supporting metrology over the full range of length scales, from atom-based nanotechnology and advanced lithographic technology to large-scale systems, including optical and radio telescopes and macrometrology.