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Robust reliability-based optimization with a moment method for hydraulic pump sealing design

机译:基于鲁棒的可靠性优化,用液压泵密封设计的矩方法

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摘要

Reliability-based design (RBD) is widely applied to meet the reliability requirement at a reduced cost. Current RBD methods require complete distributions of basic random variables, but in real applications, such as the sealing design for hydraulic piston pumps, only statistical moments may be available. The reliability obtained from the RBD may also be sensitive to possible variations in distribution parameters or moments of basic random variables. To deal with these two challenges in the sealing design for hydraulic piston pumps, this study employs a robust reliability-based design methodology based on statistical moments. The optimization not only minimizes the sealing area of friction pairs, but also the sensitivity of the reliability. As a result, the reliability requirement is maintained with the increased robustness of the reliability. An improved higher moment (up to the forth moment) is also employed for higher accuracy with the associated analytical sensitivity indexes. The robust RBD methodology is successfully applied to the design of the seal of the slipper-swash plate friction pairs for a hydraulic piston pump. The application includes the reliability analysis, reliability sensitivity analysis, and robust RBD. The results demonstrate that robust RBD can produce more robust reliability than a traditional RBD methodology.
机译:基于可靠性的设计(RBD)广泛应用于以降低成本满足可靠性要求。目前的RBD方法需要完整的基本随机变量分布,但在真实应用中,如液压活塞泵的密封设计,只有统计时刻可能可用。从RBD获得的可靠性也可能对分布参数或基本随机变量的矩的可能变化敏感。为了应对液压活塞泵的密封设计中的这两个挑战,本研究采用基于统计时刻的基于鲁棒的可靠性的设计方法。优化不仅最小化了摩擦对的密封区域,而且最小化了可靠性的灵敏度。结果,维持可靠性要求随着可靠性的鲁棒性增加。利用相关的分析敏感性指标,还采用了更高的更高时刻(最新时刻)的更高时刻(最新时刻)。鲁棒RBD方法成功地应用于液压活塞泵的拖鞋摩擦对的密封件的设计。该应用包括可靠性分析,可靠性敏感性分析和强大的RBD。结果表明,强大的RBD可以产生比传统的RBD方法更强大的可靠性。

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