论文标题
贝叶斯的轴中心定位方法在期刊轴承中
A Bayesian Approach for Shaft Centre Localisation in Journal Bearings
论文作者
论文摘要
已经表明,超声波技术在日记轴承中的圆周油膜厚度曲线的在线测量都很好。不幸的是,它们可能会受到其测量范围的限制,并且无法捕获整个轴承周围的电影细节。试图在整个轴承范围内建模薄膜厚度的尝试取决于确定性方法,该方法假设观察值是正确确定性的。膜厚度的未确定性不确定性可能导致一系列不准确的预测,以便随后计算流体动力学参数。在目前的工作中,提出了一个概率框架,以用高斯工艺对膜厚度进行建模。然后,结果用于估计各种操作条件下轴承轴的位置。该过程的另一个步骤涉及使用新结构的数据集生成轴承旋转速度和施加的静态负载的可能位置,以生成显示轴中心可能位置的似然图。结果提供了可视化预测信心的可能性,并允许在轴承孔内高概率的区域内找到真实位置。
It has been shown that ultrasonic techniques work well for online measuring of circumferential oil film thickness profile in journal bearings; unfortunately, they can be limited by their measuring range and unable to capture details of the film all around the bearing circumference. Attempts to model the film thickness over the full range of the bearing rely on deterministic approaches, which assume the observations to be true with absolute certainty. Unaccounted uncertainties of the film thickness may lead to a cascade of inaccurate predictions for subsequent calculations of hydrodynamic parameters. In the present work, a probabilistic framework is proposed to model the film thickness with Gaussian Processes. The results are then used to estimate the location of the bearing shaft under various operational conditions. A further step in the process involves using the newly-constructed dataset to generate likelihood maps displaying the probable location of the shaft centre, given the bearing rotational speed and applied static load. The results offer the possibility to visualise the confidence of the predictions and allow the true location to be found within an area of high probability within the bearing's bore.