We develop and implement a Bayesian approach for the estimation of the shape of a two dimensional annular domain enclosing a Stokes flow from sparse and noisy observations of the enclosed fluid. Our setup includes the case of direct observations of the flow field as well as the measurement of concentrations of a solute passively advected by and diffusing within the flow. Adopting a statistical approach provides estimates of uncertainty in the shape due both to the non-invertibility of the forward map and to error in the measurements. When the shape represents a design problem of attempting to match desired target outcomes, this "uncertainty" can be interpreted as identifying remaining degrees of freedom available to the designer. We demonstrate the viability of our framework on three concrete test problems. These problems illustrate the promise of our framework for applications while providing a collection of test cases for recently developed Markov Chain Monte Carlo (MCMC) algorithms designed to resolve infinite dimensional statistical quantities.
翻译:我们制定并实施了一种巴伊西亚方法,用以估计二维废旧域的形状,其中附有从稀疏和噪音观测封闭液中产生的斯托克斯流体。我们的设置包括直接观测流体以及测量流中被动吸收和漂移的溶液浓度。采用统计方法,对由于前方地图不可忽略和测量误差造成的形状的不确定性进行了估计。当形状代表了试图匹配预期目标结果的设计问题时,这种“不确定性”可以解释为确定了设计者可获得的剩余自由度。我们在三个具体测试问题上展示了我们框架的可行性。这些问题说明了我们应用框架的前景,同时为最近开发的Markov链蒙特卡洛(MC MC ) 算法收集了用于解决无限数量统计的测试案例。