Jayaraman Balaji, Mamun S M Abdullah Al
School of Mechanical and Aerospace Engineering, Oklahoma State University, Stillwater, OK 74078, USA.
Sensors (Basel). 2020 Jul 4;20(13):3752. doi: 10.3390/s20133752.
The reconstruction of fine-scale information from sparse data measured at irregular locations is often needed in many diverse applications, including numerous instances of practical fluid dynamics observed in natural environments. This need is driven by tasks such as data assimilation or the recovery of fine-scale knowledge including models from limited data. Sparse reconstruction is inherently badly represented when formulated as a linear estimation problem. Therefore, the most successful linear estimation approaches are better represented by recovering the full state on an encoded low-dimensional basis that effectively spans the data. Commonly used low-dimensional spaces include those characterized by orthogonal Fourier and data-driven proper orthogonal decomposition (POD) modes. This article deals with the use of linear estimation methods when one encounters a non-orthogonal basis. As a representative thought example, we focus on linear estimation using a basis from shallow extreme learning machine (ELM) autoencoder networks that are easy to learn but non-orthogonal and which certainly do not parsimoniously represent the data, thus requiring numerous sensors for effective reconstruction. In this paper, we present an efficient and robust framework for sparse data-driven sensor placement and the consequent recovery of the higher-resolution field of basis vectors. The performance improvements are illustrated through examples of fluid flows with varying complexity and benchmarked against well-known POD-based sparse recovery methods.
在许多不同的应用中,常常需要从在不规则位置测量的稀疏数据中重建精细尺度信息,包括在自然环境中观察到的许多实际流体动力学实例。这种需求是由诸如数据同化或从有限数据中恢复包括模型在内的精细尺度知识等任务驱动的。当将稀疏重建表述为线性估计问题时,其本质上表现不佳。因此,最成功的线性估计方法通过在有效跨越数据的编码低维基上恢复完整状态来更好地表示。常用的低维空间包括那些以正交傅里叶和数据驱动的本征正交分解(POD)模式为特征的空间。本文讨论当遇到非正交基时线性估计方法的使用。作为一个具有代表性的思想示例,我们专注于使用来自浅层极限学习机(ELM)自动编码器网络的基进行线性估计,这些网络易于学习但非正交,并且肯定不能简洁地表示数据,因此需要大量传感器进行有效重建。在本文中,我们提出了一个高效且稳健的数据驱动型稀疏传感器布置框架,以及随之而来的基向量高分辨率场的恢复。通过具有不同复杂度的流体流动示例说明了性能改进情况,并与基于POD的著名稀疏恢复方法进行了对比。