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Balancing aggregation and smoothing errors in inverse models

机译:在逆模型中平衡聚合和平滑错误

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Inverse models use observations of a system (observation vector) to quantify the variables driving that system (state vector) by statistical optimization. When the observation vector is large, such as with satellite data, selecting a suitable dimension for the state vector is a challenge. A state vector that is too large cannot be effectively constrained by the observations, leading to smoothing error. However, reducing the dimension of the state vector leads to aggregation error as prior relationships between state vector elements are imposed rather than optimized. Here we present a method for quantifying aggregation and smoothing errors as a function of state vector dimension, so that a suitable dimension can be selected by minimizing the combined error. Reducing the state vector within the aggregation error constraints can have the added advantage of enabling analytical solution to the inverse problem with full error characterization. We compare three methods for reducing the dimension of the state vector from its native resolution: (1) merging adjacent elements (grid coarsening), (2) clustering with principal component analysis (PCA), and (3) applying a Gaussian mixture model (GMM) with Gaussian pdfs as state vector elements on which the native-resolution state vector elements are projected using radial basis functions (RBFs). The GMM method leads to somewhat lower aggregation error than the other methods, but more importantly it retains resolution of major local features in the state vector while smoothing weak and broad features.
机译:逆模型使用系统(观察向量)的观察来通过统计优化量化驱动该系统(状态向量)的变量。当观察向量很大时,例如用卫星数据,为状态矢量选择合适的维度是挑战。太大的状态矢量不能有效地受到观察结果的限制,从而平滑误差。然而,降低状态矢量的尺寸导致聚合误差,因为施加了状态矢量元素之间的先前关系而不是优化。这里我们介绍了一种用于量化聚合和平滑误差作为状态矢量维度的方法,从而可以通过最小化组合误差来选择合适的维度。减少聚合误差约束中的状态向量可以具有在完全误差表征中启用分析解决方案的额外优势。我们比较了三种方法来减少状态矢量的尺寸,从其天然分辨率:(1)合并相邻元件(栅格粗化),(2)与主要成分分析(PCA)聚类,以及(3)应用高斯混合模型( GMM)具有高斯PDFS作为使用径向基函数(RBF)预测本机分辨率状态向量元素的状态矢量元素。 GMM方法导致略低的聚合误差比其他方法更低,但更重要的是,它保留了状态向量中的主要本地特征的分辨率,同时平滑弱和广泛的功能。

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