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Using automatic differentiation for compressive sensing in uncertainty quantification

机译:使用自动分化以不确定量化的压缩感测

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This paper employs automatic differentiation (AD) in the compressive sensing-based generalized polynomial chaos (gPC) expansion, which computes a sparse approximation of the Quantity of Interest (QoI) using orthogonal polynomials as basis functions. An earlier approach without AD relies on an iterative procedure to refine the solution by approximating the gradient of the QoI. With AD, the gradient can be accurately evaluated, and a set of basis functions of the gPC expansion associated with new random variables can be efficiently identified. The computational complexity of the algorithm using AD is independent of the number of basis functions, whereas an earlier algorithm had complexity proportional to the square of this number. Our test problems include synthetic problems and a high-dimensional stochastic partial differential equation. With the new basis, the coefficient vector in the gPC expansion is sparser than the original basis. We demonstrate that introducing AD can greatly improve the performance by computing solutions 2 to 10 times faster than an earlier approach. The accuracy of the gPC expansion is also improved; sparse gpC expansions are obtained without iterative refinement, even for high dimensions when an earlier approach fails.
机译:本文采用基于压缩感应的广义多项式混沌(GPC)扩展的自动分化(AD),其计算使用正交多项式作为基函数的兴趣量(QOI)的稀疏近似。没有广告的前进方法依赖于迭代程序来通过近似Qoi的梯度来改进解决方案。利用AD,可以精确评估梯度,并且可以有效地识别与新的随机变量相关的GPC扩展的一组基函数。使用广告的算法的计算复杂性与基本函数的数量无关,而较早的算法与该数量的平方成比例的复杂性。我们的测试问题包括合成问题和高维随机偏微分方程。在新的基础上,GPC膨胀中的系数载体比原始基础稀疏。我们证明,引入广告可以通过将解决方案计算比前面的方法更快地提高解决方案2至10倍。 GPC膨胀的准确性也得到改善;在未迭代细化的情况下获得稀疏GPC扩展,即使在早期的方法发生故障时,即使对于高维度也是如此。

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