Stochastic Optimization using Polynomial Chaos Expansions

09/17/2020
by   Tuhin Sahai, et al.
0

Polynomial chaos based methods enable the efficient computation of output variability in the presence of input uncertainty in complex models. Consequently, they have been used extensively for propagating uncertainty through a wide variety of physical systems. These methods have also been employed to build surrogate models for accelerating inverse uncertainty quantification (infer model parameters from data) and construct transport maps. In this work, we explore the use of polynomial chaos based approaches for optimizing functions in the presence of uncertainty. These methods enable the fast propagation of uncertainty through smooth systems. If the dimensionality of the random parameters is low, these methods provide orders of magnitude acceleration over Monte Carlo sampling. We construct a generalized polynomial chaos based methodology for optimizing smooth functions in the presence of random parameters that are drawn from known distributions. By expanding the optimization variables using orthogonal polynomials, the stochastic optimization problem reduces to a deterministic one that provides estimates for all moments of the output distribution. Thus, this approach enables one to avoid computationally expensive random sampling based approaches such as Monte Carlo and Quasi-Monte Carlo. In this work, we develop the overall framework, derive error bounds, construct the framework for the inclusion of constraints, analyze various properties of the approach, and demonstrate the proposed technique on illustrative examples.

READ FULL TEXT
research
01/26/2022

Control Variate Polynomial Chaos: Optimal Fusion of Sampling and Surrogates for Multifidelity Uncertainty Quantification

We present a hybrid sampling-surrogate approach for reducing the computa...
research
05/11/2020

Conformally Mapped Polynomial Chaos Expansions for Maxwell's Source Problem with Random Input Data

Generalized Polynomial Chaos (gPC) expansions are well established for f...
research
08/23/2020

Sparse approximation of data-driven Polynomial Chaos expansions: an induced sampling approach

One of the open problems in the field of forward uncertainty quantificat...
research
01/11/2023

Shapley Effect Estimation using Polynomial Chaos

This paper presents an approach for estimating Shapley effects for use a...
research
07/03/2021

Adaptive stratified sampling for non-smooth problems

Science and engineering problems subject to uncertainty are frequently b...
research
03/11/2021

Stochastic Package Queries in Probabilistic Databases

We provide methods for in-database support of decision making under unce...
research
08/18/2022

Optimized Equivalent Linearization for Random Vibration

A fundamental limitation of various Equivalent Linearization Methods (EL...

Please sign up or login with your details

Forgot password? Click here to reset