A direct and analytical method for inverse problems under uncertainty in energy system design: combining inverse simulation and Polynomial Chaos theory

Q2 Energy
Sebastian Schwarz, Daniele Carta, Antonello Monti, Andrea Benigni
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引用次数: 0

Abstract

This article introduces and formalizes a novel stochastic method that combines inverse simulation with the theory of generalized Polynomial Chaos (gPC) to solve and study inverse problems under uncertainty in energy system design applications. The method is particularly relevant to design tasks where only a deterministic forward model of a physical system is available, in which a target design quantity is an input to the model that cannot be obtained directly, but can be quantified reversely via the outputs of the model. In this scenario, the proposed method offers an analytical and direct approach to invert such system models. The method puts emphasis on user-friendliness, as it enables its users to conduct the inverse simulation under uncertainty directly in the gPC domain by redefining basic algebra operations for computations. Moreover, the method incorporates an optimization-based approach to integrate supplementary constraints on stochastic quantities. This feature enables the solution of inverse problems bounding the statistical moments of stochastic system variables. The authors exemplify the application of the proposed method with proof-of-concept tests in energy system design, specifically performing uncertainty quantification and sensitivity analysis for a Multi-Energy System (MES). The findings demonstrate the high accuracy of the method as well as clear advantages over conventional sampling-based methods when dealing with a small number of stochastic variables in a system or model. However, the case studies also highlight the current limitations of the proposed method such as slow execution speed due to the optimization-based approach and the challenges associated with, for example, the curse of dimensionality in gPC.

能源系统设计中不确定性条件下反演问题的直接分析方法:反演模拟与多项式混沌理论的结合
本文介绍并正式提出了一种新型随机方法,该方法将反演模拟与广义多项式混沌(gPC)理论相结合,用于解决和研究能源系统设计应用中不确定条件下的反演问题。该方法尤其适用于只有物理系统的确定性前向模型的设计任务,其中目标设计量是模型的输入,无法直接获得,但可以通过模型的输出进行反向量化。在这种情况下,所提出的方法提供了一种分析性的直接方法来反演此类系统模型。该方法注重用户友好性,通过重新定义计算的基本代数运算,使用户能够直接在 gPC 领域进行不确定性下的反演模拟。此外,该方法还采用了基于优化的方法来整合随机量的补充约束。利用这一特点,可以解决约束随机系统变量统计矩的反演问题。作者以能源系统设计中的概念验证测试为例,说明了所提方法的应用,特别是对多能源系统(MES)进行了不确定性量化和敏感性分析。研究结果表明,在处理系统或模型中的少量随机变量时,该方法具有很高的准确性,与传统的基于采样的方法相比优势明显。不过,案例研究也凸显了所提方法目前存在的局限性,例如基于优化的方法执行速度较慢,以及与 gPC 中的维数诅咒等相关的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
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