Latent heat thermal energy storage (LHTES) systems are compelling candidates for energy storage, primarily owing to their high storage density. Improving their performance is crucial for developing the next-generation efficient and cost effective devices. Topology optimization (TO) has emerged as a powerful computational tool to design LHTES systems by optimally distributing a high-conductivity material (HCM) and a phase change material (PCM). However, conventional TO typically limits to optimizing the geometry for a fixed, pre-selected materials. This approach does not leverage the large and expanding databases of novel materials. Consequently, the co-design of material and geometry for LHTES remains a challenge and unexplored. To address this limitation, we present an automated design framework for the concurrent optimization of material choice and topology. A key challenge is the discrete nature of material selection, which is incompatible with the gradient-based methods used for TO. We overcome this by using a data-driven variational autoencoder (VAE) to project discrete material databases for both the HCM and PCM onto continuous and differentiable latent spaces. These continuous material representations are integrated into an end-to-end differentiable, transient nonlinear finite-element solver that accounts for phase change. We demonstrate this framework on a problem aimed at maximizing the discharged energy within a specified time, subject to cost constraints. The effectiveness of the proposed method is validated through several illustrative examples.
翻译:潜热蓄热系统因其高储能密度而成为极具前景的储能方案。提升其性能对于开发下一代高效、经济的装置至关重要。拓扑优化作为一种强大的计算工具,已应用于通过优化高导热材料与相变材料的分布来设计潜热蓄热系统。然而,传统拓扑优化通常局限于针对固定预选材料进行几何形状优化,未能充分利用日益增长的新型材料数据库。因此,潜热蓄热系统的材料与几何协同设计仍是一个尚未探索的挑战性课题。为突破此限制,本文提出了一种可同步优化材料选择与拓扑结构的自动化设计框架。其中关键挑战在于材料选择的离散特性与拓扑优化中使用的基于梯度的方法不兼容。我们通过数据驱动的变分自编码器,将高导热材料和相变材料的离散材料数据库映射到连续可微的潜在空间,从而解决了这一问题。这些连续的材料表征被集成至一个考虑相变过程的端到端可微瞬态非线性有限元求解器中。我们在既定成本约束下以最大化指定时间内释放能量为目标的问题上验证了该框架,并通过多个示例证明了所提方法的有效性。