超要約: 熱シミュレーションを爆速にする方法で、IT企業の製品開発をめっちゃ応援するよ!
✨ ギャル的キラキラポイント ✨
● 熱シミュが速くなると、製品開発が超スピードアップするんだって!✨ 開発期間が短くなれば、新しい製品をどんどん出せるじゃん?
● デジタルツイン(現実世界のそっくりさん)が簡単に作れるようになるらしい!🤩 製品の未来が予測できちゃうって、すごくない?
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This work introduces an ensemble parameter estimation framework that enables the Lumped Parameter Linear Superposition (LPLSP) method to generate reduced order thermal models from a single transient dataset. Unlike earlier implementations that relied on multiple parametric simulations to excite each heat source independently, the proposed approach simultaneously identifies all model coefficients using fully transient excitations. Two estimation strategies namely rank-reduction and two-stage decomposition are developed to further reduce computational cost and improve scalability for larger systems. The proposed strategies yield ROMs with mean temperature-prediction errors within 5% of CFD simulations while reducing model-development times to O(10^0 s)-O(10^1 s). Once constructed, the ROM evaluates new transient operating conditions in O(10^0 s), enabling rapid thermal analysis and enabling automated generation of digital twins for both simulated and physical systems.