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Inducing Permutation Invariant Priors in Bayesian Optimization for Carbon Capture and Storage Applications

炭素回収・貯留(CCS)応用のためのベイズ最適化における置換不変事前分布の導入 (AI 翻訳)

Sofianos Panagiotis Fotias, Vassilis Gaganis

ArXiv.org📚 査読済 / ジャーナル2026-05-04#CCUS
原典: https://arxiv.org/abs/2605.02409
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🤖 gxceed AI 要約

日本語

本論文は、CCSプロジェクトにおける坑井配置最適化のための置換不変性をエンコードする新しいガウス過程カーネル(GP-Perm)を提案する。提案手法は、グループ制御下の坑井の置換対称性を扱うことができ、合成ベンチマークと現実的なCCSケーススタディ(Johansen層)で性能を実証した。

English

This paper proposes a novel Gaussian process kernel (GP-Perm) that encodes permutation invariance for well placement optimization in CCS projects. The method handles permutation symmetries in group-controlled wells and demonstrates superior performance on synthetic benchmarks and a realistic CCS case study (Johansen formation).

Unofficial AI-generated summary based on the public title and abstract. Not an official translation.

📝 gxceed 編集解説 — Why this matters

日本のGX文脈において

日本でもCCSの重要性が高まっており、地下貯留層の効率的な坑井配置は実用課題。本手法はCCSのコスト低減と実装促進に寄与し、GX実装を支える技術基盤となる。

In the global GX context

CCS is a critical technology for global decarbonization. This work advances optimization of well placement, reducing costs and improving efficiency of CCS projects, which is relevant to climate goals and transition finance globally.

👥 読者別の含意

🔬研究者:Bayesian optimization and CCS researchers should note the novel permutation-invariant kernel that can improve surrogate modeling for symmetric inputs.

🏢実務担当者:Companies involved in CCS operations can leverage this method to optimize well placement under group control, potentially reducing costs.

📄 Abstract(原文)

Bayesian Optimization is an iterative method, tailored to optimizing expensive black box objective functions. Surrogate models like Gaussian Processes, which are the gold standard in Bayesian Optimization, can be inefficient for inputs with permutation symmetries, as the most common kernels employed are better suited for vector inputs rather than unordered sets of items. Motivated by this issue, we turn to permutation invariant Bayesian Optimization for well placement in Carbon Capture and Storage projects. The high fidelity black box simulator is instructed to operate wells under group control, giving rise to permutation symmetries within injector and producer groups that cannot be exploited with standard GP kernels. In this work, our main contribution is a novel Gaussian Process kernel (GP-Perm) that encodes permutation invariance by comparing sets through a stable divergence between their induced empirical representations, and can be combined with standard kernels for additional vector-valued inputs. As a learned invariant baseline, we also consider a Deep Kernel Learning model (DKL-DS) using the Deep Sets architecture to learn a permutation-invariant embedding. We evaluate the proposed methodology across 8 use cases, comprising seven synthetic benchmarks and one realistic CCS case study (Johansen formation)

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