LGAICVSYNov 13, 2025

Fast 3D Surrogate Modeling for Data Center Thermal Management

arXiv:2511.11722v1h-index: 13
Originality Incremental advance
AI Analysis

This addresses energy consumption and carbon emissions in data centers, enabling real-time thermal management, though it is incremental as it builds on existing surrogate modeling techniques.

The paper tackled the problem of real-time temperature prediction in data centers for energy efficiency by developing a vision-based surrogate modeling framework, achieving up to 20,000x speedup and 7% energy savings.

Reducing energy consumption and carbon emissions in data centers by enabling real-time temperature prediction is critical for sustainability and operational efficiency. Achieving this requires accurate modeling of the 3D temperature field to capture airflow dynamics and thermal interactions under varying operating conditions. Traditional thermal CFD solvers, while accurate, are computationally expensive and require expert-crafted meshes and boundary conditions, making them impractical for real-time use. To address these limitations, we develop a vision-based surrogate modeling framework that operates directly on a 3D voxelized representation of the data center, incorporating server workloads, fan speeds, and HVAC temperature set points. We evaluate multiple architectures, including 3D CNN U-Net variants, a 3D Fourier Neural Operator, and 3D vision transformers, to map these thermal inputs to high-fidelity heat maps. Our results show that the surrogate models generalize across data center configurations and achieve up to 20,000x speedup (hundreds of milliseconds vs. hours). This fast and accurate estimation of hot spots and temperature distribution enables real-time cooling control and workload redistribution, leading to substantial energy savings (7\%) and reduced carbon footprint.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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