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Volume 2026 · Issue 06-05

按期刊卷期页方式整理本期论文。每条仅使用日报已列出的可追溯公开来源,不新增未经核验事实。

Research Article算电协同

GridPilot: Real-Time Grid-Responsive Control for AI Supercomputers

Denisa-Andreea Constantinescu、David Atienza

Published 2026-05-25 · arXiv · Credibility S

At global scale, data

Abstract, interpretation and reference

Abstract

At global scale, data

中文解读

背景:AI 数据中心负载、功率密度和能源约束同步上升,算力负载与电网侧资源的协同调度正在成为智算中心设计的关键变量。问题:论文聚焦现有方案在效率、可靠性或工程协同上的瓶颈。方法:摘要显示作者采用文献摘要中的模型、实验或案例分析,把运行负载、冷却/能源系统和基础设施约束放在同一分析框架中。结果:研究重点指向AI 负载波动对电网设备寿命和调频边界的影响。意义:对日报读者而言,它可用于判断智算中心建设是否受电网容量、负载波动和调度机制约束。仍需结合全文实验条件、样本范围和成本假设核验。

参考文献

Denisa-Andreea Constantinescu, David Atienza. GridPilot: Real-Time Grid-Responsive Control for AI Supercomputers[J/OL]. (2026-05-25)[2026-06-05]. https://arxiv.org/abs/2605.26384.

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Research Article热管理与液冷

Hosting Capacity Assessment and Enhancement for Edge Data Centers in Active Distribution Networks

Linhan Fang、Xingpeng Li

Published 2026-05-31 · arXiv · Credibility S

With the increasing demand for edge computing and AI

Abstract, interpretation and reference

Abstract

With the increasing demand for edge computing and AI

中文解读

背景:AI 数据中心负载、功率密度和能源约束同步上升,液冷、热管理和数据中心能效正在成为智算中心设计的关键变量。问题:论文聚焦现有方案在效率、可靠性或工程协同上的瓶颈。方法:摘要显示作者采用文献摘要中的模型、实验或案例分析,把运行负载、冷却/能源系统和基础设施约束放在同一分析框架中。结果:研究重点指向冷却效率、能源利用或运维策略的改进方向。意义:对日报读者而言,它可用于判断液冷方案、热管理路线和高密度部署节奏。仍需结合全文实验条件、样本范围和成本假设核验。

参考文献

Linhan Fang, Xingpeng Li. Hosting Capacity Assessment and Enhancement for Edge Data Centers in Active Distribution Networks[J/OL]. (2026-05-31)[2026-06-05]. https://arxiv.org/abs/2606.01407.

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Research Article热管理与液冷

Certificates without Electrons? Theory and Evidence on Impacts from AI -Driven Power Demand

Dana Golden、Aruna Balasubramanian、Niranjan Balasubramanian

Published 2026-05-30 · arXiv · Credibility S

Data

Abstract, interpretation and reference

Abstract

Data

中文解读

背景:AI 数据中心负载、功率密度和能源约束同步上升,液冷、热管理和数据中心能效正在成为智算中心设计的关键变量。问题:论文聚焦现有方案在效率、可靠性或工程协同上的瓶颈。方法:摘要显示作者采用文献摘要中的模型、实验或案例分析,把运行负载、冷却/能源系统和基础设施约束放在同一分析框架中。结果:研究重点指向冷却效率、能源利用或运维策略的改进方向。意义:对日报读者而言,它可用于判断液冷方案、热管理路线和高密度部署节奏。仍需结合全文实验条件、样本范围和成本假设核验。

参考文献

Dana Golden, Aruna Balasubramanian, Niranjan Balasubramanian. Certificates without Electrons? Theory and Evidence on Impacts from AI -Driven Power Demand[J/OL]. (2026-05-30)[2026-06-05]. https://arxiv.org/abs/2606.00811.

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Research Article热管理与液冷

AI Sovereignty as National Learning Capacity: A Human- Centered Learning Mechanics Viewpoint on France, the United States, and China

Kim Phuc Tran

Published 2026-05-30 · arXiv · Credibility S

Artificial Intelligence is often discussed in France in terms of investment, compute capacity, regulation, employment, sovereignty, and education. These dimensions are usually treated separately. This viewpoint paper proposes a unified interpretation: France should be understood as a \emph{national AI

Abstract, interpretation and reference

Abstract

Artificial Intelligence is often discussed in France in terms of investment, compute capacity, regulation, employment, sovereignty, and education. These dimensions are usually treated separately. This viewpoint paper proposes a unified interpretation: France should be understood as a \emph{national AI

中文解读

背景:AI 数据中心负载、功率密度和能源约束同步上升,液冷、热管理和数据中心能效正在成为智算中心设计的关键变量。问题:论文聚焦现有方案在效率、可靠性或工程协同上的瓶颈。方法:摘要显示作者采用文献摘要中的模型、实验或案例分析,把运行负载、冷却/能源系统和基础设施约束放在同一分析框架中。结果:研究重点指向冷却效率、能源利用或运维策略的改进方向。意义:对日报读者而言,它可用于判断液冷方案、热管理路线和高密度部署节奏。仍需结合全文实验条件、样本范围和成本假设核验。

参考文献

Kim Phuc Tran. AI Sovereignty as National Learning Capacity: A Human- Centered Learning Mechanics Viewpoint on France, the United States, and China[J/OL]. (2026-05-30)[2026-06-05]. https://arxiv.org/abs/2606.00729.

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Research Article热管理与液冷

Maximizing Compute Capacity in AI Data Centers through Cooling, Energy Storage, and Computing Adaptation

Shaolei Ren、Mohammad A. Islam、Adam Wierman

Published 2026-05-29 · arXiv · Credibility S

The deployment of artificial intelligence is increasingly constrained by limited site-level power capacity, which must support both compute systems and non-compute systems (primarily cooling) at all times. Cooling power demand, especially in non-evaporative cooling systems, can increase substantially with ambient temperature in the summer, producing recurring periods of elevated cooling power that often lasts for mu…

Abstract, interpretation and reference

Abstract

The deployment of artificial intelligence is increasingly constrained by limited site-level power capacity, which must support both compute systems and non-compute systems (primarily cooling) at all times. Cooling power demand, especially in non-evaporative cooling systems, can increase substantially with ambient temperature in the summer, producing recurring periods of elevated cooling power that often lasts for multiple hours per day. Therefore, maximizing compute capacity under a limited site-level power budget is an important planning and operational challenge. Sizing the compute system conservatively based on peak cooling power can leave part of the site-level power capacity underutilized when the cooling power is below its peak, particularly in cooler months. On the other hand, sizing the compute system aggressively based on low cooling power can cause the total site-level power demand to exceed the site-level power capacity during hot days in the summer. This paper proposes ComputeAmp (Compute Amplifier), a framework that maximizes the compute capacity by jointly and dynamically leveraging cooling, battery energy

中文解读

背景:AI 数据中心负载、功率密度和能源约束同步上升,液冷、热管理和数据中心能效正在成为智算中心设计的关键变量。问题:论文聚焦现有方案在效率、可靠性或工程协同上的瓶颈。方法:摘要显示作者采用框架构建和频域/系统级分析,把运行负载、冷却/能源系统和基础设施约束放在同一分析框架中。结果:研究重点指向冷却效率、能源利用或运维策略的改进方向。意义:对日报读者而言,它可用于判断液冷方案、热管理路线和高密度部署节奏。仍需结合全文实验条件、样本范围和成本假设核验。

参考文献

Shaolei Ren, Mohammad A. Islam, Adam Wierman. Maximizing Compute Capacity in AI Data Centers through Cooling, Energy Storage, and Computing Adaptation[J/OL]. (2026-05-29)[2026-06-05]. https://arxiv.org/abs/2606.00457.

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Research Article热管理与液冷

Micro-Transfer Printing of Lithium Niobate on 200 mm Silicon Photonics: A High-Speed Heterogeneous Wafer-Scale Platform

Xiujun Zheng、Suzanne Bisschop、Arno Moerman、Margot Niels、Ewoud Vissers、Athina Papadopoulou、Philip Ekkels、Patrick Nenezic

Published 2026-05-27 · arXiv · Credibility S

The rapid growth of artificial intelligence ( AI

Abstract, interpretation and reference

Abstract

The rapid growth of artificial intelligence ( AI

中文解读

背景:AI 数据中心负载、功率密度和能源约束同步上升,液冷、热管理和数据中心能效正在成为智算中心设计的关键变量。问题:论文聚焦现有方案在效率、可靠性或工程协同上的瓶颈。方法:摘要显示作者采用文献摘要中的模型、实验或案例分析,把运行负载、冷却/能源系统和基础设施约束放在同一分析框架中。结果:研究重点指向冷却效率、能源利用或运维策略的改进方向。意义:对日报读者而言,它可用于判断液冷方案、热管理路线和高密度部署节奏。仍需结合全文实验条件、样本范围和成本假设核验。

参考文献

Xiujun Zheng, Suzanne Bisschop, Arno Moerman, 等. Micro-Transfer Printing of Lithium Niobate on 200 mm Silicon Photonics: A High-Speed Heterogeneous Wafer-Scale Platform[J/OL]. (2026-05-27)[2026-06-05]. https://arxiv.org/abs/2605.28971.

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Research Article算电协同

Cycle-Space Informed Detection of Autoencoded Blind False Data Injection Attacks on Power Systems

Xin Li、Chenhan Xiao、Jonathan Cohen、Aviad Elyashar、Yang Weng、Rami Puzis

Published 2026-05-27 · arXiv · Credibility S

The rapid growth of AI

Abstract, interpretation and reference

Abstract

The rapid growth of AI

中文解读

背景:AI 数据中心负载、功率密度和能源约束同步上升,算力负载与电网侧资源的协同调度正在成为智算中心设计的关键变量。问题:论文聚焦现有方案在效率、可靠性或工程协同上的瓶颈。方法:摘要显示作者采用文献摘要中的模型、实验或案例分析,把运行负载、冷却/能源系统和基础设施约束放在同一分析框架中。结果:研究重点指向冷却效率、能源利用或运维策略的改进方向。意义:对日报读者而言,它可用于判断智算中心建设是否受电网容量、负载波动和调度机制约束。仍需结合全文实验条件、样本范围和成本假设核验。

参考文献

Xin Li, Chenhan Xiao, Jonathan Cohen, 等. Cycle-Space Informed Detection of Autoencoded Blind False Data Injection Attacks on Power Systems[J/OL]. (2026-05-27)[2026-06-05]. https://arxiv.org/abs/2605.28912.

Full text 中文海报
算电协同 论文图示
Research Article热管理与液冷

Energy -Aware Computing in the Year 2026

Roblex Nana Tchakoute、Claude Tadonki

Published 2026-05-23 · arXiv · Credibility S

High-Performance Computing (HPC) has recently entered the Exascale era, and considerable efforts are being made to fully harness this potential power for large-scale applications, such as cutting-edge generative AI

Abstract, interpretation and reference

Abstract

High-Performance Computing (HPC) has recently entered the Exascale era, and considerable efforts are being made to fully harness this potential power for large-scale applications, such as cutting-edge generative AI

中文解读

背景:AI 数据中心负载、功率密度和能源约束同步上升,液冷、热管理和数据中心能效正在成为智算中心设计的关键变量。问题:论文聚焦现有方案在效率、可靠性或工程协同上的瓶颈。方法:摘要显示作者采用文献摘要中的模型、实验或案例分析,把运行负载、冷却/能源系统和基础设施约束放在同一分析框架中。结果:研究重点指向冷却效率、能源利用或运维策略的改进方向。意义:对日报读者而言,它可用于判断液冷方案、热管理路线和高密度部署节奏。仍需结合全文实验条件、样本范围和成本假设核验。

参考文献

Roblex Nana Tchakoute, Claude Tadonki. Energy -Aware Computing in the Year 2026[J/OL]. (2026-05-23)[2026-06-05]. https://arxiv.org/abs/2605.24569.

Full text 中文海报
热管理与液冷 论文图示