A hierarchical request-acceptance protocol with learning-based planning and robust TSO evaluation reduces curtailment for GW-scale AI data centers from 9.1% to 2.8% while preserving 98.1% of frontier training workload.
Grid Operational Benefit Analysis of Data Center Spatial Fleoibility: Congestion Relief, Renewable Energy Curtailment Reduction, and Cost Saving
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Multi-period grid capacity expansion model with new spatial demand modeling for data centers and manufacturing loads, applied to synthetic ERCOT-like grid showing 83.6% generation capacity increase over seven years.
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Grid Integration of Gigawatt-Scale AI Data Centers under Connect-and-Manage
A hierarchical request-acceptance protocol with learning-based planning and robust TSO evaluation reduces curtailment for GW-scale AI data centers from 9.1% to 2.8% while preserving 98.1% of frontier training workload.
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Grid Capacity Expansion under Data Centers and Electrified Manufacturing Large Loads
Multi-period grid capacity expansion model with new spatial demand modeling for data centers and manufacturing loads, applied to synthetic ERCOT-like grid showing 83.6% generation capacity increase over seven years.