2021
DOI: 10.3390/electronics10222785
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Machine Learning (ML) Based Thermal Management for Cooling of Electronics Chips by Utilizing Thermal Energy Storage (TES) in Packaging That Leverages Phase Change Materials (PCM)

Abstract: Miniaturization of electronics devices is often limited by the concomitant high heat fluxes (cooling load) and maldistribution of temperature profiles (hot spots). Thermal energy storage (TES) platforms providing supplemental cooling can be a cost-effective solution, that often leverages phase change materials (PCM). Although salt hydrates provide higher storage capacities and power ratings (as compared to that of the organic PCMs), they suffer from reliability issues (e.g., supercooling). “Cold Finger Techniq… Show more

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Cited by 6 publications
(1 citation statement)
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“…ML algorithms dissect grid data and make real-time decisions regarding energy charging and discharging. This grid management competency plays a pivotal role in balancing energy supply and demand while concurrently reducing stress on the energy grid [87,88].…”
Section: Role Of ML For Tes and Tma Systems And Enhancing Pcm Reliabi...mentioning
confidence: 99%
“…ML algorithms dissect grid data and make real-time decisions regarding energy charging and discharging. This grid management competency plays a pivotal role in balancing energy supply and demand while concurrently reducing stress on the energy grid [87,88].…”
Section: Role Of ML For Tes and Tma Systems And Enhancing Pcm Reliabi...mentioning
confidence: 99%