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High performance platform to detect faults in the Smart Grid by Artificial Intelligence inference

Authors :
Tecnología electrónica
Teknologia elektronikoa
Le, Sun
Muguira Urtubi, Leire
Jiménez Verde, Jaime
Lázaro Arrotegui, Jesús
Wang, Yong
Tecnología electrónica
Teknologia elektronikoa
Le, Sun
Muguira Urtubi, Leire
Jiménez Verde, Jaime
Lázaro Arrotegui, Jesús
Wang, Yong
Publication Year :
2023

Abstract

Inferring faults throughout the power grid involves fast calculation, large scale of data, and low latency. Our heterogeneous architecture in the edge offers such high computing performance and throughput using an Artificial Intelligence (AI) core deployed in the Alveo accelerator. In addition, we have described the process of porting standard AI models to Vitis AI and discussed its limitations and possible implications. During validation, we designed and trained some AI models for fast fault detection in Smart Grids. However, the AI framework is standard, and adapting the models to Field Programmable Gate Arrays (FPGA) has demanded a series of transformation processes. Compared with the Graphics Processing Unit platform, our implementation on the FPGA accelerator consumes less energy and achieves lower latency. Finally, our system balances inference accuracy, on-chip resources consumed, computing performance, and throughput. Even with grid data sampling rates as high as 800,000 per second, our hardware architecture can simultaneously process up to 7 data streams.

Details

Database :
OAIster
Notes :
10.13039/501100000780-European Commission (Grant Number: FEDER) 10.13039/501100003086-Eusko Jaurlaritza (Grant Number: ZE-2020/00022 and ZE-2021/00931) 10.13039/100015866-Hezkuntza, Hizkuntza Politika Eta Kultura Saila, Eusko Jaurlaritza (Grant Number: IT1440-22) 10.13039/501100004837-Ministerio de Ciencia e Innovación (Grant Number: IDI-20201264 and IDI-20220543), English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1390906692
Document Type :
Electronic Resource