Thermal Optimization for Memristor-Based Hybrid Neuromorphic Computing Systems

碩士 === 國立成功大學 === 資訊工程學系 === 103 === Neuromorphic computing is used for accelerating the computation of neural network which can simulate the brain of animal and composed by neurons and synapses. However, the neuromorphic computing with the traditional computer architecture leads to serious von Neum...

Full description

Bibliographic Details
Main Authors: Chi-RuoWu, 吳持若
Other Authors: Ing-Chao Lin
Format: Others
Language:en_US
Published: 2015
Online Access:http://ndltd.ncl.edu.tw/handle/92733965779911937401
id ndltd-TW-103NCKU5392028
record_format oai_dc
spelling ndltd-TW-103NCKU53920282016-05-22T04:40:56Z http://ndltd.ncl.edu.tw/handle/92733965779911937401 Thermal Optimization for Memristor-Based Hybrid Neuromorphic Computing Systems 應用於憶阻器實現神經形態工程學之考量熱能最佳化 Chi-RuoWu 吳持若 碩士 國立成功大學 資訊工程學系 103 Neuromorphic computing is used for accelerating the computation of neural network which can simulate the brain of animal and composed by neurons and synapses. However, the neuromorphic computing with the traditional computer architecture leads to serious von Neumann bottleneck because of the gap between high frequency CPU computation and memory access. The emerging memristor is an innovation technology for future VLSI circuits potentially can be acted as both data storage and computing unit to transform the computer architecture. Furthermore, the characteristics of memristors include low programming energy, parallel process, small footprint, non-volatility, etc, which have attracted significant researches on neuromorphic computing. However, some important issues such as thermal damage defect the reliability of memristors. High thermal of memristor is a critical issue which impacts the reliability of the systems. To estimate the thermal of the memristor, we formulated the thermal as the power consumption problem. In this thesis, a thermal optimization algorithm for memristor-based hybrid neuromorphic computing system is proposed to solve the the reliability issue by the incremental cluster network flow. Our results show that the maximum power consumption can be reduced about 31%. Ing-Chao Lin 林英超 2015 學位論文 ; thesis 35 en_US
collection NDLTD
language en_US
format Others
sources NDLTD
description 碩士 === 國立成功大學 === 資訊工程學系 === 103 === Neuromorphic computing is used for accelerating the computation of neural network which can simulate the brain of animal and composed by neurons and synapses. However, the neuromorphic computing with the traditional computer architecture leads to serious von Neumann bottleneck because of the gap between high frequency CPU computation and memory access. The emerging memristor is an innovation technology for future VLSI circuits potentially can be acted as both data storage and computing unit to transform the computer architecture. Furthermore, the characteristics of memristors include low programming energy, parallel process, small footprint, non-volatility, etc, which have attracted significant researches on neuromorphic computing. However, some important issues such as thermal damage defect the reliability of memristors. High thermal of memristor is a critical issue which impacts the reliability of the systems. To estimate the thermal of the memristor, we formulated the thermal as the power consumption problem. In this thesis, a thermal optimization algorithm for memristor-based hybrid neuromorphic computing system is proposed to solve the the reliability issue by the incremental cluster network flow. Our results show that the maximum power consumption can be reduced about 31%.
author2 Ing-Chao Lin
author_facet Ing-Chao Lin
Chi-RuoWu
吳持若
author Chi-RuoWu
吳持若
spellingShingle Chi-RuoWu
吳持若
Thermal Optimization for Memristor-Based Hybrid Neuromorphic Computing Systems
author_sort Chi-RuoWu
title Thermal Optimization for Memristor-Based Hybrid Neuromorphic Computing Systems
title_short Thermal Optimization for Memristor-Based Hybrid Neuromorphic Computing Systems
title_full Thermal Optimization for Memristor-Based Hybrid Neuromorphic Computing Systems
title_fullStr Thermal Optimization for Memristor-Based Hybrid Neuromorphic Computing Systems
title_full_unstemmed Thermal Optimization for Memristor-Based Hybrid Neuromorphic Computing Systems
title_sort thermal optimization for memristor-based hybrid neuromorphic computing systems
publishDate 2015
url http://ndltd.ncl.edu.tw/handle/92733965779911937401
work_keys_str_mv AT chiruowu thermaloptimizationformemristorbasedhybridneuromorphiccomputingsystems
AT wúchíruò thermaloptimizationformemristorbasedhybridneuromorphiccomputingsystems
AT chiruowu yīngyòngyúyìzǔqìshíxiànshénjīngxíngtàigōngchéngxuézhīkǎoliàngrènéngzuìjiāhuà
AT wúchíruò yīngyòngyúyìzǔqìshíxiànshénjīngxíngtàigōngchéngxuézhīkǎoliàngrènéngzuìjiāhuà
_version_ 1718277140038811648