← 返回 JSSC 论文列表JSSC 2020第2期Digital Circuits
A 1.9-mW SVM Processor With On-Chip Active Learning for Epileptic Seizure Control Shuo-An Huang, Student Member , IEEE, Kai-Chieh Chang, Horng-Huei Liou, and Chia-Hsiang Y ang , Senior Member , IEEE
一款用于癫痫发作控制的19mW SVM处理器,支持片上主动学习
96.6%检测准确率,0.28/h误报率,0.71s延迟,1.9mW功耗
SVM处理器癫痫控制ADMM算法低秩近似CORDIC
▸采用ADMM算法实现高度并行的SVM训练
▸利用mRMR和低秩近似减少99.4%计算复杂度和90.4%存储需求
▸基于CORDIC的硬件共享可配置处理单元阵列降低87%硬件复杂度
Abstract
This article presents a support vector machine (SVM) processor that supports both seizure detection and on- chip model adaptation for epileptic seizure control. Alternating direction method of multipliers (ADMM) is utilized for highly parallel computing for SVM training. From the algorithm aspect, minimum redundancy maximum relevance (mRMR) and low- rank approximation are exploited to reduce overall computa- tional complexity by 99.4% while also reducing memory storage by 90.4%. For hardware optimization, overall hardware complex- ity is reduced by 87% through a hardware-shared configurable coordinate rotation digital computer (CORDIC)-based processing element array. Parallel rotations and folded structure for the approximate Jacobi method reduce overall training latency by 98.6%. The chip achieves a detection performance with a 96.6% accuracy and a 0.28/h false alarm rate within 0.71 s with the power dissipation of 1.9 mW. The proposed SVM processor achieves the shortest detection latency compared with the state- of-the-art seizure detectors. It also supports real-time model adaptation with a latency of 0.78 s. Compared with previous designs, this work achieves a 22 × higher throughput and a 162× higher energy efficiency for SVM training.