A Low-Power Analog Processor-in-Memory-Based Convolutional Neural Network for Biosensor Applications.
Sung-June ByunDong-Gyun KimKyung-Do ParkYeun-Jin ChoiPervesh KumarImran AliDong-Gyu KimJune-Mo YooHyung-Ki HuhYeon-Jae JungSeok-Kee KimYoung-Gun PuKang-Yoon LeePublished in: Sensors (Basel, Switzerland) (2022)
This paper presents an on-chip implementation of an analog processor-in-memory (PIM)-based convolutional neural network (CNN) in a biosensor. The operator was designed with low power to implement CNN as an on-chip device on the biosensor, which consists of plates of 32 × 32 material. In this paper, 10T SRAM-based analog PIM, which performs multiple and average (MAV) operations with multiplication and accumulation (MAC), is used as a filter to implement CNN at low power. PIM proceeds with MAV operations, with feature extraction as a filter, using an analog method. To prepare the input feature, an input matrix is formed by scanning a 32 × 32 biosensor based on a digital controller operating at 32 MHz frequency. Memory reuse techniques were applied to the analog SRAM filter, which is the core of low power implementation, and in order to accurately grasp the MAC operational efficiency and classification, we modeled and trained numerous input features based on biosignal data, confirming the classification. When the learned weight data was input, 19 mW of power was consumed during analog-based MAC operation. The implementation showed an energy efficiency of 5.38 TOPS/W and was differentiated through the implementation of 8 bits of high resolution in the 180 nm CMOS process.
Keyphrases
- convolutional neural network
- deep learning
- primary care
- machine learning
- sensitive detection
- healthcare
- high resolution
- gold nanoparticles
- artificial intelligence
- quantum dots
- label free
- working memory
- big data
- high throughput
- circulating tumor cells
- electronic health record
- physical activity
- mass spectrometry
- body mass index
- photodynamic therapy