Title :
Machine Learning Prediction for 13X Endurance Enhancement in ReRAM SSD System
Author :
Iwasaki, Tomoko Ogura ; Sheyang Ning ; Yamazawa, Hiroki ; Chao Sun ; Tanakamaru, Shuhei ; Takeuchi, Ken
Author_Institution :
Chuo Univ., Tokyo, Japan
Abstract :
The variable behavior of ReRAM memory cells is modeled with machine learning. Two types of prediction are investigated, reset in the next-cycle and cell fail in the long term. A new proposal, Proactive Bit Redundancy, introduces a ML-trained Prediction Engine into the SSD controller, to predict fail cells and replace them proactively - before actual failure- by redundancy. With the Invalid Masking technique, predicted cells are marked in-place within the page, so that no extra address table is needed. Thus, with ninimal overhead, 2.85x bit error rate reduction or 13x endurance improvement is obtained based on a 50nm AlxOy testchip.
Keywords :
learning (artificial intelligence); redundancy; resistive RAM; AlxOy; ML-trained prediction engine; ReRAM SSD system; ReRAM memory cells; SSD controller; address table; bit error rate reduction; endurance enhancement; fail cells; invalid masking technique; machine learning prediction; proactive bit redundancy; size 50 nm; variable behavior; Accuracy; Data models; Engines; Error correction codes; Predictive models; Proposals; Redundancy;
Conference_Titel :
Memory Workshop (IMW), 2015 IEEE International
Conference_Location :
Monterey, CA
Print_ISBN :
978-1-4673-6931-2
DOI :
10.1109/IMW.2015.7150294