Affiliation:
1. Wuhan National Laboratory for Optoelectronics, Key Laboratory of Information Storage System, Ministry of Education of China, School of Computer Science and Technology, Huazhong University of Science and Technology, Wuhan, Hubei, China
Abstract
Emerging computational resistive memory is promising to overcome the challenges of scalability and energy efficiency that DRAM faces and also break through the memory wall bottleneck. However, cell-level and array-level nonideal properties of resistive memory significantly degrade the reliability, performance, accuracy, and energy efficiency during memory access and analog computation. Cell-level nonidealities include nonlinearity, asymmetry, and variability. Array-level nonidealities include interconnect resistance, parasitic capacitance, and sneak current. This review summarizes practical solutions that can mitigate the impact of nonideal device and circuit properties of resistive memory. First, we introduce several typical resistive memory devices with focus on their switching modes and characteristics. Second, we review resistive memory cells and memory array structures, including 1T1R, 1R, 1S1R, 1TnR, and CMOL. We also overview three-dimensional (3D) cross-point arrays and their structural properties. Third, we analyze the impact of nonideal device and circuit properties during memory access and analog arithmetic operations with focus on dot-product and matrix-vector multiplication. Fourth, we discuss the methods that can mitigate these nonideal properties by static parameter and dynamic runtime co-optimization from the viewpoint of device and circuit interaction. Here, dynamic runtime operation schemes include line connection, voltage bias, logical-to-physical mapping, read reference setting, and switching mode reconfiguration. Then, we highlight challenges on multilevel cell cross-point arrays and 3D cross-point arrays during these operations. Finally, we investigate design considerations of memory array peripheral circuits. We also portray an unified reconfigurable computational memory architecture.
Funder
Shenzhen Research Funding of Science and Technology
National Natural Science Foundation of China
Publisher
Association for Computing Machinery (ACM)
Subject
Electrical and Electronic Engineering,Computer Graphics and Computer-Aided Design,Computer Science Applications
Reference232 articles.
1. G. C Adam A. Khiat and T. Prodromakis. 2018. Challenges hindering memristive neuromorphic hardware from going mainstream. Nat. Commun. 9 1 (2018). G. C Adam A. Khiat and T. Prodromakis. 2018. Challenges hindering memristive neuromorphic hardware from going mainstream. Nat. Commun. 9 1 (2018).
2. TrueNorth: Design and Tool Flow of a 65 mW 1 Million Neuron Programmable Neurosynaptic Chip
3. F. Alibart L. Gao B. D. Hoskins and D. B. Strukov. 2012. High precision tuning of state for memristive devices by adaptable variation-tolerant algorithm. Nanotechnology 23 7 (2012). F. Alibart L. Gao B. D. Hoskins and D. B. Strukov. 2012. High precision tuning of state for memristive devices by adaptable variation-tolerant algorithm. Nanotechnology 23 7 (2012).
4. Memristor-CMOS Analog Coprocessor for Acceleration of High-Performance Computing Applications
5. 3nm GAA Technology featuring Multi-Bridge-Channel FET for Low Power and High Performance Applications
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