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Memristor's characteristics: From non-ideal to ideal |
Fan Sun(孙帆), Jing Su(粟静), Jie Li(李杰), Shukai Duan(段书凯), and Xiaofang Hu(胡小方)† |
College of Artificial Intelligence, Southwest University, Chongqing 400715, China |
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Abstract Memristor has been widely studied in the field of neuromorphic computing and is considered to be a strong candidate to break the von Neumann bottleneck. However, the non-ideal characteristics of memristor seriously limit its practical application. There are two sides to everything, and memristors are no exception. The non-ideal characteristics of memristors may become ideal in some applications. Genetic algorithm (GA) is a method to search for the optimal solution by simulating the process of biological evolution. It is widely used in the fields of machine learning, combinatorial optimization, and signal processing. In this paper, we simulate the biological evolutionary behavior in GA by using the non-ideal characteristics of memristors, based on which we design peripheral circuits and path planning algorithms based on memristor networks. The experimental results show that the non-ideal characteristics of memristor can well simulate the biological evolution behavior in GA.
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Received: 02 May 2022
Revised: 23 May 2022
Accepted manuscript online: 02 June 2022
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PACS:
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84.35.+i
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(Neural networks)
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84.37.+q
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(Measurements in electric variables (including voltage, current, resistance, capacitance, inductance, impedance, and admittance, etc.))
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87.19.lv
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(Learning and memory)
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Fund: Project supported by the National Natural Science Foundation of China (Grant Nos. 61976246 and U20A20227), the Natural Science Foundation of Chongqing, China (Grant No. cstc2020jcyj-msxm X0385), and the National Key R&D Program of China (Grant Nos. 2018YFB130660 and 2018YFB1306604). |
Corresponding Authors:
Xiaofang Hu
E-mail: huxf@swu.edu.cn
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Cite this article:
Fan Sun(孙帆), Jing Su(粟静), Jie Li(李杰), Shukai Duan(段书凯), and Xiaofang Hu(胡小方) Memristor's characteristics: From non-ideal to ideal 2023 Chin. Phys. B 32 028401
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[1] Chua L 1971 IEEE Trans. Circuit Theory 18 507 [2] Strukov D B, Snider G S, Stewart D R and Williams R S 2008 Nature 453 80 [3] Yoon J H, Wang Z, Kim K M, Wu H, Ravichandran V, Xia Q, Hwang C S and Yang J J 2018 Nature 9 417 [4] Burr G W, Shelby R M, Sebastian A, et al. 2017 Adv. Phys. X 2 89 [5] Yu S, Gao B, Fang Z, Yu H, Kang J and Wong H P 2013 Adv. Mater. 25 1774 [6] Prezioso M, Merrikh-Bayat F, Hoskins B D, Adam G C, Likharev K K and Strukov D B 2015 Nature 521 61 [7] Li C, Belkin D, Li Y, et al. 2018 2018 IEEE International Memory Workshop (IMW), May 13-16, 2018, Kyoto, Japan, pp. 12-15 [8] Jo S H, Chang T, Ebong I, Bhadviya B B, Mazumder P and Lu W 2010 Nano Lett. 10 1297 [9] Yao P, Wu H, Gao B, Tang J, Zhang Q, Zhang W, Yang J J and Qian H 2020 Nature 577 641 [10] Chen L, He Z, Li C, Wen S and Chen Y 2020 Int. J. Bifur. Chaos 30 2050172 [11] Xi Y, Gao B, Tang J, Chen A, Chang M F, Hu X S, Van Der Spiegel J, Qian H and Wu H 2020 Proc. IEEE 109 14 [12] Yao P, Wu H, Gao B, et al. 2017 Nat. Commun. 8 15199 [13] Cai Y, Tang T, Xia L, Cheng M, Zhu Z, Wang Y and Yang H 2018 2018 23rd Asia and South Pacific Design Automation Conference (ASP-DAC) January 22-25, 2018, Jeju Island, South Korea, pp. 117-122 [14] Ambrogio S, Narayanan P, Tsai H, et al. 2018 Nature 558 60 [15] Li C, Li Y, Jiang H, et al. 2018 2018 IEEE International Symposium on Circuits and Systems (ISCAS), May 27-30, 2018, Florence, Italy, pp. 1-4 [16] Ravichandran V, Li C, Banagozar A, Yang J J and Xia Q 2018 Sci. China Inf. Sci. 61 1 [17] Wang Y, Wu S, Tian L and Shi L 2020 Neurocomputing 407 270 [18] Katoch S, Chauhan S S and Kumar V 2021 Multimedia Tools and Applications 80 8091 [19] Mirjalili S, Song D J, Sadiq A S and Faris H 2020 Nature-Inspired Optimizers Vol. 811 p. 69 [20] Zhi H and Liu S 2019 J. Visual Commun. Image Represent. 58 495 [21] Campbell K A 2017 Microelectron. J. 59 10 |
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