Long-term and short-term memory networks based on forgetting memristors

被引:2
作者
Liu, Yi [1 ]
Chen, Ling [1 ,2 ]
Li, Chuandong [1 ]
Liu, Xin [2 ]
Zhou, Wenhao [1 ]
Li, Ke [1 ]
机构
[1] Southwest Univ, Chongqing Key Lab Nonlinear Circuits & Intelligent, Elect Informat & Engn, Chongqing 400715, Peoples R China
[2] Lappeenranta Lahti Univ Technol LUT, Sch Engn Sci, Comp Vis & Pattern Recognit Lab, Lappeenranta, Finland
关键词
Image classification; Forgetting memristor; Long- and short-term memory network; Fixed decay; Synchronous decay; CIRCUIT; DESIGN; MODEL;
D O I
10.1007/s00500-023-09110-y
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
The hardware circuit of neural network based on forgetting memristors not only has the characteristics of high computational efficiency and low power consumption, but also has the advantage that a memristor can store the weight of long-term memory and short-term memory. Neural networks based on forgetting memristors can process two different data sets; however, the number of data sets processed is determined by the conversion rate of short-term memory to long-term memory neural network. In this paper, a forgetting memristor model with controllable decay rate is proposed, the short-term memory and long-term memory of the long-term and short-term memory (LSTM) network based on forgetting memristor is proposed, and the conversion speed from short-term memory network to long-term memory network is controllable. In the process of transformation from short-term memory to long-term memory of LSTM network based on forgetting memristor, the decay rate of forgetting memristor can be controlled, and the duration of short-term memory of LSTM network can be set. A reset signal mechanism is proposed so that the state of short-term memory of LSTM network with high recognition rate can be controlled. Based on the proposed controllable decay rate and reset signal, the state of the short-term memory network with high recognition rate can be set, so the LSTM network with two states can realize the recognition of different number of images under different data sets. Finally, two kinds of data sets are tested on the LSTM network based on the forgetting memristor, and the recognition rate is good, which shows the effectiveness of the proposed algorithm.
引用
收藏
页码:18403 / 18418
页数:16
相关论文
共 50 条
[21]   Using long short-term memory networks for river flow prediction [J].
Xu, Wei ;
Jiang, Yanan ;
Zhang, Xiaoli ;
Li, Yi ;
Zhang, Run ;
Fu, Guangtao .
HYDROLOGY RESEARCH, 2020, 51 (06) :1358-1376
[22]   Short Term Prediction of Wind Speed Based on Long-Short Term Memory Networks [J].
Salman, Umar T. ;
Rehman, Shafiqur ;
Alawode, Basit ;
Alhems, Luai M. .
FME TRANSACTIONS, 2021, 49 (03) :643-652
[23]   A Nash Game with Long-term and Short-term Players [J].
Papavassilopoulos, George P. ;
Abou-Kandil, Hisham ;
Jungers, Marc .
2013 IEEE 52ND ANNUAL CONFERENCE ON DECISION AND CONTROL (CDC), 2013, :1726-1731
[24]   Short-term Interventions for Long-term Change: Spreading Stable Green Norms in Networks [J].
Spencer, Gwen ;
Carattini, Stefano ;
Howarth, Richard B. .
REVIEW OF BEHAVIORAL ECONOMICS, 2019, 6 (01) :53-93
[25]   Short-Term Forgetting Without Interference [J].
McKeown, Denis ;
Mercer, Tom .
JOURNAL OF EXPERIMENTAL PSYCHOLOGY-LEARNING MEMORY AND COGNITION, 2012, 38 (04) :1057-1068
[26]   Phonemic interference in short-term memory contributes to forgetting but is not due to overwriting [J].
Roodenrys, Steven ;
Miller, Leonie M. ;
Josifovski, Natasha .
JOURNAL OF MEMORY AND LANGUAGE, 2022, 122
[27]   Unbalanced Position Recognition of Rotor Systems Based on Long and Short-Term Memory Neural Networks [J].
Cao, Yiming ;
Shi, Changzhi ;
Li, Xuejun ;
Li, Mingfeng ;
Bian, Jie .
MACHINES, 2024, 12 (12)
[28]   Attention-based recurrent neural networks for accurate short-term and long-term dissolved oxygen prediction [J].
Liu, Yeqi ;
Zhang, Qian ;
Song, Lihua ;
Chen, Yingyi .
COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2019, 165
[29]   Adaptive Clustering Long Short-Term Memory Network for Short-Term Power Load Forecasting [J].
Qi, Yuanhang ;
Luo, Haoyu ;
Luo, Yuhui ;
Liao, Rixu ;
Ye, Liwei .
ENERGIES, 2023, 16 (17)
[30]   An Enhancement Method Based on Long Short-Term Memory Neural Network for Short-Term Natural Gas Consumption Forecasting [J].
Liu, Jinyuan ;
Wang, Shouxi ;
Wei, Nan ;
Yang, Yi ;
Lv, Yihao ;
Wang, Xu ;
Zeng, Fanhua .
ENERGIES, 2023, 16 (03)