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Memristive Circuit Implementation of Operant Cascaded With Classical Conditioning

机译:使用经典条件反射的操作级联的忆阻电路实现

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摘要

Classical conditioning (CC) and operant conditioning (OC), also known as associative memory, are two of the most fundamental and critical learning mechanisms in the biological brain. However, the existing designs of associative memory memristive circuits mainly focus on CC, and few studies have used memristors to imitate OC at the behavioral level, as well as the OC-CC cascaded associative memories that are widespread in biological learning processes. This work proposes an OC-CC cascaded circuit composed of OC and CC circuits. With the OC memristive circuit, bio-like functions such as random exploration, feedback learning, experience memory, and experience-based decision-making are achieved, which enables the circuit to continuously reshape its own memories and actions to adapt to changing environments. By cascading it with the CC memristive circuit that has the functions of associative learning, forgetting, generalization, and differentiation, the OC-CC cascaded circuit implements richer associative memories and has stronger environmental adaptability. Finally, the proposed circuits can perform on-line in-situ learning and in-memory computing. This is a more brain-like processing method, which is different from the von Neumann architecture. The simulation results of the proposed circuits in PSPICE show that they can simulate the above functions and have advantages in power consumption and hardware overhead. This work provides a possible realization idea for large-scale bionic learning.
机译:经典条件反射(CC)和操作性条件反射(OC),也称为联想记忆,是生物大脑中最基本和最关键的两种学习机制。然而,现有的联想记忆忆阻电路设计主要集中在CC上,很少有研究使用忆阻器在行为水平上模仿OC,以及生物学习过程中普遍存在的OC-CC级联想记忆。本文提出了一种由OC和CC电路组成的OC-CC级联电路。通过OC忆阻电路,实现了随机探索、反馈学习、经验记忆、基于经验的决策等类生物功能,使电路能够不断重塑自己的记忆和动作,以适应不断变化的环境。OC-CC级联电路通过与具有联想学习、遗忘、泛化、微分等功能的CC忆阻电路级联,实现了更丰富的联想记忆,具有更强的环境适应性。最后,所提出的电路可以进行在线原位学习和内存计算。这是一种更像大脑的处理方法,与冯·诺依曼架构不同。在PSPICE中对所提电路的仿真结果表明,它们能够仿真上述功能,在功耗和硬件开销方面具有优势。这项工作为大规模仿生学习提供了一个可能的实现思路。

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