Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Ferroelectric Devices for Neuromorphic Computing

View through CrossRef
Neuromorphic computing inspired by the neural network systems of the human brain enables energy efficient computing for big-data processing. A neural network is formed by thousands or even millions of neurons which are connected by even a higher number of synapses. Neurons communicate with each other through the connected synapses. The main responsibility of synapses is to transfer information from the pre-synaptic to the postsynaptic neurons. Synapses can memorize and process the information simultaneously. The plasticity of a synapse to strengthen or weaken their activity over time make it capable of learning and computing. Thus, artificial synapses which can emulate functionalities and the plasticity of bio-synapses form the backbones of neuromorphic computing. Alternative artificial synapses have been successfully demonstrated. The classical two-terminal memristor devices, like resistive random access memory (ReRAM), phase change memory (PCM) and ferroelectric tunnel junctions (FTJs) with one terminal connected to the pre-synaptic neuron and another connected with the post-synaptic neuron, own advantages of simple structure, easy processing with high density, and capability of integration with CMOS. However, signal processing and learning cannot be performed simultaneously in 2-terminal devices, thus limiting their synaptic functionalities. Ferroelectric field effect transistors (FeFET) which uses ferroelectric as the gate oxide are the most interesting three-terminal artificial synapse devices, in which the gate or the source is connected to the pre-synaptic neuron while the drain is used for the terminal of the post-synaptic neuron , thus can perform signal transmission and learning simultaneously. However, traps at the channel interface can degrade the device performance causing low endurance. Focuses of those abovementioned devices have been mainly put on the homosynaptic plasticity, which is input specific, meaning that the plasticity occurs only at the synapse with a pre-synaptic activation . The homosynaptic plasticity has a drawback of positive feedback loop: when a synapse is potentiated, the probability of the synapse to be further potentiated is increased. Similarly, when a synapse is depressed the probability of the synapse of being further depressed is higher. Therefore, synaptic weights tend to be either strengthened to the maximum value or weakened to zero, causing the system to be unstable. In contrast, heterosynaptic plasticity can be induced at any synapse at the same time after episodes of strong postsynaptic activity, avoiding the positive feedback problem and stabilize the activity of the post-synaptic neuron. To address the above challenges we proposed a very simple 4-terminal synapse structure based on gated Schottky diodes on silicon (FEMOD) with a ferroelectric layer. The conductance of the Schottky diode is modulated by the polarization of the ferroelectric layer. With this simple synapse structure we can achieve multiple hetero-synaptic functions, including excitatory/ inhibitory post-synaptic current (EPSC/IPSC), paired-pulse facilitation/depression (PPF/PPD), long-term potentiation/depression (LTP/LTD), as well as biological neuron-like spike-timing-dependent plasticity (STDP) characteristics. The modulatory synapse can modify the weight of another synapse with a very low voltage. Furthermore, logic gates, like AND and NAND which are highly desired for in-memory computing can be realized with such simple structure. Figure 1
Title: Ferroelectric Devices for Neuromorphic Computing
Description:
Neuromorphic computing inspired by the neural network systems of the human brain enables energy efficient computing for big-data processing.
A neural network is formed by thousands or even millions of neurons which are connected by even a higher number of synapses.
Neurons communicate with each other through the connected synapses.
The main responsibility of synapses is to transfer information from the pre-synaptic to the postsynaptic neurons.
Synapses can memorize and process the information simultaneously.
The plasticity of a synapse to strengthen or weaken their activity over time make it capable of learning and computing.
Thus, artificial synapses which can emulate functionalities and the plasticity of bio-synapses form the backbones of neuromorphic computing.
Alternative artificial synapses have been successfully demonstrated.
The classical two-terminal memristor devices, like resistive random access memory (ReRAM), phase change memory (PCM) and ferroelectric tunnel junctions (FTJs) with one terminal connected to the pre-synaptic neuron and another connected with the post-synaptic neuron, own advantages of simple structure, easy processing with high density, and capability of integration with CMOS.
However, signal processing and learning cannot be performed simultaneously in 2-terminal devices, thus limiting their synaptic functionalities.
Ferroelectric field effect transistors (FeFET) which uses ferroelectric as the gate oxide are the most interesting three-terminal artificial synapse devices, in which the gate or the source is connected to the pre-synaptic neuron while the drain is used for the terminal of the post-synaptic neuron , thus can perform signal transmission and learning simultaneously.
However, traps at the channel interface can degrade the device performance causing low endurance.
Focuses of those abovementioned devices have been mainly put on the homosynaptic plasticity, which is input specific, meaning that the plasticity occurs only at the synapse with a pre-synaptic activation .
The homosynaptic plasticity has a drawback of positive feedback loop: when a synapse is potentiated, the probability of the synapse to be further potentiated is increased.
Similarly, when a synapse is depressed the probability of the synapse of being further depressed is higher.
Therefore, synaptic weights tend to be either strengthened to the maximum value or weakened to zero, causing the system to be unstable.
In contrast, heterosynaptic plasticity can be induced at any synapse at the same time after episodes of strong postsynaptic activity, avoiding the positive feedback problem and stabilize the activity of the post-synaptic neuron.
To address the above challenges we proposed a very simple 4-terminal synapse structure based on gated Schottky diodes on silicon (FEMOD) with a ferroelectric layer.
The conductance of the Schottky diode is modulated by the polarization of the ferroelectric layer.
With this simple synapse structure we can achieve multiple hetero-synaptic functions, including excitatory/ inhibitory post-synaptic current (EPSC/IPSC), paired-pulse facilitation/depression (PPF/PPD), long-term potentiation/depression (LTP/LTD), as well as biological neuron-like spike-timing-dependent plasticity (STDP) characteristics.
The modulatory synapse can modify the weight of another synapse with a very low voltage.
Furthermore, logic gates, like AND and NAND which are highly desired for in-memory computing can be realized with such simple structure.
Figure 1.

Related Results

Relaxor Ferroelectric Oxides: Concept to Applications
Relaxor Ferroelectric Oxides: Concept to Applications
Ferroelectric ceramic is one of the most important functional materials, which has great importance in modern technologies. A ferroelectric ceramic simultaneously exhibits dielectr...
Neuromorphic computing for energy-efficient machine intelligence
Neuromorphic computing for energy-efficient machine intelligence
Abstract Neuromorphic computing has gained a significant amount of attention from industry as well as the research community as a means of overcoming the growing ...
Recent advances in ferroelectric materials, devices, and in-memory computing applications
Recent advances in ferroelectric materials, devices, and in-memory computing applications
Abstract Ferroelectric memories have undergone a transformative evolution from conventional perovskite-based materials to modern fluorite-str...
Robust analogue neuromorphic hardware networks using intrinsic physics-adaptive learning
Robust analogue neuromorphic hardware networks using intrinsic physics-adaptive learning
Abstract Analogue neuromorphic computing hardware is highly energy-efficient and has been regarded as one of the most promising technologies for advancing artificial intell...
Resistive Switching Devices for Neuromorphic Computing: From Foundations to Chip Level Innovations
Resistive Switching Devices for Neuromorphic Computing: From Foundations to Chip Level Innovations
Neuromorphic computing has emerged as an alternative computing paradigm to address the increasing computing needs for data-intensive applications. In this context, resistive random...
Editorial: Focus on algorithms for neuromorphic computing
Editorial: Focus on algorithms for neuromorphic computing
Abstract Neuromorphic computing provides a promising energy-efficient alternative to von-Neumann-type computing and learning architectures. However, the best neuromo...
Hafnia-based neuromorphic devices
Hafnia-based neuromorphic devices
The excellent complementary metal-oxide-semiconductor compatibility and rich physicochemical properties of hafnia-based materials, in particular the unique ferroelectricity that su...
Ferroelectric Ceramic Materials Prepared by Nanoparticles in Outdoor Environmental Sculpture Art
Ferroelectric Ceramic Materials Prepared by Nanoparticles in Outdoor Environmental Sculpture Art
With the development and progress of the city, people’s research on outdoor sculpture has gone deeper, and the field of material research has been raised to the field of spiritual ...

Back to Top