The paper presents a neuromorphic system implemented on a Field Programmable Gate Array (FPGA) device establishing fault tolerance using a learning method, which is a combination of the Spike-Timing-Dependent Plasticity (STDP) and Bienenstock, Cooper, and Munro (BCM) learning rules. The rule modulates the synaptic plasticity level by shifting the plasticity window, associated with STDP, up/down the vertical axis as a function of postsynaptic neural activity. Specifically when neurons are inactive, either early on in the normal learning phase or when a fault occurs, the window is shifted up the vertical axis (open), leading to an increase in firing rate of the postsynaptic neuron. As learning progresses, the plasticity window moves down the ...
The promise of neuromorphic computing to develop ultra-low-power intelligent devices lies in its abi...
Supervised, unsupervised, and reinforcement learning (RL) mechanisms are known as the most powerful ...
Supervised, unsupervised, and reinforcement learning (RL) mechanisms are known as the most powerful ...
The paper presents a neuromorphic system implemented on a Field Programmable Gate Array (FPGA) devic...
We present a novel methodology that addresses the problem of faults in synapses of a spiking neural ...
We present a novel methodology that addresses the problem of faults in synapses of a spiking neural ...
In this paper a novel self-repairing learning rule is proposed which is a combination of the spike-t...
In this paper a novel self-repairing learning rule is proposed which is a combination of the spike-t...
Fault tolerance is a remarkable feature of biological systems and their self-repair capability influ...
Fault tolerance is a remarkable feature of biological systems and their self-repair capability influ...
Fault tolerance is a remarkable feature of biological systems and their self-repair capability influ...
Neuromorphic computing is a promising technology that realizes computation based on event-based spik...
Neuromorphic computing is a promising technology that realizes computation based on event-based spik...
Neuromorphic computing is a promising technology that realizes computation based on event-based spik...
Neuromorphic computing is a promising technology that realizes computation based on event-based spik...
The promise of neuromorphic computing to develop ultra-low-power intelligent devices lies in its abi...
Supervised, unsupervised, and reinforcement learning (RL) mechanisms are known as the most powerful ...
Supervised, unsupervised, and reinforcement learning (RL) mechanisms are known as the most powerful ...
The paper presents a neuromorphic system implemented on a Field Programmable Gate Array (FPGA) devic...
We present a novel methodology that addresses the problem of faults in synapses of a spiking neural ...
We present a novel methodology that addresses the problem of faults in synapses of a spiking neural ...
In this paper a novel self-repairing learning rule is proposed which is a combination of the spike-t...
In this paper a novel self-repairing learning rule is proposed which is a combination of the spike-t...
Fault tolerance is a remarkable feature of biological systems and their self-repair capability influ...
Fault tolerance is a remarkable feature of biological systems and their self-repair capability influ...
Fault tolerance is a remarkable feature of biological systems and their self-repair capability influ...
Neuromorphic computing is a promising technology that realizes computation based on event-based spik...
Neuromorphic computing is a promising technology that realizes computation based on event-based spik...
Neuromorphic computing is a promising technology that realizes computation based on event-based spik...
Neuromorphic computing is a promising technology that realizes computation based on event-based spik...
The promise of neuromorphic computing to develop ultra-low-power intelligent devices lies in its abi...
Supervised, unsupervised, and reinforcement learning (RL) mechanisms are known as the most powerful ...
Supervised, unsupervised, and reinforcement learning (RL) mechanisms are known as the most powerful ...