Reinforcement learning is important for machine-intelligence and neurophysiological modelling applications to provide time-critical decision making. Analog circuit implementation has been demonstrated as a powerful computational platform for power-efficient, bio-implantable and real-time applications. This paper presents a current-mode analog circuit design for solving reinforcement learning problem with simple and efficient computational network architecture. The design has been fabricated and a new procedure to validate the fabricated reinforcement learning circuit will also be presented. This work provides a preliminary study for future biomedical application using CMOS VLSI reinforcement learning model
This report explores the design of building blocks that can be employed in analog implementations of...
In this chapter, we introduce an analog chip hosting a self-learning neural network with local learn...
Analog VLSI on-chip learning Neural Networks represent a mature technology for a large number of app...
Analog VLSI implementations of artificial neural networks are usually considered efficient for the s...
This paper deals with analog VLSI architectures addressed to the implementation of smart adaptive sy...
AbstractIn the neural network field, many application models have been proposed. Previous analog neu...
Nature has evolved highly advanced systems capable of performing complex computations, adoption and ...
An analog implementation of a neuron using standard VLSI components is described. The node is capabl...
An ASIC analog chip which implements the basic computational primitives of a neural model with on-ch...
The CMOS circuit implementation of the feedforward neural primitives of a generic Multi Layer Percep...
Reinforcement learning (RL) has been examined to learn when an agent interacts continually with an e...
With the advent of new technologies and advancement in medical science we are trying to process the ...
The CMOS circuit implementation of the feed forward neural primitives of a generic Multi Layer Perce...
To endow large scale VLSI networks of spiking neurons with learning abilities it is important to dev...
An analog VLSI neural network integrated circuit is presented. It consist of a feedforward multi lay...
This report explores the design of building blocks that can be employed in analog implementations of...
In this chapter, we introduce an analog chip hosting a self-learning neural network with local learn...
Analog VLSI on-chip learning Neural Networks represent a mature technology for a large number of app...
Analog VLSI implementations of artificial neural networks are usually considered efficient for the s...
This paper deals with analog VLSI architectures addressed to the implementation of smart adaptive sy...
AbstractIn the neural network field, many application models have been proposed. Previous analog neu...
Nature has evolved highly advanced systems capable of performing complex computations, adoption and ...
An analog implementation of a neuron using standard VLSI components is described. The node is capabl...
An ASIC analog chip which implements the basic computational primitives of a neural model with on-ch...
The CMOS circuit implementation of the feedforward neural primitives of a generic Multi Layer Percep...
Reinforcement learning (RL) has been examined to learn when an agent interacts continually with an e...
With the advent of new technologies and advancement in medical science we are trying to process the ...
The CMOS circuit implementation of the feed forward neural primitives of a generic Multi Layer Perce...
To endow large scale VLSI networks of spiking neurons with learning abilities it is important to dev...
An analog VLSI neural network integrated circuit is presented. It consist of a feedforward multi lay...
This report explores the design of building blocks that can be employed in analog implementations of...
In this chapter, we introduce an analog chip hosting a self-learning neural network with local learn...
Analog VLSI on-chip learning Neural Networks represent a mature technology for a large number of app...