New full adders using multi-layer perceptron network

Authors

  • Leila Dehbozorgi Department of Electrical and Electronics, Islamic Azad University, Central Tehran Branch, , Tehran, Iran
  • Reza Akbari-Hasanjani Department of Electrical and Electronics, Islamic Azad University, Central Tehran Branch, Tehran, Iran
Abstract:

How to reconfigure a logic gate for a variety of functions is an interesting topic. In this paper, a different method of designing logic gates are proposed. Initially, due to the training ability of the multilayer perceptron neural network, it was used to create a new type of logic and full adder gates. In this method, the perceptron network was trained and then tested. This network was 100% accurate to determine outputs based on inputs. The results of comparison showed that the multilayer perceptron network had higher velocity and less delay in most cases, and used a smaller number of neurons, which will reduce the loss of power. Meanwhile, implementation of these gates will require less space through the multi-layer perceptron network. This method is prioritized in terms of the number of neurons and the level of implementation, and the speed of the detection of output compared to the other design. It also occupies less hardware space and is less complicated.

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Journal title

volume 08  issue 03

pages  115- 120

publication date 2020-06-01

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