Litcius/Paper detail

Fundamentals of Neural Networks

Amey Thakur

2021International Journal for Research in Applied Science and Engineering Technology93 citationsDOIOpen Access PDF

Abstract

The purpose of this study is to familiarise the reader with the foundations of neural networks. Artificial Neural Networks (ANNs) are algorithm-based systems that are modelled after Biological Neural Networks (BNNs). Neural networks are an effort to use the human brain's information processing skills to address challenging real-world AI issues. The evolution of neural networks and their significance are briefly explored. ANNs and BNNs are contrasted, and their qualities, benefits, and disadvantages are discussed. The drawbacks of the perceptron model and their improvement by the sigmoid neuron and ReLU neuron are briefly discussed. In addition, we give a bird's-eye view of the different Neural Network models. We study neural networks (NNs) and highlight the different learning approaches and algorithms used in Machine Learning and Deep Learning. We also discuss different types of NNs and their applications. A brief introduction to Neuro-Fuzzy and its applications with a comprehensive review of NN technological advances is provided.

Topics & Concepts

Artificial neural networkArtificial intelligenceComputer scienceNervous system network modelsPhysical neural networkPerceptronMachine learningNeuro-fuzzyTypes of artificial neural networksSigmoid functionDeep learningNeural systemTime delay neural networkFuzzy logicFuzzy control systemNeurosciencePsychologyNeural Networks and Applications