Abstract

Artificial intelligence through deep neural networks is now widely used in a variety of applications that have profoundly altered human livelihoods in a variety of ways. People's daily lives have become much more convenient. Image recognition, smart recommendations, self-driving vehicles, voice translation, and a slew of other neural network innovations have had a lot of success in their respective fields. The authors present the ANN applied in weather forecasting. The prediction technique relies solely upon learning previous input values from intervals in order to forecast future values. And also, Convolutional Neural Networks (CNNs) are a form of deep learning technique that can help classify, recognize, and predict trends in climate change and environmental data. However, due to the inherent difficulties of such results, which are often independently identified, non-stationary, and unstable CNN algorithms should be built and tested with each dataset and system separately. On the other hand, to eradicate error and provides us with data that is virtually identical to the real value we need Artificial Neural Networks (ANN) algorithms or benefit from it. The presented CNN model's forecasting efficiency was compared to some state-of-the-art ANN algorithms. The analysis shows that weather prediction applications become more efficient when using ANN algorithms because it is really easy to put into practice.

Highlights

  • Predicting future actions is a critical problem throughout the sciences and engineering, and it is needed in all aspects of life

  • The analysis shows that weather prediction applications become more efficient when using Artificial Neural Networks (ANN) algorithms because it is really easy to put into practice

  • Predicting accurate results, which can be used in several real-time applications, is a major challenge of weather forecasting

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Summary

Introduction

Predicting future actions is a critical problem throughout the sciences and engineering, and it is needed in all aspects of life. Weather predictions are based on the qualitative information on the current condition of the climate is being collected and the application of scientific knowledge processes in the atmosphere to predict why the environment would change in the future [3] [4] It must be intelligent in particular for them to quickly read statistical data in order to produce patterns and rules to research and forecast the future based on historical data [5] [6] [7]. ANN has proven to be a more effective method of increasing reliability and accuracy It is a fast-growing machine learning technique that uses non-linear statistical models for classifying data and weather forecasting [14] [15] [16].

Literature review
Methodology
Artificial Neural Network -ANN
Objective
Conclusion
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