Time Series Visualization using Transformer for Prediction of Natural Catastrophe
Journal: International Journal of Science and Research (IJSR) (Vol.10, No. 10)Publication Date: 2021-10-05
Authors : Shivam Pandey; Mahek Jain;
Page : 1137-1146
Keywords : Weather Forecasting; Transformer Networks; Time Series; Deep Learning; Attention Mechanisms;
Abstract
The extension of the forecast time is an essential requirement for real-world applications, which includes early caution for severe climate conditions. In this paper, we come up with a new approach to time series forecasting. The time-series data is generic in lots of disciplines and engineering. Time series prediction is a vital assignment in time-series data modeling and is an important area of deep learning. We have developed a novel technique that makes use of a Transformer-based deep learning model for the prediction of time-series data. This technique works with the aid of self-attention mechanisms to study complicated patterns and dynamics from time-series data. Moreover, it is a preferred framework and may be implemented in univariate and multivariate time series data, in addition to time series embedding. Using natural disasters such as flood forecasting as a case study, we show that the forecast outcomes produced using our technique are similar to the state-of-the-art.
Other Latest Articles
- Risk Management Practices and Firm Performance: Evidence from Non - Financial Listed Companies in Nigeria
- Leadership Policy Response through COVID-19 Pandemic: A Comparative Study of Six Sought Economies of the World
- Financial Literacy of Filipino Public School Teachers and Employees: Basis for Intervention Program
- A Trans Tale: The Phenomenology of Challenges Faced by Transgender Community during COVID-19 Induced Lockdown
- Impact of COVID-19 Pandemic and Lockdown on Student's Academic and Clinical Experience with the Online Form of Education among Dental Students
Last modified: 2022-02-15 18:46:47