Join BookitisSave favorites, build lists, and follow creators.

Multivariate Time Series

Work detail

Bookitis Pick
Cover for Multivariate Time Series
MT
Image source: Open Library
Rifat ZahanYesmin Akhter1 editions

Climate change is the greatest environmental challenge facing the world today. Rising global temperatures will bring changes in weather patterns, rising sea levels and increased frequency and intensity of extreme weather. The Yearly Weather data can be a great source to detect any climatic change in our country. This book contains a multivariate autoregressive analysis on temperature of Rajshahi district of Bangladesh. We try to apply a unique and suitable forecasting model for Temperature data. At first three well known statistical forecasting models; Multiple Regression Model, Autoregressive Integrated Moving Average (ARIMA) Model, Vector Autoregressive (VAR) Model are chosen. After analysis we find that VAR(2) best fit for the Temperature data. So the information is, for yearly temperature forecasting task in Rajshahi District the first choice might be VAR(2). Using all the above methods Temperature was forecasted for the out-of-sample period 2008-2021.The analysis should help shed some light on this new and exciting topic, and should be especially useful to professionals in Geography and Geology fields, or anyone else who may be considering Global warming as a serious issue.

Overview

Shared work-level identity and catalog context.

2 credited authorsSearch language english

Bookitis keeps work pages focused on the shared book identity and the editions that actually belong to it. Unrelated books should not appear here as primary content.

Contributors

People credited with this work in the active catalog.

  • Rifat Zahan

    Author profile in the active Bookitis catalog

    Open Author
  • Yesmin Akhter

    Author profile in the active Bookitis catalog

    Open Author

Editions

Publication-specific versions linked to this work only.