Javascript must be enabled to continue!
A Novel WD-SARIMAX Model for Temperature Forecasting Using Daily Delhi Climate Dataset
View through CrossRef
Forecasting is defined as the process of estimating the change in uncertain situations. One of the most vital aspects of many applications is temperature forecasting. Using the Daily Delhi Climate Dataset, we utilize time series forecasting techniques to examine the predictability of temperature. In this paper, a hybrid forecasting model based on the combination of Wavelet Decomposition (WD) and Seasonal Auto-Regressive Integrated Moving Average with Exogenous Variables (SARIMAX) was created to accomplish accurate forecasting for the temperature in Delhi, India. The range of the dataset is from 2013 to 2017. It consists of 1462 instances and four features, and 80% of the data is used for training and 20% for testing. First, the WD decomposes the non-stationary data time series into multi-dimensional components. That can reduce the original time series’ volatility and increase its predictability and stability. After that, the multi-dimensional components are used as inputs for the SARIMAX model to forecast the temperature in Delhi City. The SARIMAX model employed in this work has the following order: (4, 0, 1). (4, 0, [1], 12). The experimental results demonstrated that WD-SARIMAX performs better than other recent models for forecasting the temperature in Delhi city. The Mean Square Error (MSE), Mean Absolute Error (MAE), Median Absolute Error (MedAE), Root Mean Square Error (RMSE), Mean Absolute Percentage Error (MAPE), and determination coefficient (R2) of the proposed WD-SARIMAX model are 2.8, 1.13, 0.76, 1.67, 4.9, and 0.91, respectively. Furthermore, the WD-SARIMAX model utilized the proposed to forecast the temperature in Delhi over the next eight years, from 2017 to 2025.
Title: A Novel WD-SARIMAX Model for Temperature Forecasting Using Daily Delhi Climate Dataset
Description:
Forecasting is defined as the process of estimating the change in uncertain situations.
One of the most vital aspects of many applications is temperature forecasting.
Using the Daily Delhi Climate Dataset, we utilize time series forecasting techniques to examine the predictability of temperature.
In this paper, a hybrid forecasting model based on the combination of Wavelet Decomposition (WD) and Seasonal Auto-Regressive Integrated Moving Average with Exogenous Variables (SARIMAX) was created to accomplish accurate forecasting for the temperature in Delhi, India.
The range of the dataset is from 2013 to 2017.
It consists of 1462 instances and four features, and 80% of the data is used for training and 20% for testing.
First, the WD decomposes the non-stationary data time series into multi-dimensional components.
That can reduce the original time series’ volatility and increase its predictability and stability.
After that, the multi-dimensional components are used as inputs for the SARIMAX model to forecast the temperature in Delhi City.
The SARIMAX model employed in this work has the following order: (4, 0, 1).
(4, 0, [1], 12).
The experimental results demonstrated that WD-SARIMAX performs better than other recent models for forecasting the temperature in Delhi city.
The Mean Square Error (MSE), Mean Absolute Error (MAE), Median Absolute Error (MedAE), Root Mean Square Error (RMSE), Mean Absolute Percentage Error (MAPE), and determination coefficient (R2) of the proposed WD-SARIMAX model are 2.
8, 1.
13, 0.
76, 1.
67, 4.
9, and 0.
91, respectively.
Furthermore, the WD-SARIMAX model utilized the proposed to forecast the temperature in Delhi over the next eight years, from 2017 to 2025.
Related Results
Establishment and Application of the Multi-Peak Forecasting Model
Establishment and Application of the Multi-Peak Forecasting Model
Abstract
After the development of the oil field, it is an important task to predict the production and the recoverable reserve opportunely by the production data....
Rainfall Prediction using the SARIMAX and LSTM Methods in Semarang City
Rainfall Prediction using the SARIMAX and LSTM Methods in Semarang City
The purpose of this study is to predict the decade rainfall in Semarang City using two main methods, namely Seasonal Autoregressive Integrated Moving Average with Exogenous Variabl...
Climate and Culture
Climate and Culture
Climate is, presently, a heatedly discussed topic. Concerns about the environmental, economic, political and social consequences of climate change are of central interest in academ...
Modelling Petrol Prices in Kenya from 2014 to 2023 Using Sarimax Model: A Case Study of Nairobi County
Modelling Petrol Prices in Kenya from 2014 to 2023 Using Sarimax Model: A Case Study of Nairobi County
The requirement for petrol price information is crucial for majority of enterprises. This is because fluctuations in petrol prices impact inflation hence affecting daily lives of c...
A Synergistic Imperative: An Integrated Policy and Education Framework for Navigating the Climate Nexus
A Synergistic Imperative: An Integrated Policy and Education Framework for Navigating the Climate Nexus
Climate change acts as a systemic multiplier of threats, exacerbating interconnected global crises that jeopardize food security, biodiversity, and environmental health. These chal...
Forecasting
Forecasting
The history of forecasting goes back at least as far as the Oracle at Delphi in Greece. Stripped of its mystique, this was what we now refer to as “unaided judgment,” the only fore...
Evaluating the Effectiveness of the European Union’s 2040 Climate Target: Policy Ambitions versus Implementation Challenges
Evaluating the Effectiveness of the European Union’s 2040 Climate Target: Policy Ambitions versus Implementation Challenges
As the level of ambition was increased, in July 2025, the European Commission set out a new binding greenhouse gas (GHG) reduction objective of - 90% by 2040 with respect to 1990, ...
Predictive Insights for Monthly Property Sales Forecasting: An End-to-End Time Series Forecasting
Predictive Insights for Monthly Property Sales Forecasting: An End-to-End Time Series Forecasting
In the realm of real estate and urban economics, accurate predictions of property sales can play a pivotal role in informed decision-making and strategic planning. Time series fore...

