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ARIMA Machine Learning- timeseries forecasts. CO2 case study

Last updated on March 2, 2025 10:16 am
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What you’ll learn

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  • YOU WILL LEARN how ARIMA machine learning is implemented and used for time series forecasting.
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2. Course Overview:

1. ARIMA (AutoRegressive Integrated Moving Average) is a widely used statistical modeling technique for time-series forecasting, including the prediction of CO₂ emissions. It captures key patterns in the data, such as trends, seasonality, and autocorrelation, allowing for a structured approach to forecasting. ARIMA is particularly useful when historical emission data follows a consistent pattern that can be extrapolated into the future.

2. When applying ARIMA to CO₂ emissions forecasting, the first step is ensuring that the emissions data is stationary, meaning its statistical properties (mean, variance, and autocorrelation) remain constant over time. This often requires differencing the data to remove trends and seasonal effects. The appropriate orders of autoregression (p), differencing (d), and moving average (q) are determined using diagnostic tools such as the autocorrelation function (ACF) and partial autocorrelation function (PACF). Once these parameters are selected, analysts can fit an ARIMA model that effectively represents the dynamics of CO₂ emissions**.

3. A well-fitted ARIMA model can generate short- to medium-term forecasts, offering valuable insights into expected emission trends. These forecasts can help policymakers, researchers, and businesses make informed decisions about energy policies, carbon reduction strategies, and investment in sustainable technologies. Additionally, ARIMA models can be extended to SARIMA (Seasonal ARIMA) to better handle emissions data with strong seasonal patterns. Regularly updating the model with new data ensures that forecasts remain accurate and relevant in a rapidly changing environmental landscape.

3. How to connect with me and unlock hundreds of courses!

Hey there! 

Learn from a PhD grad from Imperial College London with expertise in data science, optimization, and energy systems. 

This is part of the Energy Data Science Academy (EDSA) with 200+ hours of energy-focused skills. 

Explore more at www [dot] energydatascience [dot] com and grab a 20% subscription discount—just message ‘Hi from Udemy’ via the site’s chat. 

Here to help you thrive, 
Your Instructor

Who this course is for:

  • Quantitative Developers expanding into economics with a focus on energy
  • Energy Professionals interested in data‐driven methods
  • Finance & Economics professionals looking for economics-related data science skills
  • Data Scientists / Machine Learning Engineers applying skills in economics focused on energy
  • Students & Researchers looking for practical projects
  • Managers wanting to understand Data Science and Machine Learning applications in economics
  • Operational researchers and economics/energy modellers interested in advancing their skills

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