Abstract

European Union Allowances (EUAs) are rights to emit CO2 that may be sold or bought by enterprises. They were originally created to try to reduce greenhouse gas emissions, although they have become assets that may be used by financial intermediaries to seek for new business opportunities. Therefore, forecasting the time evolution of their price is very important for agents involved in their selling or buying. Neural Networks, an artificial intelligence paradigm, have been proved to be accurate and reliable tools for time series forecasting, and have been widely used to predict economic and energetic variables; two of them are used in this work, the Multilayer Preceptron (MLP) and the Long Short-Term Memories (LSTM), along with another artificial intelligence algorithm (XGBoost). They are combined with two preprocessing tools, decomposition of the time series into its trend and fluctuation and decomposition into Intrinsic Mode Functions (IMF) by the Empirical Mode Decomposition (EMD). The price prediction is obtained by adding those from each subseries. These two tools are combined with the three forecasting tools to provide 20 future predictions of EUA prices. The best results are provided by MLP-EMD, which is able to achieve a Mean Absolute Percentage Error (MAPE) of 2.91% for the first predicted datum and 5.65% for the twentieth, with a mean value of 4.44%.

Highlights

  • Information is processed while it flows from input to output, which is why they are known as Feedforward Neural Networks (FFNN)

  • In order to address these kinds of problems, new neural models have been developed in which feedback has been added to a FFNN to provide the network the ability to retain past information to be processed with present data

  • The time series used in this work is the daily spot price of a ton of CO2 quoted on the Energy Exchange (EEX) in Leipzig, Germany

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Summary

Introduction

Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. Since the European Union (EU) created the Emission Trading System (EU ETS) in 2005 to combat climate change, it has become one of the cornerstones of the European environmental policy, with strong implications for industrial activities and repercussions that reach all economic and social sectors. Its main goal is to reduce greenhouse gas emission. It is supposed that companies producing carbon emissions must effectively manage associated costs by buying or selling rights to emit CO2 , the so-called European

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