Projects:2020s2-7521 Probabilistic forecasting of energy prices in the National Electricity Market (NEM)

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Introduction

The landscape of the power system operation drastically changed since the restructuring of the industry and national electricity market establishment in 1998. These changes have been exacerbated in recent years by introducing intermittent renewable resources (such as wind and PV farms) into the grid. As a result, price volatility is more than ever. In this situation,planning to enter/leave the market and how to bid in the market became a difficult task that needs advanced decision-making tools to predict not only the most probable scenarios but also the risks involved.

In this project, we want to develop a probabilistic forecasting algorithm for energy prices in the NEM considering some external factors/predictors.

This project provides an opportunity to learn about electricity market and NEM operation, times series analysis and probabilistic prediction algorithms, data science and programming in Python/MATLAB, and collaborate/write a research paper/report on the study.

Project team

Project students

  • Hao Wang
  • Yueran Zhu

Supervisors

  • Dr Ali Pourmousavi Kani

Advisors

Objectives

In this project, we want to develop a probabilistic forecasting algorithm for energy prices in the NEM considering some external factors/predictors.

Background

Topic 1

Method

Results

Conclusion

References

[1] a, b, c, "Simple page", In Proceedings of the Conference of Simpleness, 2010.

[2] ...