Abstract

The popularity and role of renewable energy in the power grid are increasing nowadays as countries are shifting to cleaner forms of energy. This brings new challenges in maintaining a secure and stable power system, as renewable energy is known to be intermittent in nature and may introduce stability issues to the grid. In this paper, a screening framework of renewable energy generation scenarios is proposed to determine which power system conditions and scenarios will make the system unstable. The scenario screening framework is based on a sensitivity analysis of the system eigenvalues with respect to the renewable energy penetration to the system. The average scheduled renewable energy output, forecasting error standard deviation, average forecasting error, and bus location of the renewable energy source were used to define a renewable energy generation scenario. Depending on the amount and variability of renewable energy, there is a possibility for a critical eigenvalue to cross the imaginary axis. The estimated eigenvalue location resulting from the penetration of variable renewable energy is computed by adding the computed eigenvalue sensitivity to the initial operating point. If any of the estimated system eigenvalues cross the imaginary axis, the power system might be unstable in this scenario, so it requires more detailed simulations and countermeasures. Renewable energy forecasting was done using the long short-term memory model, and the proposed method was simulated using the IEEE 39-bus New England test system. The results of the proposed method were verified by comparing the simulation results to the eigenanalysis solution. The obtained results have shown that the proposed method can determine whether the renewable energy generation scenario is critical in power system operation.

Highlights

  • As the safe global warming limit has changed from 2 to 1.5 ◦C above preindustrial levels [1], tightened policies and procedures from governments around the world are expected to be passed in order to eradicate CO2 emissions and to shift fully to renewable energy (RE)

  • This paper presents a framework for screening of RE generation scenarios in terms of small-signal stability, and it is based on eigenvalue sensitivity analyses with respect to RE generation

  • This paper presents the framework for screening RE generation scenarios in terms of small-signal stability

Read more

Summary

Introduction

As the safe global warming limit has changed from 2 to 1.5 ◦C above preindustrial levels [1], tightened policies and procedures from governments around the world are expected to be passed in order to eradicate CO2 emissions and to shift fully to renewable energy (RE). This paper presents a framework for screening of RE generation scenarios in terms of small-signal stability, and it is based on eigenvalue sensitivity analyses with respect to RE generation. The contributions of this paper can be summarized as follows: (i) establishment of the framework to screen RE generation scenarios in terms of small-signal stability, (ii) inclusion of RE generation parameters such as average forecasting error, forecasting error standard deviation, and average scheduled RE output in the computation of the RE variability factor, (iii) application of eigenvalue sensitivity with respect to RE generation to determine small-signal stability, and (iv) formulation of the uncertainty of the real part of critical eigenvalues with respect to RE generation.

Mathematical Background and System Formulation
Algebraic Variables
System State Matrix and Eigenvalue Sensitivity
Eigenvalue Sensitivity with Respect to Variation of RE
RE Generation Scenario
Uncertainty of the Real Part of Critical Eigenvalues
Additional Discussion on the Proposed Framework
Conclusions

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.