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JST Press Release

May 31, 2018
Japan Science and Technology Agency (JST)
5-3, Yonbancho, Chiyoda-ku, Tokyo 102-8666

Evaluation method for the impact of wind power fluctuation on power system quality

Theory for stable power supply under the widely introduced renewable energies

Evaluation method developed for the impact of wind power fluctuation on power system quality.

Introduction of wind power generation into the electric power system is proceeding actively, mainly in the United States and Europe, and is expected to continue in Japan. However, upon the implementation, it is crucial to deal with prediction uncertainty of output fluctuation. The fluctuation of wind power generation is usually small, but it becomes extremely large due to the occurrence of gusts and turbulence at a non-negligible frequency. Such extreme outliers have been regarded as a source of severe damage to power systems.

To cope with such a fluctuation of wind power generation, the goal setting such as "absolutely keep the frequency fluctuation within 0.2 Hz" would be unattainable or would result in an overly conservative design. Therefore, the probabilistic goal setting such as "keep the frequency fluctuation within 0.2 Hz with 99.7% or more" is indispensable.

Probabilistic uncertainty is evaluated statistically, commonly by assuming that it obeys normal distribution for its mathematical processability. The output outliers in wind power generation are, however, more frequent than represented by normal distribution. Even if a complicated simulator can be constructed without assuming normal distribution, it is not realistic to investigate the statistical property by Monte Carlo simulation. This is because the required number of samples explodes before sufficiently many extreme outliers occur.

The developed method first builds probabilistic models assuming the stable distribution (an extension of the normal distribution) on the uncertainty. Then, instead of using the model as a simulator to generate data samples, we compute the statistical properties directly from parameters in the model. The important feature is 1. the influence of extreme outliers can be properly considered, 2. model can be determined easily from actual data, and 3. computation cost is very low. The method was proved to be valid through its application to frequency deviation estimation based on actual power system data.

This newly proposed probabilistic evaluation method enables us to quantitatively evaluate the power system risk caused by the occurrence of extremally abrupt changes of wind power generation. Countermeasures based on the evaluation would contribute to improvement of the reliability and economic efficiency of the electric power system. It should be also noted that the proposed method is applicable to analysis and synthesis of various systems which have extreme outliers.

Program Information

JST PRESTO
Research Area “Creation of Fundamental Theory and Technology to Establish a Cooperative Distributed Energy Management System and Integration of Technologies Across Broad Disciplines Toward Social Application”
Research Theme “System Theory for Harmonized Power System Control Based on PV Power Prediction”

Journal Information

Kenji Kashima, Hiroki Aoyama and Yoshito Ohta. “Stable process approach to analysis of systems under heavy-tailed noise: Modeling and stochastic linearization”, IEEE Transactions on Automatic Control. published online May 30, 2018, doi: 10.1109/TAC.2018.2842145.

Contact

[About Research]
Kenji Kashima, Ph.D
Graduate School of Informatics, Kyoto University
E-mail:

Yoshito Ohta, Ph.D
Graduate School of Informatics, Kyoto University
E-mail:

[About Program]
Kouji Matsuo
Department of Innovation Research, JST
E-mail:

Japanese


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