Feature Extraction Approach for Distributed Wind Power Generation Based on Power System Flexibility Planning Analysis

Author:

Hu Sile12ORCID,Yang Jiaqiang1ORCID,Wang Yuan3,Chen Chao1,Nan Jianan2,Zhao Yucan1ORCID,Bi Yue1

Affiliation:

1. College of Electrical Engineering, Zhejiang University, Hangzhou 310027, China

2. Inner Mongolia Power (Group) Co., Ltd., Hohhot 010020, China

3. Inner Mongolia Electric Power Economic and Technological Research Institute, Hohhot 010090, China

Abstract

This study addresses the integral role of typical wind power generation curves in the analysis of power system flexibility planning. A novel method is introduced for extracting these curves, integrating an enhanced K-means clustering algorithm with advanced optimization techniques. The process commences with thorough data cleaning, filtering, and smoothing. Subsequently, the refined K-means algorithm, augmented by the Pearson correlation coefficient and a greedy algorithm, clusters the wind power curves. The optimal number of clusters is ascertained through the silhouette coefficient. The final stage employs particle swarm and whale optimization algorithms for the extraction of quintessential wind power output curves, essential for flexibility planning in power systems. This methodology is validated through a case study involving wind power output data from a new energy-rich provincial power grid in North China, spanning from 1 January 2019, to 31 December 2022. The resultant curves proficiently mirror wind power fluctuations, thereby laying a foundational framework for power system flexibility planning analysis.

Funder

Inner Mongolia Electric Power (Group) Co., Ltd Science and Technology Project

Publisher

MDPI AG

Reference23 articles.

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2. Huang, F. (2019). Method for Generating Typical Renewable Energy Scenarios for Power System Analysis. [Master’s Thesis, Hefei University of Technology].

3. Study on the characteristic index system and classification of typical curves for photovoltaic output;Wang;Demand Side Manag. Electr. Power,2017

4. Study on the index system of output characteristics of new energy for grid operation—Wind power output characteristic index system;Wang;Power Grid Clean Energy,2016

5. Liu, C., Cao, Y., Huang, Y., Li, P., Sun, Y., and Yuan, Y. (2014). Method for annual planning of wind power based on time series simulation. Autom. Electr. Power Syst.

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