Abstract

Wind farms can affect the power quality (PQ) of the power supply grid, with subsequent impacts on the safe and stable operation of other electrical equipment. A novel PQ prediction, early warning, and control approach for the common coupling points between wind farms and the network is proposed in this paper. We then quantify PQ problems and provide rational support measures. To obtain predicted PQ data, we first establish a trend analysis model. The model incorporates a distance-based cluster analysis, probability distribution analysis based on polynomial fitting, pattern matching based on similarity, and Monte Carlo random sampling. A data mining algorithm then uses the PQ early warning flow to analyze limit-exceeding and abnormal data, quantify their severity, and output early warning prompts. Finally, PQ decision support is applied to inform both the power suppliers and users of anomalous changes in PQ, and advise on corresponding countermeasures to reduce relevant losses. Case studies show that the proposed approach is effective and feasible, and it has now been applied to an actual PQ monitoring platform.

Highlights

  • As a renewable, green resource, wind power has the potential to make a remarkable contribution to mitigating future energy crises and reducing greenhouse gas emissions

  • Using the methods described in previous sections, we can conduct power quality (PQ) trend analysis, early warnings, and decision support

  • Our PQ trend analysis and early warning results show that future voltage deviations may cause anomalous changes in power supply, and it is necessary to provide decision support

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Summary

Introduction

Green resource, wind power has the potential to make a remarkable contribution to mitigating future energy crises and reducing greenhouse gas emissions. The proposed approach has the following contributions: (1) Such techniques enable power supply companies, whose monitored PQ data are obtained at some time lag and can only reflect historical PQ changes, to identify hidden PQ problems in advance and make adjustments to improve the reliability and quality of the power supply. This will clearly influence the real-time scheduling and control of the whole power grid;. (3) Continue parsing all samples to complete the cluster analysis

Probability Distribution Analysis Based on Polynomial Fitting
Pattern Matching Based on Similarity
Random Sampling Using a Monte Carlo Method
PQ Early Warning Approach
PQ Decision Support Approach
2.22 Bm Sc 10 2
C A CB CC
Implementation of the Proposed Approach
Case Studies
Cluster Analysis Based on DTW Distance
Probability Distribution of Classified Working Conditions
Producing Predicted PQ Trend Data
PQ Early Warning
PQ Decision Support
Conclusions
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