Affiliation:
1. State Grid Hebei Electric Power Research Institute, Shijiazhuang, China
Abstract
The forecast error characteristic analysis of short-term photovoltaic power generation can provide a reliable reference for power system optimal dispatching. In this paper, the total in-day error level was stratified by fuzzy C-means algorithm. Then the historical PV output data based on the numerical characteristics of point prediction output were classified. A General Gauss Mixed Model was proposed to fit the forecast error distribution of various photovoltaic output forecast error distribution. The impact of meteorological factors together with numerical characteristics on the forecast error was taken into full consideration in this analysis method. The predicted point output with high volatility can be accurately captured, and the reliable confidence interval is given. The proposed method is independent of the point prediction algorithm and has strong applicability. The General Gauss Mixed Model can meet the peak diversity, bias, and multimodal properties of the error distribution, and the fitting effect is superior to the normal distribution, the Laplace distribution, and the t Location-Scale distribution model. The error model has a flexible shape, a concise expression, and high practical value for engineering.
Subject
General Mathematics,General Medicine,General Neuroscience,General Computer Science
Reference32 articles.
1. A review on characteristic analysis and prediction method of distributed PV;H. Wang;Electric Power Construction,2017
2. Prediction of photovoltaic power generation based on regression-Markov chain;J. Wang;Electrical Measurement and Instrumentation,2019
3. Method for short-term photovoltaic generation power prediction base on weather patterns;Z. Wang
4. Online short-term solar power forecasting
5. Short-Term Photovoltaic Power Generation Forecasting Based on Multivariable Grey Theory Model with Parameter Optimization
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