Abstract

Solar photovoltaic (PV) power forecasting has become an important issue with regard to the power grid in terms of the effective integration of large-scale PV plants. As the main influence factor of PV power generation, solar irradiance and its accurate forecasting are the prerequisite for solar PV power forecasting. However, previous forecasting approaches using manual feature extraction (MFE), traditional modeling and single deep learning (DL) models could not satisfy the performance requirements in partial scenarios with complex fluctuations. Therefore, an improved DL model based on wavelet decomposition (WD), the Convolutional Neural Network (CNN), and Long Short-Term Memory (LSTM) is proposed for day-ahead solar irradiance forecasting. Given the high dependency of solar irradiance on weather status, the proposed model is individually established under four general weather type (i.e., sunny, cloudy, rainy and heavy rainy). For certain weather types, the raw solar irradiance sequence is decomposed into several subsequences via discrete wavelet transformation. Then each subsequence is fed into the CNN based local feature extractor to automatically learn the abstract feature representation from the raw subsequence data. Since the extracted features of each subsequence are also time series data, they are individually transported to LSTM to construct the subsequence forecasting model. In the end, the final solar irradiance forecasting results under certain weather types are obtained via the wavelet reconstruction of these forecasted subsequences. This case study further verifies the enhanced forecasting accuracy of our proposed method via a comparison with traditional and single DL models.

Highlights

  • In solar irradiance forecasting under certain weather types, the raw solar irradiance sequence is decomposed into several subsequences via discrete wavelet transformation

  • Since the extracted features are time series data, they are individually transported to Long Short-Term Memory (LSTM) to construct the subsequence forecasting model

  • The final solar irradiance forecasting results under certain weather types are obtained via the wavelet reconstruction of these forecasted subsequences

Read more

Summary

Background and Motivation

With the global attention to environmental issues, the solar photovoltaic (PV) power has been increasingly regarded as an important kind of renewable energy used to supply clean energy for the power grid [1]. The high dependence of solar PV power on geographical locations and weather conditions can lead to the dynamic volatility and randomness characteristics of solar PV output power. This unavoidable phenomenon makes PV power forecasting become an important challenge for the power grid in terms of the effective integration of large-scale PV plants, because accurate solar PV power forecasting can provide expected future PV output power, which provides good guidance for the system operator to design a rational dispatching scheme and maintain the balance between supply and demand sides. These predicted meteorological factors are utilized to create a map that can reflect the relationship between these meteorological factors and PV power forecast value. As the main influence factor of PV power generation, the solar irradiance and its accurate forecasting are the prerequisite for solar PV power forecasting

Literature Review
The Content and Contribution of the Paper
Improved Deep Learning Model for Day-Ahead Solar Irradiance Forecasting
Discrete Wavelet Transformation Based Solar Irradiance Sequence Decomposition
Convolutional Neural Networks Based Local Feature Extractor
Recurrent Neural Network
Long-Short-Term Memory
Data Source and Experimental Setup
Model Training and Hyperparameters Selection
Training Method
Performance Criterion
Model Performance Analysis for DWT-CNN-LSTM Model with Different WD Level
Comparison Analysis of Sunny Days
Comparison Analysis under Cloudy Day
Comparison Analysis under Rainy Days
Comparison Analysis under Heavy rainy Days
Findings
Simulation Discussion
Conclusions
Full Text
Published version (Free)

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