Abstract

There are many prediction models that have been adopted to predict uncertain and non-linear photovoltaic power time series. Nonetheless, most models neglected the validity of data preprocessing and ensemble learning strategies, which leads to low forecasting precision and low stability of photovoltaic power. To effectively enhance photovoltaic power forecasting accuracy and stability, an ensemble forecasting frame based on the data pretreatment technology, multi-objective optimization algorithm, statistical method, and deep learning methods is developed. The proposed forecasting frame successfully integrates the advantages of multiple algorithms and validly depict the linear and nonlinear characteristic of photovoltaic power time series, which is conductive to achieving accurate and stable photovoltaic power forecasting results. Three datasets of 15-min photovoltaic power output data obtained from different time periods in Belgium were employed to verify the validity of the proposed system. The simulation results prove that the proposed forecasting frame positively surpasses all comparative hybrid models, ensemble models, and classical models in terms of prediction accuracy and stabilization. For one-, two-, and three-step predictions, the MAPE values obtained from the proposed frame were less than 2, 3, and 5%, respectively. Discussion results also verify that the proposed forecasting frame is obviously different from other comparative models, and is more stable and high-efficiency. Thus, the proposed frame is highly serviceable in elevating photovoltaic power forecasting performance and can be used as an efficient instrument for intelligent grid programming.

Highlights

  • The exhaustion of fossil energy and global warming have been inescapable events for humans (Das et al, 2015; Takilalte et al, 2019; Irfan et al, 2021)

  • We developed an ensemble forecasting frame that capitalizes the data preprocessing technique and optimization algorithm to forecast PV power

  • Simulation results prove that the proposed system (SSA–multi-objective grasshopper algorithm (MOGOA)–ensemble frame (EF)) surpasses the comparative models

Read more

Summary

Introduction

The exhaustion of fossil energy and global warming have been inescapable events for humans (Das et al, 2015; Takilalte et al, 2019; Irfan et al, 2021). To work out these events, exploring and exploiting renewable energy worldwide should be the ultimate focus of attention (Islam, 2017; Shezan et al, 2017; Liu et al, 2020; Elavarasan et al, 2021). Enhancing the forecasting accuracy and stability of PV power must be considered to help solve the aforementioned tasks and optimize the intelligent electric system operation

Methods
Findings
Discussion
Conclusion
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