학술논문

Multistep Ahead Solar Irradiance and Wind Speed Forecasting using Bayesian Optimized Long Short Term Memory
Document Type
Conference
Source
2022 7th International Conference on Communication and Electronics Systems (ICCES) Communication and Electronics Systems (ICCES), 2022 7th International Conference on. :164-171 Jun, 2022
Subject
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Computing and Processing
Fields, Waves and Electromagnetics
Robotics and Control Systems
Signal Processing and Analysis
Wind speed
Computational modeling
Predictive models
Power system stability
Prediction algorithms
Bayes methods
Forecasting
Long Short-Term Memory
Bayesian Optimization
Recurrent Neural Network
Recursive Prediction
Deep Learning
Language
Abstract
High integration rate of renewable energy source into the power system in recent times poses problems in power system opreration and control due to its sporadic nature. For improving stability and reliability of hybrid energy system, development of a computationally efficient renewable energy forecast model predominantly wind speed and solar irradiance forecasting model, is required in order to design an automated power forecast tool that efficiently facilities all energy management tasks in a hybrid energy system. Various other meteorological parameters like air density, temperature, humidity, air pressure etc. has a notable effect on solar irradiance and wind speed, which makes the prediction difficult. In this paper, an improved Long Short Term Memory model optimised by Bayesian optimization algorithm is suggested for short-term solar irradiance and wind speed forecasting. The proposed method incorporates hourly averaged historical meteorological variables to forecast the solar irradiance and wind speed in the next 24 hours. The meteorological data that significantly influences the wind speed and solar irradiance is determined by evaluating Pearson Correlation Coefficient. Further, Bayesian optimization algorithm is presented to fine-tune the hyperparameters of LSTM model for one-day ahead hourly prediction. The given proposed model is compared with existing models like like Gradient boost Regressor (GBR),Extreme Gradient Boost Regressor(XGBoost) and RNN(Recurrent Neural Network).Evaluation metrics results show that the proposed method is having better prediction accuracy than the existing methods.