A novel long term solar photovoltaic power forecasting approach using LSTM with Nadam optimizer : a case study of India
Loading...
Date
Authors
Sharma, Jatin
Soni, Sameer
Paliwal, Priyanka
Saboor, Shaik
Chaurasiya, Prem K.
Sharifpur, Mohsen
Khalilpoor, Nima
Afzal, Asif
Journal Title
Journal ISSN
Volume Title
Publisher
Wiley
Abstract
Solar photovoltaic (PV) power is emerging as one of the most viable renewable energy sources. The recent enhancements in the integration of renewable energy sources into the power grid create a dire need for reliable solar power forecasting techniques. In this paper, a new long-term solar PV power forecasting approach using long short-term memory (LSTM) model with Nadam optimizer is presented. The LSTM model performs better with the time-series data as it persists information of more time steps. The experimental models are realized on a 250.25 kW installed capacity solar PV power system located at MANIT Bhopal, Madhya Pradesh, India. The proposed model is compared with two time-series models and eight neural network models using LSTM with different optimizers. The obtained results using LSTM with Nadam optimizer present a significant improvement in the forecasting accuracy of 30.56% over autoregressive integrated moving average, 47.48% over seasonal autoregressive integrated moving average, and 1.35%, 1.43%, 3.51%, 4.88%, 11.84%, 50.69%, and 58.29% over models using RMSprop, Adam, Adamax, SGD, Adagrad, Adadelta, and Ftrl optimizer, respectively. The experimental results prove that the proposed methodology is more conclusive for solar PV power forecasting and can be employed for enhanced system planning and management.
Description
Keywords
Long short‐term memory, Nadam, Photovoltaic power forecasting, Photovoltaic power plant, Time series forecasting
Sustainable Development Goals
Citation
Sharma J, Soni S,
Paliwal P, et al. A novel long term solar
photovoltaic power forecasting approach using
LSTM with Nadam optimizer: a case study of
India. Energy Science and Engineering
2022;10:2909‐2929. doi:10.1002/ese3.1178.