Renewable energy power generation forecasting using deep learning method
Djoko Adi Widodo, FT P Teknik Elektro (2021) Renewable energy power generation forecasting using deep learning method. In: The 9th Engineering International Conference.
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Abstract
Smart Micro Grid in household areas aims to meet electricity needs through the integration between state power plant with renewable energy sources so that the electricity used does not depend entirely on state utility. Smart Micro Grid also enables the availability of energy management services supported by Machine Learning (ML) technology, Big Data, Artificial Intelligence (AI), Internet of Things (IoT) and smart sensors so that consumer use of electricity is more efficient. To improve energy management services and distribution of renewable energy sources, new innovations in ML technology are needed to produce accurate learning models that can be used in the energy analysis process, such as monitoring, prediction, forecasting, scheduling and decision-making. However, the complexity of the problems in the smart grid system, which includes uncertainty and non-linearity, affects the more complex the energy data structure generated. Therefore, the simple ML method will not be able to perform the Learning process because it is limited to simple raw data processing. Therefore, the Deep Learning (DL) method can be used as a Learning method on data that has a complex and large structure. In this paper, Deep Neural Network (DNN) method will be developed using Long Short-Term Memory (LSTM) as a Learning model to provide Future Accurate Prediction (FAP) on electricity use and on renewable energy plants. Prediction test using Confusion Matrix accuracy value and RMSE error value
Item Type: | Conference or Workshop Item (Paper) |
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Subjects: | T Technology > TK Electrical and Electronic Engineering |
Fakultas: | Fakultas Teknik > Pendidikan Teknik Elektro, S1 |
Depositing User: | mahargjo hapsoro adi |
Date Deposited: | 25 May 2023 07:14 |
Last Modified: | 25 May 2023 07:14 |
URI: | http://lib.unnes.ac.id/id/eprint/58777 |
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