Air quality prediction for Chengdu based on long short-term memory neural network with improved jellyfish search optimizer
In: Environmental science and pollution research: ESPR, Band 30, Heft 23, S. 64416-64442
ISSN: 1614-7499
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In: Environmental science and pollution research: ESPR, Band 30, Heft 23, S. 64416-64442
ISSN: 1614-7499
In: Environmental science and pollution research: ESPR, Band 28, Heft 40, S. 56892-56905
ISSN: 1614-7499
In: Scientific African, Band 24, S. e02158
ISSN: 2468-2276
In order to formulate the long-term and short-term development plans to meet the energy needs, there is a great demand for accurate energy forecasting. Energy autonomy helps to decompose a large-scale grid control into a small sized decisions to attain robustness and scalability through energy independence level of a country. Most of the existing energy demand forecasting models predict the amount of energy at a regional or national scale and failed to forecast the demand for power generation for small-scale decentralized energy systems, like micro grids, buildings, and energy communities. A novel model called Sailfish Whale Optimization-based Deep Long Short- Term memory (SWO-based Deep LSTM) to forecast electricity demand in the distribution systems is proposed. The proposed SWO is designed by integrating the Sailfish Optimizer (SO) with the Whale Optimization Algorithm (WOA). The Hilbert-Schmidt Independence Criterion (HSIC) is applied on the dataset, which is collected from the Central electricity authority, Government of India, for selecting the optimal features using the technical indicators. The proposed algorithm is implemented in MATLAB software package and the study was done using real-time data. The optimal features are trained using Deep LSTM model. The results of the proposed model in terms of install capacity prediction, village electrified prediction, length of R & D lines prediction, hydro, coal, diesel, nuclear prediction, etc. are compared with the existing models. The proposed model achieves percentage improvements of 10%, 9.5%,6%, 4% and 3% in terms of Mean Squared Error (MSE) and 26%, 21%, 16%, 12% and 6% in terms of Root Mean Square Error (RMSE) for Bootstrap-based Extreme Learning Machine approach (BELM), Direct Quantile Regression (DQR), Temporally Local Gaussian Process (TLGP), Deep Echo State Network (Deep ESN) and Deep LSTM respectively. The hybrid approach using the optimization algorithm with the deep learning model leads to faster convergence rate during the training process and enables the small-scale decentralized systems to address the challenges of distributed energy resources. The time series datasets of different utilities are trained using the hybrid model and the temporal dependencies in the sequence of data are predicted with point of interval as 5 years-head. Energy autonomy of the country till the year 2048 is assessed and compared.
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In: Environmental science and pollution research: ESPR, Band 30, Heft 11, S. 30408-30429
ISSN: 1614-7499
In: Computers and Electronics in Agriculture, Band 176, S. 105612
In: Studies in educational evaluation, Band 70, S. 101020
ISSN: 0191-491X
In: Computers and electronics in agriculture: COMPAG online ; an international journal, Band 213, S. 108253
In: Science and technology of nuclear installations, Band 2023, S. 1-14
ISSN: 1687-6083
A deep-learning model was proposed for predicting the remaining time to automatic scram during abnormal conditions of nuclear power plants (NPPs) based on long short-term memory (LSTM) and dropout. The proposed model was trained by simulated condition data of abnormal conditions; the input of the model was the deviation of the monitoring parameters from the normal operating state, and the output was the remaining time from the current moment to the upcoming reactor trip. The predicted remaining time to the reactor trip decreases with the development of abnormal conditions; thus, the output of the proposed model generates a predicted countdown to the reactor trip. The proposed prediction model showed better prediction performance than the Elman neural network model in the experiments but encountered an overfitting problem for testing data containing noise. Therefore, dropout was applied to further improve the generalization ability of the prediction model based on LSTM. The proposed automatic scram prediction model can provide NPP operators with an alert to the automatic scram during abnormal conditions.
In: Computers and electronics in agriculture: COMPAG online ; an international journal, Band 212, S. 108139
In: Environmental science and pollution research: ESPR, Band 28, Heft 45, S. 64818-64829
ISSN: 1614-7499
In: Computers and electronics in agriculture: COMPAG online ; an international journal, Band 191, S. 106568
In: Environmental science and pollution research: ESPR, Band 29, Heft 26, S. 39545-39556
ISSN: 1614-7499
In: Advances in Gerontology, Band 5, Heft 4, S. 283-289
ISSN: 2079-0589
In: Computers and Electronics in Agriculture, Band 157, S. 247-253