A comprehensive survey of artificial intelligence-based techniques for performance enhancement of solid oxide fuel cells: Test cases with debates
Since installing solid oxide fuel cells (SOFCs)-based systems suffers from high expenses,
accurate and reliable modeling is heavily demanded to detect any design issue prior to the …
accurate and reliable modeling is heavily demanded to detect any design issue prior to the …
Levenberg–Marquardt neural network for entropy optimization on Casson hybrid nanofluid flow with nonlinear thermal radiation: a comparative study
KA Kumar, K Sakkaravarthi… - The European Physical …, 2024 - Springer
The purpose of this study is to investigate entropy optimization in the magneto-
hydrodynamic and electro-magneto-hydrodynamic flow of a Casson hybrid nanofluid over a …
hydrodynamic and electro-magneto-hydrodynamic flow of a Casson hybrid nanofluid over a …
[PDF][PDF] Electrical load forecasting using machine learning
Variable electrical load and ever-increasing load demand need to be predicted or
forecasted to avoid the energy crisis. In this paper, machine learning based ANN is explored …
forecasted to avoid the energy crisis. In this paper, machine learning based ANN is explored …
[PDF][PDF] International Journal of Advanced Trends in Computer Science and Engineering
AM Alqudah, H Alquraan, IA Qasmieh, A Alqudah… - International …, 2019 - arxiv.org
Deep Learning is the newest and the current trend of the machine learning field that paid a
lot of the researchers' attention in the recent few years. As a proven powerful machine …
lot of the researchers' attention in the recent few years. As a proven powerful machine …
[PDF][PDF] Application of feed forward backpropagation neural network in monthly rainfall prediction
G Sumarda - International Journal of Advanced Trends in Computer …, 2019 - repo.unr.ac.id
Rainfall is one of the most critical parameters in a hydrological model. A few models have
been created to investigate and predict the rainfall conjecture. in recent years, soft …
been created to investigate and predict the rainfall conjecture. in recent years, soft …
PV Power Forecast Based on Artificial Neural Network at Indonesia Shopping Mall PV Rooftop
L Mahendra, H Eko, IW Farid - … International Conference on …, 2021 - ieeexplore.ieee.org
In this research, forecast of Photovoltaic (PV) rooftop power output has been carried out.
Forecast is using machine learning Artificial Neural Network (ANN). ANN is precisely used …
Forecast is using machine learning Artificial Neural Network (ANN). ANN is precisely used …
[PDF][PDF] Short term load forecasting using artificial neural network and time series methods
S Adhikari, L Poudel - Artech J. Eff. Res. Eng. Technol, 2020 - artechjournals.com
Short term electric load forecasting is an important aspect of power system planning and
operation for utility companies. Short Term Load Forecasting (STLF) has always been one of …
operation for utility companies. Short Term Load Forecasting (STLF) has always been one of …
A Statistical modellingapproaches on tidal analysis and forecasting
FM Hamzah - 2021 - ir.upsi.edu.my
Increase in the number of population in the lowelevation coastal zone has increase the
importanceto reduce the risk of coastal and nuisance flooding, especially during high tide …
importanceto reduce the risk of coastal and nuisance flooding, especially during high tide …
Utilization Fuzzy Logic in Agriculture Sprinkler System
N Ganesan - … Research Journal on Advanced Science Hub, 2021 - rspsciencehub.com
This water management system enhances irrigated agriculture usage. We implemented an
open loop fuzzy logic based scheme in this system. Inside the field, the inputs to the fuzzy …
open loop fuzzy logic based scheme in this system. Inside the field, the inputs to the fuzzy …