A Method for Particle Swarm Optimization and its Application in Location of Biomass Power Plants

2008 ◽  
Vol 5 (3) ◽  
pp. 199-211 ◽  
Author(s):  
P. Reche López ◽  
S. García Galán ◽  
N. Ruiz Reyes ◽  
F. Jurado
Author(s):  
Khurram Kamal ◽  
Tahir Abdul Hussain Ratlamwala ◽  
Muhammad Afzal Sheikh ◽  
Sharjeel Ashraf Ansari ◽  
Muhammad Nouman Saleem

2020 ◽  
Vol 3 (2) ◽  
pp. 107-116
Author(s):  
Luthfansyah Mohammad ◽  
Muhammad K. Asy’ari ◽  
Mokhammad F. Izdiharrudin ◽  
Suyanto

The growth of public awareness of the environment is directly proportional to the development of the use of electric cars. Electric cars operate by consuming electrical energy from battery storage, which must be recharged periodically at the charging station. Solar panels are one source of energy that is environmentally friendly and has the potential to be applied to charging stations. The use of solar panels causes the charging station to no longer depend on conventional electricity networks, which the majority of it still use fossil fuel power plants. Solar panels have a problem that is not optimal electrical power output so that it has the potential to affect the charging parameters of the battery charging station. Adaptive Velocity-Particle Swarm Optimization (AV-PSO) is an artificial intelligence type MPPT optimization algorithm that can solve the problem of solar panel power optimization. This study also uses the Coulomb Counting method as a battery capacity estimator. The results showed that the average sensor accuracy is more than 91% with a DC-DC SEPIC converter which has an efficiency of 69.54%. In general, the proposed charging station system has been proven capable to enhance the energy security by optimizing the output power of solar panels up to 22.30% more than using conventional systems.


Author(s):  
Manoel Henrique Reis Nascimento ◽  
Jorge de Almeida Brito Junior ◽  
David Barbosa de Alencar ◽  
Bruno Reinert de Abreu ◽  
Jandecy Cabral Leite ◽  
...  

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