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    Estimation of Lead Acid Battery Capacity using Pulse Voltammetry Cyclic and Neural Network Method

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    TEKNIK_JURNAL_BambangSriKaloko_Estimation of Lead Acid Battery Capacity using Pulse Voltammetry Cyclic and Neural Network Method.pdf (551.2Kb)
    Date
    2017-08
    Author
    KALOKO, Bambang Sri
    PRASETYONO, Suprihadi
    DEWI, Lori Kusuma
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    Abstract
    The requirement for a reliable battery that holds a very important role. Therefore, this study refers to the characterization of lead acid batteries, this type is a secondary battery of the most developed and the lead acid batteries are widely used in the automotive field. The lead acid battery capacity is determined by the amount of electrical charge that is obtained from the battery and the amount depends on the active ingredient contained in the plate. To determine the characterization and capacity lead acid battery is good and suitable for use, this study used two methods. There are voltammetry analysis and development the lead acid battery model design based on neural network method. In the electrochemical field the voltammetry cyclic is a condition when the current is measured during a sweep potential from the beginning to the end potential and then back again. It is also called sweeping or scanning and can be reversed after the reduction takes. So the anodic and cathodic current can be measured. Then the design of the model development lead acid battery based on neural network in this study using inputs spesifically the voltage as input, and the current as target. So the accuracy testing of the forecasting system using neural network algorithm will be better and more efficient than the experiment data manually.
    URI
    https://repository.unej.ac.id/xmlui/handle/123456789/108436
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    • LSP-Jurnal Ilmiah Dosen [7406]

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    Contact Us | Send Feedback

    Indonesia DSpace Group :

    University of Jember Repository
    IPB University Scientific Repository
    UIN Syarif Hidayatullah Institutional Repository