1. Discharge Time Prediction of the Primary Battery Test Output using Modified Adaptive Neuro Fuzzy Inference System (ANFIS).
- Author
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Naibaho, Ronald, Joelianto2., Endra, Rahmat, Basuki, and Azis, Nadana Ayzah
- Subjects
FUZZY logic ,FUZZY systems ,MACHINE learning ,MEMBERSHIP functions (Fuzzy logic) ,ELECTRIC batteries ,PERFORMANCE standards - Abstract
The long-time test of battery discharge time is the main problem for implementing the performance requirements of the standard IEC 60086. Prediction of battery discharge time can be a solution for the long-time test problem. The discharge test data conceive valuable information of the nonlinear characteristics of the battery to build battery models. An intelligent system with learning algorithm to update the capability of the model from a set of training test data is suitable to predict the battery discharge time. The well-known ANFIS (Adaptive Neuro Fuzzy Inference Systems) is a neuro-adaptive system that has adaptive input nodes and has been applied to many prediction problems through learning and validation of the network from data. In this paper, the empirical test data related to the discharge time are acquired from the laboratory tests and are used to build the persuasive ANFIS model for the discharge time prediction from inputs to 48 recombination output data by means of modified membership functions. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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