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A data-driven intelligent hybrid method for health prognosis of lithium-ion batteries

Vimal Singh Bisht, Mashhood Hasan, Hasmat Malik, Sandeep Kumar Sunori

2021Journal of Intelligent & Fuzzy Systems15 citationsDOI

Abstract

For estimation of the RUL (Remaining useful life) of Lithium ion battery we are required to do its health assessment using online facilities. For identifying the health of a battery its internal resistance and storage capacity plays the major role. However the estimation of both these parameters is not an easy job and requires lot of computational work to be done. So to overcome this constraint an easy alternate way is simulated in the paper through which we can estimate the RUL. For formation of a linear relationship between health index of the battery (HI) and its actual capacity used of power transformation method is done and later on to validate the result a comparison study is done with Pearson & Spearman methods. Transformed value of Health Index is used for developing a neural network. The results demonstrated in the paper shows the feasibility of the proposed technique resulting in great saving of time

Topics & Concepts

Battery (electricity)Internal resistanceComputer scienceBattery capacityConstraint (computer-aided design)Reliability engineeringTransformation (genetics)Artificial neural networkPower (physics)Lithium-ion batteryEstimationHealth management systemData-drivenLithium (medication)Artificial intelligenceEngineeringMedicineSystems engineeringPathologyMechanical engineeringEndocrinologyGeneChemistryQuantum mechanicsAlternative medicineBiochemistryPhysicsAdvanced Battery Technologies ResearchFault Detection and Control SystemsMachine Fault Diagnosis Techniques
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