SOH Estimation Model Based on an Ensemble Hierarchical Extreme Learning Machine

dc.contributor.authorYu He
dc.contributor.authorNorasage Pattanadech
dc.contributor.authorKasian Sukemoke
dc.contributor.authorLin Chen
dc.contributor.authorLulu Li
dc.date.accessioned2025-07-21T06:12:51Z
dc.date.issued2025-04-29
dc.description.abstractThis paper addresses the challenges of accurately estimating the state of health (SOH) of retired batteries, where factors such as limited historical data, non-linear degradation, and unstable parameters complicate the process. We propose a novel SOH estimation model based on an Integrated Hierarchical Extreme Learning Machine (I-HELM). The model minimizes reliance on historical data and reduces computational complexity by introducing health indicators derived from constant charging time and charging current area. The hierarchical structure of the Extreme Learning Machine (HELM) effectively captures the non-linear relationship between health indicators and battery capacity, improving estimation accuracy and learning efficiency. Additionally, integrating multiple HELM models enhances the stability and robustness of the results, making the approach more reliable across varying operational conditions. The proposed model is validated on experimental datasets collected from two Samsung battery packs, four Samsung single cells, and two Panasonic retired batteries under both constant-current and dynamic conditions. Experimental results demonstrate the superior performance of the model: the maximum error for Samsung battery cells and packs does not exceed 2.2% and 2.6%, respectively, with root mean square errors (RMSEs) below 1%. For Panasonic retired batteries, the maximum error remains under 3%.
dc.identifier.doi10.3390/electronics14091832
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/14402
dc.subjectExtreme Learning Machine
dc.subject.classificationMachine Learning and ELM
dc.titleSOH Estimation Model Based on an Ensemble Hierarchical Extreme Learning Machine
dc.typeArticle

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