Home /Research /Data-Selective Online Battery Identification Using Extended Time Regular Expressions
OTHER

Data-Selective Online Battery Identification Using Extended Time Regular Expressions

Nicolai A. Weinreich, Marco Muñiz, Marius Mikučionis, Kim G. Larsen, Remus Teodorescu

Year
2025
Access
Open access

Abstract

In this paper, we propose a data-efficient online battery identification method which targets highly informative battery cell data segments based on the driving pattern of the vehicle. We consider the case of a vehicle driving on/off a motorway and construct an Extended Time Regular Expression (ETRE) to detect data segments fitting these driving patterns. Simulation results indicate that by only using up to 10.71% of the data on average, the proposed method provides a low-bias and low-variance estimator under non-negligible current and voltage noise compared to other conventional estimation algorithms.

Keywords

eess.SY

Related papers

Browse all OTHER papers