Litcius/Paper detail

Enhanced SOC estimation of lithium ion batteries with RealTime data using machine learning algorithms

Obuli Pranav D, Preethem S. Babu, V. Indragandhi, B. Ashok, S. Vedhanayaki, C. Kavitha

2024Scientific Reports79 citationsDOIOpen Access PDF

Abstract

Accurately estimating Battery State of Charge (SOC) is essential for safe and optimal electric vehicle operation. This paper presents a comparative assessment of multiple machine learning regression algorithms including Support Vector Machine, Neural Network, Ensemble Method, and Gaussian Process Regression for modelling the complex relationship between real-time driving data and battery SOC. The models are trained and tested on extensive field data collected from diverse drivers across varying conditions. Statistical performance metrics evaluate the SOC prediction accuracy on the test set. Gaussian process regression demonstrates superior precision surpassing the other techniques with the lowest errors. Case studies analyse model competence in mimicking actual battery charge/discharge characteristics responding to changing drivers, temperatures, and drive cycles. The research provides a reliable data-driven framework leveraging advanced analytics for precise real-time SOC monitoring to enhance battery management.

Topics & Concepts

Computer scienceKrigingSupport vector machineMachine learningState of chargeGaussian processArtificial neural networkBattery (electricity)Artificial intelligenceData miningData setAlgorithmGaussianPhysicsPower (physics)Quantum mechanicsAdvanced Battery Technologies ResearchElectric Vehicles and InfrastructureAdvancements in Battery Materials