Litcius/Paper detail

A Review of Degradation Models and Remaining Useful Life Prediction for Testing Design and Predictive Maintenance of Lithium-Ion Batteries

Gabriele Patrizi, Luca Martiri, Antonio Pievatolo, Alessandro Magrini, Giovanni Meccariello, Loredana Cristaldi, Nedka Dechkova Nikiforova

2024Sensors33 citationsDOIOpen Access PDF

Abstract

We present a novel decision-making framework for accelerated degradation tests and predictive maintenance that exploits prior knowledge and experimental data on the system's state. As a framework for sequential decision making in these areas, dynamic programming and reinforcement learning are considered, along with data-driven degradation learning when necessary. Furthermore, we illustrate both stochastic and machine learning degradation models, which are integrated in the framework, using data-driven methods. These methods are presented as a valuable tool for designing life-testing experiments and for maintaining lithium-ion batteries.

Topics & Concepts

Degradation (telecommunications)Computer scienceReinforcement learningLithium (medication)ExploitReliability engineeringPredictive maintenanceMachine learningArtificial intelligenceEngineeringMedicineComputer securityEndocrinologyTelecommunicationsAdvanced Battery Technologies ResearchReliability and Maintenance OptimizationSoftware Reliability and Analysis Research
A Review of Degradation Models and Remaining Useful Life Prediction for Testing Design and Predictive Maintenance of Lithium-Ion Batteries | Litcius