Thermal Optimization Strategies for Li-Ion Batteries: Predictive Temperature Algorithm

Author:

Antonio Metallo1

Affiliation:

1. University of Salerno Industrial Engineering Department, , Via Giovanni Paolo II, 132, 84084 Fisciano, SA , Italy

Abstract

Abstract Performance, safety, and longevity of batteries are all strongly impacted by thermal management, which is an essential component of battery design and operation. This work examines how accurate temperature control can result in significant improvements in performance and reliability with a focus on battery thermal heating. Predicting the temperature achieved by the battery during operation not only avoids conditions that lead to thermal runaway but also guarantees that the battery is used optimally within an optimal temperature range. Within the optimal temperature range, several advantages are observed. First, battery efficiency improves significantly as electrochemical processes occur more efficiently. Furthermore, by lowering the possibility of short circuits and improving overall battery safety, thermal stability aids in the prevention of undesirable phenomena like dendrite growth. By lessening the deterioration brought on by thermal degradation processes, thermal optimization also affects battery longevity. Based on experimental tests, a finite element method (FEM) model is developed. A model for thermal runaway propagation is established by combining thermal runaway and conduction models with an Arrhenius law-based combustion model. The study employed a cylindrical Li-ion cell to conduct tests, taking into account three parameters: discharge rate (CRate), ambient temperature (Tamb), and initial battery temperature (T0). An algorithm based on the three variables was developed using the simulation results. The algorithm enables the accurate prediction of rising battery temperature during use, facilitating the setting of an optimal maximum discharge rate considering initial and ambient temperatures, thereby ensuring optimal performance within the desired temperature range.

Publisher

ASME International

Reference56 articles.

1. Emissivity Prediction for an IR Camera During Laser Welding of Aluminum;Metallo;Int. J. Thermodyn.,2022

2. Battery Thermal Management System for Electric Vehicle Using Heat Pipes;Smith;Int. J. Therm. Sci.,2018

3. Optimization of a Dry Peeling System for Tomatoes Using Approximate Solutions;Metallo;Int. J. Thermodyn.,2023

4. IoT Approach for Development and Optimization of a System for Dry Peeling of Tomatoes;Lorusso,2023

5. Analytical Solutions for Tomato Peeling With Combined Heat Flux and Convective Boundary Conditions;Cuccurullo;J. Phys.: Conf. Ser.,2017

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