Litcius/Paper detail

Artificial neural networks-based multi-objective optimization of immersion cooling battery thermal management system using Hammersley sampling method

Muhammed Dönmez, M. İhsan Karamangi̇l

2024Case Studies in Thermal Engineering28 citationsDOIOpen Access PDF

Abstract

This research optimizes lithium-ion battery module cooling through immersion cooling, addressing pressure drop and after discharge average cell temperature. Using the Hammersley method, various module designs are generated. Multi-objective optimization, using ANN-based multi objective genetic algorithms, is conducted on a 16S1P configuration at 4C discharge and 0.008 kg/s. The optimized design achieved an 83 % average cell temperature reduction at a 4C discharge rate and 0.008 kg/s compared to an uncooled battery cell, while also reducing the pressure drop by 88.6 % relative to the base design. The pressure drop is approximately 12 Pa at a mass flow rate of 0.02 kg/s, with an average cell temperature of 3.13°C in the optimized design. This represents a 68.4 % reduction in pressure drop compared to the base design, which experiences approximately 40 Pa at a lower mass flow rate of 0.008 kg/s. Additionally, the optimized design achieves a 20.8 % reduction in average cell temperature, lowering it from 3.95°C in the base design to 3.13°C. These findings highlight improved pressure and thermal performance in lithium-ion battery modules, with implications for enhanced design and operation. Future work could extend these optimizations to various battery chemistries and conditions.

Topics & Concepts

Artificial neural networkBattery (electricity)Sampling (signal processing)Computer scienceThermalArtificial intelligenceMeteorologyThermodynamicsTelecommunicationsPhysicsPower (physics)DetectorAdvanced Battery Technologies ResearchRefrigeration and Air Conditioning TechnologiesElectric and Hybrid Vehicle Technologies
Artificial neural networks-based multi-objective optimization of immersion cooling battery thermal management system using Hammersley sampling method | Litcius