4.7 Article

Prediction and optimization of the design decisions of liquid cooling systems of battery modules using artificial neural networks

期刊

INTERNATIONAL JOURNAL OF ENERGY RESEARCH
卷 46, 期 6, 页码 7293-7308

出版社

WILEY-HINDAWI
DOI: 10.1002/er.7637

关键词

artificial neural network; battery thermal modeling; CFD; cooling plate; liquid cooling; optimization; serpentine channel

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This study focuses on predicting the effects of cooling channel parameters on temperature, heat transfer coefficient, and pressure drop in a liquid cooling battery system using artificial neural network models. Optimization algorithms are then used to minimize pump power consumption. The chaos game optimization method shows superior performance in terms of speed, accuracy, and power reduction.
Liquid cooling systems are effective for keeping the battery modules in the safe temperature range. This study focuses on decreasing the power consumption of the pump without compromising the cooling performance. Artificial neural network (ANN) models are created to predict the effects of the height and width of the cooling channel and the mass flow rate on the maximum temperature, convective heat transfer coefficient, and pressure drop. The ANN models are used as surrogate models for the design and optimization of the liquid cooling battery system. Particle swarm optimization (PSO) and genetic algorithm (GA), which are commonly utilized optimization methods in many areas, and chaos game optimization (CGO) and coot optimization algorithm (COOT) methods, which are recently presented methods, are adopted to minimize the power consumption of the pump. The results are compared in terms of computational performance and best, worst, average, and SD values. Despite all of the optimization methods used giving similar results, the CGO method comes forward due to fast converging, SD, and finding the minimum power consumption of the pump among other optimization methods. A 22.4% decrease in the power consumption of the pump is achieved with the use of the ANN-based CGO method while conserving the cooling performance. When comparing the ANN predicted and CFD results, the relative errors are less than 1%.

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