利用数据驱动模型预测燃料电池中的氮浓度

Tong Lin, Leiming Hu, S. Litster, L. Kara
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摘要

本文提出了一套数据驱动的质子交换膜燃料电池(pemfc)氮浓度预测方法。氮积聚在阳极通道是导致燃料电池效率低下的一个关键因素。虽然定期净化阳极通道中的气体是对抗氮积累的常用策略,但这种开环策略也会产生次优的净化决策。相反,对氮浓度的准确预测可以帮助设计最佳的净化策略。然而,由于化学环境的复杂性,基于模型的方法(如CFD模拟)通常无法用于长堆燃料电池的氮预测,或者由于其固有的缓慢性,无法用于已部署燃料电池的实时氮预测。作为解决这一挑战的一步,我们探索了一组数据驱动技术,用于学习从输入参数到氮积累的回归模型,使用基于模型的燃料电池模拟器作为离线数据生成器。这使得经过训练的机器学习系统能够根据传感器获得的其他参数,在部署过程中对氮浓度做出快速决策。我们描述了我们探索的各种方法,比较了结果,并提供了利用机器学习进行燃料电池物理建模的未来方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Nitrogen Concentration in Fuel Cells Using Data-Driven Modeling
This paper presents a set of data-driven methods for predicting nitrogen concentration in proton exchange membrane fuel cells (PEMFCs). The nitrogen that accumulates in the anode channel is a critical factor giving rise to significant inefficiency in fuel cells. While periodically purging the gases in the anode channel is a common strategy to combat nitrogen accumulation, such open-loop strategies also create sub-optimal purging decisions. Instead, an accurate prediction of nitrogen concentration can help devise optimal purging strategies. However, model based approaches such as CFD simulations for nitrogen prediction are often unavailable for long-stack fuel cells due to the complexity of the chemical environment, or are inherently slow preventing them from being used for real-time nitrogen prediction on deployed fuel cells. As one step toward addressing this challenge, we explore a set of data-driven techniques for learning a regression model from the input parameters to the nitrogen build-up using a model-based fuel cell simulator as an offline data generator. This allows the trained machine learning system to make fast decisions about nitrogen concentration during deployment based on other parameters that can be obtained through sensors. We describe the various methods we explore, compare the outcomes, and provide future directions in utilizing machine learning for fuel cell physics modeling in general.
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