论文标题
数据驱动的故障检测预后和锂离子电池的预测
Data-Driven Prognosis of Failure Detection and Prediction of Lithium-ion Batteries
论文作者
论文摘要
电池预后和健康管理预测模型是电池管理系统框架安全和可靠性协议的重要组成部分。总体而言,开发一个与当前文献一致的强大而有效的电池模型是确保电池功能安全性的有用步骤。为此,提出了多物理,多尺度的确定性数据驱动预后(DDP),该预后仅依赖于原位测量数据,并根据从系统中提取的曲率信息估算了失败。与需要明确表达保护原理的传统应用不同,所提出的方法设置了每个数据点附近的局部保护功能,该局部保护功能被表示为系统中曲率的最小化。通过消除对离线训练的需求,该方法可以通过预测范围来预测各种系统的不稳定性。预测不稳定性的预测范围被认为是剩余的有用寿命(RUL)度量。然后使用该框架来分析锂离子电池的健康状况。根据结果,它证明了DDP技术可以准确预测锂离子电池故障的发作。
Battery prognostics and health management predictive models are essential components of safety and reliability protocols in battery management system frameworks. Overall, developing a robust and efficient battery model that aligns with the current literature is a useful step in ensuring the safety of battery function. For this purpose, a multi-physics, multi-scale deterministic data-driven prognosis (DDP) is proposed that only relies on in situ measurements of data and estimates the failure based on the curvature information extracted from the system. Unlike traditional applications that require explicit expression of conservation principle, the proposed method devices a local conservation functional in the neighborhood of each data point which is represented as the minimization of curvature in the system. By eliminating the need for offline training, the method can predict the onset of instability for a variety of systems over a prediction horizon. The prediction horizon to prognosticate the instability, alternatively, is considered as the remaining useful life (RUL) metric. The framework is then employed to analyze the health status of Li-ion batteries. Based on the results, it has demonstrated that the DDP technique can accurately predict the onset of failure of Li-ion batteries.