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Enhanced Identification of Battery Models for Real-Time Battery Management

机译:增强了电池型号的识别功能,用于实时电池管理

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摘要

Renewable energy generation, vehicle electrification, and smart grids rely critically on energy storage devices for enhancement of operations, reliability, and efficiency. Battery systems consist of many battery cells, which have different characteristics even when they are new, and change with time and operating conditions due to a variety of factors such as aging, operational conditions, and chemical property variations. Their effective management requires high fidelity models. This paper aims to develop identification algorithms that capture individualized characteristics of each battery cell and produce updated models in real time. It is shown that typical battery models may not be identifiable, unique battery model features require modified input/output expressions, and standard least-squares methods will encounter identification bias. This paper devises modified model structures and identification algorithms to resolve these issues. System identifiability, algorithm convergence, identification bias, and bias correction mechanisms are rigorously established. A typical battery model structure is used to illustrate utilities of the methods.
机译:可再生能源发电,车辆电气化和智能电网至关重要地依赖于储能设备来增强运行,可靠性和效率。电池系统由许多电池组成,即使它们是新电池也具有不同的特性,并且由于老化,工作条件和化学性质变化等多种因素而随时间和工作条件而变化。他们的有效管理需要高保真模型。本文旨在开发识别算法,以捕获每个电池单元的个性化特征并实时生成更新的模型。结果表明,典型的电池模型可能无法识别,独特的电池模型功能需要修改的输入/输出表达式,并且标准最小二乘法会遇到识别偏差。本文设计了改进的模型结构和识别算法来解决这些问题。严格建立了系统可识别性,算法收敛性,识别偏差和偏差校正机制。典型的电池模型结构用于说明方法的实用性。

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