Cyber-Physical Co-Simulation Framework for Smart Cells in Scalable Battery Packs

S. Steinhorst, M. Kauer, Arne Meeuw, Swaminathan Narayanaswamy, M. Lukasiewycz, S. Chakraborty
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引用次数: 19

Abstract

This article introduces a Cyber-physical Co-Simulation Framework (CPCSF) for design and analysis of smart cells that enable scalable battery pack and Battery Management System (BMS) architectures. In contrast to conventional cells in battery packs, where all cells are monitored and controlled centrally, each smart cell is equipped with its own electronics in the form of a Cell Management Unit (CMU). The CMU maintains the cell in a safe and healthy operating state, while system-level battery management functions are performed by cooperation of the smart cells via communication. Here, the smart cells collaborate in a self-organizing fashion without a central controller instance. This enables maximum scalability and modularity, significantly simplifying integration of battery packs. However, for this emerging architecture, system-level design methodologies and tools have not been investigated yet. By contrast, components are developed individually and then manually tested in a hardware development platform. Consequently, the systematic design of the hardware/software architecture of smart cells requires a cyber-physical multi-level co-simulation of the network of smart cells that has to include all the components from the software, electronic, electric, and electrochemical domains. This comprises distributed BMS algorithms running on the CMUs, the communication network, control circuitry, cell balancing hardware, and battery cell behavior. For this purpose, we introduce a CPCSF that enables rapid design and analysis of smart cell hardware/software architectures. Our framework is then applied to investigate request-driven active cell balancing strategies that make use of the decentralized system architecture. In an exhaustive analysis on a realistic 21.6kW h Electric Vehicle (EV) battery pack containing 96 smart cells in series, the CPCSF is able to simulate hundreds of balancing runs together with all system characteristics, using the proposed request-driven balancing strategies at highest accuracy within an overall time frame of several hours. Consequently, the presented CPCSF for the first time allows us to quantitatively and qualitatively analyze the behavior of smart cell architectures for real-world applications.
可扩展电池组中智能电池的网络物理联合仿真框架
本文介绍了一个用于设计和分析智能电池的网络物理联合仿真框架(CPCSF),该框架支持可扩展的电池组和电池管理系统(BMS)架构。与传统电池组中的所有电池都被集中监控不同,每个智能电池都以电池管理单元(CMU)的形式配备了自己的电子设备。CMU使电池处于安全健康的运行状态,而系统级电池管理功能是通过智能电池之间的通信合作来实现的。在这里,智能单元以一种自组织的方式协作,没有中央控制器实例。这实现了最大的可扩展性和模块化,大大简化了电池组的集成。然而,对于这个新兴的体系结构,系统级设计方法和工具还没有被研究。相比之下,组件是单独开发的,然后在硬件开发平台上手动测试。因此,智能电池硬件/软件架构的系统设计需要智能电池网络的网络物理多级联合模拟,该网络必须包括来自软件,电子,电气和电化学领域的所有组件。这包括运行在cmu上的分布式BMS算法、通信网络、控制电路、电池平衡硬件和电池行为。为此,我们介绍了一个CPCSF,可以快速设计和分析智能细胞硬件/软件架构。然后将我们的框架应用于研究利用分散系统架构的请求驱动的主动单元平衡策略。在对包含96个串联智能电池的21.6kW h电动汽车(EV)电池组的详尽分析中,CPCSF能够在几个小时的总体时间框架内以最高精度使用所提出的请求驱动平衡策略,模拟数百次平衡运行以及所有系统特性。因此,提出的CPCSF首次允许我们定量和定性地分析现实世界应用中智能细胞架构的行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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