递归最小平方滤波器
荷电状态
计算机科学
控制理论(社会学)
粒子群优化
电池(电)
健康状况
遗忘
内阻
均方误差
工程类
算法
人工智能
自适应滤波器
数学
功率(物理)
控制(管理)
物理
哲学
统计
量子力学
语言学
作者
Estiko Rijanto,Latif Rozaqi,Asep Nugroho,Stratis Kanarachos
标识
DOI:10.1109/ica.2017.8068416
摘要
Recursive least square (RLS) with a single forgetting factor has been commonly used for parameter and state estimation of dynamical systems. In many applications such as robotics, electric vehicles, renewable energy systems, and smart-grid, accurate battery state of charge (SOC) and state of health (SOH) estimation is essential for the safe and efficient operation. To this end, the challenge lies in identifying and parameterization the temporal behavior of Lithium-Ion batteries, because their response is nonlinear and time-varying. This paper proposes a new RLS algorithm with optimum multiple adaptive forgetting factors (MAFFs) for SOC and SOH estimation of Li-ion batteries. Particle swarm intelligence is employed for identifying the system parameters. The performance of the optimum MAFF-RLS algorithm is compared to RLS with multiple fixed forgetting factors (MFFFs). Performance evaluation is carried out using the Urban Dynamometer Driving Schedule (UDDS). The simulation results indicate the better performance of MAFF-RLS algorithm compared to MFFF-RLS algorithm in terms of mean square error of SOC and internal resistance.
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