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基于魯棒H濾波的鋰離子電池SOC估計

Lithium-ion battery state of charge estimation based on a robust H filter

  • 摘要: 荷電狀態(State of charge, SOC)估計是電池管理系統的核心功能之一,它在電動汽車的生命周期中起著重要作用。針對鋰離子電池溫度影響模型參數,進而導致SOC估計不準確的問題,本文提出了基于魯棒H濾波的SOC估計方法。首先,以二階Thevenin等效電路模型做為鋰離子電池基礎模型,并將溫度對電池模型參數的影響建模為標稱電阻值和電池總容量的加性變量,視溫度變化為系統的外部擾動。其次,采用滑動線性法對電池模型進行線性化,并在此基礎上運用線性矩陣不等式技術設計了對SOC進行估計的魯棒H濾波器。最后,分別采用四種不同類型的動態電流激勵進行仿真實驗驗證,并將SOC的估計結果與kalman濾波對SOC的估計結果進行對比。結果表明所設計的魯棒H濾波器能夠實現對SOC更為準確的跟蹤,同時對外部擾動具有較好的魯棒性。

     

    Abstract: The state of charge (SOC) estimation is one of the core functions of the battery management system; it can play a significant role in the life cycle of electric vehicles. The SOC estimation method has attracted considerable research attention in recent years, particularly about improving estimation accuracy. However, most studies are limited by only focusing on known or fixed battery model parameters and not considering their temperature dependence. This indicates a need to explore how the lithium-ion battery temperature affects the model parameters, which leads to inaccurate SOC estimation. The principal objective of this study is to investigate the robust H filter-based method for the problem that temperature affects battery model parameters and thus leads to inaccurate SOC estimation. First, the second-order Thevenin equivalent circuit model with two parallel resistor–capacitor pairs is taken as the basic model of the lithium-ion battery. The influence of temperature on battery model parameters is modeled as an additive variable of the nominal resistance value and the total battery capacity, and the temperature change is considered an external disturbance of the system. Afterward, the sliding linear method is used to linearize this battery model; on this basis, a robust H filter for SOC estimation is designed using linear matrix inequality technology. Finally, the effectiveness of the proposed approach is verified using four different types of dynamic current load profiles (the BJDST-Beijing Dynamic Stress Test, FUDS-Federal Urban Driving Schedule, US06-US06 Highway Driving Schedule and BJDST-FUDS-US06 joint dynamic test) compared with the Kalman filter-based SOC estimation method. The simulation analysis results indicate that the proposed SOC estimation approach can realize a higher SOC estimation accuracy even if the model parameters vary with temperature, and it has good robustness to external disturbances.

     

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