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    基于CEEMDAN–LSTM組合的鋰離子電池壽命預測方法

    史永勝 施夢琢 丁恩松 洪元濤 歐陽

    史永勝, 施夢琢, 丁恩松, 洪元濤, 歐陽. 基于CEEMDAN–LSTM組合的鋰離子電池壽命預測方法[J]. 工程科學學報, 2021, 43(7): 985-994. doi: 10.13374/j.issn2095-9389.2020.06.30.007
    引用本文: 史永勝, 施夢琢, 丁恩松, 洪元濤, 歐陽. 基于CEEMDAN–LSTM組合的鋰離子電池壽命預測方法[J]. 工程科學學報, 2021, 43(7): 985-994. doi: 10.13374/j.issn2095-9389.2020.06.30.007
    SHI Yong-sheng, SHI Meng-zhuo, DING En-song, HONG Yuan-tao, OU Yang. Combined prediction method of lithium-ion battery life based on CEEMDAN–LSTM[J]. Chinese Journal of Engineering, 2021, 43(7): 985-994. doi: 10.13374/j.issn2095-9389.2020.06.30.007
    Citation: SHI Yong-sheng, SHI Meng-zhuo, DING En-song, HONG Yuan-tao, OU Yang. Combined prediction method of lithium-ion battery life based on CEEMDAN–LSTM[J]. Chinese Journal of Engineering, 2021, 43(7): 985-994. doi: 10.13374/j.issn2095-9389.2020.06.30.007

    基于CEEMDAN–LSTM組合的鋰離子電池壽命預測方法

    doi: 10.13374/j.issn2095-9389.2020.06.30.007
    基金項目: 國家自然科學基金資助項目(61871259)
    詳細信息
      通訊作者:

      E-mail:84770540@qq.com

    • 中圖分類號: TM912

    Combined prediction method of lithium-ion battery life based on CEEMDAN–LSTM

    More Information
    • 摘要: 針對目前鋰離子電池壽命預測結果不準確的問題,提出了一種多模態分解的鋰離子電池組合預測模型,從而學習鋰離子電池退化過程的微小變化。該方法在單一長短期記憶(LSTM)預測模型的基礎上,采用了自適應噪聲完全集成的經驗模態分解(CEEMDAN)算法將鋰電池容量分為主退化趨勢和若干局部退化趨勢,然后使用長短期記憶神經網絡(LSTMNN)算法分別對所分解的若干退化數據進行壽命預測,最后將若干預測結果進行有效集成。結果表明,所提出的CEEMDAN?LSTM鋰離子電池組合預測模型最大平均絕對百分比誤差不超過1.5%,平均相對誤差在3%以內,且優于其他預測模型。

       

    • 圖  1  LSTM總體結構圖

      Figure  1.  LSTM structure diagram

      圖  2  組合模型預測框圖

      Figure  2.  Block diagram of combination prediction model

      圖  3  鋰離子電池容量衰減數據。(a)CS33、CS34;(b)CS37、CS38、CX36、CX37

      Figure  3.  Capacity degradation data of lithium-ion batteries: (a) CS33, CS34; (b) CS37, CS38, CX36, CX37

      圖  4  基于CEEMDAN的CS33容量序列分解

      Figure  4.  CS33 capacity sequence decomposition based on CEEMDAN

      圖  5  CS33兩種算法重構誤差對比

      Figure  5.  Comparison of reconstruction errors between two algorithms

      圖  6  50%訓練集電池預測結果。(a)CS33;(b)CS34;(c)CS37;(d)CS38;(e)CX36;(f)CX37

      Figure  6.  Battery prediction results under 50% training set: (a) CS33; (b) CS34; (c) CS37; (d) CS38; (e) CX36; (f) CX37

      圖  7  相對誤差曲線(a)CS33;(b)CS34;(c)CS37;(d)CS38;(e)CX36;(f)CX37

      Figure  7.  Relative error curve: (a) CS33; (b) CS34; (c) CS37; (d) CS38; (e) CX36; (f) CX37

      圖  8  50%訓練集電池預測誤差。(a)CS33;(b)CS34;(c)CS37;(d)CS38;(e)CX36;(f)CX37

      Figure  8.  Battery prediction error under 50% training set: (a) CS33; (b) CS34; (c) CS37; (d) CS38; (e) CX36; (f) CX37

      圖  9  30%訓練集鋰離子電池預測結果。(a)CS33;(b)CS34;(c)CS37;(d)CS38;(e)CX36;(f)CX37

      Figure  9.  Battery prediction error under under 30% training set: (a) CS33; (b) CS34; (c) CS37; (d) CS38; (e) CX36; (f) CX37

      圖  10  30%訓練集電池預測誤差。(a)CS33;(b)CS34;(c)CS37;(d)CS38;(e)CX36;(f)CX37

      Figure  10.  Battery prediction error under 30% training set: (a) CS33; (b) CS34; (c) CS37; (d) CS38; (e) CX36; (f) CX37

      表  1  LiCoO2電池詳細參數

      Table  1.   LiCoO2 battery details

      BatteryAnode and cathode materialsSize /mmWeight /g
      CSLiCoO2 cathode/graphite anode5.4×33.6×50.621.1
      CXLiCoO2 cathode/graphite anode6.6×33.8×5028
      下載: 導出CSV

      表  2  LSTM預測模型參數設置

      Table  2.   LSTM prediction model parameter setting

      Number of iterationsNumber of hidden layersNumber of hidden cellsInitial learning rate
      50012000.002
      下載: 導出CSV

      表  3  50%訓練集鋰電池壽命預測誤差

      Table  3.   Lithium battery life prediction error under 50% training set

      ModelBatteryRULtrRULprRULerPer
      LSTMCS3319820130.0152
      CS34176269930.5284
      CS3716716920.0120
      CS38201223220.1095
      CX3619119210.0076
      CX3722422730.0134
      EMD–LSTMCS3319819800
      CS3417618370.0398
      CS3716716920.0114
      CS38201222210.1045
      CX3619119210.0062
      CX3722422510.0045
      CEEMDAN–
      LSTM
      CS3319819710.0051
      CS3417617600
      CS3716717140.0239
      CS38201223220.1095
      CX3619119210.0062
      CX3722422400
      下載: 導出CSV

      表  4  30%訓練集鋰電池壽命預測誤差

      Table  4.   Lithium battery life prediction error under 30% training set

      ModelBatteryRULtrRULprRULerPer
      LSTMCS33323346230.0712
      CS34301325240.0797
      CS373475271800.5187
      CS38381408270.0709
      CX3638138540.0105
      CX3741441950.0121
      EMD–LSTMCS3332332410.0031
      CS3430130430.0100
      CS3734735470.2018
      CS38381408270.0708
      CX36381430490.1286
      CX3741441400
      CEEMDAN–
      LSTM
      CS3332332300
      CS3430130980.0266
      CS3734735360.0173
      CS38381406250.0656
      CX3638137650.0131
      CX3741441400
      下載: 導出CSV

      表  5  不同算法預測精度

      Table  5.   Prediction accuracy of different algorithms

      BatteryTraining proportion/%algorithmRMSE/
      (A·h)
      MAPEMAE/
      (A·h)
      CS3350BP0.14710.16490.1043
      ELM0.06500.06260.0367
      SVR0.02970.03040.0244
      CEEMDAN–LSTM0.01200.01230.0077
      CS3330BP0.17270.17940.1172
      ELM0.12160.12440.0805
      SVR0.07080.07260.0692
      CEEMDAN–LSTM0.03270.03120.0200
      下載: 導出CSV
      中文字幕在线观看
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    • 收稿日期:  2020-06-30
    • 網絡出版日期:  2020-09-24
    • 刊出日期:  2021-07-01

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