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基于WOA-VMD與PSO-SVM的鋰離子電池內短路故障診斷方法

Research on internal short-circuit fault diagnosis methods for lithium-ion batteries based on WOA-VMD and PSO-SVM

  • 摘要: 為了保證儲能電站和新能源汽車的安全運行,針對鋰離子電池內短路故障引發熱失控現象,提出了鯨魚優化算法優化變分模態分解(WOA-VMD)和粒子群算法優化支持向量機(PSO-SVM)的故障診斷方法. 首先通過WOA尋找VMD分解層數K和懲罰因子α最優參數組合,將鋰離子電池內短路故障信號與正常信號分解出多個模態分量;其次,計算各模態分量(IMF)的樣本熵值作為特征向量;最后將特征向量分別輸入至SVM故障診斷模型與PSO-SVM故障診斷模型中進行故障診斷. 結果表明,SVM故障診斷率66.667%,經PSO優化過的SVM故障診斷率為96.667%,鋰離子電池內短路故障得到了有效識別.

     

    Abstract: With the continuous consumption of traditional fossil fuels, people have gradually started to realize the importance of protecting the environment. Therefore, new clean energy sources like wind power have been gradually receiving considerable attention in recent years, along with the rapid development of new energy vehicles as replacements for traditional cars. Lithium-ion batteries have emerged as essential energy storage equipment for clean energy systems and power sources of new energy vehicles. However, these batteries are prone to thermal runaway failure during their usage and pose safety concerns. To ensure the safe operation of energy storage equipment and new energy vehicles, this paper proposes fault diagnosis methods using whale optimization algorithm optimized variational mode decomposition (WOA-VMD) and particle swarm optimization support vector machine (PSO-SVM) for diagnosing internal short-circuit fault voltage signals of lithium batteries, as they cause runaway heating. First, the internal short-circuit fault voltage signal in the lithium battery is decomposed using VMD to obtain a series of natural mode components. Two parameters in the VMD algorithm that significantly impact the decomposition results include the number of decomposition layers K and penalty factor α. To achieve the best decomposition effect, WOA was used to determine the VMD optimal decomposition level K and penalty factor α. Further, the optimal parameter combination is found to be K = 10 and α = 1997. Subsequently, this optimal parameter combination was introduced into VMD decomposition to decompose the internal short-circuit fault signal of the lithium-ion battery to obtain 10 modal components. Thus, the sample entropy of each of the 10 modal components was calculated and used as the eigenvector. Finally, these eigenvectors were inputted into the SVM model, and then the PSO-optimized SVM model was used for fault diagnosis, providing the diagnostic results. The final results showed that the diagnostic accuracy of the direct SVM model remained stable at 66.667%, while the diagnostic accuracy of the PSO-optimized SVM model was stable at 96.667%. Compared with the direct SVM model, the PSO-SVM diagnostic model effectively identified the internal short-circuit fault of the lithium-ion battery in the SVM model after feature selection by the particle swarm optimization algorithm, thereby proving its effectiveness.

     

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