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RUL Estimation of Power Semiconductor Switch using Evolutionary Time series Prediction

机译:使用进化时间序列预测的功率半导体开关的RUL估计

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Electric vehicle (EV) and hybrid EV (HEV) are popular for their low fuel cost per mile and near zero carbon emission. These vehicles utilize power semiconductor switches for high efficiency power conversion. These switches experience electrical, thermal, mechanical stresses during their operation and these stresses result in degradation and subsequently, wire-bond lift-off and solder fatigue. This degradation can be identified at an early stage by monitoring the tendency of fault precursor trajectory. Moreover, remaining useful life (RUL) is estimated from prediction and projection of this trajectory. Bayesian filters such as Kalman filter (KF), extended KF and generic particle filtering (GPF) methods have been recently used for trajectory tracing and projection. These methods suffer large variance in tendency projection when trajectory has both linear and non-linear tendencies and subject to harsh measurement noise. Moreover, these methods require large number of samples for probability density function (PDF) construction. In this paper, a hybrid Auto regression integrated Moving Average (ARIMA)-Neural Network (NN) model is utilized for tendency prediction and RUL estimation. The contribution of these two models is estimated and optimized using a nature inspired Covariance Matrix Adaptation (CMA) evolutionary technique. This hybrid algorithm combines the advantages of ARIMA and NN model to precisely trace and project fault precursor trajectory even under harsh noise. Simulation results verify its effectiveness under different noise level. The experimental validation of the proposed method is shown using RUL estimation of collector-emitter on-state voltage (VCE,ON) of IGBT. The performance of this method is compared to ARIMA model, NN, and PF model.
机译:电动车(EV)和Hybrid EV(HEV)是每英里燃料成本低,零碳排放附近的流行。这些车辆利用功率半导体开关,用于高效率功率转换。这些开关在操作期间经历电气,热,机械应力,并且这些应力导致劣化,随后导致焊丝剥离和焊接疲劳。通过监测故障前体轨迹的趋势,可以在早期阶段鉴定这种降解。此外,剩余的使用寿命(RUL)估计该轨迹的预测和投影。贝叶斯滤波器如卡尔曼滤波器(KF),扩展KF和通用粒子滤波(GPF)方法最近用于轨迹跟踪和投影。当轨迹具有线性和非线性趋势并且经过苛刻的测量噪声来遭受趋势突起,这些方法遭受大的差异。此外,这些方法需要大量用于概率密度函数(PDF)构造的样本。本文利用了混合自动回归集成移动平均(ARIMA) - 网络(NN)模型进行趋势预测和RUL估计。使用自然启发的协方差矩阵适应(CMA)进化技术估计和优化了这两种模型的贡献。这种混合算法结合了Arima和NN模型的优点,即使在恶劣的噪声下也能够精确地跟踪和项目故障前体轨迹。仿真结果验证其在不同噪声水平下的有效性。所提出的方法的实验验证使用RUL估计集电器 - 发射器导通状态电压(V. ce,在上)IGBT。将该方法的性能与Arima Model,NN和PF模型进行比较。

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