用于噪声条件下半导体器件在线状态监测的新型导通态电阻估算技术

Mohsen Asoodar;Mehrdad Nahalparvari;Simon Schneider;Iman Shafikhani;Gunnar Ingeström;Hans-Peter Nee
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引用次数: 0

摘要

本文介绍了一种在存在测量噪声的情况下在线精确提取半导体导通电阻的新方法。在这种方法中,导通电阻值是从测量到的半导体导通电压和测量到的负载电流中提取出来的。提取的导通电阻值可用于半导体的在线状态监测。所提出的方法以提取选择性谐波含量为基础。通过增加信噪比的积分作用,进一步增强了估计值,使所提出的方法适用于有噪声的测量。通过 MATLAB/Simulink 环境模拟和实验验证了所提方法的有效性。将在线设置估算出的导通状态电阻值与工业曲线追踪器的离线测量值进行比较,发现总体估算误差小于 1%。在不同的负载条件和被测设备的不同温度下,所提出的解决方案都能保持其估计精度。
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A Novel ON-State Resistance Estimation Technique for Online Condition Monitoring of Semiconductor Devices Under Noisy Conditions
This article presents a novel method for accurate online extraction of semiconductor ON-state resistance in the presence of measurement noise. In this method, the ON-state resistance value is extracted from the measured ON-state voltage of the semiconductors and the measured load current. The extracted ON-state resistance can be used for online condition monitoring of semiconductors. The proposed method is based on the extraction of selective harmonic content. The estimated values are further enhanced through an integral action that increases the signal-to-noise ratio, making the proposed method suitable in the presence of noisy measurements. The efficacy of the proposed method is verified through simulations in the MATLAB/Simulink environment, and experimentally. The estimated ON-state resistance values from the online setup are compared to offline measurements from an industrial curve tracer, where an overall estimation error of less than 1% is observed. The proposed solution maintains its estimation accuracy under variable load conditions and for different temperatures of the device under test.
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