Investigation of Intelligent Deep Convolution Neural Network for DC-DC Converters Faults Detection in Electric Vehicles Applications

J. Malik, A. Haque, Mohammad Amir
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Abstract

The fault investigation in DC-DC converters (DCCs) becoming necessity to provide consistent and robust electricity in electric vehicles (EVs) applications. Any kind of fault in DCCs leads to impacts the whole system. Therefore, it is essential to increase the robustness and reliability of DCCs. This paper investigates faults in DCCs for EV applications based on an intelligent deep convolution neural network (DCNN). The data obtained during the fault condition and the normal condition is provided to the intelligent-based system and the comparison produces the desired result. The simulation results demonstrate that the DCNN technique recommended in this study can rapidly and precisely detect and identify faults The MATLAB-21 simulation is used to detect the data of fault and normal conditions the intelligent-based deep neural network is used to detect the fault. Further, compared with PID and FLC controllers, the proposed DCNN technique gets state-of-the-art for fault detection results and can be beneficial for the prospect of innovative EV applications.
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智能深度卷积神经网络在电动汽车DC-DC变换器故障检测中的应用研究
在电动汽车应用中,对DC-DC变换器(dcs)进行故障研究已成为提供稳定、可靠电力的必要条件。数据中心的任何一种故障都会对整个系统造成影响。因此,提高dcs的鲁棒性和可靠性至关重要。本文研究了基于智能深度卷积神经网络(DCNN)的电动汽车dcc故障。将故障状态和正常状态下获得的数据提供给基于智能的系统,并进行比较,得到预期的结果。仿真结果表明,本文推荐的DCNN技术能够快速、准确地检测和识别故障。采用MATLAB-21仿真对故障和正常工况数据进行检测,采用基于智能的深度神经网络对故障进行检测。此外,与PID和FLC控制器相比,所提出的DCNN技术具有最先进的故障检测结果,有利于创新电动汽车应用的前景。
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