基于决策树算法的新能源汽车故障检测和故障率分析

IF 3.1 Q1 Mathematics Applied Mathematics and Nonlinear Sciences Pub Date : 2024-01-01 DOI:10.2478/amns-2024-0803
Ping Tan, Lanlan Gong
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引用次数: 0

摘要

新能源汽车对促进环境保护和技术创新至关重要。在其运行过程中,故障检测仍然面临挑战,迫切需要高效、准确的故障诊断方法。本文针对新能源汽车的故障检测问题,提出了一种基于决策树算法的故障检测分析模型。该模型适用的数据集是通过对车载网络数据进行预处理,包括数据清洗、整合等步骤准备而成。使用 C4.5 算法构建决策树后,即可实现故障预测。该模型在测试集上的精度高达 82.26%,故障检测准确率高,比传统的决策树算法高出 1.23 个百分点。通过对不同规模的训练集进行训练和测试,证明了该模型在处理大规模数据方面的有效性和效率。使用传统算法,训练集为 80,000 个数据,模型的运行时间从 274,432 秒减少到 249,269 秒。这项研究为新能源汽车的故障诊断提供了一种实用的方法,在提高故障检测精度的同时优化了计算效率。新能源汽车的实时监控和及时维护需要这种方法。
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Fault Detection and Failure Rate Analysis of New Energy Vehicles Based on Decision Tree Algorithm
New energy vehicles are vital in promoting environmental protection and technological innovation. Fault detection still faces challenges during its operation, and efficient and accurate methods for fault diagnosis are urgently needed. This paper proposes a fault detection and analysis model based on a decision tree algorithm for the fault detection problem of new energy vehicles. The dataset applicable to the model is prepared by preprocessing in-vehicle network data, including data cleaning, integration, and other steps. Fault prediction can be realized after using C4.5 algorithms to construct a decision tree. With a precision of 82.26% on the test set, this model is highly accurate in fault detection, which is 1.23 percentage points higher than the traditional decision tree algorithm. The model’s effectiveness and efficiency in handling large-scale data were demonstrated by its training and testing on training sets of different sizes. Using the traditional algorithm, a training set of 80,000 data was used to reduce the model’s running time from 274,432 seconds to 249,269 seconds. This study provides a practical methodology for fault diagnosis of new energy vehicles, improving fault detection accuracy while optimizing computational efficiency. Real-time monitoring and timely maintenance of new energy vehicles require this.
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来源期刊
Applied Mathematics and Nonlinear Sciences
Applied Mathematics and Nonlinear Sciences Engineering-Engineering (miscellaneous)
CiteScore
2.90
自引率
25.80%
发文量
203
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