通过时间优化 LSTM 和自适应动态阈值识别重型车辆的高发射器

IF 2.7 3区 工程技术 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Frontiers of Information Technology & Electronic Engineering Pub Date : 2023-12-07 DOI:10.1631/fitee.2300005
Zhenyi Xu, Renjun Wang, Yang Cao, Yu Kang
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引用次数: 1

摘要

在实际应用中,重型柴油车是城市氮氧化物(NOx)的重要来源,其排放的氮氧化物和颗粒物(PM)分别占汽车总排放量的 80% 和 90% 以上。检测和控制重型柴油机的排放对保护公众健康至关重要。目前,上路行驶的车辆必须定期接受检测,每半年或一年一次,在车辆检测站过滤掉高排放移动源。然而,由于年检间隔时间较长,很难及时有效地筛选出高排放车辆,而且固定的阈值无法适应车辆行驶条件的动态变化。车载诊断设备(OBD)安装在车辆内部,可以实时记录车辆的排放数据。本文提出了一种时态优化长短期记忆(LSTM)和自适应动态阈值方法,利用车载诊断仪数据来识别重型高排放车辆,因为车载诊断仪可以连续、实时地跟踪和记录车辆的排放状态。首先,建立了时间优化 LSTM 排放预测模型,以解决实际应用中大量 OBD 数据流导致的时间步长上的注意力偏差问题。然后,使用灵活的标准检测浓度预测错误序列,并将其与异常排放情况区分开来,该标准由随驾驶条件变化的自适应动态阈值计算得出。最后,引入了时间序列的相似性度量策略,以纠正一些伪异常结果。在三个真实的车载诊断系统时间序列排放数据集上进行的实验表明,我们的方法可以实现高精度的异常排放识别。
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High-emitter identification for heavy-duty vehicles by temporal optimization LSTM and an adaptive dynamic threshold

Heavy-duty diesel vehicles are important sources of urban nitrogen oxides (NOx) in actual applications for environmental compliance, emitting more than 80% of NOx and more than 90% of particulate matter (PM) in total vehicle emissions. The detection and control of heavy-duty diesel emissions are critical for protecting public health. Currently, vehicles on the road must be regularly tested, every six months or once a year, to filter out high-emission mobile sources at vehicle inspection stations. However, it is difficult to effectively screen high-emission vehicles in time with a long interval between annual inspections, and the fixed threshold cannot adapt to the dynamic changes of vehicle driving conditions. An on-board diagnostic device (OBD) is installed inside the vehicle and can record the vehicle’s emission data in real time. In this paper, we propose a temporal optimization long short-term memory (LSTM) and adaptive dynamic threshold approach to identify heavy-duty high-emitters by using OBD data, which can continuously track and record the emission status in real time. First, a temporal optimization LSTM emission prediction model is established to solve the attention bias discrepancy problem on time steps that is caused by the large number of OBD data streams in practice. Then, the concentration prediction error sequence is detected and distinguished from the anomalous emission contexts using flexible criteria, calculated by an adaptive dynamic threshold with changing driving conditions. Finally, a similarity metric strategy for the time series is introduced to correct some pseudo anomalous results. Experiments on three real OBD time-series emission datasets demonstrate that our method can achieve high accuracy anomalous emission identification.

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来源期刊
Frontiers of Information Technology & Electronic Engineering
Frontiers of Information Technology & Electronic Engineering COMPUTER SCIENCE, INFORMATION SYSTEMSCOMPU-COMPUTER SCIENCE, SOFTWARE ENGINEERING
CiteScore
6.00
自引率
10.00%
发文量
1372
期刊介绍: Frontiers of Information Technology & Electronic Engineering (ISSN 2095-9184, monthly), formerly known as Journal of Zhejiang University SCIENCE C (Computers & Electronics) (2010-2014), is an international peer-reviewed journal launched by Chinese Academy of Engineering (CAE) and Zhejiang University, co-published by Springer & Zhejiang University Press. FITEE is aimed to publish the latest implementation of applications, principles, and algorithms in the broad area of Electrical and Electronic Engineering, including but not limited to Computer Science, Information Sciences, Control, Automation, Telecommunications. There are different types of articles for your choice, including research articles, review articles, science letters, perspective, new technical notes and methods, etc.
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