一种基于神经网络的重型柴油机传感器验证方案

G. Campa, Mohan Krishnamurty, M. Gautam, M. Napolitano, M. Perhinschi
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引用次数: 14

摘要

本文提出了一种用于重型柴油机的完整的传感器故障检测、隔离和调节(SFDIA)方案,该方案在传感器功能上没有物理冗余。可用测量中的分析冗余被两组不同的神经逼近器用于识别发动机系统的非线性输入/输出关系。第一组近似器用于评估故障隔离所需的剩余信号。在故障检测和隔离之后,第二组用于为来自故障传感器的信号提供替代。详细解释了SFDIA方案,并通过对测量信号注入故障的一组仿真来评估其性能。本研究的实验数据是用一辆测试车获得的,该测试车对几个发动机参数进行了适当的测量。这些测量是在一组特定的路线上进行的,其中包括高速公路和城市驾驶模式的组合
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A Neural Network Based Sensor Validation Scheme for Heavy-Duty Diesel Engines
This paper presents the design of a complete sensor fault detection, isolation and accommodation (SFDIA) scheme for heavy-duty diesel engines without physical redundancy in the sensors capabilities. The analytical redundancy in the available measurements is exploited by two different banks of neural approximators that are used for the identification of the nonlinear input/output relationships of the engine system. The first set of approximators is used to evaluate the residual signals needed for fault isolation. The second set is used - following the failure detection and isolation - to provide a replacement for the signal coming from the faulty sensor. The SFDIA scheme is explained with details, and its performance is evaluated through a set of simulations in which failures are injected on measured signals. The experimental data from this study have been acquired using a test vehicle appositely instrumented to measure several engine parameters. The measurements were performed on a specific set of routes, which included a combination of highway and city driving patterns
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