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A Method of Using Neural Fuzzy Models to Determine the Technical State of a Diesel Locomotive's Electrical Equipment

机译:一种使用神经模糊模型确定内燃机车电气设备技术状态的方法

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AbstractEquipment for carrying out onboard diagnostics is an important component in systems for controlling the state and reliability of rolling stock, in particular, that of diesel locomotives. It makes it possible to monitor a locomotive’s service quality, to detect and predict changes in its technical state without interrupting the carriage process, and to efficiently use the high-cost stationary and local diagnostic means, as well as to correct service time and volume by taking into account the real technical state. Therefore, it is important to develop methods for determining the technical state of locomotive units by using an MCS-T(N,E) (micro-processor control system) locomotive’s diagnostic subsystem of a locomotive and software for processing the measurement data. The main aim of such a method is to monitor the technical state of a locomotive’s equipment and predict changes in it. At the present time, simplified diagnostic models are used to solve such problems. However, to increase the efficiency and reliability of the process of checking complicated objects such as a locomotive, it is necessary to use more complex diagnostic models based on artificial neural networks. A way to use a neural-network method and neural fuzzy diagnostic models for diagnosing the excitation system of traction generators of modern diesel locomotives is presented in this paper. Information collected by the MCS-TP subsystem is used as diagnostic information. It is transferred online to a remote diagnostic server. The method for diagnosing the excitation system of a traction generator is checked by processing the measurement information.
机译: Abstract 进行车载诊断的设备是控制机车车辆状态和可靠性的系统中的重要组成部分,柴油机车。它可以监视机车的服务质量,在不中断运输过程的情况下检测和预测其技术状态的变化,并有效地使用高成本的固定式和本地诊断工具,并通过以下方法校正服务时间和数量:考虑到真正的技术状态。因此,重要的是开发一种通过使用机车的MCS-T(N,E)(微处理器控制系统)机车的诊断子系统和用于处理测量数据的软件来确定机车单元技术状态的方法。这种方法的主要目的是监视机车设备的技术状态并预测其变化。目前,简化的诊断模型用于解决此类问题。但是,为了提高检查机车等复杂物体的过程的效率和可靠性,有必要使用基于人工神经网络的更复杂的诊断模型。提出了一种利用神经网络方法和神经模糊诊断模型对现代内燃机车牵引发电机励磁系统进行诊断的方法。 MCS-TP子系统收集的信息用作诊断信息。它已在线传输到远程诊断服务器。通过对测量信息的处理,检验了牵引发电机励磁系统的诊断方法。

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