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Torsional system dynamics of low speed diesel engines based on instantaneous torque: Application to engine diagnosis

机译:基于瞬时转矩的低速柴油机扭转系统动力学:在发动机诊断中的应用

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Low speed large engines such as those found in marine applications or power plants present large and flexible crankshafts. These elements as well as all the others linked to them, such as the pistons, connecting rods, camshaft and the flywheel, form a torsional system of nonlinear nature for which it is very worthwhile to identify and solve relevant anomalies such as efficiency losses, power imbalance or injection system malfunctions. This work presents a torsional nonlinear model of a two-stroke low speed diesel engine that has been developed and validated through experiments, using the instantaneous torque (IT) between the generator and engine as the validation magnitude. The analysed system loads covered the whole operational range of the system, i.e. 55%, 70%, 85% and 100% of the engine's attainable power. The lumped torsional system was modelled with 16 degrees of freedom and was solved applying Fourier series expansion for the linear part of the system and with an iterative procedure for the nonlinear character of the system dynamics, which requires up to 12 iterations. A parameter model identification process was performed in Section 4 due to the uncertainty between the data supplied by the manufacturer and real data. As a result, the maximum error between the model and experimental data was reduced to 1.5%. In Section 5 a parametric study was developed that made it possible to establish the relationship between the in-cylinder combustion process and IT. This knowledge is taken into account in Section 6 to generate a proper set of inputs and outputs which is used to train an artificial neural network (ANN). Once trained, this network simulates the indicated mean power (WMI) at each cylinder with an error less than 1% for any load and engine condition. The main goal of the work is to develop a diagnostic tool for the identification and quantification of combustion-related anomalies that can contribute to maintaining the system efficiency as new. (C) 2018 Published by Elsevier Ltd.
机译:低速大型发动机(例如在船舶应用或发电厂中使用的发动机)具有大型且灵活的曲轴。这些元素以及与之相关的所有其他元素,例如活塞,连杆,凸轮轴和飞轮,形成了非线性性质的扭转系统,为此,非常有必要找出并解决相关异常,例如效率损失,功率失衡或喷射系统故障。这项工作提出了一个二冲程低速柴油机的扭转非线性模型,该模型已经通过实验开发并通过验证,使用发电机和发动机之间的瞬时扭矩(IT)作为验证幅度。分析的系统负载涵盖了系统的整个运行范围,即发动机可达到功率的55%,70%,85%和100%。集总扭转系统的建模具有16个自由度,并通过对系统的线性部分应用傅里叶级数展开和针对系统动力学的非线性特征的迭代过程进行求解,该过程最多需要进行12次迭代。由于制造商提供的数据与实际数据之间存在不确定性,因此在第4节中执行了参数模型识别过程。结果,模型和实验数据之间的最大误差降低到1.5%。在第5节中,进行了参数研究,从而可以确定缸内燃烧过程与IT之间的关系。在第6节中考虑了该知识,以生成用于训练人工神经网络(ANN)的一组适当的输入和输出。经过培训后,该网络将模拟每个气缸的指示平均功率(WMI),对于任何负载和发动机状况,其误差均小于1%。这项工作的主要目的是开发一种诊断工具,用于识别和量化与燃烧有关的异常情况,从而有助于保持系统的效率。 (C)2018由Elsevier Ltd.发布

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