首页> 外文会议>International Conference on Smart Ship Technology >FAULT TREE ANALYSIS AND ARTIFICIAL NEURAL NETWORK MODELLING FOR ESTABLISHING A PREDICTIVE SHIP MACHINERY MAINTENANCE METHODOLOGY
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FAULT TREE ANALYSIS AND ARTIFICIAL NEURAL NETWORK MODELLING FOR ESTABLISHING A PREDICTIVE SHIP MACHINERY MAINTENANCE METHODOLOGY

机译:用于建立预测船舶机械维修方法的故障树分析与人工神经网络建模

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A dynamic fault tree model for a ship main engine is developed in order to analyse and identify critical systems/components of the main engine. The identified most critical systems are then used as input in an artificial neural network. An autoregressive dynamic time series neural network modelling approach is examined in a container ship case study, in order to monitor and predict future values of selected physical parameters of the most critical ship machinery equipment obtained from the fault tree analysis. The case study results of the combination of the fault tree analysis and artificial neural network model demonstrated promising prospects for establishing a dense methodology for ship machinery predictive maintenance by successfully identifying critical ship machinery systems and accurately forecasting the performance of machinery parameters.
机译:开发了船主引擎的动态故障树模型,以分析和识别主机的关键系统/组件。然后将所识别的大多数关键系统用作人工神经网络中的输入。在集装箱船舶案例研究中检查了自回归动态时间序列神经网络建模方法,以监测和预测从故障树分析中获得的最关键船舶机械设备的所选物理参数的未来值。故障树分析和人工神经网络模型结合的案例研究结果表明,通过成功地识别关键船舶机械系统,准确地预测机械参数的性能,对船舶机械预测维护建立密集方法的有希望的前景。

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