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The Research of the Intelligent Fault Diagnosis Optimized by ACA for Marine Diesel Engine

机译:基于ACA的船用柴油机智能故障诊断研究

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摘要

The marine diesel engine has the important function to guarantee the marine security and reliability. It is a strong coupling relationship's system with multi-fault attributes. In this paper an advanced method of intelligent fault diagnosis based on fuzzy neural network (FNN) optimized and trained by ant colony algorithm (ACA) is proposed. The model, structure and parameters learning of intelligent fault diagnosis based on FNN were described concretely. The weight and the threshold value of this FNN are optimized and trained by the ant colony optimization algorithm. By simulation that has been carried out to evaluate the performance of proposed method and to compare with conventional FNN fault diagnosis method for this marine diesel engine's combustion system, the results show good quick convergence performance. The knowledge expression and the precision of fault diagnosis also can be improved effectively. Therefore, this method has the good application prospects in other similar system.
机译:船用柴油机具有确保船用安全性和可靠性的重要功能。这是一个具有多故障属性的强耦合关系系统。提出了一种基于蚁群算法(ACA)优化训练的基于模糊神经网络(FNN)的智能故障诊断方法。具体描述了基于FNN的智能故障诊断的模型,结构和参数学习。该FNN的权重和阈值通过蚁群优化算法进行优化和训练。通过仿真评估该方法的性能,并与该船用柴油机燃烧系统的常规FNN故障诊断方法进行比较,结果表明具有良好的快速收敛性能。也可以有效地提高知识表达和故障诊断的精度。因此,该方法在其他类似系统中具有良好的应用前景。

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