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Fault Diagnosis of High-Power Tractor Engine Based on Competitive Multiswarm Cooperative Particle Swarm Optimizer Algorithm

机译:基于竞争性多种合作粒子群综合优化器算法的大功率拖拉机发动机故障诊断

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With the rapid development of high-power tractor, the fault diagnosis of high-power tractor has become more and more important for ensuring the operating safety and efficiency. PSO is an iterative optimization evolutionary algorithm, which can iterate through different particles to find the optimal solution. However, there is only one population in the standard PSO algorithm, and the information exchange between the populations is relatively single, which can easily lead to the stagnation of the development of the population. In this paper, due to high-power tractor diesel engine fault complexity, fault correlation, and multifault concurrency, a multigroup coevolution particle swarm optimization BP neural network for diesel engine fault diagnosis method was proposed. First, the USB-CAN device was used to collect data of 8 items of the diesel engine under five different working conditions, and the data was parsed through the SAE J1939 protocol; then, the BP neural network was reconstructed, and a competitive multiswarm cooperative particle swarm optimizer algorithm (COM-MCPSO) was used to optimize its structure and weights. Finally, the data of optimized neural network under five different fault conditions show that, compared with BP neural network and PSO optimized BP neural network, the fault diagnosis of COM-MCPSO optimized BP neural network not only improves the network training speed, but also enhances generalization ability and improves recognition accuracy.
机译:随着大功率拖拉机的快速发展,大功率拖拉机的故障诊断对确保操作安全性和效率变得越来越重要。 PSO是一种迭代优化进化算法,可以通过不同的粒子迭代以找到最佳解决方案。然而,标准PSO算法中只有一个人群,人群之间的信息交换相对单一,这很容易导致人口发展的停滞。本文由于高功率拖拉机柴油发动机故障复杂性,故障相关性和多排康并发,提出了一种多集团共同并发,提出了一种用于柴油发动机故障诊断方法的多组共谱粒子群优化BP神经网络。首先,USB-CAN设备用于在五个不同的工作条件下收集8个柴油发动机的数据,并且通过SAE J1939协议解析数据;然后,重建了BP神经网络,并且使用了竞争性的多贩运粒子群优化器算法(COM-MCPSO)来优化其结构和权重。最后,在五个不同的故障条件下优化神经网络的数据表明,与BP神经网络和PSO优化的BP神经网络相比,COM-MCPSO优化的BP神经网络的故障诊断不仅提高了网络训练速度,还提升了泛化能力并提高识别准确性。

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