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Fault diagnosis of pneumatic systems with artificial neural network algorithms

机译:人工神经网络算法对气动系统进行故障诊断

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摘要

Pneumatic systems repeat the identical programmed sequence during their operation. The data was collected when the pneumatic system worked perfectly and had some faults including empty magazine, zero vacuum, inappropriate material, no pressure, closed manual pressure valve, missing drilling stroke, poorly located material, not vacuuming the material and low air pressure. The signals of eight sensors were collected during the entire sequence and the 24 most descriptive features of the data were encoded to present to the ANNs. A synthetic data generation process was proposed to train and test the ANNs better when signals are extremely repetitive from one sequence to other. Two artificial neural networks (ANN) were used for interpretation of the encoded signals. The tested ANNs were Adaptive Resonance Theory 2 (ART2), and Back propagation (Bp). ART2 correctly distinguished the perfect and faulty operations at all the tested vigilance values. It classified 11 faulty and 1 normal modes in seven or eight categories at the best vigilance values. Bp also distinguished perfect and faulty operations without even the slightest uncertainty. In less than 10 cases, it had difficulty identifying the 11 types of possible faults. The average estimation error of the Bp was better than 2.1% of the output range on the test data which was created by deviating the encoded values. The ART2 and Bp performance was found excellent with the proposed encoding and synthetic data generation procedures for extremely repetitive sequential data.
机译:气动系统在运行过程中重复相同的编程顺序。当气动系统运行良好并出现一些故障时,就收集了数据,这些故障包括:空弹匣,零真空,不适当的材料,无压力,手动压力阀关闭,钻孔行程缺失,材料定位不良,没有对材料进行真空抽吸和空气压力低。在整个序列中收集了八个传感器的信号,并对数据的24个最具描述性的特征进行了编码,以呈现给ANN。当信号从一个序列到另一个序列极度重复时,提出了一种综合数据生成过程来更好地训练和测试ANN。两个人工神经网络(ANN)用于解释编码信号。测试的人工神经网络是自适应共振理论2(ART2)和反向传播(Bp)。 ART2在所有经过测试的警戒值上正确地区分了完美和错误的操作。它以最佳警戒值将11个故障模式和1个正常模式分为7个或8个类别。 Bp还可以区分完美和错误的操作,甚至没有丝毫不确定性。在不到10个案例中,它很难识别11种可能的故障。 Bp的平均估计误差优于测试数据的输出范围的2.1%,该测试数据是通过偏离编码值而创建的。使用提议的编码和合成数据生成程序(用于极其重复的顺序数据),发现ART2和Bp性能优异。

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