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The Fault Diagnosis of Elevator Based on the Autoregressive Model And the Support Vector Machine

机译:基于自回归模型和支持向量机电梯的故障诊断

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The paper proposed the fault diagnosis of elevator based on the autoregressive (AR) model and the support vector machine. At first, build the AR model with the processing signals. The AR coefficient was used as the input of the support vector machine, the normal condition and the fault condition were used as output. By studying and predicting of the support vector machine (SVM) can reaching automatic identification. This method has high accuracy of diagnosis while resolved the problem of lacking samples. With the fast city construction, elevator as vertical vehicle was applied more and more widely, which has complicated structure and required high reliability. At present, many accidents occur during the elevator working, such as people get trapped, elevator slipped, and so on. So elevator operation reliability testing needed to be improved. Improving the operation reliability, on the one hand, modify design and improving the installing quality; the other hand, rely on the advanced technique of fault diagnosis.
机译:本文提出了基于自回归(AR)模型和支持向量机电梯的故障诊断。首先,使用处理信号构建AR模型。 AR系数用作支持向量机的输入,使用正常情况和故障状况作为输出。通过研究和预测支持向量机(SVM)可以达到自动识别。该方法具有高准确性的诊断,同时解决了缺乏样品的问题。随着快速城市建设,电梯作为垂直车辆越来越广泛地应用,结构复杂,需要高可靠性。目前,电梯工作期间发生了许多事故,例如人们被困,电梯滑倒,等等。因此,需要提高电梯操作可靠性测试。一方面改善操作可靠性,修改设计并提高安装质量;另一方面,依靠故障诊断的先进技术。

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