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Integrated Group-based Valuable Sensor Selection Approach for Remaining Machinery Life Estimation in the Future Industry 4.0 Era

机译:基于集成的基于组的有价值的传感器选择方法,用于估计未来工业4.0时代的剩余机械寿命

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Industry 4.0 is the evolution trend for current manufacturing technology. By analyzing the real-time sensing data, the health status of each machinery is usually monitored to reduce the risk of suddenly machine failure. Although massive sensors allocation can leverage the Remaining Useful Life (RUL) estimation for each machinery, the cost for the sensor network construction will become expensive. Hence, it is necessary to have an approach to remove the redundant sensors under a certain constraint of RUL estimation. On the other hand, due to the attractive performance on the object classification, many researches apply Artificial Neural Network (ANN) to decide which allocated sensor should be removed during the training process. However, the current researches aim to remove the redundant sensors based on the sensing data at a specific time, which lacks the intrinsic feature of time-series sensing data. Therefore, the current researches suffer from the problem of sensor under-killing due to the worst-case consideration. In this paper, we consider the information of time-series sensing data to propose an integrated group-based valuable sensor selection algorithm. Because the proposed approach considers the historical data during the redundant sensor removing process, we can reduce the number of involved allocated sensors precisely and significantly. In order to verify the proposed method, we use the Commercial Modular Aero-Propulsion System Simulation (CMAPSS) dataset and adopt Prognostics and Health Management (PHM) score to evaluate the RUL estimation performance. Compared with the conventional approach, the proposed approach can reduce 86% average PHM score and employ fewer sensors to fit the strict constraint of PHM score with less computing overhead.
机译:工业4.0是当前制造技术的发展趋势。通过分析实时感测数据,通常可以监视每台机器的健康状况,以减少突然发生机器故障的风险。尽管大量的传感器分配可以利用每台机器的剩余使用寿命(RUL)估算,但是传感器网络建设的成本将变得昂贵。因此,有必要在RUL估计的一定约束下采用一种方法来去除冗余传感器。另一方面,由于在对象分类上具有吸引人的性能,因此许多研究应用人工神经网络(ANN)来确定在训练过程中应删除哪个分配的传感器。然而,当前的研究旨在基于特定时间的感测数据来去除冗余传感器,这缺乏时序感测数据的内在特征。因此,由于最坏情况的考虑,当前的研究存在传感器欠压的问题。在本文中,我们考虑了时序感测数据的信息,提出了一种基于组的集成有价值的传感器选择算法。因为所提出的方法在冗余传感器移除过程中考虑了历史数据,所以我们可以精确而显着地减少所涉及的已分配传感器的数量。为了验证所提出的方法,我们使用商业模块化航空推进系统仿真(CMAPSS)数据集,并采用预测和健康管理(PHM)评分来评估RUL估计性能。与传统方法相比,所提出的方法可以减少86%的平均PHM分数,并使用更少的传感器来满足PHM分数的严格约束,并减少计算开销。

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