A Proposal of Remaining Useful Time Prediction Utilizing Operation Data of Construction Machinery

Shota Oguma, S. Omatsu, S. Ohno, Kazuhiro Iwasaki, Yoshiaki Shishido
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Abstract

For users to carry out various jobs according to the construction plan, if unexpected machine failures occur and their machines go down for an extended time, they will be huge losses. Therefore, machine maintenances are required for their machines to prevent from machine failures. However, due to operation in severe environment condition such as high load or long time use and in unexpected use, they often fail earlier than expected. For the maintenance of construction machinery, we propose to detect early indications of failure by predicting remaining useful times. Thereby, their machines can be performed maintenance before their failures and prevent unexpected machine failures. We propose to predict the machine failures of lower traveling bodies of hydraulic excavators by estimating their remaining useful times. Moreover, we also propose a practical example of maintenance activity using remaining useful times prediction in addition to failure prediction by neural network for hydraulic excavators and its effectiveness is shown.
一种利用工程机械运行数据进行剩余使用时间预测的方法
对于用户按照施工计划进行各种作业,如果发生意外的机器故障,其机器长时间停机,将会造成巨大的损失。因此,他们的机器需要机器维护,以防止机器故障。然而,由于在高负荷或长时间使用等恶劣环境条件下运行,以及意外使用,往往会提前发生故障。对于工程机械的维护,我们建议通过预测剩余使用时间来检测故障的早期迹象。因此,他们的机器可以在故障之前进行维护,防止意外的机器故障。提出了通过估算液压挖掘机下行机构的剩余使用时间来预测其机械故障的方法。此外,本文还提出了一种基于神经网络的液压挖掘机故障预测和剩余使用时间预测的维修活动实例,并验证了其有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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