论文标题

快速CRDNN:迈向移动施工机的现场培训

Fast CRDNN: Towards on Site Training of Mobile Construction Machines

论文作者

Xiang, Yusheng, Tang, Tian, Su, Tianqing, Brach, Christine, Liu, Libo, Mao, Samuel, Geimer, Marcus

论文摘要

CRDNN是一个组合的神经网络,可以通过准确检测卡车加载周期来提高基于扭矩的移动工作机的整体效率约9%。一方面,它是一种健壮但离线学习算法,因此比以前的方法更准确,更快。但是,另一方面,由于移动机行业的多样性和离线方法的性质,因此不能总是保证其准确性。为了解决这个问题,我们利用转移学习算法和物联网(IoT)技术。具体而言,CRDNN首先通过计算机训练,然后保存在板载ECU中。如果预先训练的CRDNN不适合新机器,则操作员可以通过我们的应用程序通过蓝牙连接到该机器的板载ECU的应用标记一些新数据。借助新标记的数据,我们可以直接进一步训练ECU上预处理的CRDNN而不会超载,因为转移学习所需的计算工作要少于从头开始训练网络。在我们的论文中,我们证明了这一想法,并证明CRDNN始终是有能力的,借到通过现场实验的转移学习和物联网技术,即使新机器也可能具有不同的分布。另外,我们比较了其他SOTA多元时间序列算法在预测移动机器的工作状态方面的性能,该算法表示CRDNNS仍然是最合适的解决方案。作为副产品,我们建立了一个人机通信系统来标记数据集,该数据集可以由工程师操作,而无需了解人工智能(AI)。

The CRDNN is a combined neural network that can increase the holistic efficiency of torque based mobile working machines by about 9% by means of accurately detecting the truck loading cycles. On the one hand, it is a robust but offline learning algorithm so that it is more accurate and much quicker than the previous methods. However, on the other hand, its accuracy can not always be guaranteed because of the diversity of the mobile machines industry and the nature of the offline method. To address the problem, we utilize the transfer learning algorithm and the Internet of Things (IoT) technology. Concretely, the CRDNN is first trained by computer and then saved in the on-board ECU. In case that the pre-trained CRDNN is not suitable for the new machine, the operator can label some new data by our App connected to the on-board ECU of that machine through Bluetooth. With the newly labeled data, we can directly further train the pretrained CRDNN on the ECU without overloading since transfer learning requires less computation effort than training the networks from scratch. In our paper, we prove this idea and show that CRDNN is always competent, with the help of transfer learning and IoT technology by field experiment, even the new machine may have a different distribution. Also, we compared the performance of other SOTA multivariate time series algorithms on predicting the working state of the mobile machines, which denotes that the CRDNNs are still the most suitable solution. As a by-product, we build up a human-machine communication system to label the dataset, which can be operated by engineers without knowledge about Artificial Intelligence (AI).

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