This paper proposes a maintenance platform for business vehicles which detects failure sign using IoT data on the move, orders to create repair parts by 3D printers and to deliver them to the destination. Recently, IoT and 3D printer technologies have been progressed and application cases to manufacturing and maintenance have been increased. Especially in air flight industry, various sensing data are collected during flight by IoT technologies and parts are created by 3D printers. And IoT platforms which improve development/operation of IoT applications also have been appeared. However, existing IoT platforms mainly targets to visualize "things" statuses by batch processing of collected sensing data, and 3 factors of real-time, automatic orders of repair parts and parts stock cost are insufficient to accelerate businesses. This paper targets maintenance of business vehicles such as airplane or high-speed bus. We propose a maintenance platform with real-time analysis, automatic orders of repair parts and minimum stock cost of parts. The proposed platform collects data via closed VPN, analyzes stream data and predicts failures in real-time by online machine learning framework Jubatus, coordinates ERP or SCM via in memory DB to order repair parts and also distributes repair parts data to 3D printers to create repair parts near the destination.
翻译:本文建议为商业车辆建立一个维修平台,利用移动中的IOT数据检测故障信号,用3D打印机订购修理零件并将其运到目的地。最近,IOT和3D打印机技术已经取得进展,制造和维护的应用案例也有所增加。特别是在空中飞行行业,通过IOT技术和部件在飞行过程中收集了各种遥感数据,3D打印机制造了3D打印机制造了这种数据和部件。改进IOT应用程序开发/操作的IOT平台也已经出现。但是,现有的IOT平台主要的目标是通过对收集的遥感数据的批处理,将“东西”状态直观化,通过收集的遥感数据的批次处理,将实时、自动修理订单零部件和零件库存成本的3个因素用于加速企业的发展速度。这一纸面目标包括飞机或高速公共汽车等商业车辆的维修。我们提议一个维护平台,实时分析、自动订购修理零件和零件的最低库存成本。拟议平台通过封闭的VPNPN收集数据,分析流数据,并通过在线机器学习框架Gubatus预测实时的“东西”状况,在记忆B附近协调ERP或SCMCMMD,在修理过程中将数据发送到DMISM3的零件,并分发到目的地。