基于认知计算的作业车间物联网制造数据处理

Chuang Wang, P. Jiang
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引用次数: 4

摘要

物联网(IOT)技术被引入作业车间,解决了上层管理系统与底层现场自动化系统之间的障碍,但也带来了新的问题,即生产管理数据出现爆炸式增长。为了解决这一问题,提出了一种基于认知计算和认知信息学的数据处理方法。通过模拟人脑对眼、耳、手、鼻、舌等感觉器官的信息处理,将作业车间车间物联网数据从下到上划分为7层,分为被动数据采集层和主动数据采集层。主动数据采集过程包括三个阶段。分三个阶段分别获取制造数据、制造信息和制造知识,并存储在相应类型的数据库中,以不同的方式实现快速读取和更新。基于不同粒度的制造信息和制造知识也被划分为不同的层次,以满足作业车间物联网管理需求,实现快速、正确的决策。该方法不仅有效地减少了作业车间物联网管理数据的规模,而且根据不同的响应时间要求,对制造问题给出了不同的判断。详细介绍了数据分层参考模型、数据库功能模型、数据处理阶段划分、制造信息获取模型和制造知识分层模型等五大关键使能技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cognitive computing based manufacturing data processing for internet of things in job-shop floor
The internet of things (IOT) technology is introduced to the job-shop floor to address the barriers between upper management system and the underlying field automation systems, but also brings new problems, namely, the production management data appears explosive growth. For solving this problem, a data processing methodology based on cognitive computing and cognitive informatics is presented. By simulating the human brain information processing to eye, ears, hands, nose, tongue and other sensory organs, the data of job-shop floor IOT is divided into seven layers from bottom to top, and those layers is classified to passive data acquisition layer and active data acquisition layer. Active data acquisition process consists of three phases. The manufacturing data, manufacturing information and manufacturing knowledge are respectively acquired in three phases, and stored in the corresponding type of database in order to realize the fast reading and updating in different ways. Manufacturing information and manufacturing knowledge based on different granularity are also divided into different levels to meet the job-shop floor IOT management requirements for quick and correct decision-making. This methodology not only effectively reduces the scale of job-shop floor IOT management data, but also gives out different judgments for manufacture problems according to different response time requirements. What's more, five key enabling technologies are described in detail, that is, layered reference model of data, the database function model, data processing stage division, manufacturing information acquisition model and manufacturing knowledge hierarchical model.
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