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Energy Condition Perception and Big Data Analysis for Industrial Cloud Robotics

机译:工业云机器人的能源状况感知和大数据分析

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Industrial cloud robotics (ICRs), which is proposed to integrate the distributed industrial robots (IRs) resources to provide ICRs services at any place, has been attracted great attention due to the characteristics of convenient access, cheaper computing cost, more convenient network resources, etc. Meanwhile, in manufacturing industry, the energy-efficient issue, which means minimize the amount of energy resources to achieve a given output level in manufacturing process, is also gradually paid great attention by academia, industry and government. Currently, ICRs plays a crucial role in production. The implementation of energy-efficient manufacturing for ICRs will significantly decrease the energy consumption on the premise of normal production process, and also have remarkable effect on energy-saving and emission-reduction in manufacturing industry. In this context, the energy condition perception and big data analysis of ICRs are the essential procedure to achieve the aforementioned goals. A novel system architecture which mainly focuses on distributed energy condition perception and big data analysis for ICRs is built. Based on the perceptive data of ICRs related to energy consumption, a big data analysis model combined with the manufacturing status of ICRs is proposed, and the relationship between the big data and the analysis model is presented. Through the data analysis model, we can analyze the energy consumption fluctuation characteristic of ICRs operating state, count the energy consumption of the product related to different production phases, predict the health status of ICRs, as well as the trend of energy consumption associated with their operations. A case study is implemented to demonstrate the effectiveness of the proposed system and approaches.
机译:工业云机器人技术(ICR)旨在整合分布式工业机器人(IR)资源以在任何地方提供ICR服务,由于其具有访问方便,计算成本更低,网络资源更便捷的特点而备受关注,同时,在制造业中,能源效率问题,即在制造过程中使能源量最小化以达到给定的产出水平,也逐渐受到学术界,工业界和政府的高度重视。当前,ICR在生产中起着至关重要的作用。实施ICR的节能制造将在正常生产过程的前提下显着降低能耗,并对制造业的节能减排产生显着影响。在这种情况下,ICR的能量条件感知和大数据分析是实现上述目标的必要程序。建立了一种新颖的系统体系结构,该体系结构主要集中于ICR的分布式能源状况感知和大数据分析。基于与能耗相关的ICR的感知数据,提出了结合ICR生产状况的大数据分析模型,并提出了大数据与分析模型之间的关系。通过数据分析模型,我们可以分析ICR运行状态的能耗波动特征,计算与不同生产阶段相关的产品的能耗,预测ICR的健康状态以及与其相关的能耗趋势操作。通过案例研究来证明所提出的系统和方法的有效性。

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