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Closing the Lifecycle Loop with Installed Base Products

机译:使用已安装的基础产品关闭生命周期循环

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Industry trends indicate that in the future, more systems will be rented then sold. The customer rents production capacity and demands a guaranteed high operational readiness, which is hard to achieve with conventional maintenance. Downtimes can never be completely ruled out. In order to solve this problem and guarantee high operational reliability, the predictive maintenance approach is widely discussed: By means of indicators, measured by sensors, a potential problem can be identified before it actually occurs. The application of this concept to new products gets a lot of attention in many areas. However, industrial products such as machines or plants are long living objects. It seems interesting to extend these new technologies and eventually new services business models to the installed base, too. This paper explores and demonstrates, what it takes to upgrade an operating product in its mid-of-life stage to a smart, connected products with predictive maintenance capabilities. The showcase consists of a jointed-arm industrial robot with six axes. The robot's motions will be retraced in order to determine the state and position of the robot and finally predict, what the robot is about to do. To achieve this, the robot was made IoT-capable by attachment of sensors which communicate directly to a cloud database. Finally, a trained machine learning model allows predication on the robots' behavior. On the way to the final result, many little lessons about sensing, protocols, the right place to process or tag data in the IoT stack had to learnt and will be shared in this publication.
机译:行业趋势表明,将来会出租再出售更多系统。客户租用生产能力并要求保证高度的操作准备状态,而传统的维护很难做到这一点。停机时间永远不能被完全排除。为了解决此问题并确保较高的运行可靠性,对预测性维护方法进行了广泛讨论:通过传感器测量的指示器,可以在实际发生问题之前就将其识别出来。这个概念在新产品中的应用在许多领域引起了很多关注。然而,诸如机器或工厂的工业产品是长寿命的物体。将这些新技术以及最终的新服务业务模型扩展到已安装的基础似乎也很有趣。本文探讨并演示了将处于生命中期的操作产品升级为具有预测性维护功能的智能互联产品所需的步骤。展示柜由具有六个轴的关节臂工业机器人组成。机器人的动作将被追溯,以确定机器人的状态和位置,并最终预测机器人将要做什么。为了实现这一目标,通过连接直接与云数据库通信的传感器,使机器人具备了IoT的功能。最后,经过训练的机器学习模型可以预测机器人的行为。在获得最终结果的过程中,必须学习有关传感,协议,在IoT堆栈中处理或标记数据的正确位置的许多小课程,并将在本出版物中共享它们。

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