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Resource optimization in fog enabled IoT deployments

机译:启用雾的物联网部署中的资源优化

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Internet of Things (IoT) devices are typically deployed in resource (energy, computational capacity) constrained environments. Connecting such devices to the cloud is not practical due to variable network behavior as well as high latency overheads. Fog computing refers to a scalable, distributed computing architecture which moves computational tasks closer to Edge devices or smart gateways. As an example of mobile IoT scenarios, in robotic deployments, computationally intensive tasks such as run time mapping may be performed on peer robots or smart gateways. Most of these computational tasks involve running optimization algorithms inside compute nodes at run time and taking rapid decisions based on results. In this paper, we incorporate optimization libraries within the Robot Operating System (ROS) deployed on robotic sensor-actuators. Using the ROS based simulation environment Gazebo, we demonstrate case-study scenarios for runtime optimization. The use of optimized distributed computations are shown to provide significant improvement in latency and battery saving for large computational loads. The possibility to perform run time optimization opens up a wide range of use-cases in mobile IoT deployments.
机译:物联网(IoT)设备通常部署在资源(能源,计算能力)受限的环境中。由于可变的网络行为以及高延迟开销,将此类设备连接到云是不切实际的。雾计算是指可扩展的分布式计算体系结构,该体系结构将计算任务移近Edge设备或智能网关。作为移动物联网场景的示例,在机器人部署中,可以在对等机器人或智能网关上执行计算密集型任务,例如运行时映射。这些计算任务大多数涉及在运行时在计算节点内部运行优化算法,并根据结果做出快速决策。在本文中,我们将优化库合并到部署在机器人传感器执行器上的机器人操作系统(ROS)中。使用基于ROS的仿真环境Gazebo,我们演示了用于运行时优化的案例研究方案。对于大型计算负载,使用优化的分布式计算可以显着改善等待时间并节省电池。执行运行时优化的可能性在移动物联网部署中打开了广泛的用例。

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