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Fog Robotics Algorithms for Distributed Motion Planning Using Lambda Serverless Computing

机译:使用Lambda无服务器计算进行分布式运动计划的雾化机器人算法

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For robots using motion planning algorithms such as RRT and RRT*, the computational load can vary by orders of magnitude as the complexity of the local environment changes. To adaptively provide such computation, we propose Fog Robotics algorithms in which cloud-based serverless lambda computing provides parallel computation on demand. To use this parallelism, we propose novel motion planning algorithms that scale effectively with an increasing number of serverless computers. However, given that the allocation of computing is typically bounded by both monetary and time constraints, we show how prior learning can be used to efficiently allocate resources at runtime. We demonstrate the algorithms and application of learned parallel allocation in both simulation and with the Fetch commercial mobile manipulator using Amazon Lambda to complete a sequence of sporadically computationally intensive motion planning tasks.
机译:对于使用运动计划算法(例如RRT和RRT *)的机器人,随着本地环境的复杂性变化,计算负荷可能会变化几个数量级。为了自适应地提供此类计算,我们提出了Fog Robotics算法,其中基于云的无服务器lambda计算可按需提供并行计算。为了使用这种并行性,我们提出了新颖的运动计划算法,该算法可以随着越来越多的无服务器计算机而有效地扩展。但是,鉴于计算的分配通常受金钱和时间限制的约束,我们展示了如何使用先验学习在运行时有效地分配资源。我们将在模拟中以及使用Amazon Lambda的Fetch商业移动机械手演示学习的并行分配的算法和应用,以完成一系列零散的计算密集型运动计划任务。

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