自动配置ROS应用程序,实现近乎最佳的性能

José Cano, Alejandro Bordallo, V. Nagarajan, S. Ramamoorthy, S. Vijayakumar
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引用次数: 9

摘要

ROS应用程序的性能是其组成节点的单个性能的函数。由于ROS节点通常是可配置的(参数化的),因此所采用的具体参数值将决定生成的性能水平。此外,ROS应用程序可以分布在多个计算设备上,从而为节点分配提供了不同的选择。我们解决了典型ROS用户面临的两个配置问题:i)确定参数值和节点分配以实现性能最大化;ii)确定节点分配,以最小化硬件资源,保证期望的性能。我们用一个数学模型来形式化这些问题,这是一个多选题多重背包问题的约束形式。我们提出了一种贪婪算法来优化每个问题,使用线性回归来预测单个ROS节点在参数组合连续统集上的性能。我们通过模拟对算法进行了评估,并在真实的ROS场景中对其进行了验证,结果表明,预期的性能水平与实际测量值的平均偏差仅为2.5%。
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Automatic configuration of ROS applications for near-optimal performance
The performance of a ROS application is a function of the individual performance of its constituent nodes. Since ROS nodes are typically configurable (parameterised), the specific parameter values adopted will determine the level of performance generated. In addition, ROS applications may be distributed across multiple computation devices, thus providing different options for node allocation. We address two configuration problems that the typical ROS user is confronted with: i) Determining parameter values and node allocations for maximising performance; ii) Determining node allocations for minimising hardware resources that can guarantee the desired performance. We formalise these problems with a mathematical model, a constrained form of a multiple-choice multiple knapsack problem. We propose a greedy algorithm for optimising each problem, using linear regression for predicting the performance of an individual ROS node over a continuum set of parameter combinations. We evaluate the algorithms through simulation and we validate them in a real ROS scenario, showing that the expected performance levels only deviate from the real measurements by an average of 2.5%.
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