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Multi-Goal Path Optimization for Robotic Systems with Redundancy based on the Traveling Salesman Problem with Neighborhoods.

机译:基于带邻域的旅行商问题的冗余机器人系统多目标路径优化。

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摘要

Finding an optimal path for a redundant robotic system to visit a sequence of several goal locations is a complex optimization problem and poses two main technical challenges. Because of the redundancy in the system, the robot can assume an infinite number of goal configurations to reach each goal location. Therefore, not only an optimal sequence of the goals has to be defined, but also, for each goal, an optimal configuration has to be chosen among infinite possibilities. Second, the actual cost for the system to move from one configuration to the next depends on many factors, such as obstacle avoidance or energy consumption, and can be calculated only through the employment of specific path planning techniques.;We first address the optimization problem of finding an optimal sequence of optimal configurations, while assuming the cost function to be analytically defined. This problem is modeled as a Traveling Salesman Problem with Neighborhoods (TSPN), which extends the well-known TSP to more general cases where each vertex (goal configuration) is allowed to move in a given region (neighborhood). In the literature, heuristic solution approaches are available for TSPN instances with only circular or spherical neighborhoods. For more general neighborhood topologies, but limited to the Euclidean norm as edge weighting function, approximation algorithms have also been proposed. We present three novel approaches: (1) a global Mixed Integer Non Linear Programming (MINLP) optimizer and (2) a convex MINLP optimizer are modified to solve to optimality TSPN instances with up to 20 convex neighborhoods, and (3) a hybrid random-key Genetic Algorithm (GA) is developed to address more general problems with a larger number of possibly non-convex neighborhoods and with different types of edge weighting functions. Benchmark tests show that the GA is able to find the same optimal tour calculated by the MINLP solvers while drastically reducing the computational cost, and it always improves the best known solutions for available test problems with up to 1,000 neighborhoods.;Second, we integrate the GA with a probabilistic path planning technique to apply the proposed procedure to two practical applications. We minimize the time currently required by an industrial vision inspection system to complete a multi-goal cycle, where the neighborhoods are defined using piecewise cubic splines in a seven-dimensional configuration space. Afterwards, we optimize the flight path and the energy consumption of a quadrotor Unmanned Aerial Vehicle (UAV) on an urban survey mission. The specifications of the camera installed on the UAV are used here to define the neighborhoods as three-dimensional polyhedra.
机译:为冗余机器人系统访问一系列目标位置找到最佳路径是一个复杂的优化问题,并带来了两个主要的技术挑战。由于系统中的冗余性,机器人可以采用无限数量的目标配置来到达每个目标位置。因此,不仅必须定义目标的最佳顺序,而且还必须针对每个目标在无限可能中选择最佳配置。其次,系统从一种配置转移到另一种配置的实际成本取决于许多因素,例如避开障碍物或能源消耗,并且只能通过使用特定的路径规划技术来计算。查找最佳配置的最佳顺序,同时假设成本函数需要进行分析定义。该问题被建模为“带邻居的旅行推销员问题”(TSPN),该问题将众所周知的TSP扩展到允许每个顶点(目标配置)在给定区域(邻居)中移动的更一般的情况。在文献中,启发式求解方法可用于仅具有圆形或球形邻域的TSPN实例。对于更一般的邻域拓扑,但仅限于作为边缘加权函数的欧几里得范数,还提出了一种近似算法。我们提出了三种新颖的方法:(1)全局混合整数非线性规划(MINLP)优化器和(2)凸MINLP优化器经过修改,以求解具有多达20个凸邻域的最优TSPN实例,以及(3)混合随机密钥遗传算法(GA)的开发旨在解决更多可能存在的非凸邻域问题以及具有不同类型的边缘权重函数的更普遍的问题。基准测试表明,遗传算法能够找到由MINLP求解器计算出的相同最优行程,同时极大地降低了计算成本,并且它始终可以改进针对多达1000个邻域中可用测试问题的最知名解决方案。遗传算法采用概率路径规划技术将拟议的程序应用于两个实际应用。我们将工业视觉检测系统当前所需的时间减至最少,以完成一个多目标循环,在该循环中,在七维配置空间中使用分段三次样条来定义邻域。之后,我们在城市勘测任务中优化了四旋翼无人机的飞行路径和能耗。安装在无人机上的摄像头规格用于将邻域定义为三维多面体。

著录项

  • 作者

    Gentilini, Iacopo.;

  • 作者单位

    Carnegie Mellon University.;

  • 授予单位 Carnegie Mellon University.;
  • 学科 Engineering Mechanical.;Engineering Robotics.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 143 p.
  • 总页数 143
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:43:42

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