SYSYMay 18, 2019

Quantifying Robotic Swarm Coverage

arXiv:1905.076551 citationsh-index: 73
AI Analysis

For researchers in swarm robotics, this provides a principled, quantitative tool for evaluating coverage performance, filling a gap where previous work focused on control design rather than assessment.

This work introduces a continuously sensitive error metric for quantifying robotic swarm coverage, enabling performance evaluation of any control scheme. The metric is used to compute relative error via realizable extrema and to compare observed distributions against random sampling, with demonstrated utility for stochastic control algorithms.

In the field of swarm robotics, the design and implementation of spatial density control laws has received much attention, with less emphasis being placed on performance evaluation. This work fills that gap by introducing an error metric that provides a quantitative measure of coverage for use with any control scheme. The proposed error metric is continuously sensitive to changes in the swarm distribution, unlike commonly used discretization methods. We analyze the theoretical and computational properties of the error metric and propose two benchmarks to which error metric values can be compared. The first uses the realizable extrema of the error metric to compute the relative error of an observed swarm distribution. We also show that the error metric extrema can be used to help choose the swarm size and effective radius of each robot required to achieve a desired level of coverage. The second benchmark compares the observed distribution of error metric values to the probability density function of the error metric when robot positions are randomly sampled from the target distribution. We demonstrate the utility of this benchmark in assessing the performance of stochastic control algorithms. We prove that the error metric obeys a central limit theorem, develop a streamlined method for performing computations, and place the standard statistical tests used here on a firm theoretical footing. We provide rigorous theoretical development, computational methodologies, numerical examples, and MATLAB code for both benchmarks.

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