3 research outputs found

    A mobility-controlled link quality learning protocol for multi-robot coordination tasks

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    An adaptable fuzzy-based model for predicting link quality in robot networks.

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    It is often essential for robots to maintain wireless connectivity with other systems so that commands, sensor data, and other situational information can be exchanged. Unfortunately, maintaining sufficient connection quality between these systems can be problematic. Robot mobility, combined with the attenuation and rapid dynamics associated with radio wave propagation, can cause frequent link quality (LQ) issues such as degraded throughput, temporary disconnects, or even link failure. In order to proactively mitigate such problems, robots must possess the capability, at the application layer, to gauge the quality of their wireless connections. However, many of the existing approaches lack adaptability or the framework necessary to rapidly build and sustain an accurate LQ prediction model. The primary contribution of this dissertation is the introduction of a novel way of blending machine learning with fuzzy logic so that an adaptable, yet intuitive LQ prediction model can be formed. Another significant contribution includes the evaluation of a unique active and incremental learning framework for quickly constructing and maintaining prediction models in robot networks with minimal sampling overhead

    Adaptive Communication for Mobile Multi-Robot Systems

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    Mobile multi-robot systems can be immensely powerful, serving as force multipliers for human operators in search-and-rescue operations, urban reconnaissance missions, and more. Key to fulfilling this potential is robust communication, which allows robots to share sensor data or inform others of their intentions. However, wireless communication is often unreliable for mobile multi-robot systems, exhibiting losses, delays, and outages as robots move through their environment. Furthermore, the wireless communication spectrum is a shared resource, and multi-robot systems must determine how to use its limited bandwidth in accomplishing their missions. This dissertation addresses the challenges of inter-robot communication in two thrusts. In the first thrust, we improve the reliability of such communication through the application of a technique we call Adaptive Erasure Coding (AEC). Erasure codes enable recovery from packet loss through the use of redundancy. Conditions in a mobile robotic network are continually changing, so AEC varies the amount of redundancy applied to achieve a probabilistic delivery guarantee. In the second thrust, we describe a mechanism by which robots can make communication decisions by considering the expected effect of a proposed communication action on team performance. We call this algorithm Optimizing Communication under Bandwidth Constraints (OCBC). Given a finite amount of available bandwidth, OCBC optimizes the contents of a message to respect the bandwidth constraint.PHDComputer Science & EngineeringUniversity of Michigan, Horace H. Rackham School of Graduate Studieshttps://deepblue.lib.umich.edu/bitstream/2027.42/149815/1/ryanjmar_1.pd
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