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Physics-based approach to chemical source localization using mobile robotic swarms.

机译:使用移动机器人群的基于物理的化学源定位方法。

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Recently, distributed computation has assumed a dominant role in the fields of artificial intelligence and robotics. To improve system performance, engineers are combining multiple cooperating robots into cohesive collectives called swarms. This thesis illustrates the application of basic principles of physicomimetics, or physics-based design, to swarm robotic systems. Such principles include decentralized control, short-range sensing and low power consumption. We show how the application of these principles to robotic swarms results in highly scalable, robust, and adaptive multi-robot systems. The emergence of these valuable properties can be predicted with the help of well-developed theoretical methods. In this research effort, we have designed and constructed a distributed physicomimetics system for locating sources of airborne chemical plumes. This task, called chemical plume tracing (CPT), is receiving a great deal of attention due to persistent homeland security threats.;For this thesis, we have created a novel CPT algorithm called fluxotaxis that is based on theoretical principles of fluid dynamics. Analytically, we show that fluxotaxis combines the essence, as well as the strengths, of the two most popular biologically-inspired CPT methods-- chemotaxis and anemotaxis. The chemotaxis strategy consists of navigating in the direction of the chemical density gradient within the plume, while the anemotaxis approach is based on an upwind traversal of the chemical cloud. Rigorous and extensive experimental evaluations have been performed in simulated chemical plume environments. Using a suite of performance metrics that capture the salient aspects of swarm-specific behavior, we have been able to evaluate and compare the three CPT algorithms. We demonstrate the improved performance of our fluxotaxis approach over both chemotaxis and anemotaxis in these realistic simulation environments, which include obstacles.;To test our understanding of CPT on actual hardware, we have implemented chemotaxis on three laboratory-scale robots. Chemotaxis requires only chemical sensors; eventually, when small-scale anemometers capable of reliably detecting low air velocities become available, we plan to implement anemotaxis and fluxotaxis on the robots as well. Our chemotaxis robots use the physicomimetics control algorithm to arrange the team of vehicles into a triangular formation, which then traces an ethanol vapor plume to its source emitter. In agreement with our theoretical predictions, the swarm implementation shows a consistent gain in CPT performance as compared to a single-robot solution.
机译:最近,分布式计算在人工智能和机器人技术领域已占据主导地位。为了提高系统性能,工程师正在将多个协作机器人组合成凝聚力强的集体,称为群体。本文阐述了物理经济学的基本原理或基于物理的设计在群体机器人系统中的应用。这些原则包括分散控制,短距离感应和低功耗。我们展示了如何将这些原理应用于机器人群,从而实现高度可扩展,强大且自适应的多机器人系统。这些有价值的特性的出现可以借助完善的理论方法来预测。在这项研究工作中,我们设计并构建了一个分布式物理通信系统,用于定位机载化学烟羽的来源。由于持续存在的国土安全威胁,这项称为化学羽流跟踪(CPT)的任务受到了广泛的关注。;为此,我们基于流体动力学的理论原理,创建了一种新颖的CPT算法,称为通量轴。从分析上讲,我们显示通量融合了两种最流行的受生物启发的CPT方法(趋化性和止血性)的本质和优势。趋化性策略包括在羽流中沿化学密度梯度的方向导航,而消炎性方法则基于化学云的上风遍历。在模拟化学羽流环境中进行了严格而广泛的实验评估。使用一套性能指标来捕获特定群体行为的重要方面,我们已经能够评估和比较这三种CPT算法。我们展示了在这些现实的模拟环境(包括障碍)中,趋光性方法在趋化性和消融性方面的改进性能;为了测试我们对CPT在实际硬件上的理解,我们在三个实验室规模的机器人上实现了趋化性。趋化性只需要化学传感器。最终,当能够可靠地检测低风速的小型风速仪问世时,我们计划在机器人上也实现风动和通量。我们的趋化性机器人使用物理动力学控制算法将车队排成三角形,然后将乙醇蒸气羽流追踪到其源发射器。与我们的理论预测相一致,与单机器人解决方案相比,群体实施显示出CPT性能的持续提高。

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