A Data-Driven Deployment Approach for Persistent Monitoring in Aquatic Environments

Tauhidul Alam, G. Reis, Leonardo Bobadilla, Ryan N. Smith
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引用次数: 25

Abstract

Processes of scientific interest in the aquatic environment occur across multiple spatio-temporal time scales. To properly assess and understand these processes, we must observe aquatic ecosystems over long time periods. This requires examination of the problem of deploying multiple, inexpensive, and minimally-actuated drifting vehicles. We aim to utilize these persistent assets to explore all locations on the water surface, and examine the entirety an underwater environment through the visibility of downward-facing cameras. In this work, we propose a data-driven approach for the deployment of drifters that creates a stochastic model, finds the generalized flow pattern of the water, and studies the long-term behavior of an aquatic environment from a flow point-of-view. Given the long-term behavior of the environment, our approach finds attractors and their transient groups as the domains of attractions. We then determine a minimum number of deployment locations for the drifters using these attractors and their transient groups. Our simulation results based on actual ocean model prediction data demonstrate the applicability of our approach.
水生环境持续监测的数据驱动部署方法
水生环境的科学兴趣过程发生在多个时空时间尺度上。为了正确评估和理解这些过程,我们必须长期观察水生生态系统。这就需要研究部署多个、廉价且驱动最小的漂移车辆的问题。我们的目标是利用这些持久的资产来探索水面上的所有位置,并通过向下的摄像头的可见性来检查整个水下环境。在这项工作中,我们提出了一种数据驱动的方法,用于部署漂流者,该方法创建了一个随机模型,发现了水的广义流动模式,并从流动的角度研究了水生环境的长期行为。考虑到环境的长期行为,我们的方法发现吸引子和它们的瞬态组作为吸引的域。然后,我们利用这些吸引子和它们的瞬态群体确定漂流者的最小部署位置。基于实际海洋模式预测数据的模拟结果证明了本文方法的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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