MAGIC: Model-Based Actuation for Ground Irrigation Control

Daniel A. Winkler, Robert Wang, F. Blanchette, M. A. Carreira-Perpiñán, Alberto Cerpa
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引用次数: 10

Abstract

Lawns make up the largest irrigated crop by surface area in North America, and carries with it a demand for over 9 billion gallons of freshwater each day. Despite recent developments in irrigation control and sprinkler technology, state-of-the-art irrigation systems do nothing to compensate for areas of turf with heterogeneous water needs. In this work, we overcome the physical limitations of the traditional irrigation system with the development of a sprinkler node that can sense the local soil moisture, communicate wirelessly, and actuate its own sprinkler based on a centrally- computed schedule. A model is then developed to compute moisture movement from runoff, absorption, and diffusion. Integrated with an optimization framework, optimal valve scheduling can be found for each node in the space. In a turf area covering over 10,000ft2, two separate deployments spanning a total of 7 weeks show that MAGIC can reduce water consumption by 23.4% over traditional campus scheduling, and by 12.3% over state-of-the- art evapotranspiration systems, while substantially improving conditions for plant health. In addition to environmental, social, and health benefits, MAGIC is shown to return its investment in 16-18 months based on water consumption alone.
MAGIC:基于模型的地面灌溉控制驱动
草坪是北美面积最大的灌溉作物,每天需要超过90亿加仑的淡水。尽管最近在灌溉控制和喷灌技术方面取得了进展,但最先进的灌溉系统并不能补偿草坪对水的不同需求。在这项工作中,我们克服了传统灌溉系统的物理限制,开发了一个洒水节点,可以感知当地土壤湿度,无线通信,并根据中央计算的时间表启动自己的洒水。然后开发一个模型来计算径流、吸收和扩散中的水分运动。结合优化框架,可以为空间中的每个节点找到最优的阀门调度。在占地面积超过10,000平方英尺的草坪上,为期7周的两次单独部署表明,MAGIC可以比传统的校园调度减少23.4%的用水量,比最先进的蒸散系统减少12.3%,同时大大改善植物健康条件。除了环境、社会和健康效益外,仅根据用水量,MAGIC就能在16-18个月内收回投资。
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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