ACWA:智能水系统的人工智能驱动的网络物理测试平台

IF 1.6 Q3 WATER RESOURCES
Feras Batarseh, Ajay Kulkarni, Chhayly Sreng, Justice Lin, Siam Maksud
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引用次数: 0

摘要

摘要:本文提出了一种新型的最先进的网络物理水测试平台,即人工智能和水与农业网络测试平台(ACWA)。ACWA的目标是利用人工智能和网络安全实验推进水资源管理。ACWA的主要目标是通过利用尖端的人工智能和数据驱动技术,解决水和农业领域的紧迫挑战。这些挑战包括网络生物安全、资源管理、水资源获取、可持续性和数据驱动决策等。为了解决这些问题,ACWA由拓扑结构、传感器、计算集群、泵、水箱、智能水设备以及控制系统的数据库和人工智能模型组成。此外,我们提出了ACWA模拟器,这是一个基于软件的水数字孪生。该模拟器基于流体和成分输运原理,产生配水系统的理论时间序列。它为通过物理ACWA测试平台将理论方法与实际结果进行比较创造了一个基准。ACWA数据可供人工智能和水务部门的研究人员使用,并托管在一个在线公共存储库中。本文对该系统进行了介绍,并与现有的水试验台进行了比较;此外,用例与新结果一起描述,例如数据集、软件和人工智能模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ACWA: an AI-driven cyber-physical testbed for intelligent water systems
Abstract This manuscript presents a novel state-of-the-art cyber-physical water testbed, namely the AI and Cyber for Water and Agriculture testbed (ACWA). ACWA is motivated by the aim to advance water resources' management using AI and cybersecurity experimentation. The main objective of ACWA is to address pressing challenges in the water and agricultural domains by utilising cutting-edge AI and data-driven technologies. These challenges include cyberbiosecurity, resources' management, access to water, sustainability, and data-driven decision-making, among others. To address such issues, ACWA is built consisting of topologies, sensors, computational clusters, pumps, tanks, smart water devices, as well as databases and AI models that control the system. Moreover, we present ACWA simulator, which is a software-based water digital twin. The simulator is based on fluid and constituent transport principles that produce a theoretical time series of a water distribution system. It creates a benchmark for comparing the theoretical approach with real-life outcomes via the physical ACWA testbed. ACWA data are available to AI and water sector researchers and are hosted in an online public repository. In this paper, the system is introduced and compared with existing water testbeds; additionally, use cases are described along with novel outcomes, such as datasets, software, and AI models.
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来源期刊
CiteScore
2.30
自引率
6.20%
发文量
136
审稿时长
14 weeks
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