aiWATERS:水行业人工智能框架

Darshan Vekaria, Sunil Sinha
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摘要

人工智能(AI)和机器学习(ML)应用的出现使其在各个领域得到广泛应用。除了研究和学术界之外,人工智能正在进入工业界。与此同时,水行业也在经历数字化转型。美国的水务公司正处于数字化转型的不同阶段,而作为人工智能应用的非专业利益相关者,水务行业的决策者需要更好地了解这项技术,以便做出明智的决策。虽然人工智能有诸多好处,但在将其应用于现实世界之前,也应考虑到与数据、模型开发、知识整合和道德问题相关的许多挑战。土木工程是一项涉及关键决策的特许职业。因此,对任何决策支持技术的信任对其在现实世界中的应用至关重要。因此,本研究提出了一个名为 aiWATERS(水务行业人工智能)的框架,可作为水务公司在其系统中成功实施人工智能的指南。在此框架基础上,我们对美国各大中小型水务公司进行了试点访谈和调查,以了解他们实施人工智能的现状,并确定他们所面临的挑战。研究结果表明,美国大多数水务公司还处于实施人工智能的早期阶段,因为他们对人工智能技术在其系统中的黑盒性质、可信度和可持续性感到担忧。aiWATERS 框架旨在帮助水务公司在数字化转型过程中解决这些问题。
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aiWATERS: an artificial intelligence framework for the water sector

The presence of Artificial Intelligence (AI) and Machine Learning (ML) applications has led to its widespread adoption across diverse domains. AI is making its way into industry, beyond research and academia. Concurrently, the water sector is undergoing a digital transformation. Water utilities in the United States are at different stages in their journey of digital transformation, and the decision makers in water sector, who are non-expert stakeholders in AI applications, need to better understand this technology to make informed decisions. While AI has numerous benefits to offer, there are also many challenges related to data, model development, knowledge integration and ethical concerns that should be considered before implementing it for real world applications. Civil engineering is a licensed profession where critical decision making is involved. Therefore, trust in any decision support technology is critical for its acceptance in real-world applications. Therefore, this research proposes a framework called aiWATERS (Artificial Intelligence for the Water Sector) which can serve as a guide for the water utilities to successfully implement AI in their system. Based on this framework, we conduct pilot interviews and surveys with various small, medium, and large water utilities in the United States (US) to capture their current state of AI implementation and identify the challenges faced by them. The research findings reveal that most of the water utilities in the United States are at an early stage of implementing AI as they face concerns regarding the black box nature, trustworthiness, and sustainability of AI technology in their system. The aiWATERS framework is intended to help the utilities navigate through these issues in their journey of digital transformation.

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