Given the growing use of Artificial Intelligence (AI) and machine learning (ML) methods across all aspects of environmental sciences, it is imperative that we initiate a discussion about the ethical and responsible use of AI. In fact, much can be learned from other domains where AI was introduced, often with the best of intentions, yet often led to unintended societal consequences, such as hard coding racial bias in the criminal justice system or increasing economic inequality through the financial system. A common misconception is that the environmental sciences are immune to such unintended consequences when AI is being used, as most data come from observations, and AI algorithms are based on mathematical formulas, which are often seen as objective. In this article, we argue the opposite can be the case. Using specific examples, we demonstrate many ways in which the use of AI can introduce similar consequences in the environmental sciences. This article will stimulate discussion and research efforts in this direction. As a community, we should avoid repeating any foreseeable mistakes made in other domains through the introduction of AI. In fact, with proper precautions, AI can be a great tool to help {\it reduce} climate and environmental injustice. We primarily focus on weather and climate examples but the conclusions apply broadly across the environmental sciences.
翻译:鉴于在环境科学的各个方面越来越多地使用人工智能和机器学习方法,我们必须开始讨论以道德和负责任的方式使用人工智能。事实上,从采用人工智能的其他领域可以学到很多东西,这些领域往往有最佳的用意,但往往导致意外的社会后果,例如刑事司法系统中难以编码的种族偏见,或通过金融系统增加经济不平等。一个常见的错误观念是,当使用人工智能时,环境科学不受这种意外后果的影响,因为大多数数据来自观测,而人工智能算法是以数学公式为基础的,而这些公式往往被视为客观的。在本篇文章中,我们提出相反的观点。我们用具体的例子表明,使用人工智能可以给环境科学带来类似后果的许多方法。这一条将刺激这方面的讨论和研究工作。作为一个社区,我们应避免通过引入人工智能重复在其他领域发生的任何可预见的错误。事实上,通过适当的预防措施,人工智能可以成为帮助减少气候和环境不公的伟大工具。我们主要侧重于天气和气候范例,但结论广泛适用于环境科学。