Electrical Engineering and Systems Science > Signal Processing
[Submitted on 11 Oct 2024]
Title:Towards a Health-Based Power Grid Optimization in the Artificial Intelligence Era
View PDF HTML (experimental)Abstract:The electric power sector is one of the largest contributors to greenhouse gas emissions in the world. In recent years, there has been an unprecedented increase in electricity demand driven by the so-called Artificial Intelligence (AI) revolution. Although AI has and will continue to have a transformative impact, its environmental and health impacts are often overlooked. The standard approach to power grid optimization aims to minimize CO$_2$ emissions. In this paper, we propose a new holistic paradigm. Our proposed optimization directly targets the minimization of adverse health outcomes under energy efficiency and emission constraints. We show the first example of an optimal fuel mix allocation problem aiming to minimize the average number of adverse health effects resulting from exposure to hazardous air pollutants with constraints on the average and marginal emissions. We argue that this new health-based power grid optimization is essential to promote truly sustainable technological advances that align both with global climate goals and public health priorities.
Submission history
From: Claudio Battiloro Dr [view email][v1] Fri, 11 Oct 2024 17:46:12 UTC (1,202 KB)
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