Emission-aware Energy Storage Scheduling for a Greener Grid

Submitted in ICCPS, 2020

Authors: Rishikesh Jha Stephen Lee, Srinivasan Iyengar, Mohammad Hajiesmali, Prashant Shenoy, David Irwin

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Abstract

Abstract—Reducing our reliance on carbon-intensive energy sources is vital for reducing the carbon footprint of the electric grid. Although the grid is seeing increasing deployments of clean, renewable sources of energy, a significant portion of the grid demand is still met using traditional carbon-intensive energy sources. In this paper, we study the problem of using energy storage deployed in the grid to reduce the grid’s carbon emissions. While energy storage has previously been used for grid optimizations such as peak shaving and smoothing intermittent sources, our insight is to use distributed storage to enable utilities to reduce their reliance on their less efficient and most carbon-intensive power plants and thereby reduce their overall emission footprint. We formulate the problem of emission-aware scheduling of distributed energy storage as an optimization problem, and use a robust optimization approach that is well-suited for handling the uncertainty in load predictions and intermittent renewables. We evaluate our approach using a state of the art neural network load forecasting technique and real load traces from a distribution grid. Our results show a reduction of >0.5 million kg in annual carbon emissions — equivalent to a drop of 23.3% in our electric grid emissions.