2019 AIChE Annual Meeting
(672h) A Clustering Decomposition Algorithm for Energy Storage Design & Operation
Authors
Optimization-based design & scheduling models aim to minimize the power and storage capacities of renewable power systems to lower capital and operational costs [1]. Hourly time discretization in the schedule is often used to capture solar and wind dynamics, keep track of storage inventory levels, and model time-dependent operational decisions. As a result, large time horizons are characteristic of these problems and significantly increase the computational burden of solving them [2, 3]. In addition, multiple time series data coming from resource availability, demand loads, and prices grow the complexity as well.
In this work, a decomposition algorithm based on agglomerative hierarchical clustering (AHC) is proposed to alleviate the computational burden, where the optimization is performed over representative time periods. A key advantage for AHC compared to the popular K-means clustering approach is that the clusters maintain time chronology, which is important for analyzing inter-period energy storage [4]. An example case study on dense energy carriers for energy storage, performed in collaboration with Shell, is presented to demonstrate the algorithmâs applicability.
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