Conference Proceedings
Accounting for forecast uncertainty in the optimized operation of energy storage
K Abdulla, K Steer, A Wirth, S Halgamuge, J De Hoog
IEEE Pes Innovative Smart Grid Technologies Conference Europe | IEEE | Published : 2016
Abstract
This paper presents and empirically evaluates two approaches to accounting for forecast uncertainty when attempting to optimize the operation of a residential battery energy storage system. Data-driven methods are used for forecasting, and dynamic programming, within a receding horizon controller, is used for operational optimization. The first method applies a discount factor to costs incurred at later intervals in a deterministic dynamic programming control horizon, provided with point forecasts. In the second approach probabilistic (scenario) forecasts are generated using Lloyd-Max quantization of the distribution of forecast errors, to allow the use of a stochastic dynamic programming fo..
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Funding Acknowledgements
This work was supported by Melbourne International Research and Fee Remission Scholarships, and an Australia-Indonesia Center grant.