Maximizing On-Bill Savings through Battery Management Optimization
In many power grids, a large portion of the energy costs for commercial and industrial consumers are set with reference to the coincident peak load, the demand during the maximum system-wide peak, and their own maximum peak load, the non-coincident peak load. Coincident-peak based charges reflect th...
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Zusammenfassung: | In many power grids, a large portion of the energy costs for commercial and
industrial consumers are set with reference to the coincident peak load, the
demand during the maximum system-wide peak, and their own maximum peak load,
the non-coincident peak load. Coincident-peak based charges reflect the
allocation of infrastructure updates to end-users for increased capacity, the
amount the grid can handle, and for improvement of the transmission, the
ability to transport energy across the network. Demand charges penalize the
stress on the grid caused by each consumer's peak demand. Microgrids with a
local generator, controllable loads, and/or a battery technology have the
flexibility to cut their peak load contributions and thereby significantly
reduce these charges. This paper investigates the optimal planning of microgrid
technology for electricity bill reduction. The specificity of our approach is
the leveraging of a scenario generator engine to incorporate probability
estimates of coincident peaks and non-coincident peaks into the optimization
problem. |
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DOI: | 10.48550/arxiv.2409.03942 |