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A Data-driven Storage Control Framework for Dynamic Pricing

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arxiv 1912.01440 v1 pith:FH4MHKDN submitted 2019-12-01 eess.SY cs.CEcs.LGcs.SY

A Data-driven Storage Control Framework for Dynamic Pricing

classification eess.SY cs.CEcs.LGcs.SY
keywords controldata-drivendemanddynamicframeworkstoragemodelside
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Dynamic pricing is both an opportunity and a challenge to the demand side. It is an opportunity as it better reflects the real time market conditions and hence enables an active demand side. However, demand's active participation does not necessarily lead to benefits. The challenge conventionally comes from the limited flexible resources and limited intelligent devices in demand side. The decreasing cost of storage system and the widely deployed smart meters inspire us to design a data-driven storage control framework for dynamic prices. We first establish a stylized model by assuming the knowledge and structure of dynamic price distributions, and design the optimal storage control policy. Based on Gaussian Mixture Model, we propose a practical data-driven control framework, which helps relax the assumptions in the stylized model. Numerical studies illustrate the remarkable performance of the proposed data-driven framework.

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