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Economic information from Smart Meter: Nexus Between Demand Profile and Electricity Retail Price Between Demand Profile and Electricity Retail Price

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  • Yang Yu
  • Guangyi Liu
  • Wendong Zhu
  • Fei Wang
  • Bin Shu
  • Kai Zhang
  • Ram Rajagopal
  • Nicolas Astier

Abstract

In this paper, we demonstrate that a consumer's marginal system impact is only determined by their demand profile rather than their demand level. Demand profile clustering is identical to cluster consumers according to their marginal impacts on system costs. A profile-based uniform-rate price is economically efficient as real-time pricing. We develop a criteria system to evaluate the economic efficiency of an implemented retail price scheme in a distribution system by comparing profile clustering and daily-average clustering. Our criteria system can examine the extent of a retail price scheme's inefficiency even without information about the distribution system's daily cost structure. We analyze data from a real distribution system in China. In this system, targeting each consumer's high-impact days is more efficient than target high-impact consumers.

Suggested Citation

  • Yang Yu & Guangyi Liu & Wendong Zhu & Fei Wang & Bin Shu & Kai Zhang & Ram Rajagopal & Nicolas Astier, 2016. "Economic information from Smart Meter: Nexus Between Demand Profile and Electricity Retail Price Between Demand Profile and Electricity Retail Price," Papers 1701.02646, arXiv.org.
  • Handle: RePEc:arx:papers:1701.02646
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    References listed on IDEAS

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