A Pricing Strategy Reflecting the Cost of Power Volatility to Facilitate Decentralized Demand Response

Previous pricing strategies including time-of-use price and dynamic price reflect system marginal cost and calculate consumers' bills according to the quantity of their electricity usage. Little effort is made to understand the impact of power volatility on total production costs. This paper th...

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Main Authors: Zhong Zhang, Furong Li, Heng Shi
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8784185/
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spelling doaj-933b85b74fb54f3b98d74aeb716d66c72021-04-05T17:07:23ZengIEEEIEEE Access2169-35362019-01-01710586310587110.1109/ACCESS.2019.29324998784185A Pricing Strategy Reflecting the Cost of Power Volatility to Facilitate Decentralized Demand ResponseZhong Zhang0https://orcid.org/0000-0003-3484-6058Furong Li1Heng Shi2Department of Electronic and Electrical Engineering, University of Bath, Bath, U.K.Department of Electronic and Electrical Engineering, University of Bath, Bath, U.K.Department of Electronic and Electrical Engineering, University of Bath, Bath, U.K.Previous pricing strategies including time-of-use price and dynamic price reflect system marginal cost and calculate consumers' bills according to the quantity of their electricity usage. Little effort is made to understand the impact of power volatility on total production costs. This paper thus proposes a novel pricing strategy reflecting the cost arising from power volatility. Firstly, the impact of volatility on the production cost is investigated to quantify volatility cost. Secondly, a novel pricing model is proposed to allocate the volatility cost to consumers and renewable energy generations (REGs). It can reveal the coupling relationship between an individual load/REG curve and the system load curve. Thirdly, under the proposed pricing strategy, customers/REGs help to flatten the system load curve and reduce the production cost in a decentralized manner, which is certificated theoretically based on the Haar wavelet transforms. Validation on residential level loads shows that the volatility and peak-to-valley difference of aggregated load curve is reduced by 34.07% and 19.81%, respectively. The problem of synchronous response among customers faced by hourly price strategies is addressed by the proposed strategy. A test on megawatt-level loads shows a 61.95% reduction in system load volatility and a 2.21% reduction in production cost. It also reduces the peak-to-valley difference by 6.52%.https://ieeexplore.ieee.org/document/8784185/Pricing strategyvolatility costcorrelation coefficientdecentralized demand responsewavelet transforms
collection DOAJ
language English
format Article
sources DOAJ
author Zhong Zhang
Furong Li
Heng Shi
spellingShingle Zhong Zhang
Furong Li
Heng Shi
A Pricing Strategy Reflecting the Cost of Power Volatility to Facilitate Decentralized Demand Response
IEEE Access
Pricing strategy
volatility cost
correlation coefficient
decentralized demand response
wavelet transforms
author_facet Zhong Zhang
Furong Li
Heng Shi
author_sort Zhong Zhang
title A Pricing Strategy Reflecting the Cost of Power Volatility to Facilitate Decentralized Demand Response
title_short A Pricing Strategy Reflecting the Cost of Power Volatility to Facilitate Decentralized Demand Response
title_full A Pricing Strategy Reflecting the Cost of Power Volatility to Facilitate Decentralized Demand Response
title_fullStr A Pricing Strategy Reflecting the Cost of Power Volatility to Facilitate Decentralized Demand Response
title_full_unstemmed A Pricing Strategy Reflecting the Cost of Power Volatility to Facilitate Decentralized Demand Response
title_sort pricing strategy reflecting the cost of power volatility to facilitate decentralized demand response
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description Previous pricing strategies including time-of-use price and dynamic price reflect system marginal cost and calculate consumers' bills according to the quantity of their electricity usage. Little effort is made to understand the impact of power volatility on total production costs. This paper thus proposes a novel pricing strategy reflecting the cost arising from power volatility. Firstly, the impact of volatility on the production cost is investigated to quantify volatility cost. Secondly, a novel pricing model is proposed to allocate the volatility cost to consumers and renewable energy generations (REGs). It can reveal the coupling relationship between an individual load/REG curve and the system load curve. Thirdly, under the proposed pricing strategy, customers/REGs help to flatten the system load curve and reduce the production cost in a decentralized manner, which is certificated theoretically based on the Haar wavelet transforms. Validation on residential level loads shows that the volatility and peak-to-valley difference of aggregated load curve is reduced by 34.07% and 19.81%, respectively. The problem of synchronous response among customers faced by hourly price strategies is addressed by the proposed strategy. A test on megawatt-level loads shows a 61.95% reduction in system load volatility and a 2.21% reduction in production cost. It also reduces the peak-to-valley difference by 6.52%.
topic Pricing strategy
volatility cost
correlation coefficient
decentralized demand response
wavelet transforms
url https://ieeexplore.ieee.org/document/8784185/
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