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Distributed power supply cluster day-ahead scheduling method and system considering multiple uncertainties

A distributed power source, uncertain technology, applied in the direction of system integration technology, information technology support system, wind power generation, etc., can solve the uncertainty of renewable energy output, does not take into account the uncertainty of demand response, cannot effectively To deal with problems such as electricity price uncertainty, achieve the effect of flexibly adjusting economy and robustness, and improving flexibility and security

Pending Publication Date: 2021-03-19
HUAZHONG UNIV OF SCI & TECH +2
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

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Problems solved by technology

However, this patent does not take into account the uncertainty of demand response in actual dispatching, and cannot effectively deal with multiple uncertainties such as electricity price uncertainty, renewable energy output uncertainty, and demand response uncertainty that exist in the actual dispatching process. deterministic problem

Method used

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  • Distributed power supply cluster day-ahead scheduling method and system considering multiple uncertainties
  • Distributed power supply cluster day-ahead scheduling method and system considering multiple uncertainties
  • Distributed power supply cluster day-ahead scheduling method and system considering multiple uncertainties

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Embodiment 1

[0142] figure 1 Modeling flow chart for the stochastic scenario method. In order to formulate the quotation strategy of the distributed power generation cluster, the distributed power generation cluster generates a scenario set Ω within the fluctuation range of the electricity price, and each scenario set contains a set of transaction electricity prices. On the basis of the price sets of N scenarios, the scheduling model is solved to obtain the corresponding transaction power, so as to establish the quotation curve of the distributed power supply cluster. During the day-ahead scheduling, the distributed power supply cluster provides the price-power quotation curve to the power market operator; the market operator clears the market, and determines the day-ahead market price and hourly price of the next day based on the quotation curve submitted by the distributed power supply cluster. The scheduled transaction power of the distributed power cluster; the market operator will fee...

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Abstract

The invention discloses a distributed power supply cluster day-ahead scheduling method and system considering multiple uncertainties, and belongs to the field of distributed power supply cluster optimal scheduling. On the basis of detailed analysis of multiple uncertainty source characteristics, a random optimization method and a self-adaptive robust optimization method are respectively adopted tomodel electricity market transaction price uncertainty, wind power output uncertainty and demand response quantity uncertainty; and linear expression is performed on the model based on an engineeringgame thought, a two-stage three-layer day-ahead scheduling optimization model is established, and an optimal solution is solved by adopting a particle swarm algorithm constrained by a penalty function. Through accurate representation of multiple uncertainty sources, a distributed power supply cluster scheduling optimization model considering multiple uncertainty factors is established, which is helpful for reasonably arranging the standby capacity of the distributed power supply cluster and making a power market quotation strategy, and further improves the flexibility and safety of the operation of the distributed power supply cluster.

Description

technical field [0001] The invention belongs to the field of optimal dispatching of distributed power clusters, and more specifically relates to a method and system for day-ahead scheduling of distributed power clusters considering multiple uncertainties. Background technique [0002] With the depletion of fossil energy and the intensification of environmental pollution, vigorously developing renewable energy has become a strategic choice for various countries to achieve a low-carbon economy and build a sustainable energy system. However, the inherent volatility, randomness, and intermittency of renewable energy have greatly hindered its popularization and application. In order to solve this problem, scholars have proposed the concept of distributed power clusters. The distributed power cluster is mainly composed of conventional units, renewable energy units, energy storage devices and flexible loads. As a resource integration method with high flexibility and adaptability,...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06Q10/04G06Q30/02G06Q50/06H02J3/46H02J3/28H02J3/00
CPCG06Q10/04G06Q30/0206G06Q50/06H02J3/466H02J3/28H02J3/003H02J3/008H02J2203/20H02J2300/24H02J2300/28Y04S10/50Y04S50/14Y02E10/76Y02E40/70Y02E10/56
Inventor 林毓军苗世洪杨炜晨梁志峰李淼尹斌鑫涂青宇张迪周鲲鹏叶畅王友怀胡晓峰
Owner HUAZHONG UNIV OF SCI & TECH
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