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A Method for Environmental Economic Dispatch of Thermal Power Plant Based on Multi-objective Differential Evolution Algorithm

A differential evolution algorithm, a technology of environmental and economic scheduling, which is applied in calculation, data processing application, forecasting, etc., can solve the problems that cannot improve the feasibility and effectiveness of environmental and economic scheduling, and the differential calculation is not accurate enough.

Inactive Publication Date: 2019-06-25
SOUTHWEST PETROLEUM UNIV
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Problems solved by technology

[0004] At present, the academic circles have conducted some research on the environmental economic dispatch of thermal power plants, and achieved some results, such as "Environmental Economic Dispatch of Power System Based on Multi-objective Evolutionary Algorithm" by Zhu Yongsheng et al. Economic Dispatch", "Environmental Economic Power Generation Dispatch Using Multi-objective Improved Differential Evolutionary Algorithm" by Hu Bin et al., etc., but the above methods still have inaccurate differential calculations, which cannot improve the feasibility and effectiveness of solving environmental economic dispatch. The problem

Method used

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  • A Method for Environmental Economic Dispatch of Thermal Power Plant Based on Multi-objective Differential Evolution Algorithm
  • A Method for Environmental Economic Dispatch of Thermal Power Plant Based on Multi-objective Differential Evolution Algorithm
  • A Method for Environmental Economic Dispatch of Thermal Power Plant Based on Multi-objective Differential Evolution Algorithm

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Embodiment

[0128] Such as figure 1 As shown, apply the method provided by the present invention, select the IEEE30 node standard power system as the experimental object, and carry out the environmental economic dispatching experiment, the specific steps are as follows:

[0129] 1) Establish a mathematical model for environmental economic dispatch of thermal power plants. For the IEEE30 node system, the mathematical model can be described as:

[0130]

[0131] f k (P k ) = a k +b k P k +c k P k 2 ,

[0132] E. k (P k )=α k +β k P k +γ k P k 2 +ξ k exp(λ k P k ),

[0133] At the same time, the generator capacity constraints and power balance constraints should be met, namely:

[0134]

[0135]

[0136] in:

[0137] In the above model, K is the number of thermal power generators in the generating set, P k Output active power for the kth thermal generator, F k (P k ) is the output active power of the kth thermal generator, P k The cost of power generation...

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Abstract

The invention discloses a thermal power plant environment economic dispatching method based on a multi-target differential evolution algorithm.The method comprises the following steps that a thermal power plant economic dispatching model with the lowest electricity generation cost and smallest pollutant discharge quantity as targets and with generator capacity and power balance as constraint conditions is built; the multi-target differential evolution algorithm is utilized for carrying out optimization solving on the model, an optimal Pareto solution set is obtained, the multi-target differential evolution algorithm adopts difference mutation operators for searching, mutation operators are selected based on the accumulation performance and using frequency of the operators of the latest several times of variation, and solution set convergence and distribution uniformity are ensured by means of non-dominated ranking, domination frequency and hypervolume contribution and the like; finally, a decision is made through the fuzzy set theory, and a compromise solution is selected from the Pareto solution set to be used as a final regulation scheme.The thermal power plant environment economic dispatching method has the advantages that precision is high, Pareto leading edge solution set distribution is uniform and convergence speed is high, and engineering realization is easy.

Description

technical field [0001] The invention relates to the technical field of electric power system scheduling, in particular to an environmental economic scheduling method for thermal power plants based on a multi-objective differential evolution algorithm. Background technique [0002] Power system economic dispatch is to solve the dispatching scheme that minimizes the cost of power generation on the basis of satisfying the operating constraints of the power system. For thermal power generators, a large amount of pollutant gases or greenhouse gases such as sulfur oxides, nitrogen oxides, and carbon dioxide will be emitted during the power generation process. If the amount of pollutants discharged in the power generation process is considered, the original single-objective economic dispatch is transformed into a multi-objective environmental-economic dispatch. Because the cost target and the pollutant discharge target conflict with each other, it increases the difficulty of formu...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06Q10/04G06Q50/06
CPCG06Q10/04G06Q50/06
Inventor 程吉祥李志丹谌海云
Owner SOUTHWEST PETROLEUM UNIV
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