A Profit-Based Unit Commitment using Different Hybrid Particle Swarm Optimization for Competitive Market

IF 0.5 Q4 ENERGY & FUELS International Energy Journal Pub Date : 2009-01-09 DOI:10.21608/erjm.2008.69500
A. Ela, G. Ali, H. S. A. El-Ghany
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引用次数: 4

Abstract

Two proposed approaches are presented for optimal scheduling of unit commitment (UC) in competitive market. The particle swarm optimization (PSO) technique is used to find out the solution of both optimal UC scheduling and power generation dispatching problems, simultaneously. These approaches depend on two sigmoid functions to obtain the binary values for the PSO technique. The first approach considers the fuzzification of power generation costs as a sigmoid function, while the second approach considers the fuzzification of power generation as a sigmoid function. An exponential function is proposed to minimize power generation costs as well as maximize their own profit, while all load demand and the power generation constraints are satisfied. Therefore, the generations companies (GENCO) can schedule their output power according to a maximum own profit. This means that, the GENCO must take a decision, how much power and reserve generations should be sold in the markets to obtain a maximum own profit. Different applications are carried out using various standard test systems to show the capability of the proposed approaches the competitive market.
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基于不同混合粒子群优化的基于利润的单位承诺
提出了两种竞争市场下机组承诺最优调度的方法。采用粒子群优化(PSO)技术同时求解UC最优调度和发电调度问题。这些方法依赖于两个s型函数来获得PSO技术的二进制值。第一种方法将发电成本的模糊化视为一个s型函数,第二种方法将发电成本的模糊化视为一个s型函数。在满足所有负荷需求和发电约束的前提下,提出了发电成本最小化和自身利润最大化的指数函数。因此,发电公司(GENCO)可以根据自身利润最大化来调度其输出功率。这意味着,发电公司必须做出决策,应该在市场上出售多少电力和储备发电,以获得最大的自身利润。使用不同的标准测试系统进行了不同的应用,以显示所提出的方法在竞争市场中的能力。
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来源期刊
CiteScore
1.80
自引率
0.00%
发文量
37
期刊介绍: The journal provides a forum exchange of information, innovative and critical ideas on a wide range of issues in energy. The issues are addressed in four major areas as follows: Energy economics and policy including energy demand and supply study, resources document, transportation and conversion pricing, modeling, security and organizational structure, Energy technology including energy exploration, conversion, transportation technologies, utilization technologies such as rational use of energy in industry, energy efficient building system, system simulation, and cogeneration, Energy regulation, promotion, and environmental concerns including analysis of energy systems structure, restructuring, regulation and promotion for energy conservation, clean development mechanism, and energy enhancement of social development, Electric power system including electricity demand forecasting and planning, electric supply structure and economics, power system dynamics and stability, power system operation and control, and power distribution.
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