首页> 外文期刊>Research journal of applied science, engineering and technology >Multi Objective Genetic Algorithm for Congestion Management in Deregulated Power System Using Generator Rescheduling and Facts Devices
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Multi Objective Genetic Algorithm for Congestion Management in Deregulated Power System Using Generator Rescheduling and Facts Devices

机译:基于发电机调度和事实装置的多目标遗传算法在电力调度中的拥塞管理。

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The problem of congestion management is more pronounced in deregulated environment as the participants of the energy market are market oriented rather than socially responsible-as exhibited by the government operated bundled system. Customers would like to purchase the electricity from the cheapest available sources. The seller in energy market would like to derive more benefit out of their investments, engages with contracts that may lead to overloading of the transmission elements of the power system. An Independent System Operator (ISO) who has no vested interest in the energy market, coordinates the trades and make sure that the interconnected power system always operates in a secure state at a minimum cost by meeting the all the load requirements and losses. In this proposed study, Congestion is mitigated by Generator Rescheduling and implementation of FACTS devices. Minimization of rescheduling costs of the generator and minimization of the cost of deploying FACTS devices are taken as the objectives of the given multi-objective optimization problem. Non-dominated sorting genetic algorithm Ⅱ is used to solve this problem by implementing the series FACTS device namely TCSC and shunt FACTS device namely SVC. The proposed algorithm is tested on IEEE 30 bus system.
机译:在放松管制的环境中,拥堵管理的问题更加突出,因为能源市场的参与者是市场导向的,而不是社会责任的,正如政府经营的捆绑体系所显示的那样。客户想从最便宜的来源购买电力。能源市场中的卖方希望从他们的投资中获得更多利益,参与合同可能会导致电力系统的传输元件过载。在能源市场上没有既得利益的独立系统运营商(ISO),可以协调交易并通过满足所有负载要求和损失,确保互连的电源系统始终以最小的成本在安全的状态下运行。在这项拟议的研究中,通过重新安排发电机和FACTS设备的实施来缓解拥塞。给定的多目标优化问题的目标是将发电机的重新安排成本最小化和将FACTS设备的部署成本最小化。通过采用串联的FACTS装置TCSC和并联的FACTS装置SVC,非支配排序遗传算法Ⅱ解决了这一问题。该算法在IEEE 30总线系统上进行了测试。

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