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Development of Hybrid Algorithm Based on PSO and NN to Solve Economic Emission Dispatch Problem

机译:基于PSO和NN的混合算法求解经济排放调度问题。

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The electric power generation system has always the significant location in the power system, and it should have an efficient and economic operation. This consists of the generating unit’s allocation with minimum fuel cost and also considers the emission cost. In this paper we have intended to propose a hybrid technique to optimize the economic and emission dispatch problem in power system. The hybrid technique is used to minimize the cost function of generating units and emission cost by balancing the total load demand and to decrease the power loss. This proposed technique employs Particle Swarm Optimization (PSO) and Neural Network (NN). PSO is one of the computational techniques that use a searching process to obtain an optimal solution and neural network is used to predict the load demand. Prior to performing this, the neural network training method is used to train all the generating power with respect to the load demand. The economic and emission dispatch problem will be solved by the optimized generating power and predicted load demand. The proposed hybrid intelligent technique is implemented in MATLAB platform and its performance is evaluated.
机译:发电系统始终在电力系统中占据重要位置,并且应该具有高效且经济的运行方式。这包括以最小的燃料成本分配发电机组,并考虑排放成本。本文旨在提出一种混合技术来优化电力系统的经济和排放调度问题。混合技术用于通过平衡总负载需求来最小化发电机组的成本函数和排放成本,并减少功率损耗。这项提议的技术采用了粒子群优化(PSO)和神经网络(NN)。 PSO是使用搜索过程获得最佳解的计算技术之一,而神经网络则用于预测负载需求。在执行此操作之前,使用神经网络训练方法来训练有关负载需求的所有发电功率。经济和排放调度问题将通过优化发电功率和预测负荷需求来解决。提出的混合智能技术在MATLAB平台上实现,并对其性能进行了评估。

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