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Modified neo-fuzzy neuron-based approach for economic and environmental optimal power dispatch

机译:改进的基于新模糊神经元的经济和环境最优功率分配方法

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At the central energy management center in a power system, the real time controls continuously track the load changes and endeavor to match the total power demand with total generation in such a manner that the operating cost is minimized while all the operating constraints are satisfied. However, due to the strict government regulations on environmental protection, operation at minimum cost is no longer the only criterion for dispatching electrical power. The idea behind the environmentally constrained economic dispatch formulation is to estimate the optimal generation schedule of generating units in such a manner that fuel cost and harmful emission levels are both simultaneously minimized for a given load demand. Conventional optimization techniques become very time consuming and computationally extensive for such complex optimization tasks. These methods are hence not suitable for on-line use. Neural networks and fuzzy systems can be trained to generate accurate relations among variables in complex non-linear dynamical environment, as both are model-free estimators. The existing synergy between these two fields has been exploited in this paper for solving the economic and environmental dispatch problem on-line. A multi-output modified neo-fuzzy neuron (NFN), capable of real time training is proposed for economic and environmental power generation allocation. This model is found to achieve accurate results and the training is observed to be faster than other popular neural networks. The proposed method has been tested on medium-sized sample power systems with three and six generating units and found to be suitable for on-line combined environmental economic dispatch (CEED).
机译:在电力系统的中央能源管理中心,实时控制连续跟踪负载变化,并努力使总发电量与总发电量相匹配,以使运行成本最小化,同时满足所有运行约束。但是,由于政府对环境保护的严格规定,以最低成本运行不再是分配电力的唯一标准。环境受约束的经济调度公式背后的思想是,以给定负载需求同时最小化燃料成本和有害排放水平的方式估算发电机组的最佳发电时间表。对于这种复杂的优化任务,常规的优化技术变得非常耗时且计算量很大。因此,这些方法不适合在线使用。可以训练神经网络和模糊系统以在复杂的非线性动态环境中生成变量之间的准确关系,因为两者都是无模型估计量。本文利用这两个领域之间的现有协同作用来在线解决经济和环境调度问题。提出了一种可以实时训练的多输出改进型新模糊神经元(NFN),用于经济和环境发电分配。发现该模型可以达到准确的结果,并且训练比其他流行的神经网络要快。该方法已经在具有三个和六个发电机组的中型样本电力系统上进行了测试,发现适用于在线联合环境经济调度(CEED)。

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