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首页> 外文期刊>Electric Power Components and Systems >Particle Swarm Optimization Based Approach for Estimating the Fuel-cost Function Parameters of Thermal Power Plants with Valve Loading Effects
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Particle Swarm Optimization Based Approach for Estimating the Fuel-cost Function Parameters of Thermal Power Plants with Valve Loading Effects

机译:基于粒子群优化的带阀负荷效应的火电厂燃料成本函数参数估计方法

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摘要

In this article, a new and accurate method for estimating the parameters of thermal power plant fuel-cost function is proposed. The input-output characteristics of thermal power plants are affected by many factors such as the ambient operating temperature and aging of generating units. Thus, periodical estimation of power plant characteristics is very crucial to improve the overall operational and economical practices. The higher the accuracy of the estimated coefficients, the more accurate the results obtained from the economic dispatch and optimal power flow calculations. Different models that describe the input-output relationship of thermal units are considered, including the one that accounts for the valve loading point. The traditional estimation problem is viewed and formulated as an optimization one. The goal is to minimize the toted estimation error such that the selected model follows field data measurements as closelv as possible. A particle swarm optimization algorithm is employed to minimize the error associated with the estimated parameters. The proposed approach relieves some of the mathematical restrictions typically imposed on system modeling, since it does not require convexity or differentiability, as in the case of many conventional estimation techniques. Various study cases are considered in this work to test the performance of the method. Results obtained are partially compared to those computed by the least error square method. Comparison results are in favor of the particle swarm optimization algorithm in all study cases considered.
机译:本文提出了一种新的,准确的估算火电厂燃料成本函数参数的方法。火电厂的输入输出特性受许多因素的影响,例如环境工作温度和发电机组的老化。因此,定期评估发电厂的特性对于改善总体运行和经济实践至关重要。估计系数的准确性越高,从经济调度和最佳潮流计算中获得的结果越准确。考虑了描述热量单位的输入-输出关系的不同模型,包括考虑阀加载点的模型。传统的估计问题被视为优化问题。目的是最大程度地降低估算误差,以使所选模型尽可能接近现场数据测量。采用粒子群优化算法以最小化与估计参数相关的误差。所提出的方法减轻了通常强加于系统建模的一些数学限制,因为它不需要像许多常规估计技术一样的凸性或可微性。在这项工作中考虑了各种研究案例,以测试该方法的性能。将获得的结果与通过最小误差平方法计算的结果进行部分比较。在所有考虑的研究案例中,比较结果均支持粒子群优化算法。

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