基于粒子群的块增量成本曲线最优估计

S.N. Singh, I. Erlich
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引用次数: 6

摘要

竞争性电力市场(EM)要求供电公司按照市场法规中规定的格式进行投标。块式(阶梯式)投标和线性投标是市场和研究中最常用的两种投标形式。在大多数新兴市场,发电公司(所谓的能源供应商)被要求以区块为单位竞标其电力输出,并附带每个区块的相关价格。对于具有多个燃料和阀点负荷效应的机组,发电公司必须将机组的输出功率划分成块,以便在有或没有博弈的情况下向电力市场投标。本文利用粒子群优化方法,从发电机组瞬时增量热率曲线估计最优分段增量成本。在每个区块内,总成本与瞬时增量成本曲线获得的成本相同。该公式简单,可用于任何发电机组,在块边缘误差最小。算例说明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Particle Swarm Based Optimal Estimation of Block Incremental Cost Curve
Competitive electricity market (EM) requires the bid from the electricity supply companies in the required formats which are defined in the market regulations. Block (stair-case) bid and linear bid are two most commonly used bid format for both market and research purposes. In most of the EM, the generating companies (so called energy suppliers) are required to bid their power outputs in blocks with the associated price of each block. For a unit having with multiple fuel and valve point loading effect, the generating company must divide the output power of the unit into the blocks so that it can be bid into the electricity market with and/or without gaming. This paper addresses the estimation of optimal block incremental cost from the instantaneous incremental heat rate curve of a generating unit using particle swarm optimization approach. During each block, the total cost is the same to the cost obtained with the instantaneous incremental cost curve. The formulation is simple and can be used for any generating unit with minimum error at block edges. The effectiveness of the proposed method is illustrated with the case studies.
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