太阳镜
蒙特卡罗方法
背景(考古学)
工程类
粒子群优化
光伏系统
太阳能
模拟
计算机科学
算法
电气工程
数学
生物
统计
古生物学
作者
Olivier Farges,Jean-Jacques Bézian,Mouna El-Hafi
标识
DOI:10.1016/j.renene.2017.12.028
摘要
There is a need to enhance the performance of Solar Power Tower (SPT) systems in view of their significant capital costs. In this context, the preliminary design step is of great interest as improvements here can reduce the global cost. This paper presents an optimization method that approaches optimal SPT system design through the coupling of a Particle Swarm Optimization algorithm and a Monte Carlo algorithm, in order to assess both the yearly heliostat field optical efficiency and the thermal energy collected annually by an SPT system. This global optimization approach is then validated on a well-known SPT system, ie the PS10 Solar Thermal Power plant. First, the direct model is compared to in-situ measurements and simulation results. Then, the PS10 heliostat field is redesigned using the optimization tool. This redesign step leads to an annual gain between 3.34% and 23.5% in terms of the thermal energy collected and up to about 9% in terms of the heliostat field optical efficiency from case to case.
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