...
首页> 外文期刊>Wind Energy Science >Validation of uncertainty reduction by using multiple transfer locations for WRF–CFD coupling in numerical wind energy assessments
【24h】

Validation of uncertainty reduction by using multiple transfer locations for WRF–CFD coupling in numerical wind energy assessments

机译:通过使用数值风能评估中的WRF-CFD耦合的多转移位置验证不确定性减少

获取原文
           

摘要

This paper describes a?method for reducing the uncertainty associated with utilizing fully numerical models for wind resource assessment in the early stages of project development. The presented method is based on a?combination of numerical weather predictions (NWPs) and microscale downscaling using computational fluid dynamics (CFD) to predict the local wind resource. Numerical modelling is (at least) 2 orders of magnitude less expensive and time consuming compared to conventional measurements. As a?consequence, using numerical methods could enable a?wind project developer to evaluate a?larger number of potential sites before making an investment. This would likely increase the chances of finding the best available projects. A?technique is described, multiple transfer location analysis (MTLA), where several different locations for performing the data transfer between the NWP and the CFD model are evaluated. Independent CFD analyses are conducted for each evaluated data transfer location. As a?result, MTLA will generate multiple independent observations of the data transfer between the NWP and the CFD model. This results in a?reduced uncertainty in the data transfer, but more importantly MTLA will identify locations where the result of the data transfer deviates from the neighbouring locations. This will enable further investigation of the outliers and give the analyst a?possibility to correct erroneous predictions. The second part is found to reduce the number and magnitude of large deviations in the numerical predictions relative to the reference measurements. The Modern Energy Wind Assessment Model (ME-WAM) with and without MTLA is validated against field measurements. The validation sample for ME-WAM without MTLA consists of 35?observations and gives a?mean bias of ?0.10 m?s?1 and a?SD of 0.44 m?s?1. ME-WAM with MTLA is validated against a?sample of 45?observations, and the mean bias is found to be +0.05 m?s?1 with a?SD of 0.26 m?s?1. After adjusting for the composition of the two samples with regards to the number of sites in complex terrain, the reduction in variability achieved by MTLA is quantified to 11 % of the SD for non-complex sites and 35 % for complex sites.
机译:本文介绍了一种用于降低利用项目开发早期阶段利用风力资源评估的完全数值模型的不确定性的方法。所提出的方法基于a?使用计算流体动力学(CFD)来预测局部风力资源的数值天气预报(NWPS)和微尺度缩小的数值天气预报(NWPS)和微尺度的组合。与传统测量相比,数值建模(至少)2级比较昂贵且耗时的数量级。作为一个?结果,使用数值方法可以启用一个?风力项目开发人员在投资之前评估一个更大数量的潜在地点。这可能会增加寻找最佳项目的机会。 a?描述技术,评估多个传输位置分析(MTLA),其中用于执行NWP和CFD模型之间的数据传输的几个不同位置。为每个评估的数据传输位置进行独立的CFD分析。作为一个问题,MTLA将生成NWP与CFD模型之间的数据传输的多个独立观察。这导致了数据传输中的不确定性,但更重要的是MTLA将识别数据传输结果偏离邻居位置的位置。这将能够进一步调查异常值,并为分析师提供一个纠正错误预测的可能性。发现第二部分以减少相对于参考测量的数值预测中的大偏差的数量和大小。具有和不带MTLA的现代能量风评估模型(ME-WAM)对现场测量进行验证。没有MTLA的ME-WAM的验证样本由35个?观察结果,并给出?意味着偏差?0.10米的偏差为0.44μm≤​​1和a≤1。与MTLA的ME-WAM验证了45?观察结果的样本,并且发现平均偏差是+0.05m≤S≤1.SD为0.26μm≤1。在对两个样品的组合物调整到复杂地形中的位点的数量,通过MTLA实现的可变异性的降低量为非复合位点的11%,复杂位点35%。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号