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超燃冲压发动机流场一维平均方法研究 被引量:4
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作者 张旭 姜军 +2 位作者 林言中 陈兵 徐旭 《推进技术》 EI CAS CSCD 北大核心 2014年第7期865-873,共9页
介绍了多种平均方法,包括常用的流量或面积加权平均方法,以及CMME(流量/动量/能量守恒)方法和CMES(动量/能量/熵守恒)方法。以超燃冲压发动机进气道-燃烧室构型为对象,研究了不同平均方法得到的等效一维结果差异,以及不同平均方法的入... 介绍了多种平均方法,包括常用的流量或面积加权平均方法,以及CMME(流量/动量/能量守恒)方法和CMES(动量/能量/熵守恒)方法。以超燃冲压发动机进气道-燃烧室构型为对象,研究了不同平均方法得到的等效一维结果差异,以及不同平均方法的入口参数对超燃燃烧室一维计算结果的影响。结果表明:在超燃燃烧室多维热态仿真数据分析时,推荐使用通量守恒方法;CMES方法能准确的保留总压信息,CMME方法得到的总压损失会大于实际,在处理总压恢复性能时,CMES方法更优;亚燃模态时,CMME方法和CMES方法均不能反映隔离段激波串的渐变压缩;超燃模态时,CMES方法能较好地保持动量的近似守恒,在亚燃模态则较差;不同平均方法得到燃烧室入口参数的一维计算结果与三维流场等效一维沿程静压分布均存在一定偏差,Case1流量加权平均解误差高达27.8%,通量守恒解误差仅约13%,Case2流量加权平均解误差为14.9%,通量守恒解误差仅约5%,说明CMME方法与CMES方法符合程度更高,推力计算结果更为可信。 展开更多
关键词 超燃冲压发动机 一维平均方法 面积加权平均 流量加权平均 流量/动量/能量守恒方法 动量/能量/熵守恒方法
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基于随机矩阵的新型频谱盲感知方法 被引量:3
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作者 刘宁 史浩山 +1 位作者 刘利平 杨博 《西北工业大学学报》 EI CAS CSCD 北大核心 2016年第2期262-267,共6页
针对传统频谱感知算法需要预先估计噪声方差且当存在噪声不确定度时,检测性能降低的特点,提出一种基于随机矩阵的改进型频谱盲感知算法(M-CMME)。该算法通过分析协方差矩阵最大特征值极限分布特性,分析并利用采样协方差矩阵特征值与信... 针对传统频谱感知算法需要预先估计噪声方差且当存在噪声不确定度时,检测性能降低的特点,提出一种基于随机矩阵的改进型频谱盲感知算法(M-CMME)。该算法通过分析协方差矩阵最大特征值极限分布特性,分析并利用采样协方差矩阵特征值与信号平均能量的关系,推导设定虚警概率条件下判决门限的闭式表达式。该算法不需要预先知道授权用户信号的先验知识,且能够有效克服噪声不确定度的影响。仿真结果显示,当噪声方差估计存在偏差的情况下,该算法具有较强的鲁棒性,且在较少采样点、低信噪比、较少阵元数情况下能够获得比CMME更优的检测性能。 展开更多
关键词 频谱感知 特征值 噪声不确定度 随机矩阵理论
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The China Multi-Model Ensemble Prediction System and Its Application to Flood-Season Prediction in 2018 被引量:18
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作者 Hong-Li REN Yujie WU +9 位作者 Qing BAO Jiehua MA Changzheng LIU Jianghua WAN Qiaoping LI Xiaofei WU Ying LIU Ben TIAN Joshua-Xiouhua FU Jianqi SUN 《Journal of Meteorological Research》 SCIE CSCD 2019年第3期540-552,共13页
Multi-model ensemble prediction is an effective approach for improving the prediction skill short-term climate prediction and evaluating related uncertainties. Based on a combination of localized operation outputs of ... Multi-model ensemble prediction is an effective approach for improving the prediction skill short-term climate prediction and evaluating related uncertainties. Based on a combination of localized operation outputs of Chinese climate models and imported forecast data of some international operational models, the National Climate Center of the China Meteorological Administration has established the China multi-model ensemble prediction system version 1.0 (CMMEv1.0) for monthly-seasonal prediction of primary climate variability modes and climate elements. We verified the real-time forecasts of CMMEv1.0 for the 2018 flood season (June-August) starting from March 2018 and evaluated the 1991-2016 hindcasts of CMMEv1.0. The results show that CMMEv1.0 has a significantly high prediction skill for global sea surface temperature (SST) anomalies, especially for the El Nino-Southern Oscillation (ENSO) in the tropical central-eastern Pacific. Additionally, its prediction skill for the North Atlantic SST triple (NAST) mode is high, but is relatively low for the Indian Ocean Dipole (IOD) mode. Moreover, CMMEv1.0 has high skills in predicting the western Pacific subtropical high (WPSH) and East Asian summer monsoon (EASM) in the June-July-August (JJA) season. The JJA air temperature in the CMMEv1.0 is predicted with a fairly high skill in most regions of China, while the JJA precipitation exhibits some skills only in northwestern and eastern China. For real-time forecasts in March-August 2018, CMMEv1.0 has accurately predicted the ENSO phase transition from cold to neutral in the tropical central-eastern Pacific and captures evolutions of the NAST and IOD indices in general. The system has also captured the main features of the summer WPSH and EASM indices in 2018, except that the predicted EASM is slightly weaker than the observed. Furthermore, CMMEv1.0 has also successfully predicted warmer air temperatures in northern China and captured the primary rainbelt over northern China, except that it predicted much more precipitation in the middle and lower reaches of the Yangtze River than observation. 展开更多
关键词 MULTI-MODEL ENSEMBLE China MULTI-MODEL ENSEMBLE PREDICTION system (cmme) real-time FORECAST SKILL assessment
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