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基于回波模拟器的窄脉冲低震荡激光驱动设计 被引量:1
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作者 卫扬道 衣文索 +2 位作者 于丽婷 周伟 齐海英 《吉林大学学报(信息科学版)》 CAS 2017年第2期164-169,共6页
脉冲激光驱动电路的震荡会引起回波模拟的多目标、虚景和半导体激光器损坏等问题。针对这类问题,从RLC放电回路理论出发,推导电流方程,运用极值原理,提出量化抑制震荡的方法。根据实际某火控性能要求,运用所推公式确立了关键参数。最后... 脉冲激光驱动电路的震荡会引起回波模拟的多目标、虚景和半导体激光器损坏等问题。针对这类问题,从RLC放电回路理论出发,推导电流方程,运用极值原理,提出量化抑制震荡的方法。根据实际某火控性能要求,运用所推公式确立了关键参数。最后利用MPSL01型雪崩三极管作为高速开关器件设计电路,获得了峰值电流1 A,脉宽23.2 ns的窄脉冲电流,且反向电流几乎为零。采用C86119E型1 064 nm半导体脉冲激光器作为光源,构成回波模拟器发射系统。利用该单兵火控进行实际检测的结果表明,驱动器性能稳定,满足设计要求。 展开更多
关键词 激光驱动 窄脉冲 震荡 回波模拟器
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THE VARIABILITY CHARACTERISTICS AND PREDICTION OF GUANGDONG POWER LOAD DURING 2002 – 2004
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作者 罗森波 纪忠萍 +3 位作者 马煜华 骆晓明 曾沁 林少冰 《Journal of Tropical Meteorology》 SCIE 2007年第2期153-156,共4页
The variability characteristics of Guangdong daily power load from 2002 to 2004 and its connection to meteorological variables are analyzed with wavelet analysis and correlation analysis. Prediction equations are esta... The variability characteristics of Guangdong daily power load from 2002 to 2004 and its connection to meteorological variables are analyzed with wavelet analysis and correlation analysis. Prediction equations are established using optimization subset regression. The results show that a linear increasing trend is very significant and seasonal change is obvious. The power load exhibits significant quasi-weekly (5 – 7 days) oscillation, quasi-by-weekly (10 – 20 days) oscillation and intraseasonal (30 – 60 days) oscillation. These oscillations are caused by atmospheric low frequency oscillation and public holidays. The variation of Guangdong daily power load is obviously in decrease on Sundays, shaping like a funnel during Chinese New Year in particular. The minimum is found at the first and second day and the power load gradually increases to normal level after the third day during the long vacation of Labor Day and National Day. Guangdong power load is the most sensitive to temperature, which is the main affecting factor, as in other areas in China. The power load also has relationship with other meteorological elements to some extent during different seasons. The maximum of power load in summer, minimum during Chinese New Year and variation during Labor Day and National Day are well fitted and predicted using the equation established by optimization subset regression and accounting for the effect of workdays and holidays. 展开更多
关键词 Guangdong power load low frequency oscillation wavelet analysis optimization subset regression
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