y=2.2237x+0.8573。 问x等于多少

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设x>0,y>0且x+2y=1,求+的最小值 ___ .
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根据题意,x+2y=1,则=(x+2y)o()=3+≥3+2=3+2,故答案为3+2.
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根据题意,x+2y=1,对于1x+1y可变形为(x+2y)o(1x+1y),相乘计算可得,3+2yx+xy,由基本不等式的性质,可得答案.
本题考点:
基本不等式.
考点点评:
本题考查基本不等式的性质与运用,解题时要注意常见技巧的运用,如本题中“1”的代换,进而构造基本不等式使用的条件.
扫描下载二维码计算投资回收期和内部收益率:_百度知道
计算投资回收期和内部收益率:
项目投资净现金流量表(万元)
项目计算期 投资期 2009年 2010年 2011年 2012年 2013年
投资额 75 25
176 264 396 550 660
121.6 186 279 400 495
54.4 78 117 150 165
净现金流量 -75 29.4 78 117 150 165
我有更好的答案
il,n)&K/R&gt,直至找到净现值等于零或接近于零的那个折现率、i2,满足(p&#47,il,n)]。计算过程是解一元n次方程的过程,要用若干个折现率进行试算、税后内部收益率内部收益率的公式如下;(累计净现金流量转正年份累计净现金流量-上年累计净现金流量)=2.58年3;A:(1)计算年金现值系数(p&#47.4 299.4 149,n)-(p&#47,n)=K/R;(2)查年金现值系数表,找到与上述年金现值系数相邻的两个系数(p&#47。计算结果:87;A;A.4 464,n)以及对应的i1;如果有用,你下面的所有数据均不成立,你下面的净现金流量和累计现金流量必然是7组数据1、提问者给出条件里,投资额第二项为无用数据.4回收期=(累计净现金流量转正的年份-1)+累计净现金流量转正年份上年累计净现金流量绝对值&#47。但是如果使用电子工具,就可实现快速求解、提问者给出的是扣除所得税后的净利润。因为如果投资期(建设期)为两年.38%4、IRR=0.8738远大于Ic=0.08;(p/A,i2。比如可用IRR函数或单变量求解;A。2,说明偿债分析指标很好,项目可行;(i1—i2)=[K/R-(p&#47,i1,n)]/[(p/A,i2,n);(3)用插值法计算IRR,i1,n)和(p/A,i2,由此计算出来的投资回收期和内部收益率都应是税后值。3、税后投资回收期,是含投资期或建设期的时间
6净现金流量
165累计净现金流量 -75 -45.6 32,IRR;A:(IRR-I)/如果投资期为一年,25为2009年的流动资金,则该年(2009年)的净利润、净现金流量和累计现金流量都应相应的减去25
采纳率:50%
6/s,步骤如下NPV=-75+29.4*(p/s.73/78=1.6 32.4 149.4 299.4 464.4(1)静态投资回收期=1+45.8573=0
x=55,1)+78*(p/s,i,2)+117*(p/s,i,3)+150*(p/s,i,4)+165*(p/s,i,5)当i=x时,npv=最接近0且大于0的一个数m当i=IRR时投资回收期,根据这两行算时间
5净现金流量
29,用excel算出来为87%如果你要用手写算.71年内含报酬率根据这一行算净现金流量 -75 29.4 78 117 150 165你的数据不好用手写方法算.73
动态投资回收期=1+55,8%,2)=0
-75+29.4*0.9259+x*0,1)+x*(p/(m-0)=(IRR-Y)/78=1.58年(2)-75+29.4 78
165累计净现金流量 -75 -45.4*(p/s,8%,npv=0当i=y时,npv=最接近0且小于0的一个数n(x-IRR)/(0-n)解方程,解出IRR即为内含报酬率至于x和y的确定,i
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