The following table gives approximate values of the average annual atmospheric rate of increase in carbon dioxide ( C O 2 ) each decade since 1960, in parts per million (ppm). Estimate the total increase in atmospheric ( C O 2 ) between 1964 and 2013. Decade Ppm/y 1964-1973 1.07 1974-1983 1.34 1984-1993 1.40 1994-2003 1.87 2004-2013 2.07 Table 5.2 Average Annual Atmospheric ( C O 2 ) Increase, 1964-2013 Source: http://www.esrl.noaa.gov/ gmd/ccgg/trends/.
The following table gives approximate values of the average annual atmospheric rate of increase in carbon dioxide ( C O 2 ) each decade since 1960, in parts per million (ppm). Estimate the total increase in atmospheric ( C O 2 ) between 1964 and 2013. Decade Ppm/y 1964-1973 1.07 1974-1983 1.34 1984-1993 1.40 1994-2003 1.87 2004-2013 2.07 Table 5.2 Average Annual Atmospheric ( C O 2 ) Increase, 1964-2013 Source: http://www.esrl.noaa.gov/ gmd/ccgg/trends/.
The following table gives approximate values of the average annual atmospheric rate of increase in carbon dioxide
(
C
O
2
)
each decade since 1960, in parts per million (ppm). Estimate the total increase in atmospheric
(
C
O
2
)
between 1964 and 2013.
Decade
Ppm/y
1964-1973
1.07
1974-1983
1.34
1984-1993
1.40
1994-2003
1.87
2004-2013
2.07
Table 5.2 Average Annual Atmospheric
(
C
O
2
)
Increase, 1964-2013 Source: http://www.esrl.noaa.gov/ gmd/ccgg/trends/.
a) Find the scalars p, q, r, s, k1, and k2.
b) Is there a different linearly independent eigenvector associated to either k1 or k2? If yes,find it. If no, briefly explain.
Plz no chatgpt answer Plz
Will upvote
1/ Solve the following:
1 x +
X + cos(3X)
-75
-1
2
2
(5+1) e
5² + 5 + 1
3 L
-1
1
5² (5²+1)
1
5(5-5)
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