Letscheck the normalization.
∫∞−∞|f(x)|^2 dx=√
1
2 πα∫∞
−∞e−x 22 α
dx=√
1
2 πα√
2 απ= 1Given a normalizedA(k), we get a normalizedf(x).
The RMS deviation, or standard deviation of a Gaussian can be read from the distribution.
P(x) =1
√
2 πσ^2e−(x−X)^2
2 σ^2Squaringf(x), we get
P(x) =√
1
2 παe−x 2 α^2Reading from either the coefficient or the exponential we see that
σx=√
αFor the width in k-space,
P(k) =√
2 α
π
e−^2 α(k−k^0 )2Reading from the coefficient of the exponential, we get
σk=1
√
4 αWe can see that as we vary the width in k-space, the width in x-spacevaries to keep the product
constant.
σxσk=1
2
Translating this into momentum, we get the limit of theHeisenberg Uncertainty Principle.
σxσp=
̄h
2In fact the Uncertainty Principle states that
σxσp≥
̄h
2so the Gaussian wave packets seem to saturate the bound!
5.6.5 Time Dependence of a Gaussian Wave Packet*.
Assume we start with our Gaussian (minimum uncertainty) wavepacketA(k) =e−α(k−k^0 )
2
att= 0.
We are not interested in careful normalization here so we will drop constants.
ψ(x,t) =∫∞
−∞A(k)ei(kx−ω(k)t)dk