What do you do to get to sleep?


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Some people have the inability to go to sleep as soon as they get into bed. I personally do myself. I just want to know what you do to help yourself get to sleep.

I am supposed to be in bed by 10:15 or 10:30 and I am usually asleep by 11:00 or 11:15. I just talk to myself for more than 20 minutes and I just fall asleep as soon as I get sick of hearing myself.

In fact, I told somebody at school that, and they didn't believe me, mainly because I do talk...a lot...more than I should.

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I'm usually exhausted by the time I hit the pillow. I work 730am-5pm, and I'm up at 5:15am. I get home around 6pm, eat dinner, watch some T.V. and pass out. I fell asleep at 7:45pm last night and didn't get up till 5:15am. :o

I read, or play my DS with the lamp off. These things clear my mind of the stuff that normally would keep me awake, I think that's why they work.

Those precise two things have the opposite effect on me, the other night I started playing on the DS and was still there at 7am as wide awake as ever. (I had it on charge at the time)

At the moment I just watch Big Brother, works like a charm, watch that for an hour or so and I'm well away :) It usually takes me at least few hours normally though to nod off.

you talk to yourself to get yourself to sleep? I must say that is fairly unusual.

i go for:

-sharing some (more than some) wine with my gf

-smoking a cigarette

-reading 10 chapters of a book (I read relatively quickly)

-working 50-60 hours a week

Does the trick. :)

I can't go to sleep unless I have some kind of background movie or tv on, I just have to be listening to something to get to sleep. Other times I'll mix sleeping pills and a couple of beers to knock me out. Other than that, sometimes I just walk laps around my yard until I get tired enough.

You either stay up late, lied down on stomach or listen to very loud music. Oh yes! No ****!

Just the other day my brother was listening to some very loud R&B music. I slept in like a baby. :sleep:

To explain this scientifically; It is the sound waves massaging your brain that make you go to sleep. :yes:

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