[R] Temperature Prediction Model
Clint Bowman
clint at ecy.wa.gov
Thu Oct 22 22:22:14 CEST 2009
Aneeta,
If I understand the figure at
<http://db.csail.mit.edu/labdata/labdata.html> this problem deals
with sensors in a lab that is probably isolated from outdoor
temperature changes.
I assume the predictive model must detect when a "rampaging 800
pound gorilla" messes with a sensor. Do we also have to detect the
pawing of a "micro-mouse" as well?
The collected data also seem to have other parameters which would
be valuable--are you limited to just temperature?
Clint
--
Clint Bowman INTERNET: clint at ecy.wa.gov
Air Quality Modeler INTERNET: clint at math.utah.edu
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On Thu, 22 Oct 2009, Thomas Adams wrote:
> Aneeta,
>
> You will have to have a seasonal component built into your model, because the
> seasonal variation does matter, particularly -where- you are geographically
> (San Diego, Chicago, Denver, Miami are very different). Generally, there is a
> sinusoidal daily temperature variation, but frontal passages and
> thunderstorms, etc., can and will disrupt this nice pattern. You may have to
> tie this into temperature predictions from a mesoscale numerical weather
> prediction model. Otherwise, you will end up with lots of misses and false
> alarms…
>
> Regards,
> Tom
>
> Aneeta wrote:
>> The data that I use has been collected by a sensor network deployed by
>> Intel.
>> You may take a look at the network at the following website
>> http://db.csail.mit.edu/labdata/labdata.html
>>
>> The main goal of my project is to simulate a physical layer attack on a
>> sensor network and to detect such an attack. In order to detect an attack
>> I
>> need to have a model that would define the normal behaviour. So the actual
>> variation of temperature throughout the year is not very important out
>> here.
>> I have a set of data for a period of 7 days which is assumed to be the
>> correct behaviour and I need to build a model upon that data. I may refine
>> the model later on to take into account temperature variations throughout
>> the year.
>>
>> Yes I am trying to build a model that will predict the temperature just on
>> the given time of the day so that I am able to compare it with the
>> observed
>> temperature and determine if there is any abnormality. Each node should
>> have
>> its own expectation model (i.e. there will be no correlation between the
>> readings of the different nodes).
>>
>>
>> Steve Lianoglou-6 wrote:
>>
>> > Hi,
>> >
>> > On Oct 21, 2009, at 12:31 PM, Aneeta wrote:
>> >
>> >
>> > > Greetings!
>> > >
>> > > As part of my research project I am using R to study temperature data
>> > > collected by a network. Each node (observation point) records
>> > > temperature of
>> > > its surroundings throughout the day and generates a dataset. Using the
>> > > recorded datasets for the past 7 days I need to build a prediction
>> > > model for
>> > > each node that would enable it to check the observed data against the
>> > > predicted data. How can I derive an equation for temperature using the
>> > > datasets?
>> > > The following is a subset of one of the datasets:-
>> > >
>> > > Time Temperature
>> > >
>> > > 07:00:17.369668 17.509
>> > > 07:03:17.465725 17.509
>> > > 07:04:17.597071 17.509
>> > > 07:05:17.330544 17.509
>> > > 07:10:47.838123 17.5482
>> > > 07:14:16.680696 17.5874
>> > > 07:16:46.67457 17.5972
>> > > 07:29:16.887654 17.7442
>> > > 07:29:46.705759 17.754
>> > > 07:32:17.131713 17.7932
>> > > 07:35:47.113953 17.8324
>> > > 07:36:17.194981 17.8324
>> > > 07:37:17.227013 17.852
>> > > 07:38:17.809174 17.8618
>> > > 07:38:48.00011 17.852
>> > > 07:39:17.124362 17.8618
>> > > 07:41:17.130624 17.8912
>> > > 07:41:46.966421 17.901
>> > > 07:43:47.524823 17.95
>> > > 07:44:47.430977 17.95
>> > > 07:45:16.813396 17.95
>> > >
>> > I think you/we need much more information.
>> >
>> > Are you really trying to build a model that predicts the temperature
>> > just given the time of day?
>> >
>> > Given that you're in NY, I'd say 12pm in August sure feels much
>> > different than 12pm in February, no?
>> >
>> > Or are you trying to predict what one sensor readout would be at a
>> > particular time given readings from other sensors at the same time?
>> >
>> > Or ... ?
>> >
>> > -steve
>> >
>> > --
>> > Steve Lianoglou
>> > Graduate Student: Computational Systems Biology
>> > | Memorial Sloan-Kettering Cancer Center
>> > | Weill Medical College of Cornell University
>> > Contact Info: http://cbio.mskcc.org/~lianos/contact
>> >
>> > ______________________________________________
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>> > https://stat.ethz.ch/mailman/listinfo/r-help
>> > PLEASE do read the posting guide
>> > http://www.R-project.org/posting-guide.html
>> > and provide commented, minimal, self-contained, reproducible code.
>> >
>> >
>> >
>>
>>
>
>
>
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