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I have big collection of time-series data (few data types: temperature, humidity, noise level and some other parameters). Based on all this i have to decide shall i stop complicated machine or not. This is for machine failure prediction.

  1. Someone advised me, that i should use Kohonen network, but couldnt explain me why Kohonen. Is this really good idea for application like this?

  2. If it is how shall i design my network? How many neurons at input? How many (historical) data to put at one learning cycle?

I figured out, that i will create 2-dimensional matrix/table, lets say - columns and rows. One column will contain one type of data (temperature), and every row will be measurement of many parameters in one moment. Any tips/suggestions/advices about that?

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1 Answer 1

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A Kohonen network, or "Self Organising Map", is an artificial neural network used for data classification and is trained unsupervised. The best tutorial out there by far on SOM's can be found here: http://www.ai-junkie.com/ann/som/som1.html

For time series analysis, my advice would be to use a standard Feed Forward network. Using a hard limit transfer function you can train your network to output 1 when you should stop your complicated machine.

With regards to your neural network design, this is normally a case of trial and error. One common method is to start with a small/large number of neurons, and gradually increase/decrease the number of neurons and compare the accuracy of the network, until the network reaches the optimum accuracy. You also have the option of utlilising genetic algorithms to optimise the design of your network.

The number of neurons in the input layer is determined by the number of values you want to give your network. In your case, it would be the number of columns in your 'table' (assuming you would like to give the nerual network every value in each row of data)

Regarding training the nerual network - this is also down to personal judgement. Ideally you would need to give the network as much data as possible, however this may slow down training time. Alternatively, you can give the network a smaller amount of data in exchange for potentially less accuracy.

Here is a link to a good tutorial on feed forward neural networks: http://www.ai-junkie.com/ann/evolved/nnt1.html

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If i create network with 16 inputs and 1 output (no hidden layers)? It will be Kohonen network? It looks like "inverted" SOM... –  Kamil Oct 2 '12 at 14:52
It won't be a Kohonen network - they are both totally different in terms of how they work, how they are trained etc. The purpose of hidden layers in feed forward networks is so the network can deal with more complex problems. –  Sherlock Oct 2 '12 at 15:03
I meant 2-layer network, 1 output, 16 inputs. I know how it works, including hidden layers (which are absent in all Kohonen networks?). Just im curious for that nomenclature - when network is Kohonen and when its not. –  Kamil Oct 2 '12 at 16:05
Can someone explain why not Kohonen? Is this related to complexity of problem, or its about that time-series? –  Kamil Oct 2 '12 at 16:12
Generally speaking a feedforward network is used for time series analysis. Self organising maps are used to classify data, but they could used in time series and in your case to help determine what state the machine is in. I would experiment, try out a few different solutions and see which one works best. –  Sherlock Oct 2 '12 at 17:10

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