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