Problem while developing a multivariate Regression model using neural network

2 views (last 30 days)
Dear all,
I am trying to develop a multivariate regression model to predict some variable x which is a function of inputs such as, universal time (UT), latitude, longitude etc. I have used a feedforward network with one input layer, one hidden layer (40 neurons) and an output layer. I have used tansig as the activation function. I have completed the training and currently testing the network. I am facing a problem with the network.
At the boundaries of the UT, the values predicted by the model are not matching. I could see a clear 'jump' between 23.75 UT and 0UT. But, my data doesn't have any jump. I have checked with different data sets having the diurnal variation and I am facing the same issue. Why did the model fail to predict the values at the boundaries?
I didn't understand this problem clearly. Is the periodicity (means data repeat every 24 hours) of data causing the issue?
Kindly help in this regards.
Thanks in advance.
  4 Comments
Nikhil Negi
Nikhil Negi on 8 Jun 2018
like greg said you should convert the UT into linear time and transform the data accordingly and also i think you should normalize all the variables in case you have not.
gowtham sai
gowtham sai on 8 Jun 2018
@ Greg and @Nikhil
I have already normalized the data.
By the way, how to convert the UT into liner time? Could you please elaborate?

Sign in to comment.

Answers (0)

Categories

Find more on Deep Learning Toolbox in Help Center and File Exchange

Products


Release

R2017b

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!