Which input use to forecast wind speed using MLP

Hello every one,i have a question regarding the neural network (MLP), I would like to know that I could use the maximum and minimum speed as inputs to predict the wind speed. When I've used them, I get a good value from MSE, and vice versa.i forecast the wind speed using(pression ,humidity,temperature as input) and wind speed as target,i have a MLP with 2 hidden layers ,when i add maximal and minimal wind speed in the input i get a goid correlation coefficient(0.998). I really need your answer please. Thanks in advance

3 Comments

Let me clarify your situation:
  • Your model: MLP with 2 hidden layers.
  • predictors: pressure, humidity and temperature
  • response: wind speed
You are thingking of adding the max and the min wind speed as new predictors to improve the performance.
When you added them to the model, you got a good MSE and thus got a good correlation with the ground truth (0.998).
Did I get you correctly so far?
It seems it is working good, what are your worries then?
I think if it works, then it works. Are you worried about an over-fitting?
Hi Hiro,thank you so much for your answer,yes you get it correctly.
My question is, do I have the right to add the maximum and minimum speeds as inputs to the model, or will I be the one who gives the value of the speed in the inputs, knowing that I want to predict it in the output, as you know that the sum of the maximum and minimum speed divided by two gives the value of the speed I want to expect.
I hope you understand what I mean. Thanks again

Sign in to comment.

Categories

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

Tags

Asked:

on 9 Sep 2022

Answered:

on 15 Nov 2023

Community Treasure Hunt

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

Start Hunting!