Clear Filters
Clear Filters

How to create a time series dataset for prediction of load demand using matlab

4 views (last 30 days)
I want to create a time series dataset to tain my ML model which should has resistance load, inductive load, capasitive load and power factor.

Answers (1)

Manas
Manas on 16 Jun 2023
Hi Aakanksh,
you can use the following code for reference to build you dataset
% Define time interval and duration
timeInterval = seconds(1); % Time resolution of 1 second
duration = hours(1); % Duration of 1 hour
% Generate time stamps
timeStamps = (datetime('now'):timeInterval:(datetime('now')+duration))';
% Preallocate arrays for data
numSamples = numel(timeStamps);
loadResistance = zeros(numSamples, 1);
inductiveResistance = zeros(numSamples, 1);
capacitiveResistance = zeros(numSamples, 1);
powerFactor = zeros(numSamples, 1);
% Generate random or simulated values for each time stamp
for i = 1:numSamples
% Generate random values for load resistance, inductive resistance, capacitive resistance, and power factor
loadResistance(i) = rand(); % Modify with appropriate range or distribution
inductiveResistance(i) = rand(); % Modify with appropriate range or distribution
capacitiveResistance(i) = rand(); % Modify with appropriate range or distribution
powerFactor(i) = rand(); % Modify with appropriate range or distribution
end
% Create a table to store the data
data = table(timeStamps, loadResistance, inductiveResistance, capacitiveResistance, powerFactor);
% Save the data to a CSV file
writetable(data, 'time_series_dataset.csv');
You can refer to the following documentation for more info:
  1 Comment
Aakanksh Gowda
Aakanksh Gowda on 16 Jun 2023
I have tried this before but it will generate random data. What i wanted is more complicated. I wanted the dataset to maintain its relation for resistive, inductive and capacitive load

Sign in to comment.

Products


Release

R2022b

Community Treasure Hunt

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

Start Hunting!