How to prepare data from excel for fuzzy analysis.

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Petra
Petra le 28 Oct 2013
I have an problem with preparing data for fuzzy analysis. I have 16 groups of data which are inputs and 2 groups of data which are outputs. It is data which was measured and I have abou 3500 lines. I have these data in MS excel and I have to prepare it for FUZZY. Do you know how to do it, please? I have no experience with matlab and fuzzy analysis, but I need it for my master thesis, it will be really nice if somebody help me.
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Petra
Petra le 28 Oct 2013
The problem is, that I have to find parameter, which has the biggest influence to outputs. I have two outputs, they are interdependent.

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Prateekshya
Prateekshya le 16 Oct 2024
Hello Petra,
Preparing data for fuzzy analysis involves organizing your data in a way that can be used to create a fuzzy inference system (FIS). Since you are using MATLAB, you'll likely be working with the Fuzzy Logic Toolbox, which provides tools to create and evaluate fuzzy systems. Here's a step-by-step guide to help you prepare your data and set up a fuzzy system:
Step 1: Import Data from Excel
First, you will need to import your data from Excel into MATLAB. You can do this using the `readtable` function, which reads data into a table format.
% Import data from Excel
data = readtable('your_data_file.xlsx');
Step 2: Organize Your Data
Assuming your Excel file has headers, you can access your input and output data:
% Extract input and output data
inputs = data{:, 1:16}; % Assuming the first 16 columns are inputs
outputs = data{:, 17:18}; % Assuming the next 2 columns are outputs
Step 3: Create a Fuzzy Inference System
You can create a fuzzy inference system using the Fuzzy Logic Designer in MATLAB or programmatically. Here, I'll show you how to do it programmatically.
% Create a new FIS
fis = newfis('MyFuzzySystem');
% Add input variables
for i = 1:16
fis = addvar(fis, 'input', ['Input' num2str(i)], [min(inputs(:,i)) max(inputs(:,i))]);
% Add membership functions for each input
fis = addmf(fis, 'input', i, 'Low', 'trimf', [min(inputs(:,i)) min(inputs(:,i)) mean(inputs(:,i))]);
fis = addmf(fis, 'input', i, 'Medium', 'trimf', [min(inputs(:,i)) mean(inputs(:,i)) max(inputs(:,i))]);
fis = addmf(fis, 'input', i, 'High', 'trimf', [mean(inputs(:,i)) max(inputs(:,i)) max(inputs(:,i))]);
end
% Add output variables
for j = 1:2
fis = addvar(fis, 'output', ['Output' num2str(j)], [min(outputs(:,j)) max(outputs(:,j))]);
% Add membership functions for each output
fis = addmf(fis, 'output', j, 'Low', 'trimf', [min(outputs(:,j)) min(outputs(:,j)) mean(outputs(:,j))]);
fis = addmf(fis, 'output', j, 'Medium', 'trimf', [min(outputs(:,j)) mean(outputs(:,j)) max(outputs(:,j))]);
fis = addmf(fis, 'output', j, 'High', 'trimf', [mean(outputs(:,j)) max(outputs(:,j)) max(outputs(:,j))]);
end
Step 4: Define Fuzzy Rules
Fuzzy rules define how the inputs are related to the outputs. You can add rules like this:
% Add rules
rules = [1 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 1 1 1 1; % Example rule
0 1 0 0 0 0 0 0 0 0 0 0 0 0 0 0 2 1 1 1]; % Another example rule
fis = addrule(fis, rules);
Step 5: Evaluate the FIS
Once your FIS is set up, you can evaluate it with your data.
% Evaluate the fuzzy system
outputResults = evalfis(inputs, fis);
Step 6: Analyze and Visualize
You can visualize the results and analyze the performance of your fuzzy system using various MATLAB plotting functions.
% Plot results
figure;
plot(outputs, 'o'); % Actual outputs
hold on;
plot(outputResults, 'x'); % FIS outputs
legend('Actual', 'FIS Predicted');
title('Fuzzy System Output vs. Actual Output');
I hope this helps!

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