Azzera filtri
Azzera filtri

How to select multiple contain conditions in a table?

11 visualizzazioni (ultimi 30 giorni)
Hi, I'm basically trying to filter my results to remove irrelevant rows based on two string conditions. I've attached the xslx file. I need to know the specific cause when the operating mode is 'critical' and the LOOP category is 'WR'. Basically isolating all the rows in the table where my two conditions are met.
Data = readtable('LOOP Events.xlsx','Range','D2:K370'); % Load excel from specified sheet
%LOOPS = cat(2,Data(:,1),Data(:,2),Data(:,3));
LOOPS = cat(2,table2array(Data(:,1)),table2array(Data(:,7)));%,table2array(Data(:,8)));
LOOPS = LOOPS(~all(cellfun(@isempty,LOOPS),2),:);
substr = {'Critical','SEE','EEE'};
selectedcol = contains(LOOPS,substr);
Cause = Data(:,3);
Select_Cause= Cause(selectedcol,:)

Risposta accettata

Stephen23
Stephen23 il 13 Giu 2023
Modificato: Stephen23 il 13 Giu 2023
The MATLAB approach:
T = readtable('LOOP Events.xlsx','Range','D:K');
Warning: Column headers from the file were modified to make them valid MATLAB identifiers before creating variable names for the table. The original column headers are saved in the VariableDescriptions property.
Set 'VariableNamingRule' to 'preserve' to use the original column headers as table variable names.
T = rmmissing(T) % remove empty rows
T = 186×8 table
OperatingMode LOOPCategory LOOPClass SwitchyardRestorationTime PotentialBusRecoveryTime ActualBusRestorationTime Cause SpecificCause _____________ ____________ ______________ _________________________ ________________________ ________________________ _________ _______________ {'Critical'} {'SC'} {'LOOP-IE-I' } 15 28 28 {'HES' } {'Maintenance'} {'Critical'} {'SC'} {'LOOP-IE-I' } 0 4 4 {'Equip'} {'Breaker' } {'Shutdown'} {'SC'} {'LOOP-SD' } 15 28 28 {'HES' } {'Maintenance'} {'Shutdown'} {'SC'} {'LOOP-SD' } 77 82 82 {'Equip'} {'Other' } {'Shutdown'} {'SC'} {'LOOP-SD' } 62 63 63 {'Equip'} {'Transformer'} {'Critical'} {'SC'} {'LOOP-IE-I' } 95 118 213 {'Equip'} {'Breaker' } {'Shutdown'} {'WR'} {'LOOP-SD' } 528 533 533 {'SEE' } {'High Winds' } {'Critical'} {'SC'} {'LOOP-IE-I' } 1 2 3097 {'Equip'} {'Relay' } {'Critical'} {'WR'} {'LOOP-IE-I' } 1 16 7414 {'EEE' } {'Tornado' } {'Critical'} {'WR'} {'LOOP-IE-I' } 1 16 7414 {'EEE' } {'Tornado' } {'Shutdown'} {'SC'} {'LOOP-SD' } 39 44 44 {'Equip'} {'Transformer'} {'Critical'} {'WR'} {'LOOP-IE-I' } 1 16 7414 {'EEE' } {'Tornado' } {'Critical'} {'SC'} {'LOOP-IE-I' } 86 91 101 {'Equip'} {'Relay' } {'Critical'} {'PC'} {'LOOP-IE-NC'} 60 62 781 {'HE' } {'Switching' } {'Shutdown'} {'WR'} {'LOOP-SD' } 1120 1125 1508 {'SEE' } {'Salt Spray' } {'Shutdown'} {'SC'} {'LOOP-SD' } 15 30 136 {'HES' } {'Testing' }
X = matches(T.OperatingMode,'Critical') & matches(T.Cause,{'SEE','HEE'});
Select_Cause = T.LOOPClass(X)
Select_Cause = 19×1 cell array
{'LOOP-IE-NC'} {'LOOP-IE-NC'} {'LOOP-IE-NC'} {'LOOP-IE-NC'} {'LOOP-IE-NC'} {'LOOP-IE-I' } {'LOOP-IE-NC'} {'LOOP-IE-NC'} {'LOOP-IE-I' } {'LOOP-IE-I' } {'LOOP-IE-I' } {'LOOP-IE-I' } {'LOOP-IE-I' } {'LOOP-IE-I' } {'LOOP-IE-I' } {'LOOP-IE-I' } {'LOOP-IE-I' } {'LOOP-IE-I' } {'LOOP-IE-I' }

Più risposte (0)

Categorie

Scopri di più su Sparse Matrices in Help Center e File Exchange

Prodotti


Release

R2022b

Community Treasure Hunt

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

Start Hunting!

Translated by