A robust dimension reduction method in Principal Component Analysis (PCA) was used to rectify the issue of unbalanced clusters in rainfall patterns due to the skewed nature of rainfall data. A robust measure in PCA using Tukey’s biweight correlation to downweigh observations was introduced and the optimum breakdown point to extract the number of components in PCA using this approach is proposed. A set of simulated data matrix that mimicked the real data set was used to determine an appropriate breakdown point for robust PCA and compare the performance of the both approaches. The simulated data indicated a breakdown point of 70% cumulative percentage of variance gave a good balance in extracting the number of components. The results showed a...
This study aims to identify the daily rainfall pattern over a 20 year period (1994–2013) using data ...
Real time rainfall for flood forecasting is predominately measured by rain gauges and weather radar...
Real time rainfall for flood forecasting is predominately measured by rain gauges and weather radar...
A robust dimension reduction method in Principal Component Analysis (PCA) was used to rectify the is...
This paper presents a modified correlation in principal component analysis (PCA) for selection numbe...
In this study, hybrid RPCA-spectral biclustering model is proposed in identifying the Peninsular Mal...
In this study, hybrid RPCA-spectral biclustering model is proposed in identifying the Peninsular Mal...
This thesis identifies the spatial and temporal cluster patterns for torrential rainfall data in Pen...
This paper examines the utility of principal component analysis (PCA) in obtaining accurate daily ra...
This study has proposed and investigated a novel input variable selection method for nonlinear model...
This study has proposed and investigated a novel input variable selection method for nonlinear model...
[1] Drought triggers are patterns in hydroclimatic variables that herald upcoming droughts and form ...
This paper proposes a method of stormwater inflow prediction using radar rainfall data as the input ...
The usefulness of principal component analysis for understanding the temporal variability of monsoon...
The usefulness of principal component analysis for understanding the temporal variability of monsoon...
This study aims to identify the daily rainfall pattern over a 20 year period (1994–2013) using data ...
Real time rainfall for flood forecasting is predominately measured by rain gauges and weather radar...
Real time rainfall for flood forecasting is predominately measured by rain gauges and weather radar...
A robust dimension reduction method in Principal Component Analysis (PCA) was used to rectify the is...
This paper presents a modified correlation in principal component analysis (PCA) for selection numbe...
In this study, hybrid RPCA-spectral biclustering model is proposed in identifying the Peninsular Mal...
In this study, hybrid RPCA-spectral biclustering model is proposed in identifying the Peninsular Mal...
This thesis identifies the spatial and temporal cluster patterns for torrential rainfall data in Pen...
This paper examines the utility of principal component analysis (PCA) in obtaining accurate daily ra...
This study has proposed and investigated a novel input variable selection method for nonlinear model...
This study has proposed and investigated a novel input variable selection method for nonlinear model...
[1] Drought triggers are patterns in hydroclimatic variables that herald upcoming droughts and form ...
This paper proposes a method of stormwater inflow prediction using radar rainfall data as the input ...
The usefulness of principal component analysis for understanding the temporal variability of monsoon...
The usefulness of principal component analysis for understanding the temporal variability of monsoon...
This study aims to identify the daily rainfall pattern over a 20 year period (1994–2013) using data ...
Real time rainfall for flood forecasting is predominately measured by rain gauges and weather radar...
Real time rainfall for flood forecasting is predominately measured by rain gauges and weather radar...