AbstractA popular methodology to filter seemingly chaotic atmospheric flow into an ordered set of modes of variability is to identify those patterns of geopotential height that occur often. Historically, understanding of the leading patterns or modes of variability was determined through linear statistical methods. Recently, nonlinear methods, such as kernel principal component analysis (KPCA), have been developed that allow for assessing the degree of nonlinearity inherent in the atmospheric flow. By applying KPCA, new modes of variability may be revealed, or current modes may be refined. This study will apply KPCA to filter the atmospheric flow into dominant patterns of 500 hPa Northern Hemisphere geopotential height patterns.Geopotential...
The zonal winds at several levels between 70 and 10 hPa (roughly 20–30 km) measured at near-equatori...
Linear dimensionality reduction techniques, notably principal component analysis, are widely used in...
Abstract. The leading mode of wintertime variability in Northern Hemisphere sea level pressure (SLP)...
AbstractA popular methodology to filter seemingly chaotic atmospheric flow into an ordered set of mo...
The Circular Non-linear Principal Component Analysis (CNLPCA), a variation of the non-linear version...
Context: Is achieved a research through Principal Component Analysis (PCA) for determining the varia...
To explore the temporal and spatial variability of precipitation, a statistical tool called Principa...
The goal of the present research was to investigate the low frequency modes of variability in the ob...
A nonlinear generalisation of Principal Component Analysis (PCA), denoted Nonlinear Principal Compo...
Nonlinear principal component analysis (NLPCA), via a neural network (NN) approach, was applied to a...
Linear dimensionality reduction techniques, notably principal component analysis, are widely used in...
The principal oscillation pattern (POP) analysis is a technique to empirically identify time-depende...
A new eigentechnique approach, Principal Sequence Pattern Analysis (PSPA), is introduced for the ana...
NonLinear Principal Component Analysis (NLPCA) using three-hidden-layer feed-forward neural networks...
Introduction The Karhunen-Lo`eve basis functions, more frequently referred to as principal componen...
The zonal winds at several levels between 70 and 10 hPa (roughly 20–30 km) measured at near-equatori...
Linear dimensionality reduction techniques, notably principal component analysis, are widely used in...
Abstract. The leading mode of wintertime variability in Northern Hemisphere sea level pressure (SLP)...
AbstractA popular methodology to filter seemingly chaotic atmospheric flow into an ordered set of mo...
The Circular Non-linear Principal Component Analysis (CNLPCA), a variation of the non-linear version...
Context: Is achieved a research through Principal Component Analysis (PCA) for determining the varia...
To explore the temporal and spatial variability of precipitation, a statistical tool called Principa...
The goal of the present research was to investigate the low frequency modes of variability in the ob...
A nonlinear generalisation of Principal Component Analysis (PCA), denoted Nonlinear Principal Compo...
Nonlinear principal component analysis (NLPCA), via a neural network (NN) approach, was applied to a...
Linear dimensionality reduction techniques, notably principal component analysis, are widely used in...
The principal oscillation pattern (POP) analysis is a technique to empirically identify time-depende...
A new eigentechnique approach, Principal Sequence Pattern Analysis (PSPA), is introduced for the ana...
NonLinear Principal Component Analysis (NLPCA) using three-hidden-layer feed-forward neural networks...
Introduction The Karhunen-Lo`eve basis functions, more frequently referred to as principal componen...
The zonal winds at several levels between 70 and 10 hPa (roughly 20–30 km) measured at near-equatori...
Linear dimensionality reduction techniques, notably principal component analysis, are widely used in...
Abstract. The leading mode of wintertime variability in Northern Hemisphere sea level pressure (SLP)...