Scientific Computing and Algorithms in Industrial Simulations 2017
DOI: 10.1007/978-3-319-62458-7_16
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Dimensionality Reduction for the Analysis of Time Series Data from Wind Turbines

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Cited by 5 publications
(4 citation statements)
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“…In Dervilis et al 20 the authors applied Autoencoders (also commonly referred to as “Auto‐associators”) with radial basis functions and PCA for demonstrating the utility of pattern recognition in damage detection on a wind turbine blade tested in the lab. In Garcke et al, 21 the authors demonstrated how classical non‐linear dimensionality reduction methods, such as Dynamic Time Warping 22 and diffusion maps 23 can be used to extract insights from simulated time‐series of wind turbine responses. In Tang et al, 24 the authors used a particular dimensionality reduction technique, namely, Orthogonal Neighborhood Preserving Embedding 25 for training a support vector machine classifier.…”
Section: Prior Related Work On Machine Learning and Probabilistic Techniques For Damage Monitoring And Remaining Useful Life Predictionmentioning
confidence: 99%
“…In Dervilis et al 20 the authors applied Autoencoders (also commonly referred to as “Auto‐associators”) with radial basis functions and PCA for demonstrating the utility of pattern recognition in damage detection on a wind turbine blade tested in the lab. In Garcke et al, 21 the authors demonstrated how classical non‐linear dimensionality reduction methods, such as Dynamic Time Warping 22 and diffusion maps 23 can be used to extract insights from simulated time‐series of wind turbine responses. In Tang et al, 24 the authors used a particular dimensionality reduction technique, namely, Orthogonal Neighborhood Preserving Embedding 25 for training a support vector machine classifier.…”
Section: Prior Related Work On Machine Learning and Probabilistic Techniques For Damage Monitoring And Remaining Useful Life Predictionmentioning
confidence: 99%
“…For rapid clustering and dimension reduction, the pattern and seasonality of time series data structure are seen by computational data values such as Principal Component Analysis (PCA), wavelets, etc. Some techniques are used to minimize the dimensionality of time series clustering (Garcke et al, 2017). By using the seasonal structure and trend values, clustering helps us to find a similar group of time-series data.…”
Section: Introductionmentioning
confidence: 99%
“…It is essential to convert the data into a meaningful form for accurate data analysis, which requires pre-processing the data before it can be used to develop a prediction or classification model. To improve classification accuracy, dimensional reduction [ 25 , 26 , 27 ] and data augmentation [ 28 , 29 , 30 ] have been studied. Garcke et al [ 25 ] proposed a method to reduce the dimension of nonlinear time-series data extracted from wind turbines, setting the baseline so as to distinguish normal turbines from abnormal turbines, and monitoring the state of the wind turbines.…”
Section: Introductionmentioning
confidence: 99%
“…To improve classification accuracy, dimensional reduction [ 25 , 26 , 27 ] and data augmentation [ 28 , 29 , 30 ] have been studied. Garcke et al [ 25 ] proposed a method to reduce the dimension of nonlinear time-series data extracted from wind turbines, setting the baseline so as to distinguish normal turbines from abnormal turbines, and monitoring the state of the wind turbines. In order to solve the multidimensional problem presented by time-series data acquired from a virtual sensor, dimension reduction was performed.…”
Section: Introductionmentioning
confidence: 99%