This thesis contributes to the area of System Informatics and Control (SIAC) to develop systematic and dynamic methodologies for effective monitoring and change detection in complex systems. We propose sampling method named “Correlation based Dynamic Sampling” (CDS). It leverages spatial dependencies within data streams to improve decision making, when deploying sensors with resource limitations. Furthermore, we develop a dimension reduction method named “Robust Sparse Principal Component Analysis” (RS-PCA), that is designed to robustly estimate a lower dimensional subspace by exploiting sparse data structures. The probabilistic approach for modelling offers a direct medium for making inferences on system conditions. Additionally, we exten...
Pearson’s correlation measure is only able to model linear dependence between random variables. Henc...
In large scale systems, real-time monitoring of hardware and software resources is a crucial means f...
The problem of detecting correlations from samples of a high-dimensional Gaussian vector has recentl...
This thesis contributes to the area of System Informatics and Control (SIAC) to develop systematic a...
With the rapid development of advanced sensing technology, rich and complex real-time high-dimension...
Statistical process control techniques have been widely used for online process monitoring and diagn...
This dissertation concentrates on solving problems related to monitoring and predicting high-dimensi...
University of Minnesota Ph.D. dissertation. May 2012. Major: Electrical Engineering. Advisor: Profes...
2018-09-22Advancing sensor and data gathering technology has resulted in a substantial increase in t...
With the development of technology, sensing systems became ubiquitous. As a result, a wide variety o...
The Dynamic Principal Component Analysis is an adequate tool for the monitoring of large scale syste...
Recent advancements in the study of cyber-physical systems (CPS) have addressed the combination of c...
University of Minnesota Ph.D. dissertation. August 2012. Major: Electrical/Computer Engineering. Adv...
Real-time sensing brings the proliferation of big data that contains rich information of complex sys...
We propose a robust principal component analysis (RPCA) framework to recover low-rank and sparse mat...
Pearson’s correlation measure is only able to model linear dependence between random variables. Henc...
In large scale systems, real-time monitoring of hardware and software resources is a crucial means f...
The problem of detecting correlations from samples of a high-dimensional Gaussian vector has recentl...
This thesis contributes to the area of System Informatics and Control (SIAC) to develop systematic a...
With the rapid development of advanced sensing technology, rich and complex real-time high-dimension...
Statistical process control techniques have been widely used for online process monitoring and diagn...
This dissertation concentrates on solving problems related to monitoring and predicting high-dimensi...
University of Minnesota Ph.D. dissertation. May 2012. Major: Electrical Engineering. Advisor: Profes...
2018-09-22Advancing sensor and data gathering technology has resulted in a substantial increase in t...
With the development of technology, sensing systems became ubiquitous. As a result, a wide variety o...
The Dynamic Principal Component Analysis is an adequate tool for the monitoring of large scale syste...
Recent advancements in the study of cyber-physical systems (CPS) have addressed the combination of c...
University of Minnesota Ph.D. dissertation. August 2012. Major: Electrical/Computer Engineering. Adv...
Real-time sensing brings the proliferation of big data that contains rich information of complex sys...
We propose a robust principal component analysis (RPCA) framework to recover low-rank and sparse mat...
Pearson’s correlation measure is only able to model linear dependence between random variables. Henc...
In large scale systems, real-time monitoring of hardware and software resources is a crucial means f...
The problem of detecting correlations from samples of a high-dimensional Gaussian vector has recentl...