Throughout my research and various projects, I've harnessed the power of advanced signal processing and optimization techniques to address complex problems in wireless communications, and RF/Microwave remote sensing. A brief overview includes:
Employed Optimization Techniques :
Majorization-Minimization: Used to iteratively optimize non-convex functions by constructing simpler surrogate functions that are easier to minimize.
Convex & Non-Convex Programming: used for optimization problems with convex objectives and constraints, as well as non-convex programming methods for more complex, non-convex optimization tasks.
Regularization-Based Optimization: used to introduce additional information or constraints into optimization problems, often to prevent overfitting or encourage desired properties in solutions.
Augmented Lagrangian Multipliers (ALM): used to solve constrained optimization problems by iteratively updating Lagrange multipliers and optimizing an augmented Lagrangian function.
Linear Programming: used to optimize linear objective functions subject to linear constraints, often used in resource allocation problems.
Gradient Descent: Utilized to optimize functions by iteratively adjusting the solution in the direction of the steepest gradient, seeking the minimum or maximum of the function.
Proximal Gradient Descent: Employed proximal gradient descent, a variant of gradient descent, often used for optimizing non-smooth and convex functions, particularly in sparse optimization problems.
Addressed Challenges :
Sparse Representation
Compressive Sensing
Low Rank Plus Sparse Matrix Decomposition
Low-Rank Matrix Completion
Inverse Problem Methodologies
Broad Spectrum of Applications:
Microwave Imaging
Wireless Communications (Optimal Resource Allocation)
Radar Signal Processing
Adaptive Waveform Design
Robust and Real-Time Enhancement Design