Sensor selection and power allocation strategies for energy harvesting wireless sensor networks
M Calvo-Fullana, J Matamoros… - IEEE Journal on …, 2016 - ieeexplore.ieee.org
In this paper, we investigate the problem of jointly selecting a predefined number of energy-
harvesting (EH) sensors and computing the optimal power allocation. The ultimate goal is to …
harvesting (EH) sensors and computing the optimal power allocation. The ultimate goal is to …
Sparse linear regression from perturbed data
The problem of sparse linear regression is relevant in the context of linear system
identification from large datasets. When data are collected from real-world experiments …
identification from large datasets. When data are collected from real-world experiments …
Sensor placement and resource allocation for energy harvesting IoT networks
Optimal sensor selection for source parameter estimation in energy harvesting Internet of
Things (IoT) networks is studied in this paper. Specifically, the focus is on the selection of the …
Things (IoT) networks is studied in this paper. Specifically, the focus is on the selection of the …
Non-convex approach to binary compressed sensing
SM Fosson - 2018 52nd Asilomar Conference on Signals …, 2018 - ieeexplore.ieee.org
We propose a new approach for the recovery of binary signals in compressed sensing,
based on the local minimization of a non-convex cost functional. The desired signal is …
based on the local minimization of a non-convex cost functional. The desired signal is …
A Biconvex Analysis for Lasso Reweighting
SM Fosson - IEEE Signal Processing Letters, 2018 - ieeexplore.ieee.org
Iterative l 1 reweighting algorithms are very popular in sparse signal recovery and
compressed sensing, since in the practice they have been observed to outperform classical …
compressed sensing, since in the practice they have been observed to outperform classical …
A linear programming approach to sparse linear regression with quantized data
The sparse linear regression problem is difficult to handle with usual sparse optimization
models when both predictors and measurements are either quantized or represented in low …
models when both predictors and measurements are either quantized or represented in low …
Non-convex Lasso-kind approach to compressed sensing for finite-valued signals
SM Fosson - arXiv preprint arXiv:1811.03864, 2018 - arxiv.org
In this paper, we bring together two trends that have recently emerged in sparse signal
recovery: the problem of sparse signals that stem from finite alphabets and the techniques …
recovery: the problem of sparse signals that stem from finite alphabets and the techniques …
Joint sensor placement and power rating selection in energy harvesting wireless sensor networks
OM Bushnaq, TY Al-Naffouri… - 2017 25th European …, 2017 - ieeexplore.ieee.org
In this paper, the focus is on optimal sensor placement and power rating selection for
parameter estimation in wireless sensor networks (WSNs). We take into account the amount …
parameter estimation in wireless sensor networks (WSNs). We take into account the amount …
Sparse linear regression with compressed and low-precision data via concave quadratic programming
We consider the problem of the recovery of a k-sparse vector from compressed linear
measurements when data are corrupted by a quantization noise. When the number of …
measurements when data are corrupted by a quantization noise. When the number of …
Joint sensor location/power rating optimization for temporally-correlated source estimation
OM Bushnaq, A Chaaban… - 2017 IEEE 18th …, 2017 - ieeexplore.ieee.org
The optimal sensor selection for scalar state parameter estimation in wireless sensor
networks is studied in the paper. A subset of N candidate sensing locations is selected to …
networks is studied in the paper. A subset of N candidate sensing locations is selected to …