Amir Rastegarnia

ORCID: 0000-0003-4371-310X
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About
Contact & Profiles
Research Areas
  • Advanced Adaptive Filtering Techniques
  • Blind Source Separation Techniques
  • Speech and Audio Processing
  • Target Tracking and Data Fusion in Sensor Networks
  • Direction-of-Arrival Estimation Techniques
  • Distributed Sensor Networks and Detection Algorithms
  • EEG and Brain-Computer Interfaces
  • Neural Networks and Applications
  • Smart Grid Energy Management
  • Neural dynamics and brain function
  • Indoor and Outdoor Localization Technologies
  • Distributed Control Multi-Agent Systems
  • Neural Networks Stability and Synchronization
  • Microgrid Control and Optimization
  • Neuroscience and Neural Engineering
  • Image and Signal Denoising Methods
  • Electric Vehicles and Infrastructure
  • Control Systems and Identification
  • Advanced MIMO Systems Optimization
  • Sparse and Compressive Sensing Techniques
  • Advanced Wireless Communication Techniques
  • Power Line Communications and Noise
  • Cooperative Communication and Network Coding
  • Optimal Power Flow Distribution
  • Power Quality and Harmonics

Malayer University
2015-2024

Nottingham Trent University
2018

National University of Singapore
2014-2015

University of Tabriz
2007-2011

Urmia University of Technology
2011

This paper presents a method to reduce artifacts from scalp EEG recordings facilitate seizure diagnosis/detection for epilepsy patients. The proposed is primarily based on stationary wavelet transform and takes the spectral band of activities (i.e., 0.5-29 Hz) into account separate seizures. Different artifact templates have been simulated mimic most commonly appeared in real recordings. algorithm applied three sets synthesized data including fully simulated, semi-simulated, evaluate both...

10.1109/jbhi.2015.2457093 article EN IEEE Journal of Biomedical and Health Informatics 2015-07-15

In this correspondence, we analyze the effects of noisy links on steady-state performance diffusion least-mean-square (LMS) adaptive networks. Using established weighted spatial-temporal energy conservation argument, derive a variance relation which contains moments that represent links. We evaluate these and closed-form expressions for mean-square deviation (MSD), excess error (EMSE) (MSE) to explain at each individual node. The derived expressions, supported by simulations, reveal unlike...

10.1109/tsp.2011.2173338 article EN IEEE Transactions on Signal Processing 2011-10-25

This paper presents a game-theoretic decentralized electric vehicle charging schedule for minimizing the customers' payments, maximizing grid efficiency, and providing maximum potential capacity ancillary services. Most of available methods assume that customers are rational, there is low-latency perfect two-way communication infrastructure without communication/computation limitation between distribution company all customers, they have knowledge about system parameters. To avoid these...

10.1109/tie.2018.2853609 article EN IEEE Transactions on Industrial Electronics 2018-07-13

In this paper, we consider the demand response problem in smart grid consisting of a retailer and multiple residential consumers, where determines consumers' payments based on their power consumption profile. Our aim is to propose fully distributed algorithm that able optimize aggregate cost, utility, retailer's profit simultaneously. To end, first formulate consumer-side trend as constrained convex optimization adaptive diffusion solve it. addition, design one-leader N-follower Stackelberg...

10.1109/tii.2017.2703132 article EN IEEE Transactions on Industrial Informatics 2017-05-12

In this brief, we propose a reduced communication diffusion algorithm for distributed estimation over multi-agent. the proposed algorithm, agents cooperatively optimize global least-squares cost function, while each agent is allowed to share information only with subset of its neighbors. We demonstrate that our termed reduced-communication recursive provides trade-off between burden and performance. analyze mean mean-square stability derive closed-form theoretical expression steady-state...

10.1109/tcsii.2019.2899194 article EN IEEE Transactions on Circuits & Systems II Express Briefs 2019-02-13

Recently proposed adaptive networks assume perfect communication among the nodes. In this correspondence, we extend existing analysis to study performance of incremental least mean square (LMS) in a more realistic case which links between nodes are considered noisy. More precisely, using weighted spatial-temporal energy conservation relation, arrive variance relation contains moments that represent effects noisy links. We evaluate these and derive closed-form expressions for mean-square...

10.1109/tsp.2011.2112654 article EN IEEE Transactions on Signal Processing 2011-02-11

In this study, the authors propose a robust adaptive algorithm for frequency estimation in three‐phase power systems when voltage readings are corrupted by random noise sources. The proposed employs Clarke's transformed (a complex signal) and augmented statistics to deal with both of balanced unbalanced system conditions. To derive algorithm, widely linear predictive model is assumed signal where related parameters model. estimate noisy reading, they utilise notions maximum correntropy...

10.1049/iet-smt.2015.0018 article EN IET Science Measurement & Technology 2015-08-14

Many problems in multiagent networks can be solved through distributed learning (state estimation) of linear dynamical systems. In this paper, we develop a partial-diffusion Kalman filtering (PDKF) algorithm, as fully solution for state estimation the with limited communication resources. PDKF every agent (node) is allowed to share only subset its intermediate estimate vectors neighbors at each iteration, reducing amount internode communications. We analyze stability algorithm and show that...

10.1109/tnnls.2019.2899052 article EN IEEE Transactions on Neural Networks and Learning Systems 2019-03-11

A novel pricing and scheduling mechanism is proposed here for Plug-in electric vehicles (PEVs) charging/discharging to track synchronize with a renewable power generation pattern.Moreover, the can be used in demand-side management ancillary service applications, respectively peak shaving frequency regulation responding.We design fully distributed stochastic optimization using Bayesian pure strategic repeated game by which PEVs optimally schedule their demands.We also use mixed...

10.1109/tii.2018.2866267 article EN IEEE Transactions on Industrial Informatics 2018-09-06

Joint energy consumption and trading management is still a major challenge in smart (micro) grids. The main goal of solving such problems to flatten the aggregate power consumption-generation curve increase local direct among participants as much possible. Here, an inclusive formulation for micro/nano-grid (M/NG) proposed this article. Subsequently, holistic solution jointly optimizing internal external grid including several M/NGs provided. As problem computationally intractable, approach...

10.1109/tie.2019.2945280 article EN IEEE Transactions on Industrial Electronics 2019-10-08

SUMMARY In this paper, we study the effect of noisy channels on transient performance diffusion adaptive network with least‐mean squares (LMS) learning rule. We first drive update equation LMS which incorporates effects channels. Then, using framework fundamental weighted energy conservation relation, derive closed‐form expressions for curves in terms mean‐square deviation and excess error. also find mean stability bounds step‐size show that although affect network, are same form as ideal...

10.1002/acs.1279 article EN International Journal of Adaptive Control and Signal Processing 2011-09-08

In this paper the authors propose an adaptive estimation algorithm for in-network processing of complex signals over distributed networks. proposed algorithm, as incremental augmented least mean square (IAC-LMS) nodes network are allowed to collaborate via cooperation mode exploit spatial dimension; while at same time equipped with LMS learning rules endow adaptation. The have extracted closed-form expressions that show how IAC-LMS performs in steady-state. further derived required...

10.1049/iet-spr.2014.0188 article EN IET Signal Processing 2015-05-26

Recently proposed distributed adaptive estimation algorithms for wireless sensor networks (WSNs) do not consider errors due to noisy links, which occur during the transmission of local estimates between sensors. In this paper, we study effect links on performance incremental least-mean-square (DILMS) algorithm case Gaussian regressors. More specifically, derive theoretical relations explain how steady-state DILMS (in terms mean-square deviation (MSD), excess error (EMSE), and (MSE)) is...

10.1155/2011/756067 article EN cc-by International Journal of Distributed Sensor Networks 2011-01-01

In extracellular neural recording experiments, detecting spikes is an important step for reliable information decoding. A successful implementation in integrated circuits can achieve substantial data volume reduction, potentially enabling a wireless operation and closed-loop system. this paper, we report 16-channel spike detection chip based on customized method named as exponential component-polynomial component (EC-PC) algorithm. This algorithm features prediction of by applying...

10.1109/tbcas.2015.2389266 article EN IEEE Transactions on Biomedical Circuits and Systems 2015-03-05

Partial diffusion-based recursive least squares (PDRLS) is an effective way of lowering computational load and power consumption in adaptive network implementation. In this method, every single node distributes a fraction its intermediate vector estimate with immediate neighbours at each iteration. study, the authors examine steady-state performance PDRLS algorithm presence noisy links by means energy conservation argument. They consider mean-square-deviation (MSD) as metric derive...

10.1049/iet-spr.2016.0544 article EN IET Signal Processing 2017-03-30

The article studies the steady-state performance of a diffusion least-mean squares (LMS) adaptive network with imperfect communications where topology is random (links may fail at times) and communication in channels corrupted by additive noise. Using established weighted spatial–temporal energy conservation argument, authors derive variance relation which contains moments that represent effects noisy links topology. evaluate these closed-form expressions for mean-square deviation, excess...

10.1049/iet-spr.2012.0281 article EN IET Signal Processing 2013-08-29

Demand side energy consumption scheduling is a well-known issue in the smart grid research area. However, there lack of comprehensive method to manage demand and consumer behavior order obtain an optimum solution. The needs address several aspects, including scale-free requirement distributed nature problem, consideration renewable resources, allowing consumers sell electricity back main grid, adaptivity local change solution point. In addition, model should allow compensation ensurance...

10.1016/j.heliyon.2017.e00457 article EN cc-by-nc-nd Heliyon 2017-11-01
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