Junaid Farooq

Junaid Farooq
National Institute of Technology Srinagar | NIT Srinagar · Department of Electrical Engineering

PhD

About

10
Publications
2,610
Reads
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117
Citations
Introduction
Research Areas: Artificial Intelligence, Machine Learning, Control Systems, Model Order Reduction, Power & Energy Systems, Microgrids, Smart grids.
Additional affiliations
September 2015 - December 2016
ETA PCS Switchgear Manufacturing LLC - Dubai
Position
  • Engineer
Description
  • Worked as Site Engineer / Automation Engineer where I was responsible for design, integration, configuration, site commissioning and site testing of Automation & Protection systems for energy sector at generation, transmission and distribution levels.
Education
December 2019 - December 2022
National Institute of Technology Srinagar
Field of study
  • Automation & Control
August 2017 - July 2019
National Institute of Technology Srinagar
Field of study
  • Electrical Power. & Energy Systems
August 2011 - July 2015
National Institute of Technology Srinagar
Field of study
  • Electrical Engineering

Publications

Publications (10)
Article
Full-text available
Forecasting complex system dynamics, particularly for long-term predictions, is persistently hindered by error accumulation and computational burdens. This study presents RefreshNet, a multiscale framework developed to overcome these challenges, delivering an unprecedented balance between computational efficiency and predictive accuracy. RefreshNet...
Preprint
Full-text available
Forecasting complex system dynamics, particularly for long-term predictions, is persistently hindered by error accumulation and computational burdens. This study presents RefreshNet, a multiscale framework developed to overcome these challenges, delivering an unprecedented balance between computational efficiency and predictive accuracy. RefreshNet...
Article
Full-text available
Missile guidance, owing to highly complex and non-linear relative movement between the missile and its target, is a challenging problem. This is further aggravated in case of a maneuvering target which changes its own flight path while attempting to escape the incoming missile. In this study, to achieve computationally superior and accurate missile...
Article
This manuscript combines the recently developed nonlinear moment-matching (NLMM) technique with dynamic mode decomposition (DMD) to obtain a simulation-free reduction framework for power systems. Unlike the conventional model reduction methods for power systems, where the external area is linearized, we consider the nonlinear effective network (EN)...
Article
Full-text available
The coronavirus disease 2019 (COVID-19) is an ongoing pandemic with high morbidity and mortality rates. Current epidemiological studies urge the need of implementing sophisticated methods to appraise the evolution of COVID-19. In this study, we analysed the data for 228 days (1 May to 15 December 2020) of daily incidence of COVID-19 cases for a dis...
Conference Paper
This paper proposes an innovative two-dimensional multi-layered deep neural network (DNN) to achieve adaptive, physics-informed, model-free and data-based control of stochastic, sensitive and highly nonlinear systems. The algorithm design exploits the DNN features of adaptive learning, inference of latent variables and time-series prediction to upd...
Preprint
Full-text available
The intensity of Coronavirus Disease 2019 (COVID-19) pandemic is a horrible ongoing human disaster with high morbidity and mortality rates. Current epidemiological studies urge the need of implementing sophisticated methods to appraise the evolution of COVID-19. In the study we estimated 228 days of daily incidence of COVID-19 cases i.e. from 1 st...
Article
Full-text available
In this paper, deep learning is employed to propose an Artificial Neural Network (ANN) based online incremental learning technique for developing an adaptive and non-intrusive analytical model of Covid-19 pandemic to analyze the temporal dynamics of the disease spread. The model is able to intelligently adapt to new ground realities in real-time el...
Article
We employ deep learning to propose an Artificial Neural Network (ANN) based and data stream guided real-time incremental learning algorithm for parameter estimation of a non-intrusive, intelligent, adaptive and online analytical model of Covid-19 disease. Modeling and simulation of such problems pose an additional challenge of continuously evolving...

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