Tarunpreet Kaur

Research Associate, IIT Ropar, Punjab

Research Expertise

Computer Networks and Communications
Electrical and Electronic Engineering
Information Systems
Instrumentation
Computer Science Applications
Applied Microbiology and Biotechnology
Biotechnology
Biomedical Engineering
Bioengineering
Control and Optimization

About

Currently, I am a Postdoctoral Research Associate at the Indian Institute of Technology (IIT) Ropar, focusing my research on advanced machine learning techniques applied to non-linear time series data, particularly in the context of healthcare predictions. I applied ML and DNN models to analyze non-linear time series data from cardiac surgical patients, predicting outcomes such as ICU stay, hospital stay, acute kidney injury, and survival. Additionally, I developed an AI-based forecasting model for real-time monitoring, integrating adaptive learning to address concept drift. As a researcher with a passion for machine learning and a strong background in artificial intelligence, deep learning, and data analysis, I have over 3 years of experience creating and applying innovative deep-learning techniques for time series problems. I also have a record of producing high-quality research papers published in well-respected journals and conferences such as IEEE Sensors, Big Data Journal, Wireless Network, and IET Communication. With a Google Scholar citation count of 400, I am well-versed in contributing to the academic community. In addition, my commitment to staying updated with emerging technologies is reflected in my certifications and awards, including the NVIDIA, Upwork Rising Talent certificate for outstanding work in 2023.

Legacy Map

Full View

Publications

Particle Swarm Optimization-Based Unequal and Fault Tolerant Clustering Protocol for Wireless Sensor Networks
IEEE Sensors Journal
2018
A survey on QoS mechanisms in WSN for computational intelligence based routing protocols
Wireless Networks
2019
Wireless multifunctional robot for military applications
2015 2nd International Conference on Recent Advances in Engineering & Computational Sciences (RAECS)
2015
MACO-QCR: Multi-Objective ACO-Based QoS-Aware Cross-Layer Routing Protocols in WSN
IEEE Sensors Journal
2021
TDMA-based MAC protocols for wireless sensor networks: A survey and comparative analysis
2016 5th International Conference on Wireless Networks and Embedded Systems (WECON)
2016
QoS mechanisms for MAC protocols in wireless sensor networks: a survey
IET Communications
2019
Computational intelligence-based energy efficient routing protocols with QoS assurance for wireless sensor networks: a survey
International Journal of Wireless and Mobile Computing
2019
ETPS-MAC: Energy Traffic Priority Scheduling-based QoS-aware MAC protocol for hierarchical WSNs
International Journal of Electronics
2019
Design of cell phone operated robot using DTMF for object research
2013 Tenth International Conference on Wireless and Optical Communications Networks (WOCN)
2013
A non-linear time series based artificial intelligence model to predict outcome in cardiac surgery
Health and Technology
2022
FPS‐MAC: Fuzzy priority scheduling‐based MAC protocol for intelligent monitoring systems
International Journal of Communication Systems
2020
Hybrid Intelligence Based Routing Protocols in Wireless Sensor Networks: A Survey
International Journal of Sensors, Wireless Communications and Control
2019
Multi-constrained QoS routing protocol based on clustering for wireless Mesh network
Journal of Computer Applications
2011
Application of concept Drift Detection and Adaptive Framework for Non Linear Time Series Data from Cardiac Surgery
Unknown Venue
2023
Remotely Operated Solar-powered Mobile Metal Detector Robot
Procedia Computer Science
2014
Literature Review of MAC, Routing and Cross Layer Design Protocols for WSN
Wireless Sensor Networks
2011
Adaptive TDMA Based QoS-Aware MAC protocol for Hierarchical Wireless Sensor Networks
Proceedings of 2018 the 8th International Workshop on Computer Science and Engineering
2018
Computational intelligence-based energy efficient routing protocols with QoS assurance for wireless sensor networks: a survey
International Journal of Wireless and Mobile Computing
2019

Education

B.Tech, ECE / July, 2012

Punjab

Masters of Technology, Embedded Systems / July, 2014

Mohali

Experience

Indian Institute of Technology Ropar

Research Associate / August, 2021September, 2023

SLIET Longowal

Research Fellow / July, 2015March, 2021

Created MAC, routing, and cross-layer protocols for the development of an intelligent monitoring system using wireless sensor networks. • Devised protocols including particle swarm optimization for unequal clustering, fuzzy logic for priority scheduling, and ant colony optimization for QoS-aware routing

Join Tarunpreet on NotedSource!
Join Now

At NotedSource, we believe that professors, post-docs, scientists and other researchers have deep, untapped knowledge and expertise that can be leveraged to drive innovation within companies. NotedSource is committed to bridging the gap between academia and industry by providing a platform for collaboration with industry and networking with other researchers.

For industry, NotedSource identifies the right academic experts in 24 hours to help organizations build and grow. With a platform of thousands of knowledgeable PhDs, scientists, and industry experts, NotedSource makes connecting and collaborating easy.

For academic researchers such as professors, post-docs, and Ph.D.s, NotedSource provides tools to discover and connect to your colleagues with messaging and news feeds, in addition to the opportunity to be paid for your collaboration with vetted partners.

Expert Institutions
NotedSource has experts from Stanford University
Expert institutions using NotedSource include Oxfort University
Experts from McGill have used NotedSource to share their expertise
University of Chicago experts have used NotedSource
MIT researchers have used NotedSource
Proudly trusted by
Microsoft uses NotedSource for academic partnerships
Johnson & Johnson academic research projects on NotedSource
ProQuest (Clarivate) uses NotedSource as their industry academia platform
Slamom consulting engages academics for research collaboration on NotedSource
Omnicom and OMG find academics on notedsource
Unilever research project have used NotedSource to engage academic experts

Connect with researchers and scientists like Tarunpreet Kaur on NotedSource to help your company with innovation, research, R&D, L&D, and more.