Masoud Mahdianpari | Environmental Science | Research Hypothesis Excellence Award

Masoud Mahdianpari | Environmental Science | Research Hypothesis Excellence Award

Dr Masoud Mahdianpari, Memorial University of Newfoundland/C-CORE, Canada

Based on the provided information, Dr. Masoud Mahdianpari is indeed a strong candidate for the Research for Research Hypothesis Excellence Award. His extensive educational background, professional experience, and contributions to the field of remote sensing and data science highlight his qualifications.

Publication profile

google scholar

Educational Background

Dr. Masoud Mahdianpari holds a Ph.D. in Electrical Engineering from Memorial University of Newfoundland (2015-2019), along with a Master’s in Remote Sensing Engineering and a Bachelor’s in Geomatics Engineering, both from the University of Tehran (2010-2013, 2006-2010). His robust academic foundation has equipped him with advanced knowledge in remote sensing and data analysis.

Professional Experience

Currently serving as a Cross-appointed Professor at Memorial University of Newfoundland and Remote Sensing Technical Lead at C-CORE, Ottawa, Dr. Mahdianpari has significant experience in applying machine learning and remote sensing technologies. His previous roles include Remote Sensing Scientist and Research Assistant at C-CORE, where he has developed expertise in image processing, feature extraction, and target detection.

Research Expertise

Dr. Mahdianpari specializes in machine learning, big data technologies, and radar remote sensing. His work encompasses high-resolution image processing, environmental monitoring, and GHG emission estimation. He is leading several projects focused on wetland mapping and methane emission estimation in the Arctic, leveraging advanced remote sensing data and cloud computing platforms.

Professional Appointments

As an associate editor for various journals, including IEEE Geoscience and Remote Sensing Letters and Frontiers in Environmental Science, Dr. Mahdianpari contributes to the academic community and promotes high-quality research. He is a member of several professional societies, such as IEEE and ASPRS, demonstrating his active engagement in the field.

Recent Honors and Awards

Dr. Mahdianpari has been recognized for his contributions to science, including being ranked in the top 1% of scientists worldwide (2023-2024) and receiving multiple awards for his research excellence. Notably, he has secured grants such as the NSERC Discovery Grant (2022-2027) and the Microsoft AI for Earth grant, highlighting his innovative work in environmental monitoring.

Project Leadership

Dr. Mahdianpari is currently leading the ESA Carbon Science Cluster project, aiming to enhance methane emission estimates from wetlands in the Arctic. This project underscores his leadership in addressing critical environmental challenges and advancing remote sensing methodologies.

Research Interests

His research focuses on environmental monitoring and wetland mapping using remote sensing data, emphasizing machine learning and multi-sensor image classification. Currently, he leads projects related to greenhouse gas (GHG) monitoring, showcasing his commitment to addressing pressing environmental issues.

Project Experience

He currently leads a project for the European Space Agency focused on improving methane emission estimates from wetlands, an initiative of significant environmental importance. This role emphasizes his leadership in research that impacts global environmental policies.

Publications and Presentations

Dr. Mahdianpari has authored numerous influential publications, including studies on remote sensing image classification and advanced machine learning applications in environmental monitoring. His research has contributed significantly to the field, evidenced by his citations and presentations at major international conferences.

Conference Contributions

He has presented at several prestigious conferences, showcasing his research on water quality monitoring and electrical potential preservation. His publications in leading journals further establish his reputation as a thought leader in remote sensing and environmental science.

Conclusion

In summary, Dr. Masoud Mahdianpari’s outstanding qualifications, research contributions, and recognition in the field make him a highly suitable candidate for the Research for Research Hypothesis Excellence Award. His dedication to advancing remote sensing technology and addressing pressing environmental issues through innovative research exemplifies excellence in academic and applied research.

Publication top notes

Google Earth Engine for geo-big data applications: A meta-analysis and systematic review

Support vector machine versus random forest for remote sensing image classification: A meta-analysis and systematic review

Very deep convolutional neural networks for complex land cover mapping using multispectral remote sensing imagery

Random forest wetland classification using ALOS-2 L-band, RADARSAT-2 C-band, and TerraSAR-X imagery

The first wetland inventory map of newfoundland at a spatial resolution of 10 m using sentinel-1 and sentinel-2 data on the google earth engine cloud computing platform

Deep convolutional neural network for complex wetland classification using optical remote sensing imagery

A new fully convolutional neural network for semantic segmentation of polarimetric SAR imagery in complex land cover ecosystem

Comparing deep learning and shallow learning for large-scale wetland classification in Alberta, Canada

A systematic review of landsat data for change detection applications: 50 years of monitoring the earth

Bagging and boosting ensemble classifiers for classification of multispectral, hyperspectral and PolSAR data: a comparative evaluation

 

Agnese Rapposelli | Energy and Sustainability | Best Researcher Award

Agnese Rapposelli | Energy and Sustainability | Best Researcher Award

Prof Agnese Rapposelli, University “G. D’Annunzio” of Chieti-Pescara, Italy

Dr. Agnese Rapposelli is a Senior Assistant Professor of Economic Statistics at “G. d’Annunzio” University of Chieti-Pescara, Italy, since November 2021. She holds a Ph.D. in Statistics from the same university and achieved National Scientific Qualification as Associate Professor in 2017. Her research focuses on dynamic methodologies for evaluating complex systems, statistical models for spatial analysis, and the impact of environmental pollution on health πŸŒπŸ“Š. Dr. Rapposelli has also been a visiting scholar at Warwick Business School and holds professional qualifications as a chartered accountant and accounting auditor.

Publication profile

google scholar

Education

πŸŽ“ Achieving academic excellence, I earned a Ph.D. in Statistics from “G. d’Annunzio” University of Chieti-Pescara, Italy, with a thesis on efficiency evaluation and Data Envelopment Analysis under Prof. Mauro Coli’s guidance in April 2006. I previously completed a Laurea in Economics, summa cum laude, at the same university in July 2002, finishing in 3.5 years instead of 4. My high school journey culminated in a Scientific Lyceum diploma with a focus on lab courses and languages (French/English), scoring 54/60 in July 1998. Professionally, I am a certified Chartered Accountant since November 2012 and an Accounting Auditor since January 2014. πŸ“ŠπŸ“šβœˆοΈ

Experience

Dr. Agnese Rapposelli has been a dedicated lecturer at “G. D’Annunzio” University of Chieti-Pescara, Italy. Since 2013, they have taught courses in Statistics, Econometrics, and Quantitative Methods, all held in English. πŸ“Š From 2019-2024, Dr. [Name] taught Statistics and Basic Econometrics for the PhD in Accounting, Management, and Business Economics program. πŸ“ˆ In 2014-2015, they lectured on Quantitative and Qualitative Methods in Management and Business Administration. πŸ“š Additionally, in 2013-2014, they focused on Econometric Methods in Finance and Business Administration. πŸ“‰ Their commitment to education and expertise in these fields have made them a valuable asset to the university. πŸŽ“

Research project

From 2024-2025, I serve as Principal Investigator for the University of Chieti-Pescara’s PRIN 2022 PNRR project on the circular economy through the lens of mathematics for signal processing πŸ”πŸ”„. In 2022, I investigated statistical models for spatial analysis πŸ“ŠπŸŒ, and in 2021, I focused on spatial-temporal models to examine environmental pollution’s impact on human health 🌿🧬. From 2020 to 2019, my research analyzed corporate governance and financial performance πŸ“ˆπŸ’. Earlier, from 2007-2013, I participated in evaluating complex systems 🧩. In 2007-2008, I evaluated airline efficiency ✈️, and in 2002-2003, I worked on strategic planning and performance measurement for Air One SpA πŸ“‰πŸ“Š.

Awards

From 2024-2025, I served as the Principal Investigator for the PRIN 2022 PNRR research project β€œCircular Economy from the Mathematics for Signal Processing Perspective” at the University of Chieti-Pescara. I received the Best ItAIS Conference Paper award for my study on carbon emissions and economic growth, presented in 2022. My work on waste sector efficiency earned special mentions at international workshops in 2021 and 2022. I also won the Best Track Award in 2021. In 2020 and 2019, I was ranked first in my department for MIUR research funds based on scientific production. πŸ“ŠπŸŒπŸ†

Research focus

A Rapposelli’s research focuses primarily on environmental efficiency and waste management, as well as the inclusion of disabled individuals in the labor market. His work involves evaluating the joint environmental and cost performance of municipal waste systems, the impact of green technology and environmental policies on ecological footprints, and the efficiency of urban waste services. Additionally, Rapposelli has conducted significant research on the employment of disabled people in Italy, analyzing the effectiveness of laws and policies aimed at their inclusion. His studies employ methods such as data envelopment analysis to assess efficiency and policy implications. πŸŒβ™»οΈπŸ‘¨β€πŸ¦½πŸ“Š

Publication top notes

Evaluating joint environmental and cost performance in municipal waste management systems through data envelopment analysis: Scale effects and policy implications

Improving waste production and recycling through zero-waste strategy and privatization: An empirical investigation

The impact of green technology innovation, environmental taxes, and renewable energy consumption on ecological footprint in Italy: Fresh evidence from novel dynamic ARDL …

Monitoring environmental efficiency: an application to Italian provinces

Inclusion of disabled people in the Italian labour market: an efficiency analysis of law 68/1999 at regional level

Efficiency evaluation in an airline company: some empirical results

Employment of disabled people in the private sector. An analysis at the level of Italian Provinces according to article 13 of law 68/1999

The factors affecting Italian provinces’ separate waste-collection rates: An empirical investigation

Assessing efficiency of urban waste services and the role of tariff in a circular economy perspective: An empirical application for Italian municipalities

Regional performance trends in providing employment for persons with disabilities: Evidence from Italy

Abbas Ranjbar Saadatabadi | Environmental Science | Best Researcher Award

Abbas Ranjbar Saadatabadi | Environmental Science | Best Researcher Award

Dr Abbas Ranjbar Saadatabadi, Atmospheric Science & Meteorological Research, ASMERC, Iran

Dr. Abbas Ranjbar Saadatabadi is an accomplished meteorologist with a B.Sc. in Applied Physics from the University of Shahid Bahonar, an M.Sc. in Meteorology from Geophysics Institute in Tehran, and a Ph.D. in Meteorology from Islamic Azad University. He serves as Director of ASMERC, Tehran, and has held several key roles in atmospheric science research. His expertise spans atmospheric circulations, forecasting, and applied physics. Dr. Ranjbar is an active member of numerous professional associations and has significantly contributed to flood forecasting, extreme weather event analysis, and dust storm research in Iran. πŸŒ¦οΈπŸ“šπŸŒ

Publication profile

Scopus

Education

πŸŽ“ With a solid foundation in Applied Physics from the University of Shahid Bahonar, Kerman, Iran (1988-1993), πŸŽ“ followed by a Master’s in Meteorology from the Geophysics Institute, Tehran, Iran (1994-1997), 🌦️ the scholar pursued a Ph.D. in Meteorology at the Islamic Azad University, Science and Research Branch, Tehran, Iran (1999-2003). πŸŒͺ️ This extensive educational background has equipped them with in-depth knowledge and expertise in the field of meteorology, contributing significantly to their professional and academic pursuits. πŸ“šβœ¨

Experience

🌦️ Since 2015, the Director of the Atmospheric Science and Meteorological Research Center (ASMERC) in Tehran, Iran, has led advancements in meteorological research. Previously, from 2013 to 2015, they served as the Deputy Director of ASMERC, and from 2012 to 2013, as a faculty member. They directed the National Drought Warning and Monitoring Center (NDWMC) from 2011 to 2012 and served as Deputy Director from 2010 to 2011. Between 2005 and 2010, they were the Deputy Director of the National Weather Forecasting Center. Additionally, they headed the Department of Satellite Meteorology and New Technologies at IRIMO from 2004 to 2005 and worked as a forecaster from 1999 to 2004. β˜οΈπŸ›°οΈ

Membership of Professional Associations

πŸ“πŸŒ National Commission of UNESCO- National Committee of Man and the Biosphere, Associate Member (2012-current). πŸ›οΈπŸ”¬ Research Committee of Yazd, Kerman, and Sistan-o-Balochestan provinces (2013-2015). πŸŒπŸ”¬ Committee of Science and Technology Exchange in the Union of Countries bordering the Indian Ocean (2013-current). πŸ—žοΈπŸŒ¦οΈ Editorial Board Member, Journal of Climate Research (2015-current) and Journal of Nivar (IRIMO) (2010-current). πŸŒͺ️🌧️ Associate Member, Secondary Professional Work Group of Atmospheric Disasters and Storm (2015). 🌩️🌑️ Associate Member, Research Council of the Atmospheric Science and Meteorological Research Centre (2014-current). 🌊🌎 Scientific Secretary, 3rd International Conference of the Persian Gulf Oceanography (2015). πŸŒŠπŸ”¬ Vice Chairman, Iranian Marine Science and Technology Association (2019).

Project Involvement

πŸŒŠβ›‘οΈ Designed and operated a flood forecasting and warning system in Tehran (2018-2020). πŸŒ§οΈπŸ“ˆ Studied heavy rainfall forecasting in Ilam province (2019). πŸŒ¦οΈπŸ’» Developed a Meteorological and Hydrology Forecast Software System in Qom (2016-2017). πŸŒ©οΈπŸ“Š Evaluated extreme weather events using regional climate models in Iran (2016-2017). πŸŒ§οΈπŸ™οΈ Investigated precipitation causes of Qazvin urban floods (2016). 🌧️🌊 Analyzed atmospheric patterns for heavy rainfalls over Bushehr (2015). πŸŒ¬οΈπŸ“‰ Developed a wind atlas over Iran using numerical atmospheric models (2015). πŸŒͺοΈπŸ“‰ Evaluated the EURAD dust storm forecast model (2016). πŸŒͺοΈπŸŒ€ Studied atmospheric patterns for dust storms over Isfahan (2013). πŸŒͺοΈπŸ’¨ Designed an integrated system for air pollution and dust forecasting (2013). πŸŒͺ️🌊 Assessed SWAN and MIKE21 model outputs with buoy data in Bushehr (2015). πŸŒͺοΈπŸŒ€ Modeled dust storm trajectories over Kerman with WRF-Chem (2015). πŸŒͺ️❄️ Studied dust storm mechanisms and trajectories over Lorestan (2015).

Research focus

Dr. Ranjbar Saadatabadi’s research primarily focuses on atmospheric and environmental sciences, particularly in the context of Iran. His work includes studying climatic variations, synoptic and dynamic analysis of extreme weather events, dust transport modeling, and the impacts of ENSO on the Middle East’s climate. He utilizes advanced techniques like remote sensing, machine learning, and numerical models to analyze phenomena such as heavy rainfall, flash floods, and dust storms. His research aims to understand and mitigate the impacts of environmental changes and extreme weather on the region. πŸŒ¦οΈπŸ“ŠπŸŒπŸ“‰πŸ’¨

Publication top notes

A comprehensive investigation of the causes of drying and increasing saline dust in the Urmia Lake, northwest Iran, via ground and satellite observations, synoptic analysis and machine learning models

Estimating Particulate Matter Using Remote Sensing Data and Meteorological Variables Over Ahvaz, Iran

Synoptic and dynamic analysis of a flash flood-inducing heavy rainfall event in arid and semi-arid central-northern Iran and its simulation using the WRF model

The Impact of ENSO Phase Transition on the Atmospheric Circulation, Precipitation and Temperature in the Middle East Autumn

Intercomparisons of some dust models over West Asia

A finite-volume numerical model for the simulation of dust transport in the atmosphere

Assessment of climate variations in temperature and precipitation extreme events over Iran

Synoptic and thermodynamic characteristics of 30 March–2 April 2009 heavy rainfall event in Iran

The omega blocking condition and extreme rainfall in Northwestern Iran during 25 – 28 October 2008

Relationships between Arab sea and Indian Ocean surface temperature anomalies with precipitation over southern of Iran