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Quantum Computing in Renewable Energy Development

Research in the Dong Lab focuses on developing and applying physics-based and data-driven computational methods to understand multiscale processes, from electronic structures to emergent properties, and to design molecules, materials, and processes for renewable energy, biomedicine, and beyond.

The Dong Lab studies complex, dynamic systems where both quantum mechanics and statistical mechanics are essential. They use a mix of physics-based and data-driven computational methods on classical and quantum computers to understand processes at multiple scales, from electronic structures to large-scale properties. Their research focuses on designing molecules and materials for renewable energy, biomedicine, and other critical areas. The lab combines quantum mechanics, machine learning, and applied math to study chemical systems like catalysis and light-matter interactions, often developing new methods when existing ones fall short. Current topics include biocatalysis, quantum phenomena in biology, and materials design for energy and medicine.

A particular project in the Dong Theoretical and Computational Chemistry Lab focuses on developing quantum algorithms to enable simulations of macromolecules, aiming to advance solar energy harvesting and conversion. Dong Lab researchers, currently use traditional computers for these simulations, but Dong believes quantum computing will greatly accelerate progress. This recently funded project explores how quantum computing can be applied to clean energy innovation by mimicking natural processes like photosynthesis, offering new avenues for renewable energy development.

Sijia Dong
Assistant Professor, Department of Chemistry and Chemical Biology, Northeastern University

Research projects

Foldit
Dusty With a Chance of Star Formation
Checking the Medicine Cabinet to Interrupt COVID-19 at the Molecular Level
Not Too Hot, Not Too Cold But Still, Is It Just Right?​
Smashing Discoveries​
Microbiome Pattern Hunting
Modeling the Air we Breathe
Exploring Phytoplankton Diversity
The Computer Will See You Now
Computing the Toll of Trapped Diamondback Terrapins
Edging Towards a Greener Future
Physics-driven Drug Discovery
Modeling Plasma-Surface Interactions
Sensing Subduction Zones
Neural Networks & Earthquakes
Small Stars, Smaller Planets, Big Computing
Data Visualization using Climate Reanalyzer
Getting to Grips with Glassy Materials
Modeling Molecular Engines
Forest Mapping: When the Budworms come to Dinner
Exploring Thermoelectric Behavior at the Nanoscale
The Trickiness of Talking to Computers
A Genomic Take on Geobiology
From Grass to Gas
Teaching Computers to Identify Odors
From Games to Brains
The Trouble with Turbulence
A New Twist
A Little Bit of This… A Little Bit of That..
Looking Like an Alien!
Locking Up Computing
Modeling Supernovae
Sound Solution
Lessons in a Virtual Test Tube​
Crack Computing
Automated Real-time Medical Imaging Analysis
Towards a Smarter Greener Grid
Heading Off Head Blight
Organic Light-Harvesting Antennae
Art and AI
Excited by Photons
Tapping into an Ocean of Data
Computing Global Change
Star Power
Engineering the Human Microbiome
Computing Social Capital
Computers Diagnosing Disease
A Future of Unmanned Aerial Vehicles
Yale Budget Lab
Wearable Health Technology
Volcanic Eruptions Impact on Stratospheric Chemistry & Ozone
The Rhode Island Coastal Hazards Analysis, Modeling, and Prediction System
Towards a Whole Brain Cellular Atlas
Tornado Path Detection
The Kempner Institute – Unlocking Intelligence
The Institute for Experiential AI
The Forensic Video Exploitation and Analysis (FOVEA) Tool Suite
The Center for Scientific Computing and Data Science Research (CSCDR)
Taming the Energy Appetite of AI Models
Surface Behavior
Studying Highly Efficient Biological Solar Energy Systems
Software for Unreliable Quantum Computers
Simulating Large Biomolecular Assemblies
SEQer – Sequence Evaluation in Realtime
Sensorimotor Technology Realization in Immersive Virtual Environments (STRIVE)
Revolutionizing Materials Design with Computational Modeling
Remote Sensing of Earth Systems
Refugee Migration and Return on Social Media
QuEra at the MGHPCC
Predicting Reaction Barrier Heights
Quantum Computing in Renewable Energy Development
Quantifying Risk, Resilience, and Uncertainty with Machine Learning and HPC
Pulling Back the Quantum Curtain on ‘Weyl Fermions’
Predicting Kinetic Solvent Effects
OpenCilk
Offshore Precipitation Capability (OPC) System
New Insights on Binary Black Holes
NeuraChip
Network Attached FPGAs in the OCT
NASA Arctic-Boreal Vulnerability Experiment (ABoVE)
Monte Carlo eXtreme (MCX) – a Physically-Accurate Photon Simulator
Modeling Molecular Dynamics for Drug Delivery
Modeling Hydrogels and Elastomers
Modeling Breast Cancer Spread
Machine Learning and Wastewater
Lichtman Lab – Center for Brain Science
Measuring Neutrino Mass
Learning-Task Informed Abstractions
Large-Scale Brain Mapping
Invisible Tags
Investigating Mantle Flow Through Analyses of Earthquake Wave Propagation
Impact of Marine Heatwaves on Coral Diversity
IceCube: Hunting Neutrinos
Genome Forecasting
Global Consequences of Warming-Induced Arctic River Changes
Fuzzing the Linux Kernel
FlyNet
Exact Gravitational Lensing by Rotating Black Holes
Evolution of Viral Infectious Disease
Evaluating Health Benefits of Stricter US Air Quality Standards
Ephemeral Stream Water Contributions to US Drainage Networks
Energy Transport and Ultrafast Spectroscopy Lab
ElectroVoxels: Modular Self-reconfigurable Robots
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Collaborative projects

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Outreach & Education Projects

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