My research focuses on:
- nonlinear quadratic optimization,
- mixed-integer optimization algorithms,
- manifold optimization,
- stochastic programming,
- machine learning (GNN, DRL) for optimization.
I am also actively collaborating on projects involving cutting-plane methods for mixed-integer programming, including Chvátal–Gomory cut generation, as well as beam angle optimization.
🟨 I am currently looking for internship opportunities in Operations Research (modeling and algorithm development) and Data Science for Summer 2026.
Projects
(2025) Riemannian ADMM for Binary Optimization
A Riemannian Manifold-Modified ADMM to Solve Large Scale/Distributed Binary Optimization Problems
(2025) Deep Reinforcement Learning-Enhanced Branch-and-Price for Drone Routing
Selecting sup-problmes in column generation wisely to boost convergence speed to exact solutions.
(2025) Distributed Optimization for Energy Trading Problems
A resilience-cost-oriented energy trading model for socially vulnerable community microgrids and the solution approach.
(2024) Benders Decomposition for Stochastic Microgrid Planning
Stochastic 20-year microgrid planning model with Benders Decomposition
(2024) Seq2Seq Attention for Power Demand Prediction
GRU-based Seq2Seq model with attention to predict three quantiles of residential power demand in Texas
View all
Publications
Resilient Microgrid Planning for Socially Vulnerable Communities
Farzane Ezzati, Zhijie Sasha Dong, Gino Lim, Junfeng Jiao
Applied Energy, 2026
Farzane Ezzati, Qingyang Xiao, Zhijie Sasha Dong, Junfeng Jiao, Alyson Vargas, Vincent Yeh, Thomas Ptak, Kai Pan
Communications Earth & Environment, vol. 6, Nature Publishing Group UK London, 2025, p. 294
Energy equity-centered planning of community microgrids
Behnam Sabzi, Jian Shi, Gino Lim, Farzane Ezzati, Kailai Wang
Sustainable Cities and Society, vol. 130, 2025, p. 106485
Equitable Energy Trading in Microgrids to Enhance Resilience and Cost Efficiency
Farzane Ezzati, Gino Lim, Zhijie Sasha Dong
2025 IEEE International Communications Energy Conference (INTELEC), IEEE, 2025 29, pp. 49-54