Ming Jin

I am a Postdoctoral Scholar in the Department of Industrial Engineering and Operations Research at the University of California, Berkeley mentored by Prof. Javad Lavaei. I graduated rom the Department of Electrical Engineering and Computer Sciences at UC Berkeley advised by Prof. Costas Spanos.

I hold a research affiliate position at the Energy Technologies Area of the Lawrence Berkeley National Laboratory (LBNL), working with Dr. Wei Feng and Dr. Chris Marnay.

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My research focuses on efficient data analytics for cyber-physical human systems, which employs modeling, optimization, and control theories to design new algorithms and mechanisms for emerging technologies and human factors, in order to facilitate the transition into an energy-efficient and system-wide resilient urban ecosystem.

To this end, I developed learning algorithms under weak supervision, novel sensing paradigms for indoor environment monitoring and demand-based, occupancy-aware controls, deep Bayesian inverse reinforcement learning algorithm, as well as modeling and incentivization of humans to induce desirable behaviors via gamification.

I also explore the design and operation of community-based micro-grid in support of the mega-grid, which exploits the flexibility of demands, as well as the efficiency from both thermal and electricity energy provision and shared distributed energy resources (DERs) and storages, to address the grand challenge of distributed energy resource integration [see my publications].

Selected Awards

  • Awards of Student Technology Fund Initiative (2016,2017)
  • Best paper award at MobiQuitous (2016)
  • Finalist for Samsung Fellowship Award (2016)
  • Best paper award at Ubicomm for Mobile Ubiquitous Computing (2015)
  • Top 5 team in Microsoft Indoor Localization Competition, Seattle (2015)
  • Academic excellence award, first class honors, Dean’s List, 2008-2012
  • ECE Department Scholarship, 2008-2012
  • School of Engineering Scholarship, 2008-2012
  • University Scholarship, 2008-2012


Aug 2018

Presentations at the International Conference on Applied Energy: "BISCUIT: Building Intelligent System Customer Investment Tools" (paper | slides) and "Advanced Building Control via Deep Reinforcement Learning" (paper).

Jul 2018

Presentation at the 23rd International Symposium on Mathematical Programming, Bordeaux, France: "Vulnerability analysis and robustification of power grid state estimation" (slides).

Jun 2018

New paper on power system vulnerability analysis "Power Grid AC-based State Estimation: Vulnerability Analysis Against Cyber Attacks" accepted in IEEE Transactions on Automatic Control.

Mar 2018

New paper to guarantee safety of smooth RL in real-world systems like power grids: "Control-theoretic analysis of smoothness for stability-certified reinforcement learning."

Mar 2018

New paper on observer design for large-scale nonlinear systems: "Multiplier-based observer design for large-scale Lipschitz systems."

Jan 2018

We are organizing an international workshop on "AI for energy-cyber-physical systems" as part of the International Conference on Applied Energy (ICAE 2018). See here the CFP!

Dec 2017

I have finished my PhD thesis: Data-efficient Analytics for Optimal Human-Cyber-Physical Systems.

Nov 2017

Centerline has reported our IEQ Bot in its November issue: "CBE Panel Session Explores Innovative Methods for Monitoring Indoor Environments".

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