News & Events

99 News items, Awards, Events or Talks found.


  •  NEWS    Arvind Raghunathan joins editorial board of Journal of Optimization Theory and Applications
    Date: June 21, 2021
    MERL Contact: Arvind Raghunathan
    Research Areas: Artificial Intelligence, Optimization
    Brief
    • Arvind Raghunathan has accepted an invitation to serve on the editorial board of Journal of Optimization Theory and Applications (JOTA).

      JOTA is devoted to the publication of carefully selected high quality regular papers, invited papers, survey papers, technical notes, book notices, and forums that cover mathematical optimization techniques, computational methodologies of optimization algorithms and their applications to science, engineering, and business. Typical theoretical areas include linear, nonlinear, discrete, stochastic, and dynamic optimization. Among the areas of application covered are mathematical economics, mathematical physics and biology, all areas of engineering, and novel areas, such as artificial intelligence and quantum computing optimization.
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  •  NEWS    Ankush Chakrabarty gave an invited talk at University of Illinois at Chicago
    Date: April 9, 2021
    MERL Contact: Ankush Chakrabarty
    Research Areas: Control, Machine Learning, Multi-Physical Modeling, Optimization
    Brief
    • Ankush Chakrabarty, a Research Scientist at MERL's Multiphysical Systems (MS) Team, gave an invited talk on "Learning for Control and Estimation using Digital Twins" at the Department of Electrical and Computer Engineering Seminar Series organized at UIC. The talk proposed new learning-based control/estimation architectures that can utilize simulation data obtained from digital twins to add self-optimization and constraint-enforcement features to grey/black-box control systems.
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  •  EVENT    MERL Virtual Open House 2020
    Date & Time: Wednesday, December 9, 2020; 1:00-5:00PM EST
    Location: Virtual
    MERL Contacts: Elizabeth Phillips; Anthony Vetro
    Research Areas: Applied Physics, Artificial Intelligence, Communications, Computational Sensing, Computer Vision, Control, Data Analytics, Dynamical Systems, Electric Systems, Electronic and Photonic Devices, Machine Learning, Multi-Physical Modeling, Optimization, Robotics, Signal Processing, Speech & Audio
    Brief
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  •  NEWS    Devesh Jha appointed as an Associate Editor for IEEE Robotics and Automation Letters (RA-L).
    Date: October 29, 2020
    MERL Contact: Devesh K. Jha
    Research Areas: Artificial Intelligence, Machine Learning, Optimization, Robotics
    Brief
    • MERL Researcher Devesh Jha has been appointed to the editorial board of the IEEE Robotics and Automation Letters (RA-L) as an Associate Editor. IEEE RA-L publishes peer-reviewed articles in the areas of robotics and automation which can also be presented at the annual flagship conferences of RAS like ICRA, IROS and CASE.
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  •  AWARD    Outstanding Presentation Award at the 28th Conference of Information Processing Society of Japan/Consumer Device & Systems
    Date: October 20, 2020
    Awarded to: Yukimasa Nagai, Takenori Sumi, Jianlin Guo, Philip Orlik, Hiroshi Mineno
    MERL Contacts: Jianlin Guo; Philip V. Orlik
    Research Areas: Communications, Optimization, Signal Processing
    Brief
    • MELCO and MERL researchers have won "Outstanding Presentation Award" at 28th Conference of Information Processing Society of Japan (IPSJ)/Consumer Device & Systems held on September 29-30, 2020. The paper titled "IEEE 802.19.3 Standardization for Coexistence of IEEE 802.11ah and IEEE 802.15.4g Systems in Sub-1 GHz Frequency Bands" reports IEEE 802.19.3 standard development on coexistence between IEEE 802.11ah and IEEE 802.15.4g systems in the Sub-1 GHz frequency bands. MERL and MELCO have been leading this standard development and made major technical contributions, which propose methods to mitigate interference in smart meter systems. The authors are Yukimasa Nagai, Takenori Sumi, Jianlin Guo, Philip Orlik and Hiroshi Mineno.
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  •  NEWS    Saleh Nabi gave an invited talk at the Department of Mechanical Engineering at Rice University
    Date: September 30, 2020
    Where: Rice University
    Research Areas: Dynamical Systems, Optimization
    Brief
    • MERL researcher Dr. S. Nabi was invited to give a talk on the state-of-the-art methods for airflow optimization and control at Rice University. Several industrial applications to buoyancy-driven flows in the built environment, atmospheric flows, and prevention of transmission of COVID-19 were discussed. Furthermore, some novel advances on data-driven fluid mechanics for industrial applications were covered.
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  •  NEWS    MERL Researcher Ankush Chakrabarty organized a special session on data-driven control at IEEE CCTA 2020
    Date: August 25, 2020
    MERL Contact: Ankush Chakrabarty
    Research Areas: Artificial Intelligence, Control, Data Analytics, Dynamical Systems, Machine Learning, Optimization, Robotics
    Brief
    • Ankush Chakrabarty co-organized an invited session on “Data-Driven Control For Industrial Applications” at the IEEE Conference on Control Technology and Applications with Shahin Shahrampour (Asst. Prof., Texas A&M). Talks covered topics including reinforcement learning for aerospace systems, constrained reinforcement learning for motors, deep Q learning for traffic systems and participants included speakers from Stanford University, North Carolina State University, Texas A&M, Oklahoma State University, University of Science and Technology at Beijing, and TU Delft.

      MERL presented research (Chakrabarty, Danielson, Wang) on constraint-enforcing output-tracking with approximate dynamic programming for servomotor systems.
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  •  NEWS    Dr. Abraham P. Vinod joins the Research Staff of Mitsubishi Electric Research Laboratories
    Date: August 3, 2020
    Where: Cambridge, MA
    MERL Contact: Abraham P. Vinod
    Research Areas: Artificial Intelligence, Control, Optimization, Robotics
    Brief
    • Mitsubishi Electric Research Laboratories is excited to welcome Abraham P. Vinod as the newest member of its research staff, in the Control for Autonomy Team. Abraham joins MERL from the University of Texas, Austin, where he was a Postdoctoral Research Fellow. He obtained his Ph.D. from the University of New Mexico. His PhD research produced scalable algorithms for providing safety guarantees for stochastic, control-constrained, dynamical systems, with applications to motion planning. In his postdoctoral research, Abraham studied theory and algorithms for on-the-fly, data-driven control of unknown systems under severely limited data. His current research interests lie in the intersection of optimization, control, and learning. Abraham won the Best Student Paper Award at the 2017 ACM Hybrid Systems: Computation and Control Conference, was a finalist for the Best Paper Award in the 2018 ACM Hybrid Systems: Computation and Control Conference, and won the best undergraduate student research project award at the Indian Institute of Technology, Madras.
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  •  NEWS    MERL researchers presenting three papers at ICML 2020
    Date: July 12, 2020 - July 18, 2020
    Where: Vienna, Austria (virtual this year)
    MERL Contacts: Anoop Cherian; Devesh K. Jha; Daniel N. Nikovski
    Research Areas: Artificial Intelligence, Computer Vision, Data Analytics, Dynamical Systems, Machine Learning, Optimization, Robotics
    Brief
    • MERL researchers are presenting three papers at the International Conference on Machine Learning (ICML 2020), which is virtually held this year from 12-18th July. ICML is one of the top-tier conferences in machine learning with an acceptance rate of 22%. The MERL papers are:

      1) "Finite-time convergence in Continuous-Time Optimization" by Orlando Romero and Mouhacine Benosman.

      2) "Can Increasing Input Dimensionality Improve Deep Reinforcement Learning?" by Kei Ota, Tomoaki Oiki, Devesh Jha, Toshisada Mariyama, and Daniel Nikovski.

      3) "Representation Learning Using Adversarially-Contrastive Optimal Transport" by Anoop Cherian and Shuchin Aeron.
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  •  NEWS    MERL researchers presented 10 papers at American Control Conference (ACC)
    Date: July 1, 2020 - July 3, 2020
    Where: Denver, Colorado (virtual)
    MERL Contacts: Ankush Chakrabarty; Stefano Di Cairano; Yebin Wang; Avishai Weiss
    Research Areas: Control, Machine Learning, Optimization
    Brief
    • At the American Control Conference, MERL presented 10 papers on subjects including autonomous-vehicle decision making and motion planning, nonlinear estimation for thermal-fluid models and GNSS positioning, learning-based reference governors and reference governors for railway vehicles, and fail-safe rendezvous control.
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  •  AWARD    Best conference paper of IEEE PES-GM 2020
    Date: June 18, 2020
    Awarded to: Tong Huang, Hongbo Sun, K.J. Kim, Daniel Nikovski, Le Xie
    MERL Contacts: Daniel N. Nikovski; Hongbo Sun
    Research Areas: Data Analytics, Electric Systems, Optimization
    Brief
    • A paper on A Holistic Framework for Parameter Coordination of Interconnected Microgrids Against Natural Disasters, written by Tong Huang, a former MERL intern from Texas A&M University, has been selected as one of the Best Conference Papers at the 2020 Power and Energy Society General Meeting (PES-GM). IEEE PES-GM is the flagship conference for the IEEE Power and Energy Society. The work was done in collaboration with Hongbo Sun, K. J. Kim, and Daniel Nikovski from MERL, and Tong's advisor, Prof. Le Xie from Texas A&M University.
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  •  TALK    Universal Differential Equations for Scientific Machine Learning
    Date & Time: Thursday, May 7, 2020; 12:00 PM
    Speaker: Christopher Rackauckas, MIT
    MERL Host: Christopher R. Laughman
    Research Areas: Machine Learning, Multi-Physical Modeling, Optimization
    Abstract
    • In the context of science, the well-known adage "a picture is worth a thousand words" might well be "a model is worth a thousand datasets." Scientific models, such as Newtonian physics or biological gene regulatory networks, are human-driven simplifications of complex phenomena that serve as surrogates for the countless experiments that validated the models. Recently, machine learning has been able to overcome the inaccuracies of approximate modeling by directly learning the entire set of nonlinear interactions from data. However, without any predetermined structure from the scientific basis behind the problem, machine learning approaches are flexible but data-expensive, requiring large databases of homogeneous labeled training data. A central challenge is reco nciling data that is at odds with simplified models without requiring "big data". In this talk we discuss a new methodology, universal differential equations (UDEs), which augment scientific models with machine-learnable structures for scientifically-based learning. We show how UDEs can be utilized to discover previously unknown governing equations, accurately extrapolate beyond the original data, and accelerate model simulation, all in a time and data-efficient manner. This advance is coupled with open-source software that allows for training UDEs which incorporate physical constraints, delayed interactions, implicitly-defined events, and intrinsic stochasticity in the model. Our examples show how a diverse set of computationally-difficult modeling issues across scientific disciplines, from automatically discovering biological mechanisms to accelerating climate simulations by 15,000x, can be handled by training UDEs.
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  •  NEWS    Stefano Di Cairano Appointed IPC Vice-Chair for the 7th IFAC Symposium on NMPC (2021)
    Date: July 7, 2021 - July 14, 2021
    Where: Bratislava, Slovakia
    MERL Contact: Stefano Di Cairano
    Research Areas: Control, Machine Learning, Optimization
    Brief
    • MERL researcher Stefano Di Cairano has been appointed as Vice-Chair for Industry of the International Program Committee of the 7th IFAC Symposium on Nonlinear Model Predictive Control, which will be held in Bratislava, Slovakia, in July 2021.
      IFAC NMPC is the main symposium focused on model predictive control, theory, methods and applications, includes contributions on control, optimization, and machine learning research, and is held every 3 years.
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  •  NEWS    MERL Researcher Kyeong Jin Kim serves as a lead guest editor of IEEE Journal on Selected Topics in Signal Processing
    Date: April 29, 2020
    Where: N/A
    Research Areas: Communications, Optimization, Signal Processing, Information Security
    Brief
    • Kyeong Jin Kim, a Senior Principal Research Scientist in the Signal Processing Group, will serve as lead guest editor for the upcoming JSTSP issue on, "Advanced Signal Processing for Local and Private 5G Networks." The issue is also being organized with the help of other researchers and investigators from leading organizations such as Memorial University, Nokia Bell Laboratories, Princeton University, Aalborg University, Jinan University, and South China University of Technology. This special issue aims to capture the latest research activities in local and private 5G networks from the signal processing perspective and is targeted for publication January 2022.
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  •  NEWS    Ankush Chakrabarty appointed as an Associate Editor for CDC 2020
    Date: December 8, 2020 - December 11, 2020
    Where: IEEE Conference on Decision and Control (CDC)
    MERL Contact: Ankush Chakrabarty
    Research Areas: Control, Optimization
    Brief
    • Ankush Chakrabarty, a Research Scientist in MERL's Multi-Physical Systems, will be serving as an Associate Editor at the 2020 IEEE Conference on Decision and Control (CDC).
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  •  NEWS    Arvind Raghunathan to serve on SIAG/OPT Early Career Prize committee
    Date: May 26, 2020
    Where: 2020 SIAM Conference on Optimization, Hong Kong
    MERL Contact: Arvind Raghunathan
    Research Area: Optimization
    Brief
    • Arvind Raghunathan, Data Analytics, has been invited to serve on the SIAM Activity Group on Optimization Early Career Prize (SIAG/OPT Early Career Prize) committee. Instituted in 2018, the SIAG/OPT Early Career Prize is awarded every three years to an outstanding early career researcher in the field of optimization for distinguished contributions to the field in the six calendar years prior to the award year. The 2020 SIAG/OPT Early Career Prize will be awarded during the 2020 SIAM Conference on Optimization to be held in Hong Kong.

      Arvind Raghunathan will also host a mini-symposium on global optimization titled "Global Optimization of MINLP: Recent Advances". The mini-symposium will feature talks related to theoretical and algorithmic aspects of global optimization.
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  •  NEWS    MERL researchers presented 8 papers at Conference on Decision and Control (CDC)
    Date: December 11, 2019 - December 13, 2019
    Where: Nice, France
    MERL Contacts: Scott A. Bortoff; Ankush Chakrabarty; Stefano Di Cairano
    Research Areas: Control, Machine Learning, Optimization
    Brief
    • At the Conference on Decision and Control, MERL presented 8 papers on subjects including estimation for thermal-fluid models and transportation networks, analysis of HVAC systems, extremum seeking for multi-agent systems, reinforcement learning for vehicle platoons, and learning with applications to autonomous vehicles.
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  •  NEWS    Data Analytics group presents 4 invited talks at 2019 INFORMS Annual Meeting
    Date: October 21, 2019 - October 23, 2019
    MERL Contact: Arvind Raghunathan
    Research Area: Optimization
    Brief
    • Arvind Raghunathan, of MERL's Data Analytics group, and collaborators will present 4 invited talks at 2019 Institute for Operations Research and Management Science (INFORMS) Annual Meeting. The talks cover a broad range of topics including decision diagrams, algorithms for mixed integer quadratic, applications in transportation and integration of prescriptive and predictive analytics.

      INFORMS is the world’s largest professional association dedicated to and promoting best practices and advances in operations research, management science, and analytics to improve operational processes, decision-making, and outcomes. INFORMS Annual Meeting is a premier annual conference bringing together researchers and practitioners in operations research and management science.
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  •  NEWS    MERL Scientists Presenting 5 Papers including 2 Invited Talks at European Conference on Optical Communication (ECOC) 2019
    Date: September 22, 2019 - September 26, 2019
    MERL Contacts: Devesh K. Jha; Toshiaki Koike-Akino; Kieran Parsons; Ye Wang
    Research Areas: Artificial Intelligence, Communications, Electronic and Photonic Devices, Optimization, Signal Processing
    Brief
    • MERL Optical Team scientists will be presenting 5 papers including 2 invited talks at the 45th European Conference on Optical Communication (ECOC) 2019, which is being held in Dublin from September 22-26, 2019. Topics to be presented include recent advances in sophisticated constellation shaping schemes, lattice coding, and deep learning-based turbo equalization to mitigate fiber nonlinearity. Dr. Kojima is giving an invited workshop talk on deep learning-based nano-photonic device optimization. Dr. Tobias Fehenberger, a former Visiting Scientist is giving an invited talk related to our joint paper "Mapping Strategies for Short-Length Probabilistic Shaping"

      ECOC is the largest optical communications event in Europe and a key meeting place for more than 1,500 scientists and researchers from institutions and companies across the world. The conference features more than 400 oral and poster presentations from various major telecoms industries and universities. As well as being one of the largest scientific conferences globally, ECOC also features Europe’s largest optical communications exhibition.
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  •  NEWS    MERL researchers presented 8 papers at American Control Conference
    Date: July 10, 2019 - July 12, 2019
    Where: Philadelphia
    MERL Contacts: Ankush Chakrabarty; Stefano Di Cairano; Devesh K. Jha; Yebin Wang; Avishai Weiss
    Research Areas: Control, Machine Learning, Optimization
    Brief
    • At the American Control Conference, MERL presented 8 papers on subjects including model predictive control applications, estimation and motion planning for vehicles, modular control architectures, and adaptation and learning.
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  •  TALK    Perspectives on Integer Programming in Sparse Optimization
    Date & Time: Tuesday, July 16, 2019; 12:00 PM
    Speaker: Prof. Jeff Linderoth, University of Wisconsin-Madison
    MERL Host: Arvind Raghunathan
    Research Areas: Machine Learning, Optimization
    Abstract
    • Algorithms to solve mixed integer linear programs have made incredible progress in the past 20 years. Key to these advances has been a mathematical analysis of the structure of the set of feasible solutions. We argue that a similar analysis is required in the case of mixed integer quadratic programs, like those that arise in sparse optimization in machine learning. One such analysis leads to the so-called perspective relaxation, which significantly improves solution performance on separable instances. Extensions of the perspective reformulation can lead to algorithms that are equivalent to some of the most popular, modern, sparsity-inducing non-convex regularizations in variable selection. Based on joint work with Hongbo Dong (Washington State Univ. ), Oktay Gunluk (IBM), and Kun Chen (Univ. Connecticut).
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  •  NEWS    MERL researchers presented more than 8 papers in European Control Conference, ECC 2019
    Date: June 25, 2019 - June 28, 2019
    Where: Naples, Italy
    MERL Contacts: Scott A. Bortoff; Ankush Chakrabarty; Stefano Di Cairano; Devesh K. Jha; Christopher R. Laughman; Daniel N. Nikovski; Diego Romeres; William S. Yerazunis
    Research Areas: Control, Machine Learning, Optimization
    Brief
    • The European Control Conference is the premier control conference in Europe. This year MERL was well represented with papers on control for HVAC, machine learning for estimation and control, robot assembly, and optimization methods for control.
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  •  NEWS    Arvind Raghunathan delivers Keynote at University of Edinburgh
    Date: July 4, 2019
    Where: University of Edinburgh
    MERL Contact: Arvind Raghunathan
    Research Area: Optimization
    Brief
    • Arvind Raghunathan, of MERL's Data Analytics group, will deliver a keynote titled "Embedding Perfect Structures in Process Systems" in the School of Engineering at University of Edinburgh. Abstract of the talk can be found in the link below.
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  •  NEWS    Arvind Raghunathan delivers seminar at Imperial College London
    Date: July 2, 2019
    Where: Imperial College London
    MERL Contact: Arvind Raghunathan
    Research Area: Optimization
    Brief
    • Arvind Raghunathan, of MERL's Data Analytics group, will deliver a seminar titled "Chordal Completions – Semidefinite Programming and Minimum Completions" in the Computational Optimisation Group at Imperial College London. Abstract of the talk can be found in the link below.
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  •  NEWS    MERL researcher Stefano Di Cairano taught short course for European Embedded Control Institute
    Date: June 10, 2019 - June 14, 2019
    Where: Paris
    MERL Contact: Stefano Di Cairano
    Research Areas: Control, Dynamical Systems, Optimization
    Brief
    • MERL researcher Stefano Di Cairano and Prof. Ilya Kolmanovsky, Dept. Aerospace Engineering, the University of Michigan, were invited to teach a class on "Predictive and Optimization Based Control for Automotive and Aerospace Application" at the 2019 International Graduate School in Control, of the European Embedded Control Institute (EECI). Every year EECI invites world renown experts to teach 21-hours class modules, mostly for PhD students but also for professionals, on selected control subjects. Stefano and Ilya's class was attended by 30 "students" from both academia and industry, from all around the world, interested in automotive and aerospace control. The module described the fundamentals of modeling and control design in automotive and aerospace through lectures, real world examples and exercises, and placed particular emphasis on techniques such as MPC, reference governors, and optimal control.
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