Search Results for author: Inseok Hwang

Found 14 papers, 0 papers with code

Multi-Agent Based Transfer Learning for Data-Driven Air Traffic Applications

no code implementations23 Jan 2024 Chuhao Deng, Hong-Cheol Choi, Hyunsang Park, Inseok Hwang

By pre-training the MA-BERT on a large dataset from a major airport and then fine-tuning it to other airports and specific air traffic applications, a large amount of the total training time can be saved.

Management Transfer Learning

Collaborative Fault-Identification & Reconstruction in Multi-Agent Systems

no code implementations21 Sep 2023 Shiraz Khan, Inseok Hwang

The conventional solutions for fault-detection, identification, and reconstruction (FDIR) require centralized decision-making mechanisms which are typically combinatorial in their nature, necessitating the design of an efficient distributed FDIR mechanism that is suitable for multi-agent applications.

Decision Making Fault Detection

Exploiting Sparsity for Localization of Large-Scale Wireless Sensor Networks

no code implementations1 Aug 2023 Shiraz Khan, Inseok Hwang, James Goppert

Wireless Sensor Network (WSN) localization refers to the problem of determining the position of each of the agents in a WSN using noisy measurement information.

Distributed Gaussian Mixture PHD Filtering under Communication Constraints

no code implementations1 Aug 2023 Shiraz Khan, Yi-Chieh Sun, Inseok Hwang

In this paper, we develop a distributed GM-PHD filtering recursion that uses a probabilistic communication rule to limit the communication bandwidth of the algorithm, while ensuring asymptotic optimality of the algorithm.

Recovery of Localization Errors in Sensor Networks using Inter-Agent Measurements

no code implementations22 Jul 2023 Shiraz Khan, Inseok Hwang

A practical challenge which arises in the operation of sensor networks is the presence of sensor faults, biases, or adversarial attacks, which can lead to significant errors incurring in the localization of the agents, thereby undermining the security and performance of the network.

On Attack Detection and Identification for the Cyber-Physical System using Lifted System Model

no code implementations8 Dec 2022 Dawei Sun, Minhyun Cho, Inseok Hwang

Motivated by the safety and security issues related to cyber-physical systems with potentially multi-rate, delayed, and nonuniformly sampled measurements, we investigate the attack detection and identification using the lifted system model in this paper.

Data-driven Cyberattack Synthesis against Network Control Systems

no code implementations9 Nov 2022 Omanshu Thapliyal, Inseok Hwang

We utilize the equivalent model to synthesize hybrid cyberattacks -- a combination of FDI and DoS attacks against the NCS.

Approximating Reachable Sets for Neural Network based Models in Real-Time via Optimal Control

no code implementations7 Nov 2022 Omanshu Thapliyal, Inseok Hwang

We utilize a running example of a quadrotor model that is learned using trajectory data via NNs.

Log-linear Dynamic Inversion Control with Provable Safety Guarantees in Lie Groups

no code implementations7 Nov 2022 Li-Yu Lin, James Goppert, Inseok Hwang

In this paper, we use the derivative of the exponential map to derive the exact evolution of the logarithm of the tracking error for mixed-invariant systems, a class of systems capable of describing rigid body tracking problems in Lie groups.

Provably Stabilizing Model-Free Q-Learning for Unknown Bilinear Systems

no code implementations29 Aug 2022 Shanelle G. Clarke, Omanshu Thapliyal, Inseok Hwang

In this paper, we present a provably convergent Model-Free ${Q}$-Learning algorithm that learns a stabilizing control policy for an unknown Bilinear System from a single online run.

Q-Learning

State Prediction of Human-in-the-Loop Multi-rotor System with Stochastic Human Behavior Model

no code implementations7 Jul 2022 Joonwon Choi, Sooyung Byeon, Inseok Hwang

To reduce the conservativeness of the reachability analysis, we present a state prediction method which takes into account a stochastic human behavior model represented as a Gaussian Mixture Model (GMM).

Safety Verification of Model Based Reinforcement Learning Controllers

no code implementations21 Oct 2020 Akshita Gupta, Inseok Hwang

The proposed frame-work can efficiently handle models and controllers which are represented using neural networks.

Autonomous Driving Model-based Reinforcement Learning +2

Safety-guaranteed Reinforcement Learning based on Multi-class Support Vector Machine

no code implementations12 Jun 2020 Kwangyeon Kim, Akshita Gupta, Hong-Cheol Choi, Inseok Hwang

The proposed algorithm is developed for the discrete state and action space and utilizes a multi-class support vector machine (SVM) to represent the policy.

Q-Learning reinforcement-learning +1

SimEx: Express Prediction of Inter-dataset Similarity by a Fleet of Autoencoders

no code implementations14 Jan 2020 Inseok Hwang, Jinho Lee, Frank Liu, Minsik Cho

Our intuition is that, the more similarity exists between the unknown data samples and the part of known data that an autoencoder was trained with, the better chances there could be that this autoencoder makes use of its trained knowledge, reconstructing output samples closer to the originals.

Data Augmentation

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