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Reinforcement Learning
Differentially Private Federated Multi-Task Learning Framework for Enhancing Human-to-Virtual Connectivity in Human Digital Twin
This paper introduces a secure and efficient connectivity scheme for human digital twin (HDT) systems. It combines differential privacy, federated multi-task learning, and blockchain to ensure accuracy, privacy, and reduced connectivity costs. The proposed scheme enhances security and compares favorably to other solutions for HDT networks.
Samuel D. Okegbile
,
Jun Cai
,
Hao Zheng
,
Jiayuan Chen
,
Changyan Yi
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Slides
IEEE
Joint Trajectory Planning, Application Placement and Energy Renewal for UAV-Assisted MEC: A Triple-Learner Based Approach
This paper focuses on energy-efficient scheduling for multiple UAV-assisted MEC. It optimizes UAV trajectories, energy renewal, and application placement to maximize long-term energy efficiency. The approach uses a triple learner based reinforcement learning method and demonstrates superiority through simulations.
Jialiuyuan Li
,
Changyan Yi
,
Jiayuan Chen
,
Kun Zhu
,
Jun Cai
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IEEE
A Triple Learner Based Energy Efficient Scheduling for Multi-UAV Assisted Mobile Edge Computing
This paper focuses on an energy efficient scheduling problem for multiple unmanned aerial vehicles (UAVs) that assist in mobile edge computing. The goal is to maximize the long-term energy efficiency of the UAVs by optimizing their trajectory planning, energy renewal, and application placement. The paper proposes a triple learner based reinforcement learning approach to address the problem, which includes a trajectory learner, an energy learner, and an application learner. Simulations show that the proposed solution outperforms existing approaches.
Jiayuan Chen
,
Changyan Yi
,
Jialiuyuan Li
,
Kun Zhu
,
Jun Cai
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Slides
IEEE
Learning Aided Joint Sensor Activation and Mobile Charging Vehicle Scheduling for Energy-Efficient WRSN-Based Industrial IoT
This paper addresses the problem of joint sensor activation and mobile charging vehicle scheduling for wireless rechargeable sensor networks in industrial Internet of Things (IIoT). The goal is to optimize the system energy consumption while meeting quality-of-monitoring requirements and sensor charging deadlines. The paper proposes a novel scheme that combines reinforcement learning and approximation algorithms to solve the problem efficiently. Simulation results demonstrate the feasibility and superiority of the proposed scheme over existing approaches.
Jiayuan Chen
,
Changyan Yi
,
Ran Wang
,
Kun Zhu
,
Jun Cai
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IEEE
Shard-based and Reputation-enhanced Byzantine Faulttolerant Scheme for Secure Data Sharing in Latencysensitive Applications
This paper introduces a blockchain-enabled data sharing framework for latency-sensitive applications. It includes a parallel validation-based consensus approach with reputation enhancement and a priority-based block appending process. The framework improves performance while maintaining security and decentralization. Simulation results demonstrate higher throughput, lower latency, and acceptable security levels.
Samuel D. Okegbile
,
Jun Cai
,
Jiayuan Chen
,
Changyan Yi
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Researchgate
A Joint Optimization of Sensor Activation and Mobile Charging Scheduling in Industrial Wireless Rechargeable Sensor Networks
This paper focuses on the joint optimization of sensor activation and mobile charging scheduling in industrial wireless rechargeable sensor networks (IWRSNs). The goal is to minimize energy consumption while meeting task requirements, sensor charging deadlines, and the mobile charger vehicle’s energy capacity. The proposed solution combines deep reinforcement learning and a marginal product-based approximation algorithm. Simulation results show the superiority of this solution compared to other methods.
Jiayuan Chen
,
Changyan Yi
,
Ran Wang
,
Kun Zhu
,
Jun Cai
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Slides
IEEE
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