Attack-Resistant, Energy-Adaptive Monitoring for Smart Farms: Uncertainty-Aware Deep Reinforcement Learning Approach

被引:2
作者
Zhang, Qisheng [1 ]
Chen, Dian [1 ]
Mahajan, Yash [1 ]
Chen, Ing-Ray [1 ]
Ha, Dong Sam [2 ]
Cho, Jin-Hee [1 ]
机构
[1] Virginia Tech, Dept Comp Sci, Falls Church, VA 22043 USA
[2] Virginia Tech, Bradley Dept Elect & Comp Engn, Blacksburg, VA 24061 USA
来源
IEEE INTERNET OF THINGS JOURNAL | 2023年 / 10卷 / 16期
基金
美国国家科学基金会;
关键词
Cyber attacks; deep reinforcement learning (DRL); energy-adaptive; smart farm; solar sensors; uncertainty; ACTIVITY RECOGNITION; DATA FUSION;
D O I
10.1109/JIOT.2023.3287069
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
This work proposes an energy-adaptive monitoring system for a smart farm using solar sensors attached to cows. The proposed system aims to achieve a high monitoring quality in the smart farm under fluctuating energy and cyber attacks disrupting the collection of sensed data from solar sensors, such as protocol noncompliance, false data injection, denial-of-service, and state manipulation. We adopt Subjective Logic, a belief model, to consider multidimensional uncertainty in sensed data. We employ deep reinforcement learning (DRL) for agents on gateways to collect high-quality sensed data from the solar sensors. The DRL agents aim to collect high-quality sensed data with low uncertainty and high freshness under fluctuating energy levels in solar sensors. We analyze the performance of the proposed energy-adaptive smart farm system in accumulated reward, monitoring error rate, and system overload. We conduct a comparative performance analysis of the uncertainty-aware DRL algorithms against their counterparts in choosing the number of sensed data to be updated to collect high-quality sensed data to achieve high resilience against attacks. Our results prove that multiagent proximal policy optimization (MAPPO) using the uncertainty maximization technique outperforms other counterparts, showing about 4% lower monitoring error rate and the system overload.
引用
收藏
页码:14254 / 14268
页数:15
相关论文
共 59 条
  • [1] Understanding the Limits of LoRaWAN
    Adelantado, Ferran
    Vilajosana, Xavier
    Tuset-Peiro, Pere
    Martinez, Borja
    Melia-Segui, Joan
    Watteyne, Thomas
    [J]. IEEE COMMUNICATIONS MAGAZINE, 2017, 55 (09) : 34 - 40
  • [2] Active learning with uncertainty sampling for large scale activity recognition in smart homes
    Alemdar, Hande
    van Kasteren, T. L. M.
    Ersoy, Cem
    [J]. JOURNAL OF AMBIENT INTELLIGENCE AND SMART ENVIRONMENTS, 2017, 9 (02) : 209 - 223
  • [3] Almeida A., 2012, P 2 INT C PERV EMB C, V1, P233
  • [4] Alonso I., 2020, PROC INT C OMNILAYER, P1
  • [5] [Anonymous], 2015, A Technical Overview of LoRa and LoRaWAN.
  • [6] [Anonymous], 2020, ABOUT US
  • [7] Internet of Things (IoT) and Agricultural Unmanned Aerial Vehicles (UAVs) in smart farming: A comprehensive review
    Boursianis, Achilles D.
    Papadopoulou, Maria S.
    Diamantoulakis, Panagiotis
    Liopa-Tsakalidi, Aglaia
    Barouchas, Pantelis
    Salahas, George
    Karagiannidis, George
    Wan, Shaohua
    Goudos, Sotirios K.
    [J]. INTERNET OF THINGS, 2022, 18
  • [8] Reinforcement Learning-Based Sensor Access Control for WBANs
    Chen, Guihong
    Zhan, Yiju
    Sheng, Geyi
    Xiao, Liang
    Wang, Yonghua
    [J]. IEEE ACCESS, 2019, 7 : 8483 - 8494
  • [9] Reinforcement Learning Based Power Control for In-Body Sensors in WBANs Against Jamming
    Chen, Guihong
    Zhan, Yiju
    Chen, Ye
    Xiao, Liang
    Wang, Yonghua
    An, Ning
    [J]. IEEE ACCESS, 2018, 6 : 37403 - 37412
  • [10] A Survey on Modeling and Optimizing Multi-Objective Systems
    Cho, Jin-Hee
    Wang, Yating
    Chen, Ing-Ray
    Chan, Kevin S.
    Swami, Ananthram
    [J]. IEEE COMMUNICATIONS SURVEYS AND TUTORIALS, 2017, 19 (03): : 1867 - 1901