Q-Learning-Based Pesticide Contamination Prediction in Vegetables and Fruits

被引:2
|
作者
Sellamuthu, Kandasamy [1 ]
Kaliappan, Vishnu Kumar [1 ]
机构
[1] KPR Inst Engn & Technol, Dept Comp Sci & Engn, Coimbatore 641407, Tamil Nadu, India
来源
关键词
Pesticide contamination; complex event processing; recurrent neural network; Q learning; multi residual level and contamination level; RESIDUES;
D O I
10.32604/csse.2023.029017
中图分类号
TP3 [计算技术、计算机技术];
学科分类号
0812 ;
摘要
Pesticides have become more necessary in modern agricultural production. However, these pesticides have an unforeseeable long-term impact on people's wellbeing as well as the ecosystem. Due to a shortage of basic pesticide exposure awareness, farmers typically utilize pesticides extremely close to harvesting. Pesticide residues within foods, particularly fruits as well as veggies, are a significant issue among farmers, merchants, and particularly consumers. The residual concentrations were far lower than these maximal allowable limits, with only a few surpassing the restrictions for such pesticides in food. There is an obligation to provide a warning about this amount of pesticide use in farming. Previous technologies failed to forecast the large number of pesticides that were dangerous to people, necessitating the development of improved detection and early warning systems. A novel methodology for verifying the status and evaluating the level of pesticides in regularly consumed veggies as well as fruits has been identified, named as the Hybrid Chronic Multi-Residual Framework (HCMF), in which the harmful level of used pesticide residues has been predicted for contamination in agro products using Q-Learning based Recurrent Neural Network and the predicted contamination levels have been analyzed using Complex Event Processing (CEP) by processing given spatial and sequential data. The analysis results are used to minimize and effectively use pesticides in the agricultural field and also ensure the safety of farmers and consumers. Overall, the technique is carried out in a Python environment, with the results showing that the proposed model has a 98.57% accuracy and a training loss of 0.30.
引用
收藏
页码:715 / 736
页数:22
相关论文
共 50 条
  • [31] A Q-learning-based approach for virtual network embedding in data center
    Yuan, Ying
    Tian, Zejie
    Wang, Cong
    Zheng, Fanghui
    Lv, Yanxia
    NEURAL COMPUTING & APPLICATIONS, 2020, 32 (07): : 1995 - 2004
  • [32] A Q-learning-based Automatic Heuristic Design Approach for Seru Scheduling
    Zhan, Rongxin
    Cui, Zihua
    Ma, Tao
    Li, Dongni
    PROCEEDINGS OF THE 33RD CHINESE CONTROL AND DECISION CONFERENCE (CCDC 2021), 2021, : 253 - 257
  • [33] A Q-Learning-Based Approach for Deploying Dynamic Service Function Chains
    Sun, Jian
    Huang, Guanhua
    Sun, Gang
    Yu, Hongfang
    Sangaiah, Arun Kumar
    Chang, Victor
    SYMMETRY-BASEL, 2018, 10 (11):
  • [34] Q-Learning-Based Workload Consolidation for Data Centers With Composable Architecture
    Guo, Chao
    Li, Longfei
    Zukerman, Moshe
    IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2025, 21 (03) : 2324 - 2333
  • [35] A Q-learning-based swarm optimization algorithm for economic dispatch problem
    Yi-Zeng Hsieh
    Mu-Chun Su
    Neural Computing and Applications, 2016, 27 : 2333 - 2350
  • [36] Q-Learning-Based Power Control for LTE Enterprise Femtocell Networks
    Gao, Zhibin
    Wen, Bin
    Huang, Lianfen
    Chen, Canbin
    Su, Ziwen
    IEEE SYSTEMS JOURNAL, 2017, 11 (04): : 2699 - 2707
  • [37] Dynamic Q-Learning-Based Optimized Load Balancing Technique in Cloud
    Muthusamy, Arvindhan
    Dhanaraj, Rajesh Kumar
    Mobile Information Systems, 2023, 2023
  • [38] A Q-learning-based approach for virtual network embedding in data center
    Ying Yuan
    Zejie Tian
    Cong Wang
    Fanghui Zheng
    Yanxia Lv
    Neural Computing and Applications, 2020, 32 : 1995 - 2004
  • [39] ANANKE: a Q-Learning-Based Portfolio Scheduler for Complex Industrial Workflows
    Ma, Shenjun
    Ilyushkin, Alexey
    Stegehuis, Alexander
    Iosup, Alexandru
    2017 IEEE INTERNATIONAL CONFERENCE ON AUTOMATIC COMPUTING (ICAC), 2017, : 227 - 232
  • [40] Q-Learning-based parameter control in differential evolution for structural optimization
    Huynh, Thanh N.
    Do, Dieu T. T.
    Lee, Jaehong
    APPLIED SOFT COMPUTING, 2021, 107