Reinforcement learning-based prediction approach for distributed Dynamic Data-Driven Application Systems

被引:0
|
作者
Szu-Yin Lin
机构
[1] Chung Yuan Christian University,
来源
关键词
Dynamic data driven application systems; Reinforcement learning; Distributed computing;
D O I
暂无
中图分类号
学科分类号
摘要
With the current advances in cloud and distributed system technology, data have become ubiquitous and their dynamics has increased. It is an extreme challenge to find the interdependencies among distributed data in order to dynamically manage and predict the trend within large amounts of data sources. This paper proposes a new distributed dynamic data-driven model and strategy to direct and evaluate the interlinked data sets in Dynamic Data-Driven Application Systems (DDDAS). The underlying technique involves the introduction of a reinforcement Q-Learning approach which includes search strategies to determine how to drill and drive a series of highly dependent data in order to enhance prediction accuracy and efficiency. It can tackle dynamic data issues in a real-time, dynamic and resource-bounded environment. The proposed framework is a comprehensive skeleton for modeling complex, flexible and dynamic tasks in a distributed environment for solving DDDAS problems. In simulation, the new model utilizes individual sensors, distributed databases and predictors in Dynamic Data Stream Nodes with multiple dimensional variables which can be instantiated to explore the search space, thereby improving the search convergence. This study shows the effectiveness and applicability of using the technique in the analysis of typhoon rainfall data. The result shows that the proposed approach performed better than traditional linear regression approaches, reducing the error rate by 36.34 %.
引用
收藏
页码:313 / 326
页数:13
相关论文
共 50 条
  • [41] Data-Driven Learning-Based Fault Tolerant Stability Analysis
    Ge Lei
    Chen Shun
    COMPLEXITY, 2020, 2020
  • [42] When to Invoke a Prediction Service? A Reinforcement Learning-Based Approach
    Xu, Yuchang
    Cao, Jian
    Liu, Tao
    Tan, Yudong
    Xiao, Quanwu
    2018 IEEE INTERNATIONAL CONFERENCE ON WEB SERVICES (IEEE ICWS 2018), 2018, : 315 - 318
  • [43] Approach to data-driven learning
    Markov, Z.
    International Workshop on Fundamentals of Artificial Intelligence Research, 1991,
  • [44] AN APPROACH TO DATA-DRIVEN LEARNING
    MARKOV, Z
    LECTURE NOTES IN ARTIFICIAL INTELLIGENCE, 1991, 535 : 127 - 140
  • [45] Data-driven approach for dynamic homogenization using meta learning
    Shah, Aarohi
    Rimoli, Julian J.
    Computer Methods in Applied Mechanics and Engineering, 2022, 401
  • [46] Data-driven approach for dynamic homogenization using meta learning
    Shah, Aarohi
    Rimoli, Julian J.
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2022, 401
  • [47] Dynamic data-driven application systems for empty houses, contaminat tracking, and wildland fireline prediction
    Douglas, Craig C.
    Bansal, Divya
    Beezley, Jonathan D.
    Bennethum, Lynn S.
    Chakraborty, Soham
    Coen, Janice L.
    Efendiev, Yalchin
    Ewing, Richard E.
    Hatcher, Jay
    Iskandarani, Mohamed
    Johnson, Christopher R.
    Li, Deng
    Kim, Minjeong
    Lodder, Robert A.
    Mandel, Jan
    Qin, Guan
    Vodacek, Anthony
    GRID-BASED PROBLEM SOLVING ENVIRONMENTS, 2007, 239 : 255 - +
  • [48] RL-NCS: REINFORCEMENT LEARNING BASED DATA-DRIVEN APPROACH FOR NONUNIFORM COMPRESSED SENSING
    Karim, Nazmul
    Zaeemzadeh, Alireza
    Rahnavard, Nazanin
    2019 IEEE 29TH INTERNATIONAL WORKSHOP ON MACHINE LEARNING FOR SIGNAL PROCESSING (MLSP), 2019,
  • [49] A Data-Driven Pandemic Simulator with Reinforcement Learning
    Zhang, Yuting
    Ma, Biyang
    Cao, Langcai
    Liu, Yanyu
    ELECTRONICS, 2024, 13 (13)
  • [50] A data-driven complex systems approach to early prediction of landslides
    Tordesillas, Antoinette
    Zhou, Zongzheng
    Batterham, Robin
    MECHANICS RESEARCH COMMUNICATIONS, 2018, 92 : 137 - 141