利用主成分分析和深度q -学习优化农业消费电子产品的能源效率

IF 0.8 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Subir Gupta, Upasana Adhikari, Pinky Pramanik, Subrata Chowdhury, Shreyas J., Anurag Sinha, Saifullah Khalid, Malathi S. Y.
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引用次数: 0

摘要

由于在农业部门使用能源密集型技术,减少农业消费电子产品排放和提高可持续性的能力受到了严重阻碍。本文提出了一种基于能量效率的主成分分析方法来增强深度q学习(DQN)。PCA通过执行降维来帮助管理大量操作数据,而DQN是一种强化学习范式,在现实世界的交互过程中优化决策。本研究的主要贡献在于将PCA和DQN结合使用,形成可定制的、精确的、响应竞赛的能源框架,该框架由对农业数据的实时分析提供动力,这种规模的能源管理在可持续农业的背景下从未被接触过。实验验证了最优模型,进一步实现了累计奖励为72.56,平均排放为1.83,q值为24.76,总天顶值为75.40%,确保了大量非标准定义的高效能源依赖操作。这种模式不仅填补了被动智能农业系统自动化的空白,而且还为其他生态关键领域努力实现更环保的技术提供了参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Optimising Energy Efficiency in Agricultural Consumer Electronics Using Principal Component Analysis and Deep Q-Learning

Optimising Energy Efficiency in Agricultural Consumer Electronics Using Principal Component Analysis and Deep Q-Learning

Optimising Energy Efficiency in Agricultural Consumer Electronics Using Principal Component Analysis and Deep Q-Learning

Optimising Energy Efficiency in Agricultural Consumer Electronics Using Principal Component Analysis and Deep Q-Learning

Optimising Energy Efficiency in Agricultural Consumer Electronics Using Principal Component Analysis and Deep Q-Learning

The ability to reduce emissions and improve sustainability in agricultural consumer electronics has been significantly hindered due to the use of energy-intensive technology within the agricultural sector. This study proposes a new enhancement of deep Q-learning (DQN) with principal component analysis (PCA) focused on energy efficiency. PCA helps manage massive operational data by performing dimensionality reduction, whereas DQN, a reinforcement learning paradigm, optimises decision-making during real-world interactions. The main contribution of this study is in the combined use of PCA and DQN to form customisable, precise, contest-responsive energy frameworks powered by real-time analytics on agricultural data—energy management on such a scale has not been approached in the context of sustainable agriculture before. The experiments confirm the optimal model, further achieving a cumulative reward of 72.56, an average emission of 1.83, a Q-value of 24.76 and a total zenith value of 75.40% in ensuring numerous noncriteria-defined efficient energy-dependent operations. This paradigm not only fills the void in the automation of passive intelligent agricultural systems but also serves as a point of reference for other eco-critical domains to strive towards greener technology.

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来源期刊
IET Cyber-Physical Systems: Theory and Applications
IET Cyber-Physical Systems: Theory and Applications Computer Science-Computer Networks and Communications
CiteScore
5.40
自引率
6.70%
发文量
17
审稿时长
19 weeks
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