期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
Design and Test Verification of Energy Consumption Perception AI Algorithm for Terminal Access to Smart Grid
1
作者 Sheng Bi Jiayan Wang +2 位作者 Dong Su Hui Lu Yu Zhang 《Energy Engineering》 2025年第10期4135-4151,共17页
By comparing price plans offered by several retail energy firms,end users with smart meters and controllers may optimize their energy use cost portfolios,due to the growth of deregulated retail power markets.To help s... By comparing price plans offered by several retail energy firms,end users with smart meters and controllers may optimize their energy use cost portfolios,due to the growth of deregulated retail power markets.To help smart grid end-users decrease power payment and usage unhappiness,this article suggests a decision system based on reinforcement learning to aid with electricity price plan selection.An enhanced state-based Markov decision process(MDP)without transition probabilities simulates the decision issue.A Kernel approximate-integrated batch Q-learning approach is used to tackle the given issue.Several adjustments to the sampling and data representation are made to increase the computational and prediction performance.Using a continuous high-dimensional state space,the suggested approach can uncover the underlying characteristics of time-varying pricing schemes.Without knowing anything regarding the market environment in advance,the best decision-making policy may be learned via case studies that use data from actual historical price plans.Experiments show that the suggested decision approach may reduce cost and energy usage dissatisfaction by using user data to build an accurate prediction strategy.In this research,we look at how smart city energy planners rely on precise load forecasts.It presents a hybrid method that extracts associated characteristics to improve accuracy in residential power consumption forecasts using machine learning(ML).It is possible to measure the precision of forecasts with the use of loss functions with the RMSE.This research presents a methodology for estimating smart home energy usage in response to the growing interest in explainable artificial intelligence(XAI).Using Shapley Additive explanations(SHAP)approaches,this strategy makes it easy for consumers to comprehend their energy use trends.To predict future energy use,the study employs gradient boosting in conjunction with long short-term memory neural networks. 展开更多
关键词 Energy consumption perception terminal access smart grid AI Model SHAP Q-learning algorithm
在线阅读 下载PDF
Logarithmic Growth Algorithm of Sleep Mode of Broadband Mobile Access Terminal
2
作者 唐朝伟 邵艳清 唐晖 《Transactions of Tianjin University》 EI CAS 2010年第6期452-456,共5页
The sleep mode which works upon low arrival traffic is introduced in IEEE802.16e standard to reduce the power consumption of the mobile access terminal. Due to the rapid growth in the sleep interval in the exponential... The sleep mode which works upon low arrival traffic is introduced in IEEE802.16e standard to reduce the power consumption of the mobile access terminal. Due to the rapid growth in the sleep interval in the exponential growth algorithm prescribed in IEEE802.16e, the power saving efficiency of the mobile access terminal is limited and the average delay time of receiving data frames is prolonged when the arrival rate of data frames is low. To obtain lower power consumption and shorter average delay time, the l... 展开更多
关键词 IEEE802.16E sleep mode mobile access terminal average power consumption average delay time logarithmic growth algorithm
在线阅读 下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部