Review and outlook on reinforcement learning: Its application in agricultural energy internet

Abstract Agricultural Energy Internet (AEI), representing a key evolutionary direction in the integrated energy landscape of rural regions, holds a vital position in advancing the electrification of agricultural sectors. However, the disjointed control between agricultural loads and grid operations...

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Main Authors: Xueqian Fu, Jing Zhang, Xiang Bai, Xinyue Chang, Yixun Xue
Format: Article
Language:English
Published: Wiley 2024-12-01
Series:IET Renewable Power Generation
Subjects:
Online Access:https://doi.org/10.1049/rpg2.13019
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author Xueqian Fu
Jing Zhang
Xiang Bai
Xinyue Chang
Yixun Xue
author_facet Xueqian Fu
Jing Zhang
Xiang Bai
Xinyue Chang
Yixun Xue
author_sort Xueqian Fu
collection DOAJ
description Abstract Agricultural Energy Internet (AEI), representing a key evolutionary direction in the integrated energy landscape of rural regions, holds a vital position in advancing the electrification of agricultural sectors. However, the disjointed control between agricultural loads and grid operations hinders the collaborative development of agriculture and energy. Addressing these issues, this paper investigates the current applications of artificial intelligence in the fields of agriculture and energy. The authors examine the evolutionary path of AEI, particularly emphasizing the critical technologies emerging from the intersection of agriculture, energy, and digital networks. Furthermore, the authors examine the critical technologies of reinforcement learning in the context of smart grid applications. In response to the challenges posed by low energy efficiency in rural areas, a reinforcement learning framework is proposed for coordinating fisheries, agriculture, livestock farming, and rural distribution networks. This framework provides a clear pathway for the application of reinforcement learning in AEI. This research acts as a conduit, merging agricultural and energy domains to promote a cohesive progression that markedly aids in the enhancement of rural electrification and the adoption of sustainable energy methodologies through reinforcement learning.
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institution Kabale University
issn 1752-1416
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language English
publishDate 2024-12-01
publisher Wiley
record_format Article
series IET Renewable Power Generation
spelling doaj-art-03023898aff94eebb3d8486fa025bf6a2025-01-30T12:15:53ZengWileyIET Renewable Power Generation1752-14161752-14242024-12-0118163678369010.1049/rpg2.13019Review and outlook on reinforcement learning: Its application in agricultural energy internetXueqian Fu0Jing Zhang1Xiang Bai2Xinyue Chang3Yixun Xue4College of Information and Electrical Engineering China Agricultural University Beijing ChinaCollege of Information and Electrical Engineering China Agricultural University Beijing ChinaShanxi Energy Internet Research Institute Taiyuan ChinaShanxi Energy Internet Research Institute Taiyuan ChinaShanxi Energy Internet Research Institute Taiyuan ChinaAbstract Agricultural Energy Internet (AEI), representing a key evolutionary direction in the integrated energy landscape of rural regions, holds a vital position in advancing the electrification of agricultural sectors. However, the disjointed control between agricultural loads and grid operations hinders the collaborative development of agriculture and energy. Addressing these issues, this paper investigates the current applications of artificial intelligence in the fields of agriculture and energy. The authors examine the evolutionary path of AEI, particularly emphasizing the critical technologies emerging from the intersection of agriculture, energy, and digital networks. Furthermore, the authors examine the critical technologies of reinforcement learning in the context of smart grid applications. In response to the challenges posed by low energy efficiency in rural areas, a reinforcement learning framework is proposed for coordinating fisheries, agriculture, livestock farming, and rural distribution networks. This framework provides a clear pathway for the application of reinforcement learning in AEI. This research acts as a conduit, merging agricultural and energy domains to promote a cohesive progression that markedly aids in the enhancement of rural electrification and the adoption of sustainable energy methodologies through reinforcement learning.https://doi.org/10.1049/rpg2.13019agricultureartificial intelligenceenergy management systemsphotovoltaic power systemsFlexible operationagricultural energy internet
spellingShingle Xueqian Fu
Jing Zhang
Xiang Bai
Xinyue Chang
Yixun Xue
Review and outlook on reinforcement learning: Its application in agricultural energy internet
IET Renewable Power Generation
agriculture
artificial intelligence
energy management systems
photovoltaic power systems
Flexible operation
agricultural energy internet
title Review and outlook on reinforcement learning: Its application in agricultural energy internet
title_full Review and outlook on reinforcement learning: Its application in agricultural energy internet
title_fullStr Review and outlook on reinforcement learning: Its application in agricultural energy internet
title_full_unstemmed Review and outlook on reinforcement learning: Its application in agricultural energy internet
title_short Review and outlook on reinforcement learning: Its application in agricultural energy internet
title_sort review and outlook on reinforcement learning its application in agricultural energy internet
topic agriculture
artificial intelligence
energy management systems
photovoltaic power systems
Flexible operation
agricultural energy internet
url https://doi.org/10.1049/rpg2.13019
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AT xiangbai reviewandoutlookonreinforcementlearningitsapplicationinagriculturalenergyinternet
AT xinyuechang reviewandoutlookonreinforcementlearningitsapplicationinagriculturalenergyinternet
AT yixunxue reviewandoutlookonreinforcementlearningitsapplicationinagriculturalenergyinternet