Artificial Intelligence in Agricultural Mapping: A Review

被引:14
作者
Espinel, Ramon [1 ]
Herrera-Franco, Gricelda [2 ]
Garcia, Jose Luis Rivadeneira [3 ]
Escandon-Panchana, Paulo [4 ]
机构
[1] ESPOL Polytech Univ, Rural Res Ctr CIR, Campus Gustavo Galindo Km 30-5 Via Perimetral, Guayaquil 090902, Ecuador
[2] Univ Estatal Peninsula Santa Elena UPSE, Fac Engn Sci, La Libertad 240204, Ecuador
[3] Inst Nacl Invest Agr INIAP, Unidad Invest Desarrollo Innovac, Quito 170518, Ecuador
[4] Escuela Super Politecn Litoral ESPOL, Ctr Res & Projects Appl Earth Sci CIPAT, Guayaquil 09015863, Ecuador
来源
AGRICULTURE-BASEL | 2024年 / 14卷 / 07期
关键词
agricultural cartography; agricultural productivity; efficiency; intellectual structure; sustainability; NEURAL-NETWORKS; LAND-COVER; LOGISTIC-REGRESSION; SPATIAL PREDICTION; IMAGERY ANALYSIS; CARTOGRAPHY; MODEL; PRECISION; SYSTEM; EXTENT;
D O I
10.3390/agriculture14071071
中图分类号
S3 [农学(农艺学)];
学科分类号
0901 ;
摘要
Artificial intelligence (AI) plays an essential role in agricultural mapping. It reduces costs and time and increases efficiency in agricultural management activities, which improves the food industry. Agricultural mapping is necessary for resource management and requires technologies for farming challenges. The mapping in agricultural AI applications gives efficiency in mapping and its subsequent use in decision-making. This study analyses AI's current state in agricultural mapping through bibliometric indicators and a literature review to identify methods, agricultural resources, geomatic tools, mapping types, and their applications in agricultural management. The methodology begins with a bibliographic search in Scopus and the Web of Science (WoS). Subsequently, a bibliographic data analysis and literature review establish the scientific contribution, collaboration, AI methods, and trends. The United States (USA), Spain, and Italy are countries that produce and collaborate more in this area of knowledge. Of the studies, 76% use machine learning (ML) and 24% use deep learning (DL) for agricultural mapping applications. Prevailing algorithms such as Random Forest (RF), Artificial Neural Networks (ANNs), and Support Vector Machines (SVMs) correlate mapping activities in agricultural management. In addition, AI contributes to agricultural mapping in activities associated with production, disease detection, crop classification, rural planning, forest dynamics, and irrigation system improvements.
引用
收藏
页数:36
相关论文
共 227 条
[1]   Sentinel-2 Data for Land Use Mapping: Comparing Different Supervised Classifications in Semi-Arid Areas [J].
Abida, Khouloud ;
Barbouchi, Meriem ;
Boudabbous, Khaoula ;
Toukabri, Wael ;
Saad, Karem ;
Bousnina, Habib ;
Chahed, Thouraya Sahli .
AGRICULTURE-BASEL, 2022, 12 (09)
[2]   Developing digital cartography in rural planning applications [J].
Aguilar, Fernando J. ;
Carvajal, Fernando ;
Aguilar, Manuel A. ;
Aguera, Francisco .
COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2007, 55 (02) :89-106
[3]   Requirements engineering for artificial intelligence systems: A systematic mapping study [J].
Ahmad, Khlood ;
Abdelrazek, Mohamed ;
Arora, Chetan ;
Bano, Muneera ;
Grundy, John .
INFORMATION AND SOFTWARE TECHNOLOGY, 2023, 158
[4]   Computational intelligence applied to the least limiting water range to estimate soil water content using GIS and geostatistical approaches in alluvial lands* [J].
Alaboz, Pelin ;
Baskan, Oguz ;
Dengiz, Orhan .
IRRIGATION AND DRAINAGE, 2021, 70 (05) :1129-1144
[5]  
Albert G, 2020, INT CONF CARTOGR GIS, P259
[6]   Towards Paddy Rice Smart Farming: A Review on Big Data, Machine Learning, and Rice Production Tasks [J].
Alfred, Rayner ;
Obit, Joe Henry ;
Chin, Christie Pei-Yee ;
Haviluddin, Haviluddin ;
Lim, Yuto .
IEEE ACCESS, 2021, 9 :50358-50380
[7]   Deep learning-based detection of aphid colonies on plants from a reconstructed Brassica image dataset [J].
Amrani, Abderraouf ;
Sohel, Ferdous ;
Diepeveen, Dean ;
Murray, David ;
Jones, Michael G. K. .
COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2023, 205
[8]   Ex ante mapping of favorable zones for uptake of climate-smart agricultural practices: A case study in West Africa [J].
Andrieu, Nadine ;
Dumas, Patrice ;
Hemmerle, Emma ;
Caforio, Francesca ;
Falconnier, Gatien N. ;
Blanchard, Melanie ;
Vayssieres, Jonathan .
ENVIRONMENTAL DEVELOPMENT, 2021, 37
[9]   Mapping water salinity using Landsat-8 OLI satellite images (Case study: Karun basin located in Iran) [J].
Ansari, Mohsen ;
Akhoondzadeh, Mehdi .
ADVANCES IN SPACE RESEARCH, 2020, 65 (05) :1490-1502
[10]   Remote sensing and GIS-based machine learning models for spatial gully erosion prediction: A case study of Rdat watershed in Sebou basin, Morocco [J].
Aouragh, My Hachem ;
Ijlil, Safae ;
Essahlaoui, Narjisse ;
Essahlaoui, Ali ;
El Hmaidi, Abdellah ;
El Ouali, Abdelhadi ;
Mridekh, Abdelaziz .
REMOTE SENSING APPLICATIONS-SOCIETY AND ENVIRONMENT, 2023, 30