Machine learning-based farm risk management: A systematic mapping review

被引:8
|
作者
Ghaffarian, Saman [1 ,2 ]
van der Voort, Mariska [1 ]
Valente, Joao [2 ]
Tekinerdogan, Bedir [2 ]
de Mey, Yann [1 ]
机构
[1] Wageningen Univ & Res, Business Econ Grp, NL-6707 KN Wageningen, Netherlands
[2] Wageningen Univ & Res, Informat Technol Grp, NL-6707 KN Wageningen, Netherlands
关键词
Farm risk management; Machine learning; Crop management; Dairy farm; Systematic mapping review; ARTIFICIAL NEURAL-NETWORKS; CLIMATE-CHANGE; DAIRY-COWS; AGRICULTURAL ADAPTATION; SMALLHOLDER FARMERS; CLINICAL MASTITIS; DISEASE; CLASSIFICATION; VULNERABILITY; PREDICTION;
D O I
10.1016/j.compag.2021.106631
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
Farms face various risks such as uncertainties in the natural growth process, obtaining adequate financing, volatile input and output prices, unpredictable changes in farm-related policy and regulations, and farmers' personal health problems. Accordingly, farmers have to make decisions to be prepared for such situations under risk or mitigate their impacts to maintain essential functions. Increasingly, a data-driven perspective is warranted where machine learning (ML) has become an essential tool for automatic extraction of useful information to support decision-making in farm management as well as risk management. ML's role in farm risk management (FRM) has recently increased with advances in technology and digitalization. This paper provides a literature review in the form of a systematic mapping study to identify the publications, trends, active research communities, and detailed reviews on the use of ML methods for FRM. Accordingly, nine research/mapping questions are designed to extract the required information. In total, we retrieved 1819 papers, of which 746 papers were selected based on the defined exclusion criteria for a detailed review. We categorized the studies based on the addressed risk types (e.g., production risk), assessments that addressed risk components (e.g., resilience), used ML types (e.g., supervised learning) and algorithms ranging from regression modeling to deep learning, addressed ML tasks (e.g., classification), data types (e.g., images), and farm types (e.g., crop-based farm). The results reveal that there is a significant increase in employing ML methods including deep learning and convolutional neural networks for FRM in recent years. The production risk and impact/damage assessment are the most frequently addressed risk type and assessment that addressed risk components in ML-FRM, respectively. In addition, research gaps and open problems are identified and accordingly insights and recommendations from risk management and machine learning perspectives are provided for future studies including the need for ML methods for different risk types (e.g., financial risk), assessments addressing different risk components (e.g., resilience assessment), and developing more advanced ML methods (e.g., reinforcement learning) for FRM.
引用
收藏
页数:17
相关论文
共 50 条
  • [31] Machine learning-based patient classification system for adults with stroke: A systematic review
    Ruksakulpiwat, Suebsarn
    Thongking, Witchuda
    Zhou, Wendie
    Benjasirisan, Chitchanok
    Phianhasin, Lalipat
    Schiltz, Nicholas K.
    Brahmbhatt, Smit
    [J]. CHRONIC ILLNESS, 2023, 19 (01) : 26 - 39
  • [32] Diagnostic Performance of Machine Learning-based Models in Neonatal Sepsis: A Systematic Review
    Kainth, Deepika
    Prakash, Satya
    Sankar, M. Jeeva
    [J]. PEDIATRIC INFECTIOUS DISEASE JOURNAL, 2024, 43 (09) : 889 - 901
  • [33] Machine Learning-Based Predictive Models for Patients with Venous Thromboembolism: A Systematic Review
    Danilatou, Vasiliki
    Dimopoulos, Dimitrios
    Kostoulas, Theodoros
    Douketis, James
    [J]. THROMBOSIS AND HAEMOSTASIS, 2024,
  • [34] MACHINE LEARNING-BASED PREDICTION MODELS FOR C DIFFICILE INFECTION: A SYSTEMATIC REVIEW
    Tariq, Raseen
    Redij, Renisha
    Arunachalam, Shivaram Poigai
    Faubion, William
    Khanna, Sahil
    [J]. GASTROENTEROLOGY, 2023, 164 (06) : S1176 - S1176
  • [35] Machine Learning-Based Prediction Models for Clostridioides difficile Infection: A Systematic Review
    Tariq, Raseen
    Malik, Sheza
    Redij, Renisha
    Arunachalam, Shivaram
    Faubion, Jr William A.
    Khanna, Sahil
    [J]. CLINICAL AND TRANSLATIONAL GASTROENTEROLOGY, 2024, 15 (06)
  • [36] Modeling of Machine Learning-Based Extreme Value Theory in Stock Investment Risk Prediction: A Systematic Literature Review
    Melina, Melina
    Sukono
    Napitupulu, Herlina
    Mohamed, Norizan
    [J]. BIG DATA, 2024,
  • [37] An Assessment of the Predictive Performance of Current Machine Learning-Based Breast Cancer Risk Prediction Models: Systematic Review
    Gao, Ying
    Li, Shu
    Jin, Yujing
    Zhou, Lengxiao
    Sun, Shaomei
    Xu, Xiaoqian
    Li, Shuqian
    Yang, Hongxi
    Zhang, Qing
    Wang, Yaogang
    [J]. JMIR PUBLIC HEALTH AND SURVEILLANCE, 2022, 8 (12):
  • [38] Machine Learning for Industry 4.0: A Systematic Review Using Deep Learning-Based Topic Modelling
    Mazzei, Daniele
    Ramjattan, Reshawn
    [J]. SENSORS, 2022, 22 (22)
  • [39] Machine learning-based detection of chemical risk
    Grabar, Natalia
    Wandji Tchamp, Ornella
    Maxim, Laura
    [J]. E-HEALTH - FOR CONTINUITY OF CARE, 2014, 205 : 725 - 729
  • [40] MACHINE LEARNING-BASED RISK PREDICTION AND SAFETY MANAGEMENT FOR OUTDOOR SPORTS ACTIVITIES
    Lu, Yan
    [J]. SCALABLE COMPUTING-PRACTICE AND EXPERIENCE, 2024, 25 (05): : 3934 - 3941