Modeling days suitable for fieldwork using machine learning, process-based, and rule-based models

被引:5
|
作者
Huber, Isaiah [1 ]
Wang, Lizhi [1 ]
Hatfield, Jerry L. [2 ]
Hanna, H. Mark [1 ]
Archontoulis, Sotirios, V [1 ]
机构
[1] Iowa State Univ, Ames, IA 50011 USA
[2] USDA ARS Lab, Natl Lab Agr & Environm, Ames, IA USA
基金
美国国家科学基金会;
关键词
APSIM; Optimization; Field workability; Data-driven models; Soil moisture; SOIL WORKABILITY; SIMULATION; TRAFFICABILITY; CALIBRATION; SYSTEM; IMPACT; LIMITS; MAIZE; APSIM; WATER;
D O I
10.1016/j.agsy.2023.103603
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
Context: Prediction of days suitable for fieldwork is important for understanding the potential effects of climate change and for selecting machinery systems to improve efficiency in field operations and avoid soil damage. Yet, we lack predictive models to inform decision-making at scale.Objective: We filled this knowledge gap by developing and testing five new workability models.Methods: One model follows soil moisture-based methods (APSIM), one uses simple rain and temperature thresholds, and three follow machine learning techniques (Random Forest, Decision Table, Neural Network). We parameterized the models using USDA survey data from Iowa, USA and evaluated their temporal and spatial prediction over twelve US Corn Belt States and different time periods using multiple statistical indexes and sensitivity analysis. The models operate at a 5-arcminute resolution.Results and conclusions: Results indicated that the simple rule model, the Decision Table model, and the process -based model predicted field workable days with an agreement index of 0.88, 0.86, and 0.84, respectively for the testing datasets (n = 22,671), and hence were deemed sufficient for future use. The selected models are better suited for large timespan evaluations of workability (monthly to annual, normalized root mean square error, nRMSE = 8 to 15%)) than weekly predictions (nRMSE = 21%). The machine learning models tended to cluster their predictions around a mean value and were about 50% less responsive to precipitation than the process -based or rule-based models. We concluded that simple approaches are more robust to be applied at scale than complex approaches with many data input requirements.Significance: The developed models enhance our capacity to predict climate change impacts on workability, a valuable indicator for decision-making and overall sustainability.
引用
收藏
页数:12
相关论文
共 50 条
  • [41] Containment in Rule-Based Models
    Thompson-Walsh, C. D.
    Hayman, J.
    Winskel, G.
    ELECTRONIC NOTES IN THEORETICAL COMPUTER SCIENCE, 2012, 284 : 125 - 137
  • [42] Retinal hemorrhage detection by rule-based and machine learning approach
    Xiao, Di
    Yu, Shuang
    Vignarajan, Janardhan
    An, Dong
    Tay-Kearney, Mei-Ling
    Kanagasingam, Yogi
    2017 39TH ANNUAL INTERNATIONAL CONFERENCE OF THE IEEE ENGINEERING IN MEDICINE AND BIOLOGY SOCIETY (EMBC), 2017, : 660 - 663
  • [43] Machine learning for prediction of muscle activations for a rule-based controller
    Jonic, S
    Popovic, D
    PROCEEDINGS OF THE 19TH ANNUAL INTERNATIONAL CONFERENCE OF THE IEEE ENGINEERING IN MEDICINE AND BIOLOGY SOCIETY, VOL 19, PTS 1-6: MAGNIFICENT MILESTONES AND EMERGING OPPORTUNITIES IN MEDICAL ENGINEERING, 1997, 19 : 1781 - 1784
  • [44] Rule-based explanations based on ensemble machine learning for detecting sink mark defects in the injection moulding process
    Obregon, Josue
    Hong, Jihoon
    Jung, Jae-Yoon
    JOURNAL OF MANUFACTURING SYSTEMS, 2021, 60 : 392 - 405
  • [45] Learning rule-based models of biological process from gene expression time profiles using gene ontology
    Hvidsten, TR
    Lægreid, A
    Komorowski, J
    BIOINFORMATICS, 2003, 19 (09) : 1116 - 1123
  • [46] Interpreting machine learning prediction of fire emissions and comparison with FireMIP process-based models
    Wang, Sally S-C
    Qian, Yun
    Leung, L. Ruby
    Zhang, Yang
    ATMOSPHERIC CHEMISTRY AND PHYSICS, 2022, 22 (05) : 3445 - 3468
  • [47] Towards a Rule-Based Recommendation Approach for Business Process Modeling
    Sola, Diana
    SERVICE-ORIENTED COMPUTING, ICSOC 2020, 2021, 12632 : 25 - 31
  • [48] Generating Rule-based Executable Process Models for Service Outsourcing
    Jung, Jae-Yoon
    PROCEEDINGS OF THE 2009 SIXTH INTERNATIONAL CONFERENCE ON INFORMATION TECHNOLOGY: NEW GENERATIONS, VOLS 1-3, 2009, : 114 - 118
  • [49] Recommender System of Final Project Topic Using Rule-based and Machine Learning Techniques
    Fiarni, Cut
    Maharani, Herastia
    Lukito, Billy
    2021 8TH INTERNATIONAL CONFERENCE ON ELECTRICAL ENGINEERING, COMPUTERSCIENCE AND INFORMATICS (EECSI) 2021, 2021, : 216 - 221
  • [50] Spacecraft Autonomy modeled via Markov Decision Process and Associative Rule-based Machine Learning
    D'Angelo, Gianni
    Tipaldi, Massimo
    Glielmo, Luigi
    Rampone, Salvatore
    2017 IEEE INTERNATIONAL WORKSHOP ON METROLOGY FOR AEROSPACE (METROAEROSPACE), 2017, : 324 - 329