Large-scale spatio-temporal yield estimation via deep learning using satellite and management data fusion in vineyards

被引:5
|
作者
Kamangir, Hamid [1 ,4 ]
Sams, Brent S. [2 ]
Dokoozlian, Nick [2 ]
Sanchez, Luis [2 ]
Earles, J. Mason [1 ,3 ,4 ]
机构
[1] Univ Calif Davis, Dept Biol & Agr Engn, Davis, CA 95616 USA
[2] E&J Gallo Winery, Dept Winegrowing Res, Modesto, CA USA
[3] Univ Calif Davis, Dept Viticulture & Enol, Davis, CA USA
[4] AIFS, Davis, CA USA
关键词
Vineyard yield estimation; Spatio-temporal estimation; Sentinel; 2; Yield spatial variability; Deep learning; CROP YIELD; TIME-SERIES; SPATIAL VARIABILITY; FRUIT DETECTION; GRAPE YIELD; PREDICTION; WHEAT; NDVI; CORN; SOIL;
D O I
10.1016/j.compag.2023.108439
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
Crop yield forecasting is essential for informed farm management decisions. However, most yield forecasting models have low spatial resolution, late-season predictions, and lack validation for unseen years or locations. These limitations likely stem from the scarcity of large-scale, high-resolution yield measurement data collected over multiple years, which is uncommon in commercial specialty crop operations. Additionally, these limitations raise concerns about the models' utility and generalizability under new environmental and management conditions within or across farms. In this study, we develop a spatio-temporal deep learning model to forecast wine grape yield early in the season, utilizing a large dataset with high spatio-temporal resolution (i.e., yield data from similar to 5 million grapevines of eight cultivars observed over four years). The model is trained on weekly 10 m RGB-NIR time-series satellite data from Sentinel 2A-B, fused with categorical and continuous management inputs, including cultivar type, trellis type, row spacing, and canopy spacing. We assess the model's generalizability by examining its performance on data from unseen years and/or locations and at multiple spatial resolutions. Our results show that combining management data with satellite imagery significantly improves model performance on entirely unseen vineyard blocks at 10 m resolution, achieving an R2 of 0.76, a mean absolute error (MAE) of 4.21 tonnes/hectare, and a mean absolute percent error (MAPE) of 13%. We find that cultivars with considerable year-to-year yield variability tend to exhibit lower predictive performance and may benefit from longer time-series observations for model training to encompass a wide range of environmental and management conditions. We also observe improved estimations from the early season in April to the middle of the growing season in June. In conclusion, the yield forecasting and model validation framework established in this study lays the foundation for training spatio-temporally aware deep learning models on exceptionally large yield datasets with high spatio-temporal resolution. We anticipate that such models will become increasingly prevalent as yield monitors are more frequently deployed in specialty crop operations.
引用
收藏
页数:14
相关论文
共 50 条
  • [1] A Large-Scale Spatio-Temporal Multimodal Fusion Framework for Traffic Prediction
    Zhou, Bodong
    Liu, Jiahui
    Cui, Songyi
    Zhao, Yaping
    BIG DATA MINING AND ANALYTICS, 2024, 7 (03): : 621 - 636
  • [2] PFNet: Large-Scale Traffic Forecasting With Progressive Spatio-Temporal Fusion
    Wang, Chen
    Zuo, Kaizhong
    Zhang, Shaokun
    Lei, Hanwen
    Hu, Peng
    Shen, Zhangyi
    Wang, Rui
    Zhao, Peize
    IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2023, 24 (12) : 14580 - 14597
  • [3] AN OPERATIONAL APPROACH TO LARGE-SCALE CROP YIELD PREDICTION WITH SPATIO-TEMPORAL MACHINE LEARNING MODELS
    Helber, Patrick
    Bischke, Benjamin
    Packbier, Carolin
    Habelitz, Peter
    Seefeldt, Florian
    IGARSS 2024-2024 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM, IGARSS 2024, 2024, : 4299 - 4302
  • [4] A comparative study of urban mobility patterns using large-scale spatio-temporal data
    The Anh Dang
    Chiam, Jodi
    Li, Ying
    2018 18TH IEEE INTERNATIONAL CONFERENCE ON DATA MINING WORKSHOPS (ICDMW), 2018, : 572 - 579
  • [5] Data assimilation for large-scale spatio-temporal systems using a location particle smoother
    Briggs, Jonathan
    Dowd, Michael
    Meyer, Renate
    ENVIRONMETRICS, 2013, 24 (02) : 81 - 97
  • [6] Learning Spatio-Temporal Aggregations for Large-Scale Capacity Expansion Problems
    Brenner, Aron
    Khorramfar, Rahman
    Amin, Saurabh
    PROCEEDINGS OF THE 2023 ACM/IEEE 14TH INTERNATIONAL CONFERENCE ON CYBER-PHYSICAL SYSTEMS, WITH CPS-IOTWEEK 2023, 2023, : 68 - 77
  • [7] Spatio-Temporal Data Clustering using Deep Learning: A Review
    Aparna, R.
    Idicula, Sumam Mary
    2022 IEEE CONFERENCE ON EVOLVING AND ADAPTIVE INTELLIGENT SYSTEMS (IEEE EAIS 2022), 2022,
  • [8] Crop Yield Prediction Using Multitemporal UAV Data and Spatio-Temporal Deep Learning Models
    Nevavuori, Petteri
    Narra, Nathaniel
    Linna, Petri
    Lipping, Tarmo
    REMOTE SENSING, 2020, 12 (23) : 1 - 18
  • [9] STORM: Spatio-Temporal Online Reasoning and Management of Large Spatio-Temporal Data
    Christensen, Robert
    Wang, Lu
    Li, Feifei
    Yi, Ke
    Tang, Jun
    Villa, Natalee
    SIGMOD'15: PROCEEDINGS OF THE 2015 ACM SIGMOD INTERNATIONAL CONFERENCE ON MANAGEMENT OF DATA, 2015, : 1111 - 1116
  • [10] Spatio-temporal join technique for disaster estimation in large-scale natural disaster
    Hayashi, Hideki
    Asahara, Akinori
    Sugaya, Natsuko
    Ogawa, Yuichi
    Tomita, Hitoshi
    PROCEEDINGS OF THE 6TH ACM SIGSPATIAL INTERNATIONAL WORKSHOP ON GEOSTREAMING (IWGS) 2015, 2015, : 49 - 58