Nested sequential feed-forward neural network: A cumulative model for crop yield prediction

被引:0
|
作者
Chang, N. Andy Kundang [1 ]
Dey, Shouvik [1 ]
Das, Dushmanta Kumar [2 ]
机构
[1] Natl Inst Technol Nagaland, Dept Comp Sci & Engn, Dimapur, India
[2] Natl Inst Technol Nagaland, Elect & Elect Engn, Dimapur, India
关键词
Crop yield prediction; Feedforward neural network; Time-dimension based problem; Cache memory; AGRICULTURE;
D O I
10.1016/j.compag.2024.109562
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
This paper contends that framing crop yield prediction as a time-series problem imposes significant limitations. The varying climatic conditions, along with the distinct time frames associated with different stages of crop cultivation - such as sowing, vegetation growth, flowering, and harvest - present substantial challenges for accurately predicting crop yields. Additionally, the evolving climatic conditions over the years further complicate the prediction process. To address these challenges, this study introduces a novel perspective termed the 'Time-Dimension Based (TDB) Problem,' offering a conceptual framework that redefines how crop yield prediction should be approached. The TDB framework guides the modeling architecture into two layers: one for capturing the varying climatic conditions and the other for accumulating their impact on crops to determine the final yield. To implement this approach, the paper introduces the "Nested Sequential Feed-Forward Neural Network (NSFFNet)," a novel neural network architecture. NSFFNet features key components, including an innovative 'Nested Sequential Feed-Forwarding of Inputs' using feed-forward neural network for capturing Earth's climatic patterns over time, and a 'Neural Cache Layer' that utilizes cache memory to accumulate the cumulative impact of these patterns on crop yield. To validate this approach, a comprehensive evaluation of NSFFNet was conducted against traditional time-series models. The model was assessed for accuracy, generalizability, and robustness, particularly in estimating yields during drought years. NSFFNet consistently outperforms established models like RNN, 1D CNN, LSTM, GRU, and Transformer. These findings suggest that redefining crop yield prediction as a TDB problem is a highly effective strategy.
引用
收藏
页数:15
相关论文
共 50 条
  • [21] Feed-forward and recurrent neural networks in signal prediction
    Prochazka, Ales
    Pavelka, Ales
    ICCC 2007: 5TH IEEE INTERNATIONAL CONFERENCE ON COMPUTATIONAL CYBERNETICS, PROCEEDINGS, 2007, : 93 - 96
  • [22] Feed-forward neural networks for secondary structure prediction
    Barlow, T.W.
    Journal of Molecular Graphics, 1995, 13 (03):
  • [23] A NOVEL METHOD WITH MULTILAYER FEED-FORWARD NEURAL NETWORK FOR MODELING OUTPUT YIELD IN AGRICULTURE
    Taki, Morteza
    Haddad, Meisam
    INTERNATIONAL JOURNAL OF MODERN AGRICULTURE, 2012, 1 (01): : 13 - 23
  • [24] On the feed-forward neural network for analyzing pantograph equations
    Az-Zo'bi, Emad A.
    Shah, Rasool
    Alyousef, Haifa A.
    Tiofack, C. G. L.
    El-Tantawy, S. A.
    AIP ADVANCES, 2024, 14 (02)
  • [25] As experiment with feed-forward neural network for speech recognition
    Jelinek, B
    Juhar, J
    Cizmar, A
    STATE OF THE ART IN COMPUTATIONAL INTELLIGENCE, 2000, : 308 - 313
  • [26] An incremental learning preprocessor for feed-forward neural network
    Piyabute Fuangkhon
    Artificial Intelligence Review, 2014, 41 : 183 - 210
  • [27] Finding an Optimal Configuration of the Feed-forward Neural Network
    Strba, Radoslav
    Stolfa, Jakub
    Stolfa, Svatopluk
    INFORMATION MODELLING AND KNOWLEDGE BASES XXVII, 2016, 280 : 199 - 206
  • [28] Enhancing Feed-Forward Neural Network in Image Classification
    Daday, Mark Jovic A.
    Fajardo, Arnel C.
    Medina, Ruji P.
    2019 2ND INTERNATIONAL CONFERENCE ON COMPUTING AND BIG DATA (ICCBD 2019), 2019, : 86 - 90
  • [29] Response analysis of feed-forward neural network predictors
    Varone, B
    Tanskanen, JMA
    Ovaska, SJ
    1997 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH, AND SIGNAL PROCESSING, VOLS I - V: VOL I: PLENARY, EXPERT SUMMARIES, SPECIAL, AUDIO, UNDERWATER ACOUSTICS, VLSI; VOL II: SPEECH PROCESSING; VOL III: SPEECH PROCESSING, DIGITAL SIGNAL PROCESSING; VOL IV: MULTIDIMENSIONAL SIGNAL PROCESSING, NEURAL NETWORKS - VOL V: STATISTICAL SIGNAL AND ARRAY PROCESSING, APPLICATIONS, 1997, : 3309 - 3312