Affiliation:
1. Texas A&M AgriLife Research, Blackland Research and Extension Center, Temple, TX 76502, USA
2. USDA Agricultural Research Service, Fort Keogh Livestock and Range Research Laboratory, Miles City, MT 59301, USA
Abstract
Timely forecasting of aboveground vegetation biomass is crucial for effective management and ensuring food security. However, research on predicting aboveground biomass remains scarce. Artificial intelligence (AI) methods could bridge this research gap and provide early warning to planners and stakeholders. This study evaluates the effectiveness of deep learning (DL) algorithms in predicting aboveground vegetation biomass with limited-size data. It employs an iterative forecasting procedure for four target horizons, comparing the performance of DL models—multi-layer perceptron (MLP), long short-term memory (LSTM), gated recurrent unit (GRU), convolutional neural network (CNN), and CNN-LSTM—against the traditional seasonal autoregressive integrated moving average (SARIMA) model, serving as a benchmark. Five limited-size vegetation biomass time series from Kenyan grasslands with values at 15-day intervals over a 20-year period were chosen for this purpose. Comparing the outcomes of these models revealed significant differences (p < 0.05); however, none of the models proved superior among the five time series and the four horizons evaluated. The SARIMA, CNN, and CNN-LSTM models performed best, with the statistical model slightly outperforming the other two. Additionally, the accuracy of all five models varied significantly according to the prediction horizon (p < 0.05). As expected, the accuracy of the models decreased as the prediction horizon increased, although this relationship was not strictly monotonic. Finally, this study indicated that, in limited-size aboveground vegetation biomass time series, there is no guarantee that deep learning methods will outperform traditional statistical methods.
Funder
The Food and Agriculture Organization of the United Nations
Reference59 articles.
1. Mapping aboveground biomass and its prediction uncertainty using LiDAR and field data, accounting for tree-level allometric and LiDAR model errors;Saarela;For. Ecosyst.,2020
2. Das, B., Patnaik, S.K., Bordoloi, R., Paul, A., and Tripathi, O.P. (2022). Prediction of forest aboveground biomass using an integrated approach of space-based parameters, and forest inventory data. Geol. Ecol. Landscapes, 1–13.
3. Osorio Leyton, J.M. (2021). Piloting of the Predictive Livestock Early Warning System (PLEWs), FAO. Final Report for FAO Letter of Agreement No. SS/085/20.
4. Predictive Livestock Early Warning System (PLEWS): Monitoring forage condition and implications for animal production in Kenya;Matere;Weather. Clim. Extremes,2020
5. Braimoh, A., Manyena, B., Obuya, G., and Muraya, F. (2018). Assessment of Food Security Early Warning Systems for East and Southern Africa, World Bank. Available online: http://hdl.handle.net/10986/29269.
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献