Quantifying error in fine-scale crop yield forecasts to guide data and algorithm improvements: case study of mango in Tamil Nadu, India
Article
| Article Title | Quantifying error in fine-scale crop yield forecasts to guide data and algorithm improvements: case study of mango in Tamil Nadu, India |
|---|---|
| ERA Journal ID | 41630 |
| Article Category | Article |
| Authors | Kouadio, Louis, Kulanthaivel, Bhuvaneswari, Mai, Thanh, Nguyen-Huy, Thong, Wang, Qingxia (Jenny), Byrareddy, Vivekananda M., Mushtaq, Shahbaz, Senthil, Alagarswamy, Newlands, Nathaniel K. and Geethalakshmi, Vellingiri |
| Journal Title | Computers and Electronics in Agriculture |
| Journal Citation | 236 |
| Article Number | 110450 |
| Number of Pages | 16 |
| Year | 2025 |
| Publisher | Elsevier |
| Place of Publication | Netherlands |
| ISSN | 0168-1699 |
| Digital Object Identifier (DOI) | https://doi.org/10.1016/j.compag.2025.110450 |
| Web Address (URL) | https://www.sciencedirect.com/science/article/pii/S0168169925005563 |
| Abstract | Accurate and timely prediction of mango yield is essential for optimizing resource management, market planning, and climate adaptation strategies. However, dealing with spatial variation of uncertainty and error in fine-scale (e.g., district) yield forecasts has yet to be fully explored. This study investigates a modelling approach that combines statistical methods including bootstrap robust least-angle regression, leave-one-out cross-validation, Bayesian-based spatial correlation analysis, and Markov chain Monte Carlo scheme, and machine learning (ML) (random forest technique) to enhance predictor selection, capture spatial trends, and generate probabilistic mango yield forecasts at the district scale in Tamil Nadu, India. Results showed that pre-flowering drought stress, temperature fluctuation and rainfall distribution, during flowering, fruit set, and fruit development, along with drought conditions in March and July, were dominant drivers of yield variability. Model evaluation revealed acceptable levels of errors in estimating mango yield, with root mean square error ≤ 2.0 t ha−1, and mean absolute percentage error ≤ 30 % in 18 out of 31 districts. However, forecasting errors at three different lead times (two and one months prior to, and at start of harvest) varied spatially across districts, with lower errors in southern and north-western regions but higher errors in northern and central districts, reflecting the complexity of district-level forecasting under diverse environmental conditions. Agroclimatic variables alone might not be sufficient for accurate mango yield forecasts across Tamil Nadu. By integrating diverse data for model training and refining the ML-based forecast algorithm between fine-scale regions, this study can serve as a foundation for developing climate-resilient mango production strategies tailored to regional variability. |
| Keywords | Climate variability; Mangifera indica; Crop yield prediction; SPEI |
| Contains Sensitive Content | Does not contain sensitive content |
| ANZSRC Field of Research 2020 | 300402. Agro-ecosystem function and prediction |
| 460207. Modelling and simulation | |
| Byline Affiliations | Centre for Applied Climate Sciences |
| Institute for Life Sciences and the Environment | |
| Africa Rice Center, Ivory Coast | |
| Tamil Nadu Agricultural University, India | |
| School of Business | |
| Agriculture and Agri-Food, Canada |
https://research.usq.edu.au/item/zx534/quantifying-error-in-fine-scale-crop-yield-forecasts-to-guide-data-and-algorithm-improvements-case-study-of-mango-in-tamil-nadu-india
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