LGCVMay 16, 2022

Pest presence prediction using interpretable machine learning

arXiv:2205.07723v110 citationsh-index: 19
Originality Synthesis-oriented
AI Analysis

This work addresses timely pest detection for cotton farmers, but it is incremental as it applies an existing interpretable method to a specific agricultural dataset.

The authors tackled the problem of predicting cotton bollworm pest presence in Greek cotton fields using an interpretable machine learning model, achieving satisfactory results that align with known drivers from the literature.

Helicoverpa Armigera, or cotton bollworm, is a serious insect pest of cotton crops that threatens the yield and the quality of lint. The timely knowledge of the presence of the insects in the field is crucial for effective farm interventions. Meteo-climatic and vegetation conditions have been identified as key drivers of crop pest abundance. In this work, we applied an interpretable classifier, i.e., Explainable Boosting Machine, which uses earth observation vegetation indices, numerical weather predictions and insect trap catches to predict the onset of bollworm harmfulness in cotton fields in Greece. The glass-box nature of our approach provides significant insight on the main drivers of the model and the interactions among them. Model interpretability adds to the trustworthiness of our approach and therefore its potential for rapid uptake and context-based implementation in operational farm management scenarios. Our results are satisfactory and the importance of drivers, through our analysis on global and local explainability, is in accordance with the literature.

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