Litcius/Paper detail

AI-Driven Validation of Digital Agriculture Models

Eduardo Romero-Gainza, Christopher Stewart

2023Sensors17 citationsDOIOpen Access PDF

Abstract

Digital agriculture employs artificial intelligence (AI) to transform data collected in the field into actionable crop management. Effective digital agriculture models can detect problems early, reducing costs significantly. However, ineffective models can be counterproductive. Farmers often want to validate models by spot checking their fields before expending time and effort on recommended actions. However, in large fields, farmers can spot check too few areas, leading them to wrongly believe that ineffective models are effective. Model validation is especially difficult for models that use neural networks, an AI technology that normally assesses crops health accurately but makes inexplicable recommendations. We present a new approach that trains random forests, an AI modeling approach whose recommendations are easier to explain, to mimic neural network models. Then, using the random forest as an explainable white box, we can (1) gain knowledge about the neural network, (2) assess how well a test set represents possible inputs in a given field, (3) determine when and where a farmer should spot check their field for model validation, and (4) find input data that improve the test set. We tested our approach with data used to assess soybean defoliation. Using information from the four processes above, our approach can reduce spot checks by up to 94%.

Topics & Concepts

Field (mathematics)Artificial neural networkComputer scienceSet (abstract data type)Machine learningArtificial intelligenceTest setData setData miningPrecision agricultureAgricultureMathematicsGeographyProgramming languageArchaeologyPure mathematicsSmart Agriculture and AIGreenhouse Technology and Climate ControlRemote Sensing in Agriculture