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Assessing Weather-Yield Relationships in Rice at Local Scale Using Data Mining Approaches. | LitMetric

AI Article Synopsis

  • Seasonal climate variability and climate change are challenging for farmers, prompting the need for new tools to adapt and utilize increasing observational data on crop performance.
  • Data mining techniques can help analyze large datasets to uncover insights from farmer experiences, identifying best practices for coping with climate variability.
  • A case study on rice in Colombia used data mining to assess the relationship between climate factors and crop yields, revealing how different cultivars respond uniquely to weather conditions and allowing for targeted recommendations for specific weather patterns.

Article Abstract

Seasonal and inter-annual climate variability have become important issues for farmers, and climate change has been shown to increase them. Simultaneously farmers and agricultural organizations are increasingly collecting observational data about in situ crop performance. Agriculture thus needs new tools to cope with changing environmental conditions and to take advantage of these data. Data mining techniques make it possible to extract embedded knowledge associated with farmer experiences from these large observational datasets in order to identify best practices for adapting to climate variability. We introduce new approaches through a case study on irrigated and rainfed rice in Colombia. Preexisting observational datasets of commercial harvest records were combined with in situ daily weather series. Using Conditional Inference Forest and clustering techniques, we assessed the relationships between climatic factors and crop yield variability at the local scale for specific cultivars and growth stages. The analysis showed clear relationships in the various location-cultivar combinations, with climatic factors explaining 6 to 46% of spatiotemporal variability in yield, and with crop responses to weather being non-linear and cultivar-specific. Climatic factors affected cultivars differently during each stage of development. For instance, one cultivar was affected by high nighttime temperatures in the reproductive stage but responded positively to accumulated solar radiation during the ripening stage. Another was affected by high nighttime temperatures during both the vegetative and reproductive stages. Clustering of the weather patterns corresponding to individual cropping events revealed different groups of weather patterns for irrigated and rainfed systems with contrasting yield levels. Best-suited cultivars were identified for some weather patterns, making weather-site-specific recommendations possible. This study illustrates the potential of data mining for adding value to existing observational data in agriculture by allowing embedded knowledge to be quickly leveraged. It generates site-specific information on cultivar response to climatic factors and supports on-farm management decisions for adaptation to climate variability.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC4999131PMC
http://journals.plos.org/plosone/article?id=10.1371/journal.pone.0161620PLOS

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