Improving a weed population model using the sequential Monte Carlo method

IMG_20200802_124538.JPG
Field measurements and weed population model predictions have been proposed as the basis for recommendations requiring chemical or mechanical treatment, but both approaches have some limitations. This study shows how a sequential Monte Carlo (SMC) method can be used to combine weed measurements and model predictions to better estimate weed characteristics. SMC was applied to the dynamic model, which simulates weed density, seed production, and seedbank density for Alopecurus myosuaroids (blackgrass). Using experiments conducted in seven plots over the course of 6 years, the benefit from SMC was determined for several types of weed count data. Compared to the initial model predictions, SMC reduced the root mean squared error (RMSE) by 33.5–81.5%. Compared to the weed densities obtained from weed counts alone, SMC reduced the RMSE by 1.2–10%. SMC should be preferred for single use of the model or weed count data, as it can improve weed density predictions and because to analyze uncertainty about the status of the probability distribution system calculated by SMC Can be used.


Posted via weedcash.network

Sort:  

Source
Plagiarism is the copying & pasting of others work without giving credit to the original author or artist. Plagiarized posts are considered fraud and violate the intellectual property rights of the original creator.

Fraud is discouraged by the community and may result in the account being Blacklisted.

If you believe this comment is in error, please contact us in #appeals in Discord.

Hi! I am a robot. I just upvoted you! I found similar content that readers might be interested in:
https://www.researchgate.net/publication/230495298_Improving_a_weed_population_model_using_a_sequential_Monte_Carlo_method