4.7 Article

Combining Disease Mechanism and Machine Learning to Predict Wheat Fusarium Head Blight

Journal

REMOTE SENSING
Volume 14, Issue 12, Pages -

Publisher

MDPI
DOI: 10.3390/rs14122732

Keywords

wheat; fusarium head blight; mechanism; remote sensing; machine learning techniques

Funding

  1. National Key R&D Program of China [2021YFE0194800]
  2. National Natural Science Foundation of China [42071423]
  3. Alliance of International Science Organizations [ANSO-CR-KP-2021-06]
  4. Beijing Nova Program of Science and Technology [Z191100001119089]
  5. Program of Bureau of International Cooperation, Chinese Academy of Sciences [183611KYSB20200080]

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In this study, a prediction method for wheat Fusarium head blight (FHB) that combines a logistic regression mechanism-based model and k-nearest neighbors (KNN) model was proposed. By integrating factor weights into the predictive factors, the occurrence rate of wheat FHB was accurately predicted. The results showed that the proposed method achieved higher accuracy and stability compared to traditional models.
Wheat Fusarium head blight (FHB) can be effectively controlled through prediction. To address the low accuracy and poor stability of model predictions of wheat FHB, a prediction method of wheat FHB that couples a logistic regression mechanism-based model and k-nearest neighbours (KNN) model is proposed in this paper. First, we selected predictive factors, including remote sensing-based and meteorological factors. Then, we quantitatively expressed the factor weights of the disease occurrence and development mechanisms in the disease prediction model by using a logistic model. Subsequently, we integrated the obtained factor weights into the predictive factors and input the predictive factors with weights into the KNN model to predict the incidence of wheat FHB. Finally, the accuracy and generalizability of the models were evaluated. Wheat fields in Changfeng, Dingyuan, Fengyuan, and Feidong counties, Anhui Province, where wheat FHB often occurs, were used as the study area. The incidences of wheat FHB on 29 April and 10 May 2021 were predicted. Compared with a model that did not consider disease mechanism, the accuracy of our model increased by approximately 13%. The overall accuracies of the models for the two dates were 0.88 and 0.92, and the F1 index was 0.86 and 0.94, respectively. The results show that the predictions made with the logistic-KNN model had higher accuracy and better stability than those made with the KNN model, thus achieving remote sensing-based high-precision prediction of wheat FHB.

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