2024
DOI: 10.3390/rs16091503
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A Chlorophyll-a Concentration Inversion Model Based on Backpropagation Neural Network Optimized by an Improved Metaheuristic Algorithm

Xichen Wang,
Jianyong Cui,
Mingming Xu

Abstract: Chlorophyll-a (Chl-a) concentration monitoring is very important for managing water resources and ensuring the stability of marine ecosystems. Due to their high operating efficiency and high prediction accuracy, backpropagation (BP) neural networks are widely used in Chl-a concentration inversion. However, BP neural networks tend to become stuck in local optima, and their prediction accuracy fluctuates significantly, thus posing restrictions to their accuracy and stability in the inversion process. Studies hav… Show more

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“…Combining the PCA and BP neural network for a regression analysis helps to reduce the risk of overfitting and enhances generalization to unseen data by eliminating noise and irrelevant variables from the data. However, it also comes with disadvantages [18]. The dimensionality reduction process may discard some components that are crucial for prediction, leading to a deterioration in the interpretability of the model.…”
Section: Locust Density Inversion Modelmentioning
confidence: 99%
“…Combining the PCA and BP neural network for a regression analysis helps to reduce the risk of overfitting and enhances generalization to unseen data by eliminating noise and irrelevant variables from the data. However, it also comes with disadvantages [18]. The dimensionality reduction process may discard some components that are crucial for prediction, leading to a deterioration in the interpretability of the model.…”
Section: Locust Density Inversion Modelmentioning
confidence: 99%