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A Chlorophyll-a Concentration Inversion Model Based on Backpropagation Neural Network Optimized by an Improved Metaheuristic Algorithm
by
Cui, Jianyong
, Xu, Mingming
, Wang, Xichen
in
Accuracy
/ Algorithms
/ Artificial Ecosystem Optimization
/ Artificial intelligence
/ Back propagation
/ Back propagation networks
/ backpropagation neural network
/ China
/ Chlorophyll
/ chlorophyll-a
/ Coastal management
/ Coastal waters
/ Coasts
/ Comparative analysis
/ Distribution
/ Ecosystems
/ Eutrophication
/ Google Earth Engine
/ Heuristic methods
/ Heuristic programming
/ Hong Kong
/ Internet
/ Marine ecosystems
/ Measurement
/ Monitoring
/ Neural networks
/ Optimization
/ Precipitation
/ prediction
/ Predictions
/ Quality management
/ Red tides
/ Remote sensing
/ Search engines
/ Search methods
/ Stability
/ Water management
/ Water quality
/ Water quality management
/ Water resources
/ Water resources management
2024
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A Chlorophyll-a Concentration Inversion Model Based on Backpropagation Neural Network Optimized by an Improved Metaheuristic Algorithm
by
Cui, Jianyong
, Xu, Mingming
, Wang, Xichen
in
Accuracy
/ Algorithms
/ Artificial Ecosystem Optimization
/ Artificial intelligence
/ Back propagation
/ Back propagation networks
/ backpropagation neural network
/ China
/ Chlorophyll
/ chlorophyll-a
/ Coastal management
/ Coastal waters
/ Coasts
/ Comparative analysis
/ Distribution
/ Ecosystems
/ Eutrophication
/ Google Earth Engine
/ Heuristic methods
/ Heuristic programming
/ Hong Kong
/ Internet
/ Marine ecosystems
/ Measurement
/ Monitoring
/ Neural networks
/ Optimization
/ Precipitation
/ prediction
/ Predictions
/ Quality management
/ Red tides
/ Remote sensing
/ Search engines
/ Search methods
/ Stability
/ Water management
/ Water quality
/ Water quality management
/ Water resources
/ Water resources management
2024
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A Chlorophyll-a Concentration Inversion Model Based on Backpropagation Neural Network Optimized by an Improved Metaheuristic Algorithm
by
Cui, Jianyong
, Xu, Mingming
, Wang, Xichen
in
Accuracy
/ Algorithms
/ Artificial Ecosystem Optimization
/ Artificial intelligence
/ Back propagation
/ Back propagation networks
/ backpropagation neural network
/ China
/ Chlorophyll
/ chlorophyll-a
/ Coastal management
/ Coastal waters
/ Coasts
/ Comparative analysis
/ Distribution
/ Ecosystems
/ Eutrophication
/ Google Earth Engine
/ Heuristic methods
/ Heuristic programming
/ Hong Kong
/ Internet
/ Marine ecosystems
/ Measurement
/ Monitoring
/ Neural networks
/ Optimization
/ Precipitation
/ prediction
/ Predictions
/ Quality management
/ Red tides
/ Remote sensing
/ Search engines
/ Search methods
/ Stability
/ Water management
/ Water quality
/ Water quality management
/ Water resources
/ Water resources management
2024
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A Chlorophyll-a Concentration Inversion Model Based on Backpropagation Neural Network Optimized by an Improved Metaheuristic Algorithm
Journal Article
A Chlorophyll-a Concentration Inversion Model Based on Backpropagation Neural Network Optimized by an Improved Metaheuristic Algorithm
2024
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Overview
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 have found that metaheuristic optimization algorithms can significantly improve these shortcomings by optimizing the initial parameters (weights and biases) of BP neural networks. In this paper, the adaptive nonlinear weight coefficient, the path search strategy “Levy flight” and the dynamic crossover mechanism are introduced to optimize the three main steps of the Artificial Ecosystem Optimization (AEO) algorithm to overcome the algorithm’s limitation in solving complex problems, improve its global search capability, and thereby improve its performance in optimizing BP neural networks. Relying on Google Earth Engine and Google Colaboratory (Colab), a model for the inversion of Chl-a concentration in the coastal waters of Hong Kong was built to verify the performance of the improved AEO algorithm in optimizing BP neural networks, and the improved AEO algorithm proposed herein was compared with 17 different metaheuristic optimization algorithms. The results show that the Chl-a concentration inversion model based on a BP neural network optimized using the improved AEO algorithm is significantly superior to other models in terms of prediction accuracy and stability, and the results obtained via the model through inversion with respect to Chl-a concentration in the coastal waters of Hong Kong during heavy precipitation events and red tides are highly consistent with the measured values of Chl-a concentration in both time and space domains. These conclusions can provide a new method for Chl-a concentration monitoring and water quality management for coastal waters.
Publisher
MDPI AG
Subject
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