Passa al contenuto principale

A Fuzzy Neural Network Approach to Quality Assessment of Water Reservoirs

Satellite imagery and fuzzy neural networks enable accurate estimation of key water quality indicators in large reservoirs.

The Complexity of Monitoring Water Quality in Reservoirs

Water quality in large artificial reservoirs represents a complex challenge, where biological, chemical, and environmental factors interact in nonlinear and often hard-to-observe ways. Algal proliferation phenomena, in particular, can compromise both drinking and recreational uses of water resources, making it necessary to adopt monitoring strategies that are more systematic, less invasive, and more predictive than traditional approaches based solely on in situ sampling.

Combining Satellite Remote Sensing and Fuzzy AI

To address this challenge, an approach is developed that combines satellite remote sensing with fuzzy neural network models, aiming to estimate key water quality parameters such as chlorophyll-a, algal concentration, and turbidity. The core idea is to exploit the information contained in high-resolution multispectral satellite images and transform it into a numerical representation suitable for processing by machine learning models.

Wavelet-Based Feature Extraction from Multispectral Images

Satellite images are first selected at locations corresponding to reservoir sampling points and then preprocessed using a wavelet transformation. This step decomposes the spectral information into components that capture local variations and meaningful spatial structures, while simultaneously reducing noise and the dimensionality of the problem. The resulting components are concatenated into a compact feature vector, which serves as input for the predictive models.

Neuro-Fuzzy Models for Nonlinear Environmental Estimation

For the estimation phase, neuro-fuzzy systems and radial basis function networks are adopted, as they are capable of modeling strongly nonlinear relationships while incorporating a form of gradual reasoning typical of fuzzy logic. These models learn the mapping between the spectral response observed by the satellite and the measured physicochemical parameters, achieving generalization even in the presence of seasonal dynamics and pronounced environmental variability.

Validation on a Real Reservoir with Algal Blooms

The approach is validated on a real reservoir affected by recurrent algal bloom events, using data collected over multiple years and across different locations within the lake. The results show good predictive performance for all considered parameters, with particularly strong accuracy in turbidity estimation and stable behavior even for more challenging biological variables.

Toward Scalable and Continuous Water Quality Surveillance

Overall, this work demonstrates how the integration of satellite observation and fuzzy artificial intelligence can provide an effective tool for continuous water quality monitoring. An approach that reduces reliance on costly and discontinuous measurement campaigns, and opens the door to more responsive, scalable environmental surveillance systems capable of supporting informed water resource management decisions.

Autori

H. A. N. Silva, A. Rosato, M. Panella
Marzo 2, 2020

Consigliati

Consigliati

Altri articoli da leggere
Renewable energy

A Review of the Enabling Methodologies for Knowledge Discovery from Smart Grids Data

A KDD-driven pipeline turns smart meter streams into multi-step load forecasts, benchmarking feature reduction and models.
Biomedical

Enhancing Autism Detection Through Gaze Analysis Using Eye Tracking Sensors and Data Attribution with Distillation in Deep Neural Networks

A deep learning model enhances early autism diagnosis by analyzing visual patterns with eye tracking.
Quantum computing

Quantum Generative Modeling via Straightforward State Preparation

A lightweight quantum generative model creates high-fidelity data samples with minimal parameters and efficient state preparation.
Quantum computing

Enhancing QAOA Ansatz via Multi-Parameterized Layer and Blockwise Optimization

A novel quantum-classical algorithm boosts QAOA performance with fewer layers, enabling real-world optimization on NISQ devices.
Renewable energy

A Deep Learning-based Approach for Battery Life Classification

A deep learning-based LSTM network accurately classifies battery health, optimizing energy storage and predictive maintenance.
Biomedical

An explainable fast deep neural network for emotion recognition

A fast, explainable deep neural network enhances emotion recognition by optimizing facial landmark analysis.
Renewable energy

Multi-label classification with imbalanced classes by fuzzy deep neural networks

A fuzzy deep neural network accurately classifies household appliances in real time using symbolic data and multi-label AI.
Quantum computing

Quantum enhanced knowledge distillation

Classical-to-quantum knowledge distillation boosts hybrid AI performance using efficient quantum circuits and reduced model sizes.
Quantum computing

A variational approach to quantum gated recurrent units

A faster and efficient Quantum Gated Recurrent Unit (QGRU) improves time series forecasting.
Aerospace

A Neural Network Symbolic Approach to Structural Health Monitoring in Aerospace Applications

A symbolic deep learning approach enhances structural health monitoring in aerospace achieving near-perfect damage classification.

Hai un'esigenza
specifica? 

Compila il form e parlaci del tuo progetto.
Ti proponiamo la soluzione più adatta al tuo contesto.
Impossibile salvare l'abbonamento. Riprova.
Grazie per aver inviato il modulo.

Hai un'esigenza
specifica? 

Compila il form e parlaci del tuo progetto.
Ti proponiamo la soluzione più adatta al tuo contesto.
GRID+ Copyright © 2026. All Rights Reserved.
P. IVA 17387741006 | Il capitale è stato interamente versato 10.000€ | RM – 1715269
GRID+ Copyright © 2026. All Rights Reserved.
P. IVA 17387741006 · Il capitale è stato interamente versato 10.000€ | RM – 1715269
P. IVA 17387741006 · Il capitale è stato interamente versato 10.000€ | RM – 1715269