Category Ranking

98%

Total Visits

921

Avg Visit Duration

2 minutes

Citations

20

Article Abstract

The Internet of Things (IoT)-based smart solutions have been developed to predict water quality and they are becoming an increasingly important means of providing efficient solutions through communication technologies. IoT systems are used for enabling connection between various devices based on the ability to gather and collect information. Furthermore, IoT systems are designed to address the environment and the automation industry. The threats associated with aquaponics farming are managed through an IoT-based smart water monitoring framework, which has become increasingly relevant in recent days. Therefore, this approach is crucial for achieving a remarkable improvement in order to increase the productivity rate and yield. The quality of water directly affects the rate of growth, efficiency of feed, and the overall health rate of the fish, plants, and bacteria. Insufficient knowledge about species selection poses a significant challenge in aquaponics farming, as it heavily relies on the water quality parameters. To address the challenges of conventional models, we have developed an effective IoT-based water quality prediction model, more specifically designed for aquaponic fish ponds. The data needed to perform the developed water quality prediction model will be acquired from "a simple dataset of aquaponic fish pond IoT" database. After that, these data are forwarded to the feature extraction phase. The weighted features, DBN (Deep Belief Network) features, and the original features are achieved in the feature extraction stage. The weighted features are obtained using the Revamped Fitness-based Mother Optimization Algorithm (RF-MOA). Subsequently, these extracted features are fed into the Multi-Scale feature fusion-based Convolutional Autoencoder with a Gated Recurrent Unit (MS-CAGRU) network for predicting the water quality. Thus, the water quality predicted data is obtained. The proposed model integrates GRU networks with a convolutional autoencoder to improve water quality prediction by capturing trends and managing temporal dependencies. It enhances accuracy by analysing key parameters and employing techniques to reduce overfitting. The effectiveness of the proposed system is evaluated in comparison to the traditional models using some evaluation measures.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11733141PMC
http://dx.doi.org/10.1038/s41598-024-84943-7DOI Listing

Publication Analysis

Top Keywords

water quality
32
prediction model
12
aquaponic fish
12
convolutional autoencoder
12
quality prediction
12
water
10
quality
9
fish pond
8
gru networks
8
iot-based smart
8

Similar Publications

Background: Superficial injection of hyaluronic acid (HA)-based gels is a widely used method to restore skin quality and achieve a more youthful appearance. While the clinical benefits of such procedures are well established, their biological mechanisms of action remain poorly understood.

Objective: This study aimed to evaluate the effectiveness of two cross-linked HA gels (IPN-12.

View Article and Find Full Text PDF

Background: Fish are the largest group of vertebrates. Studying the characteristics, functions, and interactions of different fish cells is important for understanding their roles in disease and evolution. However, most single cell RNA-seq studies in fish are restricted to a few specific organs, leaving a comprehensive cell landscape that aims to characterize the heterogeneity and connections among body-wide organs largely unexplored.

View Article and Find Full Text PDF

Urban-impacted river pollutant sources: WQI ranking and PMF analysis.

Environ Monit Assess

September 2025

School of Materials Engineering, Changzhou Vocational Institute of Industry Technology, Changzhou, 213000, People's Republic of China.

A multi-indicator framework was developed to resolve multi-source pollution in highly urbanized rivers, demonstrated in the Qinhuai River Basin, Nanjing, China. Water quality index (WQI) stratification was integrated with dissolved organic matter (DOM) fluorescence components, hydrochemical ions, and conventional parameters and analyzed using positive matrix factorization (PMF). Correlation analysis further elucidated source compositions and interactions.

View Article and Find Full Text PDF

Unveiling Condensed Aromatic Amines as Noteworthy Genotoxic Components in PM Dissolved Organic Matter.

Environ Sci Technol

September 2025

State Key Laboratory of Advanced Environmental Technology, Guangzhou Institute of Geochemistry, Chinese Academy of Sciences, Guangzhou 510640, China.

The potential of PM to cause lung cancer has been well established; however, evidence regarding which specific components are responsible remains limited. We investigated dissolved organic matter (DOM) in PM using high-resolution mass spectrometry (HRMS) and cellular DNA damage assays to elucidate molecular composition and sources of carcinogenic components. Our analysis revealed hundreds of genotoxic compounds, with condensed aromatic amines predominating in number, abundance, and contribution to overall genotoxicity.

View Article and Find Full Text PDF

Biorelevant simulation of GI variability and its impact on the release behavior of non-disintegrating formulations: A case study using DHSI-IV (NERDT) system as a novel in vitro tool.

Int J Pharm

September 2025

Life Quality (LQ) Engineering Interest Group, School of Chemical and Environmental Engineering, College of Chemistry, Chemical Engineering and Materials Science, Soochow University, Suzhou, Jiangsu Province 215123, China. Electronic address:

Gastrointestinal (GI) physiological variability significantly influences dissolution and bioavailability of non-disintegrating solid drug systems. This study employed the dynamic human stomach-intestine (DHSI-IV, branded as NERDT) system to characterize how gastric emptying kinetics and intestinal environmental dynamics affect drug release, using extended-release metformin matrix tablets (Glucophage XR®) and metformin osmotic pump tablets (Nida®) as model formulations. The DHSI-IV (NERDT) system accurately simulated three fasting-state gastric emptying profiles (30-120 min complete emptying) with excellent fit to the modified Elashoff model (R = 0.

View Article and Find Full Text PDF