Eine Plattform für die Wissenschaft: Bauingenieurwesen, Architektur und Urbanistik
Deep Learning Based Approach to Classify Saline Particles in Sea Water
Water is an essential resource that facilitates the existence of human life forms. In recent years, the demand for the consumption of freshwater has substantially increased. Seawater contains a high concentration of salt particles and salinity, making it unfit for consumption and domestic use. Water treatment plants used to treat seawater are less efficient and reliable. Deep learning systems can prove to be efficient and highly accurate in analyzing salt particles in seawater with higher efficiency that can improve the performance of water treatment plants. Therefore, this work classified different concentrations of salt particles in water using convolutional neural networks with the implementation of transfer learning. Salt salinity concentration images were captured using a designed Raspberry Pi based model and these images were further used for training purposes. Moreover, a data augmentation technique was also employed for the state-of-the-art results. Finally, a deep learning neural network was used to classify saline particles of varied concentration range images. The experimental results show that the proposed approach exhibited superior outcomes by achieving an overall accuracy of 90% and f-score of 87% in classifying salt particles. The proposed model was also evaluated using other evaluation metrics such as precision, recall, and specificity, and showed robust results.
Deep Learning Based Approach to Classify Saline Particles in Sea Water
Water is an essential resource that facilitates the existence of human life forms. In recent years, the demand for the consumption of freshwater has substantially increased. Seawater contains a high concentration of salt particles and salinity, making it unfit for consumption and domestic use. Water treatment plants used to treat seawater are less efficient and reliable. Deep learning systems can prove to be efficient and highly accurate in analyzing salt particles in seawater with higher efficiency that can improve the performance of water treatment plants. Therefore, this work classified different concentrations of salt particles in water using convolutional neural networks with the implementation of transfer learning. Salt salinity concentration images were captured using a designed Raspberry Pi based model and these images were further used for training purposes. Moreover, a data augmentation technique was also employed for the state-of-the-art results. Finally, a deep learning neural network was used to classify saline particles of varied concentration range images. The experimental results show that the proposed approach exhibited superior outcomes by achieving an overall accuracy of 90% and f-score of 87% in classifying salt particles. The proposed model was also evaluated using other evaluation metrics such as precision, recall, and specificity, and showed robust results.
Deep Learning Based Approach to Classify Saline Particles in Sea Water
Mohammed Alshehri (Autor:in) / Manoj Kumar (Autor:in) / Akashdeep Bhardwaj (Autor:in) / Shailendra Mishra (Autor:in) / Jayadev Gyani (Autor:in)
2021
Aufsatz (Zeitschrift)
Elektronische Ressource
Unbekannt
Metadata by DOAJ is licensed under CC BY-SA 1.0
How to classify sand types: A deep learning approach
Elsevier | 2021
|A Novel Methodology to Classify Soil Liquefaction Using Deep Learning
Online Contents | 2020
|Deep Learning to Detect and Classify Highway Distresses Based on Optimised CNN Model
Springer Verlag | 2022
|Entropy-Based Approach to Analyze and Classify Mineral Aggregates
Online Contents | 2011
|Deep embedding approach to classify purpose of trips between cities from GPS data
BASE | 2019
|