Deep learning based soft-sensor for continuous chlorophyll estimation on decentralized data

被引:7
作者
Diaz, Judith Sainz-Pardo [1 ]
Castrillo, Maria [1 ]
Garcia, Alvaro Lopez [1 ]
机构
[1] UC, Inst Fis Cantabria IFCA, CSIC, Avda Los Castros S-N, Santander 39005, Cantabria, Spain
关键词
Chlorophyll monitoring; Water quality; Soft sensor; Deep learning; Federated learning; WATER; RESERVOIRS;
D O I
10.1016/j.watres.2023.120726
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Monitoring the concentration of pigments like chlorophyll (Chl) in water-bodies is a key task to contribute to their conservation. However, with the existing sensor technology, measurement in real-time and with enough frequency to ensure proper risk management is not completely feasible. In this work, with the concept of data -driven soft-sensing, three hydrophysical features are used together with three meteorological ones to estimate the concentration of Chl in two tributaries of the River Thames. Data driven models, specifically neural networks, are used with three learning approaches: individual, centralized and federated. Data reduction scenarios are proposed in order to analyze the performance of each approach when less data is available. The best results in the training are usually obtained with the individual approach. However, the federated learning provides better generalization ability. It was also observed that in most of the cases the results of the federated learning approach improve those of the centralized one.
引用
收藏
页数:14
相关论文
共 26 条
[1]   Machine Learning Methods Applied to the Prediction of Pseudo-nitzschia spp. Blooms in the Galician Rias Baixas (NW Spain) [J].
Alaez, Francisco M. Bellas ;
Palenzuela, Jesus M. Torres ;
Spyrakos, Evangelos ;
Vilas, Luis Gonzalez .
ISPRS INTERNATIONAL JOURNAL OF GEO-INFORMATION, 2021, 10 (04)
[2]   State of knowledge on early warning tools for cyanobacteria detection [J].
Almuhtaram, Husein ;
Kibuye, Faith A. ;
Ajjampur, Suraj ;
Glover, Caitlin M. ;
Hofmann, Ron ;
Gaget, Virginie ;
Owen, Christine ;
Wert, Eric C. ;
Zamyadi, Arash .
ECOLOGICAL INDICATORS, 2021, 133
[3]  
[Anonymous], Sustainable Development Goals
[4]   Environmental factors associated with toxic cyanobacterial blooms across 20 drinking water reservoirs in a semi-arid region of Brazil [J].
Barros, Mario U. G. ;
Wilson, Alan E. ;
Leitao, Joao I. R. ;
Pereira, Silvano P. ;
Buley, Riley P. ;
Fernandez-Figueroa, Edna G. ;
Capelo-Neto, Jose .
HARMFUL ALGAE, 2019, 86 :128-137
[5]   Short-term water quality variable prediction using a hybrid CNN-LSTM deep learning model [J].
Barzegar, Rahim ;
Aalami, Mohammad Taghi ;
Adamowski, Jan .
STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT, 2020, 34 (02) :415-433
[6]   Estimation of high frequency nutrient concentrations from water quality surrogates using machine learning methods [J].
Castrillo, Maria ;
Lopez Garcia, Alvaro .
WATER RESEARCH, 2020, 172
[7]  
Chorus I., 1999, Toxic cyanobacteria in water: a guide to their public health consequences, monitoring and management
[8]   Water eutrophication assessment relied on various machine learning techniques: A case study in the Englishmen Lake (Northern Spain) [J].
Garcia Nieto, P. J. ;
Garcia-Gonzalo, E. ;
Alonso Fernandez, J. R. ;
Diaz Muinz, C. .
ECOLOGICAL MODELLING, 2019, 404 :91-102
[9]   Harmful algae at the complex nexus of eutrophication and climate change [J].
Glibert, Patricia M. .
HARMFUL ALGAE, 2020, 91
[10]   Deep Neural Networks for Acoustic Modeling in Speech Recognition [J].
Hinton, Geoffrey ;
Deng, Li ;
Yu, Dong ;
Dahl, George E. ;
Mohamed, Abdel-rahman ;
Jaitly, Navdeep ;
Senior, Andrew ;
Vanhoucke, Vincent ;
Patrick Nguyen ;
Sainath, Tara N. ;
Kingsbury, Brian .
IEEE SIGNAL PROCESSING MAGAZINE, 2012, 29 (06) :82-97