IoT-Based Water Quality and Quantity Monitoring System for Domestic Usage

Author(s):  
Venkutuswamy Radhika ◽  
Karuppanan Srinivasan ◽  
Radhakrishnan Ramya ◽  
Bella Bellie Sharmila
Author(s):  
Muhammad Arsalan

Smart and cost-effective solutions for water quality monitoring are gaining attention with the recent advancement in information and communication system technology. This paper aims at the design and development of the internet of things (IoT) based low-cost and portable water quality and quantity monitoring (WQQM) system. The proposed system not only monitors the water quality but also monitors the amount of water being utilized by the consumer. The main objective of designing WQQM is to ensure both purity and conservation of water. The water quality meter measures six qualitative parameters of water viz. potential hydrogen (pH), water temperature, atmospheric temperature, turbidity, and total dissolved solids (TDS). Whereas, the water quantity meter measures the water level and water flow to calculate the amount of water being used. A custom printed circuit board (PCB) is designed to integrate all the sensors for quality and quantity measurement. The results generated by the WQQM system are wirelessly transferred, using Wi-Fi, to the online monitoring system.


Author(s):  
Heather L. Welch ◽  
Christopher T. Green ◽  
Richard A. Rebich ◽  
Jeannie R.B. Barlow ◽  
Matthew B. Hicks

2015 ◽  
Vol 2015 (9) ◽  
pp. 2861-2876
Author(s):  
Hamidreza Kazemi ◽  
Sam Abdollahian ◽  
Thomas D Rockaway ◽  
Joshua Rivard

Sensors ◽  
2021 ◽  
Vol 21 (12) ◽  
pp. 4118
Author(s):  
Leonardo F. Arias-Rodriguez ◽  
Zheng Duan ◽  
José de Jesús Díaz-Torres ◽  
Mónica Basilio Hazas ◽  
Jingshui Huang ◽  
...  

Remote Sensing, as a driver for water management decisions, needs further integration with monitoring water quality programs, especially in developing countries. Moreover, usage of remote sensing approaches has not been broadly applied in monitoring routines. Therefore, it is necessary to assess the efficacy of available sensors to complement the often limited field measurements from such programs and build models that support monitoring tasks. Here, we integrate field measurements (2013–2019) from the Mexican national water quality monitoring system (RNMCA) with data from Landsat-8 OLI, Sentinel-3 OLCI, and Sentinel-2 MSI to train an extreme learning machine (ELM), a support vector regression (SVR) and a linear regression (LR) for estimating Chlorophyll-a (Chl-a), Turbidity, Total Suspended Matter (TSM) and Secchi Disk Depth (SDD). Additionally, OLCI Level-2 Products for Chl-a and TSM are compared against the RNMCA data. We observed that OLCI Level-2 Products are poorly correlated with the RNMCA data and it is not feasible to rely only on them to support monitoring operations. However, OLCI atmospherically corrected data is useful to develop accurate models using an ELM, particularly for Turbidity (R2=0.7). We conclude that remote sensing is useful to support monitoring systems tasks, and its progressive integration will improve the quality of water quality monitoring programs.


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